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Article

Assessing Energy Descent Scenarios for the Ecological Transition in Spain 2020–2030

1
Instituto Universitario de Investigación Mixto CIRCE, Universidad de Zaragoza-Fundación CIRCE, CIRCE Building—Campus Río Ebro, Mariano Esquillor Gómez, 15, 50018 Zaragoza, Spain
2
University Institute for Human Rights, Democracy, Culture of Peace and Nonviolence (DEMOSPAZ), Universidad Autónoma de Madrid, Einstein, 13, 28049 Madrid, Spain
3
Computer Engineering Department, Universidad Autónoma de Madrid, Francisco Tomás y Valiente, 11, 28049 Madrid, Spain
*
Author to whom correspondence should be addressed.
Sustainability 2021, 13(21), 11867; https://0-doi-org.brum.beds.ac.uk/10.3390/su132111867
Submission received: 23 August 2021 / Revised: 26 September 2021 / Accepted: 29 September 2021 / Published: 27 October 2021
(This article belongs to the Special Issue Renewable Energy Technologies and Environmental Impact Assessment)

Abstract

:
A global energy consumption reduction is essential to address the many dimensions of the current ecological crisis. In this paper we have compiled the reasons that justify the necessity to start this energy descent process in the countries of the global North, where the annual per capita final energy consumption was 118 GJ in 2017. Based on recent research, we approach the necessary redistribution of energy consumption at the global level and the elements that should be present in energy descent strategies. We establish an approximate threshold of minimum and maximum per capita final energy consumption, between 15.6 GJ and 31.0 GJ for the year 2050, which serves as a reference for evaluating scenarios. We continue with an analysis of two ecological transition scenarios for Spain between 2020 and 2030, Green New Deal and Degrowth. Based on a schematic calculation model defined in “Labor Scenarios in the Ecosocial Transition 2020–2030” report, we evaluate the variations in energy consumption for 86 sectors of economic activity. Results show an annual final energy consumption per capita in 2030 of 44.6 GJ and 36.8 GJ for each scenario. We conclude by analyzing the hypothetical main drivers of this sharp decline in energy consumption.

1. Introduction

As global warming and ecological degradation accentuate their impacts, the ecological and energy transition is gaining momentum. Five decades behind schedule, public policies are focused on achieving fast decarbonization of the economy. This trend is speeding simultaneously as the historical record of 415 ppm CO2 in the atmosphere is surpassed [1]. In 2019, global annual primary and final energy consumption reached 583.9 EJ [2] and 435.0 EJ [3], respectively. Confidence in the possibility of completely replacing fossil fuels with energy production based on renewable sources is the central element on which the transition plans are being developed [4]. However, there are several reasons to be cautious and to point out the limitations of a strategy focused solely on “greening” energy production, without acting simultaneously on energy demand, may encounter [5]. Strategies focused exclusively on the energy–climate dimension often hide many other elements that need to be taken into account to achieve a transition that does not worsen ecological degradation, such as biodiversity loss [6]. Global energy descent appears as a requirement to reduce these risks and increase the feasibility of carrying out an ecological and energy transition within biophysical limits.
The purpose of our research is to contribute to the conceptualization and planning of ecological transition scenarios that include energy descent at their core. We believe that it is of great importance at the present time to identify those sectors and strategies that should play a leading role in this reduction of energy consumption. From this basis of conceptualization, planning, and identification, policies aimed at meeting the energy reduction targets can be designed. Our first objective is to clearly present the dimension, responsibility, and strategies of energy descent for the countries of the global North. Our second objective is to evaluate two specific ecological transition scenarios for Spain between 2020 and 2030: Green New Deal and Degrowth. For this purpose, we will use a methodology based on a schematic calculation model defined in the report “Labor Scenarios in the Ecosocial Transition 2020–2030” [7], from which we will also take the data that define both scenarios. Our calculation can then be understood as a contribution to the results obtained in that report and as a first approximation to quantify the energy consumption reductions that could be achieved from these ecological transition scenarios.
The paper is structured as follows. Section 2 presents a literature review of various research studies which allows us to establish the magnitude of the energy descent at the global level, evaluate the equitable distribution that should be made in the process, and point out strategies that allow us to achieve substantial reductions in energy demand in the countries of the global North. This section establishes a minimum and maximum threshold of final energy consumption per capita that will serve as a framework for analysis and comparison. In Section 3, we briefly introduce both ecological transition scenarios, explain the methodology used for the energy descent analysis, and present the initial energy consumption data. Section 4 shows the main results obtained for both scenarios and evaluates them with a sensitivity analysis. In Section 5, we discuss the obtained results, analyzing the sectors of economic activity and the transformations that promote the most significant reductions in energy consumption. We evaluate how these results relate to the considerations made from the literature review. In Section 6, we conclude the paper with some comments on the influence of these results on ecological transition policies.

2. Conceptualizing Energy Descent

We can explore three different perspectives that impose constraints on global energy consumption. Firstly, greenhouse gas emission reduction targets to limit the worst consequences of global warming. Secondly, the constraints imposed by the minerals required for the manufacture of renewable energy technologies. Lastly, the situation of declining energy availability as a result of peak conventional oil and low EROI for renewable technologies.
The Working Group I contribution to the IPCC Sixth Assessment Report estimated a remaining carbon budget of 400 GtCO2 to limit global warming to 1.5 °C with a 67% probability [8]. As this budget shrinks, and under the imperative to meet economic growth, Integrated Assessment Models (IAMs) give an increasingly central role to Negative Emissions Technologies (NET). However, there is considerable uncertainty about the actual capacity of these technologies to achieve net CO2 reductions on the envisioned scale of several gigatons per year [9]. Climate researchers warn of the risks of a “net zero” strategy and these technologies, as they reinforce the idea of “burn now and pay later” [10]. The way to meet carbon budgets without relying on large-scale deployment of NET necessarily involves a reduction in energy consumption. Grubler et al. defined in 2018 their “Low Energy Demand Scenario” (LED), which meets the 1.5 °C climate goal decreasing global final energy consumption by 40% to 245 EJ in 2050 [11].
Hickel et al. argued in favor of considering post-growth climate mitigation scenarios as those that can minimize feasibility and sustainability risks arising from technologically driven trajectories which are based on a high decoupling between energy and GDP, large-scale carbon dioxide capture, and a high-speed transformation to renewables [12]. Keyßer and Lenzen [13] developed a degrowth climate scenario that introduces the perspective of climate and ecological justice. For this purpose, they consider a redistribution of energy consumption between the global North and the global South. In this scenario, with equitable redistribution, the global North moves from its average final energy consumption per capita of 118 GJ in 2017 to 31 GJ in 2050, while the global South would move from 36 GJ in 2017 to 31 GJ in 2050 [13].
The minerals required to manufacture renewable energy devices represent another limit to global energy consumption [14]. Valero et al. [15] identified that the cumulative demand of 13 raw materials present in a low-carbon transition could exceed their known reserves, cobalt, lithium, tellurium, and nickel being the most critical elements in the coming decades [16]. Dominish et al. [17] studied the mineral demand for renewable energy and storage technologies under an ambitious scenario that limits emissions between 2015 and 2050 to 450 GtCO2, with a final energy consumption of 253 EJ supplied from renewable sources by 2050. It is found that the mineral demand would exceed reserves of cobalt, lithium, and nickel, while it would reach 50% of the reserves of indium, silver, and tellurium. Furthermore, the risk of a major negative impact on biodiversity due to increased extraction of these minerals in specially protected areas must also be considered [18].
Finally, beyond the choice of whether or not to reduce energy consumption at the global level to address the ecological crisis, certain elements lead us to think in terms of unavoidable declining energy availability. After conventional crude oil production peaked between 2005 and 2006 [19], production had slowly fallen from 70 Mb/d to 67 Mb/d in 2018. Subsequently, the International Energy Agency (IEA) certified in the 2020 World Energy Outlook that investment in oil and gas has declined since 2014 [20]. In the case that companies invest only in existing oil wells, IEA estimates that the drop in production would reach 40 Mb/d in 2040 [20]. Given the current global dependence on oil, such a reduction and the rising oil prices that would follow could complicate rather than facilitate the energy transition if it is not adequately planned [21].
On the other hand, the discussion on the EROI of renewable technologies raises some doubts about the amount of energy that can be produced from these technologies. Recent research by de Castro and Capellan argues that a transition from the current fossil to a renewable energy mix will be linked to a reduction in the EROI of the energy system [22]. When the boundaries of the analysis are extended closer to the system level, large hydro shows an extended EROI of 6.5:1, while the rest of the main renewable technologies are below 3:1 [22]. This fact could be accentuated by the decrease in the ore grade of some key minerals for these technologies, as is the case of copper [23]. Likewise, there are other issues that feed this uncertainty, such as the current dependence of renewable technologies on fossil fuels, the difficulties in the electrification of many current energy uses, or the integration of variability in the grid [5]. For these reasons, Floyd et al. call for “knowledge humility” about what the real energy transition scenarios might be [5].
These three perspectives allow us to approach the quantification of the energy descent that would have to be assumed at a global level. We see how even in the case of strong reductions in energy consumption, such as the one described by Dominish et al. [17], the reserves of certain minerals could be exceeded. Therefore, we consider it reasonable and prudent to assume the energy descent reference described by Grubler et al. [11], which establishes a final energy consumption of 245 EJ in 2050. This decrease would reduce the sustainability risks and increase the feasibility of achieving a transition to renewable sources.

Inequalities, Redistribution, and Strategies for Energy Descent

If we adopt the perspective of ecological justice, it will be those countries with the highest energy consumption who will have to undertake the largest energy reductions [24]. Global energy consumption currently shows huge inequalities: while the wealthiest 10% of the world’s population is responsible for 39% of the final energy footprint, the poorest 10% consumes 20 times less, only 2% [25]. It is a small portion of the world’s population that is responsible for an excessive energy footprint, while a large majority in the lower income brackets is responsible for only a small percentage of the world’s energy consumption. This is something that must be carefully considered when thinking about the energy descent that should be achieved in the coming decades.
A significant demand reduction high energy consumption countries should not imply a deterioration in the living conditions of their population. Steinberger and Roberts described in 2010 the decoupling that occurs after a certain saturation point between each country’s primary energy consumption and a set of human development indicators [26]. Akizu-Gardoki et al. [27] quantified this saturation point for annual primary energy consumptions above 100 GJ per capita. Below the saturation point, small increases in energy consumption can lead to a considerable improvement in human development indicators. Vogel et al. [28] point out that factors such as quality of public services, income equity, democracy, and access to electricity are associated with a high satisfaction of human needs with low energy requirements. Research show that current energy consumption is more than enough to ensure a decent living for the entire world population [26,29]. It is the lack of social efficiency in transforming this consumption towards the satisfaction of human needs that prevents this from happening [26]. Millward-Hopkins et al. [29] have pointed out that it would be possible to reduce global final energy consumption in 2050 to 149 EJ while providing a decent living for 10 billion world population. The Decent Living Scenario defines an annual final energy consumption of 13–18.4 GJ per capita, with a global average of 15.3 GJ [29].
Based on the values provided by research, we can define an approximate threshold of minimum and maximum final energy consumption to serve as a reference of analysis. At the lower limit, we place the estimate of Millward-Hopkins et al. [29] with 15.3 GJ of final energy per capita as the global average of the consumption necessary to guarantee a decent living. At the upper limit, we place Keyßer and Lenzen’s [13] estimate, with 31 GJ of final energy per capita, as the maximum energy consumption compatible with meeting the 1.5 °C goal without relying on large-scale NET. Thus, the approximate threshold would be between 15.3 and 31 GJ of final energy consumption per capita by 2050.
Average annual per capita final energy consumption in the global North was 118 GJ in 2017 [13]. In the case of Spain, annual final energy consumption was 78.0 GJ in 2018 [30,31]. Meeting the defined threshold for an equitable energy descent implies achieving energy consumption reductions in the range of 60 to 75% in the countries of the global North within three decades. The strategies and transformations that make it possible to achieve these levels of energy descent must consider energy demand as a dynamic, social, cultural, political and historical issue [32], which is continuously being shaped by “invisible energy policies” [33,34]. Thus, energy descent strategies should be grounded in a proper understanding of the socio-technical systems: those in which energy services are presented through large-scale, capital-intensive, and long-lived infrastructures that co-evolve with technologies, institutions, skills, knowledge, and behaviors [35,36]. It will be though large-scale socio-technical transitions, capable of overcoming the high energy demand lock-in established in the past, that our societies will be able to develop certain infrastructures and social practices that make it possible to satisfy the needs for a decent life while consuming much less energy.
Incremental change and energy efficiency strategies will not be enough to meet these magnitudes of energy demand reduction. Energy efficiency measures focused on technological improvements have proven unable of reaching the levels of energy and emission reductions needed to address the global North’s responsibility for the ecological crisis [37,38,39]. Instead, the energy sufficiency perspective seems to be more appropriate for this task [40,41,42]. This perspective allows us to focus on the ways in which those socially perceived needs can be satisfied through uses that reduce energy consumption, even if the equivalence of service is not maintained with respect to the way this currently occurs.
Therefore, the strategies needed to address a profound reduction in energy demand in global North countries must therefore involve a combination of large-scale socio-technical transitions and an energy sufficiency approach. Given the absence of empirical evidence of an adequate decoupling between energy consumption and GDP growth in the past and the unrealistic possibility of this happening in the future [43], these energy descent strategies will respond to the logic of degrowth: a planned contraction of the economic sphere, a reduction in production and consumption distributed in a socially fair way [44].
The conceptualizing elements of energy descent presented here help us to answer the key questions of how much, who, and how. This theoretical framework is necessary to carry out specific scenarios assessments as the one that follows. The approximate threshold defined here will be compared with the energy consumption results obtained by our calculations. The specific transformations of those economic sectors responsible for the main reduction in energy consumption will be analyzed together with the energy reduction strategies outlined here.

3. Energy Descent Scenarios Analysis for the Case of Ecological Transition in Spain 2020–2030

In our research, we have performed a schematic calculation of the energy descent in two ecological transition scenarios for Spain between 2020 and 2030. This analysis is based on the report “Labor Scenarios in the Ecosocial Transition 2020–2030” by the ecologist organization “Ecologistas en Acción” [7]. The report studied the interconnected evolutions between the working hours of different sectors of economic activity and greenhouse gas emissions. 86 sectors of economic activity grouped into 17 sets are considered. Table A1 of Appendix A shows the denomination and description of the 86 sectors considered.
The starting point is the Statistical Classification of Economic Activities in the European Community (NACE). Special emphasis is placed on accounting the hours worked corresponding to social reproduction work, or care work [45]. The initial values put the figure at 53% of total hours worked across all sectors devoted to unpaid care work and 8% to paid care work.
The objective of this report was to analyze the structural transformations necessary to achieve emission reduction targets that meet Spain’s responsibility according to the principles of climate justice. The report assesses how reducing the activity of those sectors with higher emissions per hour worked and increasing the economic activity of other sectors with lower emissions per hour worked can lead to an overall reduction in emissions.
Three scenarios were defined for this purpose. Two ecological transition scenarios representing two different political approaches and two different economic-institutional paths, and one reference scenario. A detailed description of the transformations included in each scenario can be found in [7]. A brief definition is given below:
  • Green New Deal Scenario (GND): Institutional strategy for a high-tech ecological modernization that stimulates economic sectors such as industrial renewable energies, ICT, or energy efficiency. Sectors such as agroecology are also promoted. The political proposal of this scenario is based on a post-neoliberal reform horizon with a post-growth economic paradigm [46].
  • Degrowth Scenario (D): Assumes the necessary, desirable, and unavoidable strong reduction of energy and material consumption in contemporary societies. It establishes the development of more rural, local, and de-technologized economies. It is a transformation towards agrarian-based social metabolisms. Its political bet goes through a search for greater social autonomy, with respect to the State and with respect to commodification [47].
  • Business as Usual Scenario (BAU): This is a smooth continuation of the dynamics already underway in terms of economic growth and development of specific sectors. It does not represent an ecological transition scenario. Its function is to serve as a reference to evaluate where we are heading if no measures are taken and compare this result with those obtained in the other two scenarios.
The scenarios are defined on the basis of the parameter of hours worked for the 3-digit NACE categories, which represent almost 300 sectors. To model the evolution of this parameter between 2020 and 2030, maximum and minimum limits to its annual variability were established. These constraints are obtained from the year-on-year rates of change of the historical series of the WIOD socioeconomic accounts [48]. In some sectors, the growth or decline limit was extended, considering that it is possible and necessary to force changes that exceed the market trend dynamics due to their strategic nature. For example, the decline limit for the “Food 1: Industrial agriculture and farming” sector was increased due to a process of conversion to “Food 2: Organic agriculture and farming”, for which the growth limit was increased.
Based on these upper and lower limits, the scenarios are defined by 7 degrees of variation in the hours worked in each of the 3-digit NACE categories: 3 degrees of growth, 1 degree of no variation, and 3 degrees of decline. This way, the obtained parameters of annual variation will provide the value of the desired hours worked (xend) for each sector that the calculation model will use. Due to the difficulty of obtaining data on emissions or energy at this level of disaggregation, the 3-digit NACE categories are grouped into 86 sectors of economic activity, most of which correspond directly to the 2-digit NACE categories.
We have decided to use the same calculation method developed in this report to analyze the variations in energy consumption that these two defined ecological transition scenarios would entail. These variations are not obtained as a result of a specific energy policy but as the result of a set of structural transformations over the economic activity of several sectors. Here we present the collection of the initial energy consumption data, the description of the applied calculation model, and a discussion about the limitations of the method.

3.1. Initial Data

To run the defined calculation model, we started from the initial energy consumption data for each 86 sectors. As in the original report, we took the data corresponding to the year 2017 to represent the starting point of 2020. The only currently existing data source with a level of disaggregation according to NACE categories is found in Eurostat’s Physical Energy Flow Accounts (PEFA) [49].
PEFA records the energy flows between the environment and the economic system of a country. It is not an accounting created by obtaining new specific data, but by adapting various existing traditional accounting systems. PEFA is an accounting based on the residential principle, which differs from traditional energy statistics, which are based on the territorial principle. In other words, PEFA accounts for energy flows associated with the activity of economic units that exist in in the territory, regardless of where these flows occur. This difference in the accounting principle has a particular influence on activities such as the transport of goods. This is a limitation when it comes to comparing with the values of traditional energy statistics provided by governmental agencies.
We took from PEFA the data of the net domestic energy use (key indicator 6), which corresponds to primary energy consumption disaggregated by sector [50]. Likewise, we obtained from the information provided by PEFA the data on the percentage distribution of energy products for all sectors, except those in which the transformation of primary energy products into secondary energy products takes place [51]. The sectors affected by this exception are “Manufacture of coke and refined petroleum products” (Energy 1), “Electricity, gas, steam and air conditioning supply” (Energy 2), “Manufacture of chemicals and chemical products” (Industry 4), and “Manufacture of basic metals” (Industry 7). Excluding these four sectors, we will obtain an equivalence with the final energy consumption.
We found a direct match in the source data for 62 of the 86 sectors defined for this analysis. The remaining 24 require adaptation to determine the energy consumption of these sectors. Eight of them were considered to have zero energy consumption, as they are sectors defined in the original report to study the absorption of emissions by crops, forests, grasslands, and wetlands. Thus, in the end, 16 sector data had to be adapted, in most cases by finding a way to disaggregate energy consumption values that contain more than one sector. Table A2 of Appendix A shows the direct correspondence of sectors with NACE categories and the 16 adaptations applied.
Table 1 shows the initial energy consumption data according to the grouped sectors, and the percentage weight that each sector represents in total consumption. We see that the sectors that represent the highest percentage of primary energy consumption are the energy sector, with 30.3%, followed by the unpaid care work sector, with 23.9%. These are followed by the transport sector with 15.4% and industry with 11.2% of total primary energy consumption. The unpaid care work sector represents all household activities. An important part of the energy consumption derived from transport is included in the unpaid care work sector, as it corresponds to the use of private vehicles. There is also energy consumption from transport that is included in other economic activities that require the use of transport to develop their production or services. The values presented under the set of “Transport” are such consumptions specifically related to transport services. Complete initial primary energy data for the 86 sectors is shown in Table A3 of Appendix A.
In Figure 1, we present the distribution of energy products according to the grouped sectors. Those sectors in which the transformation of primary energy products into secondary energy products takes place have been excluded. For example, the “Energy” group is made up of four sectors, but only the one corresponding to the “Fossil fuels extraction” (Energy 4) activity is represented here. The complete initial distribution of energy products for the 86 sectors is presented in Table A4 of Appendix A.

3.2. Calculation Method

The schematic calculation method we have used to measure the variations in energy use of the different scenarios is the one developed for the original report [7]. The calculation has been carried out with values equivalent to the use of primary energy. However, by adapting the results we have been able to obtain values equivalent to the use of final energy. The sequence of this schematic calculation method was as follows:
  • Obtain the initial energy consumption data for the 86 sectors of economic activity.
  • Carry out the calculation model and obtain the energy results defined by the variations in hours worked.
  • Apply adjustment factors to certain sectors in a justified way to consider further transformations.
  • Obtain and analyze the final energy consumption results for each scenario.
In the case of the “Care Work 8” sector, which represents unpaid care work, a separate simulation is carried out to differentiate between the three factors that make up its energy consumption: transportation, heating/cooling, and other uses. The values obtained from the simulation of “Care Work 8” sector are presented in Table A7 of Appendix A.
Figure 2 shows a graphical description of the applied calculation method. The main variables and equations are presented below.

3.2.1. Initial Variables

  • Xini = {xini}, a vector of initial hours worked in each sector. Initial data were obtained by [7] from [52].
  • Eini = {eini}, a vector of initial energy consumption in each sector. Initial data were obtained from PEFA [49] for 2017.
  • Δxmin and Δxmax, minimum and maximum interannual variation rate in a sector. Obtained and adapted by [7] from the 2000–2014 historical series of the WIOD socioeconomic accounts [48]. A correction using the average interannual cumulative rates for periods of five years was applied to avoid cyclical effects.

3.2.2. Assumptions

The ratio of energy consumption per hours worked (F) remains constant for most sectors over the next decade.
  • F, the ratio of energy consumption per hours worked in a sector, was calculated as:
F = eini / xini,
This hypothesis finds its empirical verification in the study by Kovacic et al. [53], who show that the ratio between energy consumption and hours worked has remained practically constant for 14 European Union countries between 1995 and 2013.

3.2.3. Scenarios

Each simulation is guided by a predefined target scenario, which represents the direction of the socio-economical transformations.
  • Xend = {xend}, a vector of desired hours worked in each sector in the last year of the simulation (desired scenario).
  • The simulation would try to achieve this desired increment/decrement, but it would be limited by Δxmin and Δxmax constraints.

3.2.4. Model Equations

The evolution of each sector of activity is independent of that of the rest, except in a few cases of dependent sectors where there are direct couplings. An important part of the direct couplings defined are linked to a strong correlation between energy availability and the economic activity of high energy consuming sectors. The sectors which have direct couplings are listed in Table A5 in Appendix A.
  • Δxdesired, which is the desired interannual variation in each sector.
  • In an independent sector, Δxdesired was calculated as:
    Δ x desired ,   y = x end   x ini # Y   ·   x y 1 ,
    where y is the year of calculation and y − 1 the previous year. #Y is the number of years between the initial data and the expected scenario (10, as we were calculating for the decade).
  • Δx, the effective interannual variation in each sector, is constrained by maximum and minimum interannual variation rates
    Δ x = { Δ x min                           if    Δ x desired < Δ x min Δ x desired              if   Δ x min < Δ x desired < Δ x max   Δ x max                           if    Δ x desired > Δ x max
In a dependent sector (A), ΔxAdesired depends on a proportional relationship with another sector B (or by a linear combination of more sectors)
ΔxAdesired = G · ΔxB,
where G represents the relation coefficient between sectors.

3.2.5. Obtained Results from the Model

  • x # Y = { x # Y } , represents a vector of obtained hours worked in each sector in the final year, in our case 2030.
    x # Y = · x i n i + y   ϵ   Y   Δ x y · x y 1   ,
  • E # Y = { e # Y } , represents a vector of the energy consumption of each sector obtained by the model for the final year, in our case 2030.
    e # Y = x # Y ·   F ,

3.2.6. Adjustment Factor

In some sectors, justified variations in the ratio F are required to reflect efficiency gains, reductions in consumption, deindustrialization processes or reconversions. This is established by the subsequent adjustment factor. We have adapted the values of the adjustment factor applied in [7] to the values of GHG emissions to our energy consumption analysis. We have done that through several parameters, such as the distribution and the emission factor of each energy product. The obtained and applied adjustment factors can be found in Table A6 of the Appendix A.
  • Λ = { λ } , is a vector of the subsequent adjustment factor of each sector. It takes values between 0 and 1.
  • E 2030 = { e 2030 } , is a vector of the energy consumption of each sector obtained after applying the adjustment factor:
    e 2030 = e # Y · λ ,

3.2.7. Distribution of Energy Products

We obtain from PEFA the initial percentage distribution of the consumption of energy products for most sectors.
  • [ D i n i ] = { D i n i ,   s e c t o r s } , is a matrix that describes the initial distribution of percentage consumption of energy products for sector.
  • [ D 2030 ] = { D 2030 ,   s e c t o r s } , is a matrix that describes the obtained 2030 distribution of percentage consumption of energy products for sector once the adjustment factors have been applied.
The distribution remains constant for most sectors. There are some exceptions in which the adjustment factor justification implies a redistribution in the energy products. In these cases, the reduction in the energy consumption that imposes the adjustment factor is subtracted from the fossil-fuels energy products. This implies that the percentage of distribution of these products decreases and the percentage of others increases, for example, electricity. These exceptions are shown in Table A9 of Appendix A.

3.2.8. Final Energy Consumption

Final energy consumption results for the different scenarios in 2030 can be calculated by applying the obtained variation 2020–2030 of energy products consumption to official values provided by Spanish governmental agencies [30].
  • F E 2030 , describes the obtained final energy consumption.
As described in Section 3.1, for obtaining the final energy consumption equivalent values, sectors “Energy 1”, “Energy 2”, “Industry 4” and “Industry 7” are excluded.

3.3. Method Limitations

The calculation performed in this scenario assessment was based on a schematic method that may lead to inaccuracies. The objective was to provide an approximation that estimates the scale of the energy descent that could be achieved from certain ecological transition transformations. In this sense, the results should not be interpreted by their numerical reference, but as a first approximation of such a reduction in energy consumption. Different factors constitute a limitation to carry out a more precise calculation. We highlight the data availability, the schematic method, and the subsequent adjustment factors.
In first place, Eurostat’s PEFA is the only data source found that provides the energy consumption values disaggregated by two-digit NACE categories. The residential principle on which this accounting is based is a limitation when it comes to complementing and comparing the results obtained for the 2030 scenarios with those provided by other traditional energy statistics based on the territorial principle. Secondly, the schematic method applied allows a first approximation to the interrelationships and dependencies between sectors of economic activity, but a more consistent calculation would require the use of a system dynamics calculation model, such as the MEDEAS model [54].
Lastly, the application of adjustment factors after the calculation is another limitation of the method applied. These factors are included in the original report referring to a more profound reduction of emissions due to structural transformations such as: reflecting the electrification of machinery, an increase in the use of human physical force, efficiency increases, less climatic conditioning of spaces, or the development of more artisanal production. These factors have been translated into terms of energy consumption based on factors such as the emissions factor of different energy products and their percentage distribution for the sector concerned. Although these factors have been established in a reasoned manner, they may cause inaccuracies in the final results of the calculation.

4. Main Results

The main results of the energy consumption calculation for 2030 are presented below. Results of GND and D scenarios are presented individually, while results of the BAU scenario are only shown for comparison purposes. Complete results for the 86 sectors of economic activity can be found in Table A8 of Appendix A.

4.1. Green New Deal Scenario 2030 Results

We observe in Table 2 a 38.0% reduction in primary energy consumption between 2020 and 2030 according to the transformations defined for the GND scenario. In absolute terms, there is a decrease of 50,171.2 ktoe in primary energy consumption. The unpaid care work sector is the one with the greatest importance in the variation, accounting for 33.8% of the reduction. It is followed by the set of energy sectors, which account for 27.5% of the total variation, along with the transport sector, with 17.7% of the total reduction.
Regarding the percentage variation of energy consumption (Figure 3), there is a reduction in primary energy consumption for all sets, except for ICT and Forestry, which experience increases. These increases are justified by a significant increase in worked hours in these sectors.
If we evaluate the resulting distribution of energy products for 2030 according to the GND scenario, we find that the share of electricity in the unpaid care work sector increases considerably. There is also an increase in the share of electricity in the transportation sector. According to the change in the consumption of energy products in absolute terms, petroleum products show the largest reduction (−56.0%), followed by natural gas (−39.3%). Although electricity gained greater weight in certain sectors, in overall terms its consumption fell by 6.5%.

4.2. Degrowth Scenario 2030 Results

According to the transformations defined by scenario D (Table 3), there would be a 61.2% reduction in primary energy consumption between 2020 and 2030. In absolute terms, this represents a decrease of 80,774.1 ktoe. The set of sectors with the greatest weight in this decrease is Energy, accounting for 41.0% of the total, followed by unpaid care work, with 23.6%, and transport, with 16.3%.
All sets of sectors experience a reduction in their energy consumption (Figure 4), except for Forestry, which increases as a result of a sharp increase in the associated hours worked.
This scenario presents the greatest variations in the distribution of energy products. In the case of the unpaid care work sector, petroleum products go from ~60% to less than 25%, while electricity goes from 20% to 50%. Similarly, in the tourism sector, petroleum products go from representing more than 80% of consumption to less than 50%. Similar changes can be observed for the transport and food sectors. In terms of total consumption, petroleum products are reduced by 71.7% and natural gas by 44.0%. As in the previous scenario, despite electricity gaining centrality in the distribution of energy products in certain sectors, in total terms, it experiences a reduction in consumption of 12.6%.

4.3. Comparison of Scenario Results

The results obtained show an increase in primary energy consumption of 12.6% for the BAU scenario and a reduction of 38.0% and 61.2% in the GND and D scenarios, respectively. In both cases, the energy decrease is driven by structural transformations in the energy, unpaid care work, and transport sectors. For both ecological transition scenarios, the consumption of petroleum products decreases its centrality in the unpaid care work and transportation sectors. The largest reductions in the consumption of petroleum products occur in scenario D, with a reduction of 71.7%, while in the GND scenario, the reduction is 56.0% (Figure 5). Electricity consumption decreases in both scenarios by 6.5% for GND and 12.6% for D.
To analyze the results of energy product consumption in absolute terms for 2030 according to the different scenarios, we have to make a small adjustment. What we have done so far has been to evaluate the percentages of variation obtained on the consumption of energy products, not the absolute values. The initial data from which we started did not provide us with information on final energy consumption directly. Still, we had to derive it from the estimated consumption of energy products, so there are certain discrepancies. In order to translate the percentages of variation obtained for each of the energy products into absolute values, we decided to start from the official values provided by Spanish government agencies [29]. In this way, we obtain an energy product consumption, equivalent to final energy consumption, of 90,825 ktoe, 50,918 ktoe and 41,952 ktoe, respectively, for 2030 according to the BAU, GND, and D scenarios (Figure 6).
To compare these results with the considerations made in Section 2, we present the values of primary and final energy consumption per capita (Table 4). We take the demographic projections of the Spanish National Institute of Statistics (INE) for the year 2030 for both scenarios, which consider a population of 47.75 million [30]. No specific consideration or discussion about population growth scenarios has been addressed.
The most recent values for primary and final energy consumption per capita amount to 122.4 and 78.0 GJ for 2019 and 2018, respectively. We remind that these results should be compared with the defined minimum consumption and maximum consumption threshold. In the case of Spain, Millward-Hopkins et al. [29] estimated the minimum consumption necessary to ensure a decent life for the entire population in 2050 at 15.8 GJ of final energy per capita. Maximum consumption would be 31.0 GJ as defined by Keyßer and Lenzen [13] for 2050. Lastly, we present the main 2020–2030 variation results obtained for the three scenarios in Table 5.

4.4. Sensitivity Analysis

To complete the collection of results, we carried out two sensitivity analyses. First, we evaluated the effect of variations in the adjustment factors applied to represent structural transformations of the sectors regarding the total primary energy consumption result. Second, we evaluated the effect of modifying the annual rate of change applied on the transport attributed to the unpaid care work sector, regarding the total primary energy consumption result.

4.4.1. Sensitivity Analysis on Adjustment Factors

The adjustment factors subsequent to applying the calculation model are applied to 31 and 32 sectors for the GND and D scenarios, respectively. In this sensitivity analysis, we wanted to evaluate the effect of applying a variation on them. To do so, we reduced or increased the value of these factors percentage-wise and studied the effect this has on the total primary energy consumption result. We applied reductions of 5 and 10% and increases of 5, 10, 15, and 20% on the original value of the factors. The results obtained are shown in Figure 7.
Logically, in the BAU scenario there is no variation since no adjustment factors are applied in this case. We observe how the effect of the percentage variations applied on the adjustment factors is greater for scenario D than for GND. For a 10% reduction on the original values of the adjustment factors, the total primary energy consumption is reduced by 2.2 and 3.1% for the GND and D scenarios, respectively. For a 20% increase over the adjustment factors, the total primary energy consumption increases by 4.5 and 6.2% for the GND and D scenarios, respectively. The final result of primary energy consumption obtained after applying the adjustment factors represents a reduction of 25 and 42% with respect to the intermediate result obtained from applying the calculation method for the GND and D scenarios, respectively. Therefore, we can clearly see the greater influence of the adjustment factors on scenario D. This is justified by the transformations represented by this scenario, which are oriented towards achieving an agrarian-based social metabolism. In any case, the percentages of variation that we observed on the final result of primary energy consumption lead us to state that the inaccuracies that the applied adjustment factors may present have a moderate influence. Therefore, we consider that the results obtained using the adjustment factors can be taken as a first approximation of what tendencies and transformations these ecological transition scenarios would represent.

4.4.2. Sensitivity Analysis on Energy Consumption of Private Transport

The energy consumption attributed to the “Care Work 8: Unpaid care work and domestic life” sector is composed of three factors: transportation, heating/cooling, and other uses. In the initial 2017 data, applied for 2020, the percentage distribution of these three factors over the total is 51.4, 29.5, and 19.1%, respectively. It is the energy consumption attributed to the use of private transport that has the greatest weight. Given the weight of the reduction in energy consumption of the Care Work 8 sector with respect to the total reduction in the GND and D scenarios, we consider it important to perform a sensitivity analysis on this factor. As mentioned in Section 3.1, a separate simulation is applied to the Care Work 8 sector, differentiating between these three factors. In the case of transportation, what is applied is an annual rate of variation for each of the three scenarios: 1.5% for BAU, −13.3% for GND, and −20% for D. In this sensitivity analysis, we evaluated the effect of a percentage increase of 5, 10, 15, 20, 25 and 30% on these rates of variation. We compare it with the final result of total primary energy consumption. The results obtained are shown in Figure 8.
We can clearly see how the influence of these increases on the rate of variation is greater for scenario D, while in the case of the BAU scenario the influence is minimal. In the case of a 30% increase, the annual variation rates applied on private transport energy consumption are 2.0, −9.3, and −14% for the BAU, GND, and D scenarios, respectively. Under this variation, the total primary energy consumption increases by 2.7% and 3.6% for the GND and D scenarios, respectively. This shows the importance of the transformations on the energy consumption attributed to private transport. This consumption represents 12.3% of total primary energy consumption in the case of the initial data considered for 2020. In the results obtained for 2030, it represents 4.7% and 3.4% of primary energy consumption according to scenarios GND and D. This sensitivity analysis verifies the importance of the annual variation rates of private transport energy consumption. As in the previous case, we found that significant variations in the order of 20–30% on this factor have a moderate influence on the final result of total primary energy consumption. Therefore, despite the inaccuracies that may have been committed, we consider that the results obtained can be taken as a first approximation to the energy descent in the private transport sector resulting from the ecological transition scenarios.

5. Discussion

In this paper, we have made a theoretical approach to the framework of analysis of energy descent (Section 2) and a quantitative approach to the energy descent that could be achieved from two different scenarios of ecological transition for the case of Spain between 2020 and 2030 (Section 3 and Section 4). In the first part of the paper, we have studied the magnitude that the global energy descent would have to reach in the coming decades and the importance of a strong redistribution of energy consumption during this process. We have seen how the countries of the global North, and especially the wealthiest people among their populations, will have to assume the major part of the reduction in energy demand. To achieve this purpose, it is important to understand how demand is created and shaped, which is a dynamic, social, cultural, political, and historical issue. Large-scale socio-technical transitions will be necessary to move away from dependencies and inertias that block the possibility of satisfying social needs and desires through reduced energy consumption. The approach under which these transformations should be addressed will be that of energy sufficiency, focusing on how needs are transformed into demand for specific technical and energy services. Based on previous research, this analysis has established an indicative threshold of minimum and maximum consumption to help us evaluate possible energy descent scenarios. The minimum level of final energy consumption per capita corresponds to that necessary to guarantee a decent living, while the maximum level corresponds to climate scenarios that meet the 1.5 °C carbon budget without relying on negative emission technologies. In the case of Spain, this threshold would be defined between 15.8 and 31.0 GJ of final energy per capita by 2050.
Based on the report “Labor Scenarios in the Ecosocial Transition 2020–2030”, carried out by “Ecologistas en Acción”, we have calculated the evolution of energy consumption for two scenarios of ecological transition in Spain between 2020 and 2030. The results obtained show a 38.0% and 61.2% reduction in primary energy consumption for the GND and D scenarios, respectively, in the period under study. We obtain a final energy consumption per capita for 2030 of 44.6 and 36.8 GJ for the GND and D scenarios, respectively. These 2030 results are close to the maximum consumption threshold we have defined for 2050. The reductions experienced by both scenarios are very significant, even more so considering the time frame in which they are implemented. If these transitions were carried out, there would be 20 years left to deepen the energy descent, thus meeting the threshold defined for 2050. Those structural transformations described by scenario D are the ones that would bring us closer to the level of energy consumption reduction that Spain should assume. The fundamental difference between the two scenarios has to do with the considerations on which they are based. While the GND scenario describes a high-tech ecological modernization, the D scenario describes a transformation towards more rural, local, and de-technologized economies.
Regarding how these reductions in energy demand would be achieved, we can distinguish four different approaches based on the results obtained: 1. reduction of fossil fuel consumption, 2. abandoning dependence on globalized supply chains, 3. socio-technical transitions that allow abandoning the need for massive use of road transport, and 4. energy sufficiency measures that reduce energy consumption for heating and cooling.
The transformations carried out in the energy sector represent 27.5% and 41.0% of the reduction in consumption obtained for scenarios GND and D. These reductions are achieved mainly by strong reductions in the sectors “Energy 1: Coke ovens and oil refining” and “Energy 2: Non-renewable electricity supply, steam and air conditioning”. In the case of Energy 1, in both scenarios, consumption drops from 9087.7 ktoe in 2020 to 1559.6 ktoe in 2030. In the case of Energy 2, it goes from 30,774.2 ktoe in 2020 to 24,626.7 ktoe in 2030 according to the GND scenario and 5281.5 ktoe according to scenario D. Thus, the reduction in consumption of the Energy 1 sector accounts for 15.0 and 9.3% of the total decrease in primary energy according to the GND and D scenarios, respectively. While the reduction in consumption of the Energy 2 sector accounts for 12.3% and 31.5% of the total primary energy decrease according to the GND and D scenarios, respectively. Thus, we see how a strong reduction in the use of fossil fuels makes it possible to achieve a significant part of the total energy descent for both scenarios.
Secondly, we evaluated the disaggregated results for the transport sector. This sector accounts for 17.7% and 16.3% of the total primary energy decrease according to the GND and D scenarios. A large part of this decrease is obtained thanks to a reduction in the consumption of the “Transport 9: International navigation” sector, which goes from 6681.9 ktoe in 2020 to 3808.6 and 1135.9 ktoe in 2030 according to the GND and D scenarios. This represents 5.7% and 6.6% of the total primary energy reduction, respectively, for GND and D. This transformation represents a considerable reduction in globalized, energy-intensive supply chains that are also highly dependent on petroleum products that will decrease their availability during this period. We also note a substantial reduction in energy consumption in the “Transport 10: Air transport” sector, from 1359.1 ktoe in 2020 to 174.0 ktoe for both scenarios. However, it should be noted that a significant part of aviation energy consumption is included in the “Tourism 4: International Aviation” sector.
On the other hand, the sector “Transport 7: Road Land Transport” reduces its energy consumption from 8301.1 ktoe in 2020 to 3287.4 and 2037.2 ktoe in 2030 for the GND and D scenarios, respectively. This represents 12.7% and 6.2% of the total primary energy decrease experienced in each scenario. Complementarily, the sector “Transport 5: Land transport by rail with electric motor” experiences an increase that brings its energy consumption from 432.4 ktoe in 2020 to 1420.2 ktoe in 2030 for both scenarios. Therefore, we see how the transformations described by the scenarios concerning the transport sector involve abandoning dependence on globalized supply chains and carrying out large-scale socio-technical transitions to move away from dependence on the massive use of road transport and increase the use of collective public transport based on electric railroads.
Finally, we evaluated the transformations that make possible a sharp decrease in energy consumption in the “Care Work 8: Unpaid care work and domestic life” sector. The variations in this sector represent 33.8% and 23.6% of the energy decrease obtained in the GND and D scenarios, respectively. As already mentioned, the energy consumption of this sector is made up of transport, heating/cooling and other uses. The energy consumption attributed to private transport goes from 16,197.9 ktoe in 2020 to 3873.9 and 1739.2 ktoe in 2030 according to the GND and D scenarios, respectively. This represents 24.5% and 17.9% of the total primary energy decrease obtained for each scenario. The energy consumption attributed to household heating and cooling goes from 9278.2 ktoe in 2020 to 4639.5 ktoe in 2030 for both scenarios. This represents 9.2 and 5.7% of the total primary energy decrease obtained for the GND and D scenarios, respectively. The sharp reductions in energy consumption attributed to private transport should be understood as socio-technical transitions that allow for the development of social environments and practices that require much less mobility. Reductions in household heating and cooling consumption should be understood as the development of energy sufficiency measures to meet the needs of maintaining adequate temperatures with methods that do not necessarily involve the use of energy-intensive devices.

6. Conclusions

The scenarios analyzed in this paper describe a profound structural transformation of the economic sphere, a set of socio-technical transitions away from the lock-in of high energy demand and the development of lifestyles that make it possible to meet the needs of a dignified life through processes that consume much less energy. The analysis of the quantitative results of the GND and D scenarios for Spain in 2030 requires some caution, given the method limitations. These calculations will be further explored and improved in the future with a more detailed data collection and using a system dynamics calculation model. Despite these limitations, the work presented here points to the scenarios and strategies for energy descent that should be considered in the near future, pointing out the quantitative and qualitative challenges of the process. We believe that these results allow us to come closer to analyzing the ecological transition decisions and pathways that are currently being discussed.
These results encompass a societal transformation [55] that would affect almost every sector of economic activity, the country’s international trade relationships, and the social practices woven into everyday life. Most of the current high energy demand of Global North countries has been shaped by non-energy-related decisions and policies. In this sense, the way in which the levels of energy descent described here would be achieved goes far beyond the specific field of energy policies. Therefore, this objective must be placed at the core of ecological transition plans that will transform society as a whole.
The scenarios, understandings and public policy packages that currently dominate the field of ecological transition in the European Union represent an approach that reinforces the strong inequalities existing at the international level, maintains the logic of economic growth and intensifies the extractive processes of mineral resources in the global South [56]. The decades ahead of us are absolutely vital to limit the worst consequences of the ecological crisis and begin to correct the metabolic rift on which today’s societies are founded [57]. To this end, the countries of the global North will have to assume their historical responsibilities for the current situation and undertake severe reductions in their energy consumption. Here we have tried to present an approach to this task.

Author Contributions

Conceptualization, M.L.; methodology, A.A., Á.L. and M.L.; software, Á.L.; validation, A.A. and A.V.; formal analysis, A.V. and A.A.; investigation, M.L.; resources, M.L., A.A. and Á.L.; data curation, M.L.; writing—original draft preparation, M.L.; writing—review and editing, A.V., A.A. and Á.L.; visualization, A.V. and A.A.; supervision, A.V. and A.A. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

Energy consumption data analyzed in this paper can be found in Eurostat’s Physical Energy Flow Accounts (https://ec.europa.eu/eurostat/web/environment/energy-accounts accessed on 26 October 2020). The original calculation method applied and quantitative definition of the considered scenarios can be found in the report “Labor Scenarios in the Ecosocial Transition 2020–2030”, carried out by “Ecologistas en Acción” (https://www.ecologistasenaccion.org/132893/informe-escenarios-de-trabajo-en-la-transicion-ecosocial-2020-2030/ accessed on 15 October 2020).

Acknowledgments

This paper has been carried out under the framework of project PID2020-116851RB-I00, financed by the Spanish Ministry of Science and Innovation. We would like to mention those who participated in the preparation of the report “Labor Scenarios in the Ecosocial Transition 2020–2030”. Without their work this research would not have been possible. Therefore, we acknowledge Luis González Reyes, Walter Actis Mazzola, Luis Miguel Bueno Morera, Carmen Madorrán Ayerra, Emilio Santiago Muiño and Cristina de Benito Morán. We thank the reviewers, whose comments and suggestions helped improve and clarify this paper.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. Description of sectors of economic activity considered in this research.
Table A1. Description of sectors of economic activity considered in this research.
SectorDescription
Food 1Industrial agriculture and farming
Food 2Organic agriculture and farming
Food 3Absorption of industrial crops
Food 4Absorption of agroecological crops
Food 5Fishing and aquaculture
Food 6Manufacture of food products; beverages and tobacco products
Food 7Water collection, treatment and distribution
Forestry 1Forestry and logging
Forestry 2Absorption in the forestry sector
Forestry 3Absorption of grasslands
Forestry 4Absorption wetlands
Forestry 5Absorption of other soils
Construction 1Manufacture of wood and of products of wood and cork, except furniture; manufacture of articles of straw and plaiting materials
Construction 2Absorption of wood collection
Construction 3Manufacture of other non-metallic mineral products except glass
Construction 4Mineral, stone, sand and clay extraction
Construction 5Construction
Construction 6Emission artificialization of soil
Construction 7Real estate activities
Construction 8Architectural and engineering activities; technical testing and analysis
Care work 1Manufacture of basic pharmaceutical products and pharmaceutical preparations
Care work 2Education
Care work 3Human health activities
Care work 4Residential care activities and social work activities without accommodation
Care work 5Repair of computers and personal and household goods
Care work 6Other personal service activities
Care work 7Activities of households as employers; undifferentiated goods- and services-producing activities of households for own use
Care work 8Unpaid care work and household activities
Energy 1Manufacture of coke and refined petroleum products
Energy 2Electricity, gas, steam and air conditioning supply
Energy 3Renewable electricity supply
Energy 4Fossil fuel extraction
Waste 1Water purification
Waste 2Waste collection and treatment
Waste 3Waste incineration
Waste 4Composting and anaerobic digestion
Transport 1Manufacture of motor vehicles, trailers and semi-trailers
Transport 2Manufacture of other transport equipment
Transport 3Wholesale and retail trade and repair of motor vehicles and motorcycles
Transport 4Land transportation by rail with internal combustion engine
Transport 5Land transportation by electric motor rail
Transport 6Pipeline transportation
Transport 7Land transportation by road
Transport 8Water transport
Transport 9International maritime bunkers
Transport 10Air transport
Transport 11Warehousing and support activities for transportation
Tourism 1Accommodation services
Tourism 2Food and beverage services
Tourism 3Travel agency, tour operator and other reservation service and related activities
Tourism 4International Aviation
Industry 1Manufacture of textiles, wearing apparel, leather and related products
Industry 2Manufacture of paper and paper products
Industry 3Printing and reproduction of recorded media
Industry 4Manufacture of chemicals and chemical products
Industry 5Manufacture of glass and glass products
Industry 6Manufacture of rubber and plastic products
Industry 7Manufacture of basic metals
Industry 8Manufacture of fabricated metal products, except machinery and equipment
Industry 9Manufacture of computer, electronic and optical products
Industry 10Manufacture of electrical equipment
Industry 11Manufacture of machinery and equipment n.e.c.
Industry 12Manufacture of furniture; other manufacturing
Industry 13Repair and installation of machinery and equipment
Leisure 1Publishing activities
Leisure 2Motion picture, video, television programme production; programming and broadcasting activities
Leisure 3Creative, arts and entertainment activities; libraries, archives, museums and other cultural activities; gambling and betting activities
Leisure 4Sports activities and amusement and recreation activities
ICT 1Telecommunications
ICT 2Computer programming, consultancy, and information service activities
Finance 1Financial service activities, except insurance and pension funding
Finance 2Insurance, reinsurance and pension funding, except compulsory social security
Finance 3Activities auxiliary to financial services and insurance activities
Research 1Scientific research and development
State 1Public administration and defence; compulsory social security
Trade 1Wholesale trade, except of motor vehicles and motorcycles
Trade 2Retail trade, except of motor vehicles and motorcycles
Trade 3Advertising and market research
Others 1Postal and courier activities
Others 2Legal and accounting activities; activities of head offices; management consultancy activities
Others 3Other professional, scientific and technical activities; veterinary activities
Others 4Rental and leasing activities
Others 5Employment activities
Others 6Security and investigation, service and landscape, office administrative and support activities
Others 7Activities of membership organisations
Others 8Activities of extraterritorial organisations and bodies
Table A2. Direct correspondence of sectors with NACE categories and adaptation applied for obtaining energy consumption initial data.
Table A2. Direct correspondence of sectors with NACE categories and adaptation applied for obtaining energy consumption initial data.
SectorNACE CategoryAdaptationReference
Food 1 Split from A01[57]
Food 2 Split from A01[57]
Food 3 Zero consumption
Food 4 Zero consumption
Food 5A03
Food 6C10-C12
Food 7E36
Forestry 1A02
Forestry 2 Zero consumption
Forestry 3 Zero consumption
Forestry 4 Zero consumption
Forestry 5 Zero consumption
Construction 1C16
Construction 2 Zero consumption
Construction 3 Split from C23[58]
Construction 4 Split from B[59]
Construction 5F
Construction 6 Zero consumption
Construction 7L
Construction 8M71
Care work 1C21
Care work 2P
Care work 3Q86
Care work 4Q87-88
Care work 5S95
Care work 6S96
Care work 7T
Care work 8 Total activities by householdsReference
Energy 1C19 [58]
Energy 2D [58]
Energy 3 Zero consumption
Energy 4 Split from B
Waste 1 Split from E37-39
Waste 2 Split from E37-39
Waste 3 Split from E37-39
Waste 4 Zero consumption
Transport 1C29
Transport 2C30
Transport 3G45
Transport 4 Split from H49
Transport 5 Split from H49
Transport 6 Split from H49
Transport 7 Split from H49[59]
Transport 8H50 [60]
Transport 9 Data from Eurostat
Transport 10 Split from H51
Transport 11H52
Tourism 1 Split from I
Tourism 2 Split from I
Tourism 3N79
Tourism 4 Split from H51
Industry 1C13-15
Industry 2C17
Industry 3C18
Industry 4C20
Industry 5 Split from C23
Industry 6C22
Industry 7C24
Industry 8C25
Industry 9C26 [60]
Industry 10C27 [7]
Industry 11C28 [7]
Industry 12C31-32 [7]
Industry 13C33
Leisure 1J58
Leisure 2J59-60
Leisure 3R90-92
Leisure 4R93 [60]
ICT 1J61 [60]
ICT 2J62-63 [60]
Finance 1K64 [60]
Finance 2K65
Finance 3K66 [60]
Research 1M72 [60]
State 1O
Trade 1G46 [7]
Trade 2G47 [7]
Trade 3M73
Others 1H53 [60]
Others 2M69-70
Others 3M74-75
Others 4N77
Others 5N78
Others 6N80-82 [59]
Others 7S94
Others 8U
Table A3. Initial data for 2020. Hours worked and primary energy consumption by sectors of economic activity.
Table A3. Initial data for 2020. Hours worked and primary energy consumption by sectors of economic activity.
SectorsHours Worked (h)Primary Energy Consumption (ktoe)
Food 11,477,873,085.42801.8
Food 217,126,136.724.6
Food 30.00.0
Food 40.00.0
Food 558,541,741.3620.0
Food 6970,805,575.92679.7
Food 788,875,884.034.7
Forestry 112,549,397.883.9
Forestry 20.00.0
Forestry 30.00.0
Forestry 40.00.0
Forestry 50.00.0
Construction 1113,611,113.8659.0
Construction 20.00.0
Construction 3131,221,979.92806.0
Construction 412,354,941.9554.1
Construction 51,987,586,377.81829.4
Construction 60.00.0
Construction 7206,941,024.5417.6
Construction 8428,479,309.8166.5
Care work 1148,396,120.4528.6
Care work 21,858,279,772.4702.3
Care work 31,852,823,558.7665.5
Care work 4825,416,683.1348.7
Care work 5112,804,896.123.2
Care work 6543,223,464.5158.4
Care work 7849,448,416.70.0
Care work 842,975,336,528.031,498.5
Energy 118,162,804.19087.7
Energy 240,990,000.330,774.2
Energy 337,719,673.20.0
Energy 43,040,971.3123.0
Waste 17,294,754.08.3
Waste 259,310,627.938.6
Waste 315,263,974.08.3
Waste 43,954,669.10.0
Transport 1404,515,731.4529.3
Transport 2111,746,433.7110.4
Transport 3598,714,158.9613.4
Transport 47,851,296.2109.0
Transport 544,490,678.5432.4
Transport 6814.8656.4
Transport 71,004,057,540.68301.1
Transport 833,960,337.01130.9
Transport 921,680.46681.8
Transport 1067,026,923.21359.1
Transport 11352,872,031.8419.9
Tourism 1758,166,738.8456.7
Tourism 22,276,570,466.1456.7
Tourism 3120,433,409.784.6
Tourism 417,065.82874.9
Industry 1293,054,546.6333.4
Industry 283,962,683.11659.0
Industry 3134,621,584.9145.1
Industry 4208,802,333.76170.8
Industry 532,629,924.1606.3
Industry 6163,961,318.857.3
Industry 7154,416,248.54889.6
Industry 8368,534,046.2456.8
Industry 969,558,882.024.5
Industry 10124,984,887.1179.2
Industry 11275,408,690.0165.2
Industry 12242,452,632.09.4
Industry 13187,668,940.532.5
Leisure 193,528,789.083.8
Leisure 2162,170,188.0190.2
Leisure 3292,718,006.1183.4
Leisure 4307,945,423.1153.4
ICT 1179,776,987.4304.1
ICT 2424,687,034.9134.0
Finance 1383,179,804.0217.2
Finance 2201,572,356.585.6
Finance 371,727,539.8134.8
Research 147,691,014.785.6
State 12,230,889,587.01152.1
Trade 11,483,721,397.81400.4
Trade 23,619,238,593.01310.0
Trade 3192,184,265.479.5
Others 1195,576,373.6114.3
Others 2899,420,693.2243.5
Others 3255,006,804.260.9
Others 484,288,811.2119.9
Others 5123,048,280.240.3
Others 61,228,495,771.8202.1
Others 7176,034,141.9147.3
Others 8799,590,699.10.0
Table A4. Initial data of percentual distribution of energy products consumption by sectors of economic activity.
Table A4. Initial data of percentual distribution of energy products consumption by sectors of economic activity.
SectorsCoal and Secondary ProductsPetroleum ProductsNatural GasRenewables and Waste ProductsElectricityHeat
Food 10.077.32.63.016.80.2
Food 20.077.32.63.016.80.2
Food 30.00.00.00.00.00.0
Food 40.00.00.00.00.00.0
Food 50.098.90.01.10.00.0
Food 60.817.640.48.033.20.0
Food 70.094.02.73.30.00.0
Forestry 10.066.02.75.525.50.3
Forestry 20.00.00.00.00.00.0
Forestry 30.00.00.00.00.00.0
Forestry 40.00.00.00.00.00.0
Forestry 50.00.00.00.00.00.0
Construction 10.08.023.248.420.40.0
Construction 20.00.00.00.00.00.0
Construction 30.341.835.96.715.40.0
Construction 40.037.122.50.639.80.0
Construction 50.069.118.11.611.20.0
Construction 60.00.00.00.00.00.0
Construction 70.05.327.90.965.40.6
Construction 80.026.019.41.552.50.5
Care work 12.259.721.50.116.60.0
Care work 20.020.418.51.359.30.5
Care work 30.013.019.81.465.20.6
Care work 40.036.514.82.346.00.4
Care work 50.08.521.70.968.30.6
Care work 60.012.419.80.966.30.6
Care work 70.00.00.00.0100.00.0
Care work 80.358.211.99.719.10.8
Energy 1------
Energy 2------
Energy 30.00.00.00.00.00.0
Energy 40.037.122.50.639.80.0
Waste 10.090.76.72.60.00.0
Waste 20.090.76.72.60.00.0
Waste 30.090.76.72.60.00.0
Waste 40.00.00.00.00.00.0
Transport 10.011.728.00.360.00.0
Transport 20.027.615.80.656.00.0
Transport 30.052.512.62.232.50.0
Transport 40.0100.00.00.00.00.0
Transport 50.00.00.00.0100.00.0
Transport 60.00.069.30.030.80.0
Transport 70.096.30.53.10.10.0
Transport 80.095.43.00.11.60.0
Transport 90.0100.00.00.00.00.0
Transport 100.097.81.30.30.50.0
Transport 110.027.721.50.949.50.4
Tourism 10.025.417.56.550.10.4
Tourism 20.025.417.56.550.10.4
Tourism 30.052.313.72.331.40.3
Tourism 40.0100.00.00.00.00.0
Industry 10.018.338.40.942.30.0
Industry 20.05.633.834.725.80.0
Industry 30.016.531.70.151.70.0
Industry 4------
Industry 50.341.835.96.715.40.0
Industry 60.095.90.33.80.00.0
Industry 7------
Industry 80.019.730.20.249.80.1
Industry 90.021.07.20.571.20.1
Industry 100.022.322.90.354.40.1
Industry 110.031.922.90.644.60.1
Industry 120.095.90.33.80.00.0
Industry 130.051.942.53.30.02.3
Leisure 10.04.520.34.670.10.6
Leisure 20.020.017.01.560.90.5
Leisure 30.08.420.50.969.60.6
Leisure 40.06.520.81.270.90.6
ICT 10.013.018.30.767.40.6
ICT 20.09.023.50.666.30.6
Finance 10.014.319.50.964.70.6
Finance 20.020.119.61.258.60.5
Finance 30.063.47.82.725.80.2
Research 10.034.716.01.747.20.4
State 10.031.918.11.548.00.4
Trade 10.040.219.21.838.40.3
Trade 20.08.023.60.867.10.6
Trade 30.018.020.01.560.00.5
Others 10.029.816.11.252.40.5
Others 20.013.123.01.062.40.5
Others 30.013.822.51.362.00.5
Others 40.035.021.81.441.50.4
Others 50.013.021.80.863.90.6
Others 60.019.723.81.854.10.5
Others 70.027.617.31.553.10.5
Others 80.00.00.00.00.00.0
Table A5. Considered dependent sectors and factor G of direct coupling used in the calculation model. Values obtained from [7].
Table A5. Considered dependent sectors and factor G of direct coupling used in the calculation model. Values obtained from [7].
SectorsDependent ofFactor G
Food 5Transport 81.290
Food 7Energy 2 & Energy 30.987
Care work 5Energy 2 & Energy 30.987
Industry 8Construction 50.878
Industry 9Energy 2 & Energy 30.987
Industry 10Energy 2 & Energy 30.987
Leisure 2ICT 11.010
ICT 1Energy 2 & Energy 30.987
Finance 1ICT 11.155
Research 1Care work 20.727
Table A6. Subsequent adjustment factors applied to each sector and their justification.
Table A6. Subsequent adjustment factors applied to each sector and their justification.
SectorsSubsequent Adjustment FactorJustification
BAUGNDD
Food 1111
Food 2110.75Reflect greater use of animal traction
Food 3111
Food 4111
Food 510.710.51Reflecting the development of small-scale inshore and sailing fisheries
Food 610.810.84Reflect machine electrification, an increase in the use of human physical power and efficiency gains
Food 7111
Forestry 1111
Forestry 2111
Forestry 3111
Forestry 4111
Forestry 5111
Construction 110.80.8Reflect machine electrification, an increase in the use of human physical power and efficiency gains
Construction 2111
Construction 3111
Construction 4111
Construction 5111
Construction 6111
Construction 7111
Construction 810.50.5Reduced air-conditioning of spaces
Care work 1111
Care work 210.50.5Reduced air-conditioning of spaces
Care work 310.80.8Reduced air-conditioning of spaces
Care work 410.50.5Reduced air-conditioning of spaces
Care work 5111
Care work 6111
Care work 7111
Care work 8---
Energy 1111
Energy 2111
Energy 3111
Energy 4111
Waste 110.720.72
Waste 210.810.81Use of less polluting means of transport in waste collection
Waste 3111
Waste 4111
Transport 1111
Transport 2111
Transport 3111
Transport 4111
Transport 5111
Transport 6111
Transport 7111
Transport 8111
Transport 910.570.17Reduction of international trade dependency
Transport 10111
Transport 11111
Tourism 110.50.5Reduced air-conditioning of spaces
Tourism 210.50.5Reduced air-conditioning of spaces
Tourism 310.50.5Reduced air-conditioning of spaces
Tourism 410.380.04Downscaling of the aviation sector
Industry 110.80.8Reflect machine electrification, an increase in the use of human physical power and efficiency gains
Industry 2111
Industry 3111
Industry 410.950.95Development of artisanal production with simple, low-energy-intensive machinery and electrification of the sector
Industry 5111
Industry 6111
Industry 7111
Industry 8111
Industry 9111
Industry 10111
Industry 11111
Industry 1210.830.83Reflect machine electrification, an increase in the use of human physical power and efficiency gains
Industry 13111
Leisure 110.50.5Reduced air-conditioning of spaces
Leisure 210.50.5Reduced air-conditioning of spaces
Leisure 310.50.5Reduced air-conditioning of spaces
Leisure 4111
ICT 1111
ICT 210.50.5Reduced air-conditioning of spaces
Finance 110.50.5Reduced air-conditioning of spaces
Finance 210.50.5Reduced air-conditioning of spaces
Finance 310.50.5Reduced air-conditioning of spaces
Research 110.50.5Reduced air-conditioning of spaces
State 110.50.5Reduced air-conditioning of spaces
Trade 110.50.5Reduced air-conditioning of spaces
Trade 210.50.5Reduced air-conditioning of spaces
Trade 310.50.5Reduced air-conditioning of spaces
Others 110.50.5Reduced air-conditioning of spaces
Others 210.50.5Reduced air-conditioning of spaces
Others 310.50.5Reduced air-conditioning of spaces
Others 410.50.5Reduced air-conditioning of spaces
Others 510.50.5Reduced air-conditioning of spaces
Others 6111
Others 710.50.5Reduced air-conditioning of spaces
Others 810.50.5Reduced air-conditioning of spaces
Table A7. Independent evolution of Care Work 8 sector. The energy consumption of transport activities has an annual percentual variation of 1.5, −13.3 and −20.0 for BAU, GND and D scenarios. And adjustment factor of 0.5 is applied to the heating/cooling activities of GND and D scenarios.
Table A7. Independent evolution of Care Work 8 sector. The energy consumption of transport activities has an annual percentual variation of 1.5, −13.3 and −20.0 for BAU, GND and D scenarios. And adjustment factor of 0.5 is applied to the heating/cooling activities of GND and D scenarios.
20202030 BAU2030 GND2030 D
Transport activities by households (ktoe)16,197.918,798.43873.91739.2
Heating/cooling activities by households (ktoe)9278.99278.94639.54639.5
Transport activities by households (ktoe)6021.66021.66021.66021.6
Total primary energy consumption (ktoe)31,498.534,098.914,535.012,400.3
Table A8. Primary energy consumption results for 2030 three scenarios by sectors of economic activity. Absolute values in ktoe and percentual variation between 2020 and 2030.
Table A8. Primary energy consumption results for 2030 three scenarios by sectors of economic activity. Absolute values in ktoe and percentual variation between 2020 and 2030.
BAU ScenarioGND ScenarioD Scenario
SectorsKtoe 2030% 2020–2030Ktoe 2030% 2020–2030Ktoe 2030% 2020–2030
Food 12801.80.01593.7−43.1469.9−83.2
Food 224.60.01010.64007.02722.210962.5
Food 30.00.00.00.00.00.0
Food 40.00.00.00.00.00.0
Food 5550.4−11.2441.6−28.8280.6−54.7
Food 62943.19.82447.9−8.72584.5−3.6
Food 770.5103.482.2137.225.8−25.5
Forestry 1138.665.2238.3183.9275.7228.5
Forestry 20.00.00.00.00.00.0
Forestry 30.00.00.00.00.00.0
Forestry 40.00.00.00.00.00.0
Forestry 50.00.00.00.00.00.0
Construction 1693.95.3584.4−11.3611.6−7.2
Construction 20.00.00.00.00.00.0
Construction 33069.59.41113.1−60.3897.2−68.0
Construction 4723.130.5267.8−51.7257.3−53.6
Construction 52340.527.9646.2−64.7351.1−80.8
Construction 60.00.00.00.00.00.0
Construction 7670.960.7413.8−0.9402.2−3.7
Construction 8232.439.683.2−50.060.8−63.5
Care work 1562.36.4562.36.4519.9−1.6
Care work 2702.30.0464.9−33.8351.2−50.0
Care work 3665.50.0798.219.9532.4−20.0
Care work 4348.70.0261.4−25.0174.3−50.0
Care work 546.9102.349.5113.518.4−20.9
Care work 6196.624.2158.40.0158.40.0
Care work 70.00.00.00.00.0−11.5
Care work 834,098.98.314,535.0−53.912,400.3−60.6
Energy 110,224.512.51559.6−82.81559.6−82.8
Energy 238,635.925.524,626.7−20.05281.5−82.8
Energy 30.00.00.00.00.00.0
Energy 4123.00.021.1−82.821.1−82.8
Waste 19.716.99.414.28.1−1.9
Waste 245.116.931.4−18.631.4−18.6
Waste 39.716.97.3−11.26.9−16.4
Waste 40.00.00.00.00.00.0
Transport 1567.07.1247.8−53.2101.7−80.8
Transport 2143.530.071.1−35.644.1−60.0
Transport 3680.110.9584.7−4.7515.2−16.0
Transport 4109.00.018.7−82.818.7−82.8
Transport 5714.165.21420.2228.51420.2228.5
Transport 6295.7−54.9295.7−54.9295.7−54.9
Transport 78801.76.03287.4−60.42037.2−75.5
Transport 81031.3−8.81133.70.21031.0−8.8
Transport 96681.80.03808.6−43.01135.9−83.0
Transport 101557.014.6174.0−87.2174.0−87.2
Transport 11521.024.1425.51.3385.9−8.1
Tourism 1574.425.8185.7−59.3163.6−64.2
Tourism 2574.425.8228.4−50.0197.9−56.7
Tourism 3140.666.238.4−54.731.5−62.8
Tourism 42874.90.01092.5−62.0115.0−96.0
Industry 1333.40.0323.2−3.1364.09.2
Industry 21659.00.01659.00.01446.0−12.8
Industry 3168.215.9145.10.0104.2−28.2
Industry 46540.56.04172.8−32.43586.2−41.9
Industry 5663.39.4358.0−41.0606.30.0
Industry 663.09.941.2−28.232.3−43.8
Industry 75456.911.64978.61.83640.5−25.5
Industry 8567.424.2184.2−59.7108.9−76.2
Industry 947.794.348.095.813.0−47.0
Industry 10200.612.0200.612.088.4−50.7
Industry 11177.77.5166.60.8154.2−6.6
Industry 1210.27.88.0−15.27.9−16.7
Industry 1342.229.752.962.663.795.8
Leisure 1117.540.2108.829.9103.022.9
Leisure 2190.20.095.1−50.095.1−50.0
Leisure 3183.40.097.2−47.094.1−48.7
Leisure 4153.40.0190.424.2153.40.0
ICT 1618.4103.4807.5165.5199.2−34.5
ICT 2165.223.3100.4−25.064.1−52.1
Finance 1300.138.1150.0−30.979.1−63.6
Finance 285.60.042.8−50.034.7−59.5
Finance 3134.80.062.6−53.653.8−60.1
Research 187.62.352.5−38.643.8−48.9
State 11152.10.0653.5−43.3564.3−51.0
Trade 11792.128.0710.9−49.2635.7−54.6
Trade 21508.715.2700.9−46.5620.0−52.7
Trade 388.711.739.7−50.023.6−70.4
Others 1101.3−11.457.1−50.057.1−50.0
Others 2243.50.0121.8−50.0110.8−54.5
Others 360.90.033.1−45.725.1−58.9
Others 4119.90.0122.92.5104.0−13.2
Others 540.30.015.2−62.315.0−62.8
Others 6202.10.0220.49.1186.5−7.7
Others 7147.30.0117.8−20.0108.7−26.2
Others 80.00.00.00.00.00.0
Table A9. Changes in the distribution of energy products consumption in for 2030 three scenarios.
Table A9. Changes in the distribution of energy products consumption in for 2030 three scenarios.
SectorsCoal and Secondary ProductsPetroleum ProductsNatural GasRenewables and Waste ProductsElectricityHeat
2030 distribution of energy products in BAU scenario (%)
Care Work 10.2361.1310.999.2317.660.23
2030 distribution of energy products in GND scenario (%)
Food 50.098.40.01.50.00.0
Food 60.614.132.38.044.90.6
Construction 10.06.418.648.426.60.0
Care Work 80.334.912.99.641.40.3
Waste 10.087.19.33.60.00.0
Waste 20.088.58.33.20.00.0
Industry 10.014.630.70.953.70.0
Industry 120.076.70.23.819.30.0
2030 distribution of energy products in D scenario (%)
Construction 10.069.83.54.022.40.0
Construction 20.097.80.02.10.00.0
Construction 30.613.230.38.047.90.6
Construction 40.06.418.648.426.60.0
Construction 50.324.315.110.748.50.3
Construction 60.087.19.33.60.00.0
Construction 70.088.58.33.20.00.0
Construction 80.014.630.70.953.70.0
Care work 10.076.70.23.819.30.0

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Figure 1. Initial distribution of energy products consumed by each grouped sector.
Figure 1. Initial distribution of energy products consumed by each grouped sector.
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Figure 2. Graphic description of the applied calculation method.
Figure 2. Graphic description of the applied calculation method.
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Figure 3. GND scenario results. Variation 20202030 over energy consumption and worked hours by grouped sectors.
Figure 3. GND scenario results. Variation 20202030 over energy consumption and worked hours by grouped sectors.
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Figure 4. D scenario results. Variation 2020–2030 over energy consumption and hours worked by grouped sectors.
Figure 4. D scenario results. Variation 2020–2030 over energy consumption and hours worked by grouped sectors.
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Figure 5. Variation on the consumption of energy products 2020–2030 according to scenarios.
Figure 5. Variation on the consumption of energy products 2020–2030 according to scenarios.
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Figure 6. Comparison between the adjusted consumption of energy products according to the different scenarios.
Figure 6. Comparison between the adjusted consumption of energy products according to the different scenarios.
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Figure 7. Sensitivity analysis: Adjustment factors variation over primary energy consumption variation.
Figure 7. Sensitivity analysis: Adjustment factors variation over primary energy consumption variation.
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Figure 8. Sensitivity analysis: Increase in annual variation of transport energy consumption on unpaid care work sector over primary energy consumption variation.
Figure 8. Sensitivity analysis: Increase in annual variation of transport energy consumption on unpaid care work sector over primary energy consumption variation.
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Table 1. Initial data of primary energy consumption by grouped sectors.
Table 1. Initial data of primary energy consumption by grouped sectors.
Grouped SectorsPrimary Energy Consumption
ktoe% of Total
Food6160.84.67
Forestry83.90.06
Construction6432.44.87
Energy39,984.930.28
Waste55.10.04
Transport20,343.615.41
Tourism3872.92.93
Industry14,729.311.16
Leisure610.80.46
ICT438.10.33
Finance437.70.33
Research85.60.06
Administration of the State1152.10.87
Trade2789.82.11
Other services928.30.70
Paid care work2426.71.84
Unpaid care work31,498.523.86
TOTAL132,030.7
Table 2. Primary energy consumption 2030 results for GND scenario by grouped sectors. Absolute results of primary energy consumption, percentage variations 2020–2030, and weight represented by the variation of each set in the total variation of primary energy consumption.
Table 2. Primary energy consumption 2030 results for GND scenario by grouped sectors. Absolute results of primary energy consumption, percentage variations 2020–2030, and weight represented by the variation of each set in the total variation of primary energy consumption.
Grouped SectorsPrimary Energy Consumption 2030-GND
ktoe2020–2030 Variation (%)Weight over Total Variation (%)
Food5576.0−9.5−1.2
Forestry238.3183.90.3
Construction3108.6−51.7−6.6
Energy26,207.5−34.5−27.5
Waste48.2−12.50.0
Transport11,467.3−43.6−17.7
Tourism1544.8−60.1−4.6
Industry12,338.3−16.2−4.8
Leisure491.6−19.5−0.2
ICT907.9107.20.9
Finance255.4−41.7−0.4
Research52.5−38.6−0.1
Administration of the State653.5−43.3−1.0
Trade1451.5−48.0−2.7
Other services688.4−25.9−0.5
Paid care work2294.7−5.4−0.3
Unpaid care work14,535.0−53.9−33.8
TOTAL81,859.5−38.0
Table 3. Primary energy consumption 2030 results for D scenario by grouped sectors. Absolute results of primary energy consumption, percentage variations 2020–2030 and weight represented by the variation of each set in the total variation of primary energy consumption.
Table 3. Primary energy consumption 2030 results for D scenario by grouped sectors. Absolute results of primary energy consumption, percentage variations 2020–2030 and weight represented by the variation of each set in the total variation of primary energy consumption.
Grouped SectorsPrimary Energy Consumption 2030-GND
ktoe2020–2030 Variation (%)Weight over Total Variation (%)
Food6083.1−1.3−0.1
Forestry275.7228.50.2
Construction2580.1−59.9−4.8
Energy6862.3−82.8−41.0
Waste46.5−15.70.0
Transport7159.5−64.8−16.3
Tourism507.9−86.9−4.2
Industry10,215.5−30.6−5.6
Leisure445.6−27.0−0.2
ICT263.4−39.9−0.2
Finance167.7−61.7−0.3
Research43.8−48.9−0.1
Administration of the State564.3−51.0−0.7
Trade1279.2−54.1−1.9
Other services607.2−34.6−0.4
Paid care work1754.6−27.7−0.8
Unpaid care work12,400.3−60.6−23.6
TOTAL51,256.6−61.2
Table 4. 2030 results on primary and final energy consumption per capita according to the different scenarios.
Table 4. 2030 results on primary and final energy consumption per capita according to the different scenarios.
BAUGNDD
Primary energy consumption (GJ/cap)130.371.844.9
Final energy consumption (GJ/cap)79.644.636.8
Table 5. Main 2020–2030 variation results of energy consumption, and hours worked according to the different scenarios.
Table 5. Main 2020–2030 variation results of energy consumption, and hours worked according to the different scenarios.
2020–2030 Scenarios Variation Results (%)
BAUGNDD
Primary energy consumption13−38−61
Final energy consumption7−40−51
Hours worked621
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Lallana, M.; Almazán, A.; Valero, A.; Lareo, Á. Assessing Energy Descent Scenarios for the Ecological Transition in Spain 2020–2030. Sustainability 2021, 13, 11867. https://0-doi-org.brum.beds.ac.uk/10.3390/su132111867

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Lallana M, Almazán A, Valero A, Lareo Á. Assessing Energy Descent Scenarios for the Ecological Transition in Spain 2020–2030. Sustainability. 2021; 13(21):11867. https://0-doi-org.brum.beds.ac.uk/10.3390/su132111867

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Lallana, Martín, Adrián Almazán, Alicia Valero, and Ángel Lareo. 2021. "Assessing Energy Descent Scenarios for the Ecological Transition in Spain 2020–2030" Sustainability 13, no. 21: 11867. https://0-doi-org.brum.beds.ac.uk/10.3390/su132111867

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