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Article

Evaluating the Sustainability of a Small-Scale Low-Input Organic Vegetable Supply System in the United Kingdom

1
Center for BioProcess Engineering, Department of Chemical and Biochemical Engineering, Technical University of Denmark DTU, DK-2800 Kgs. Lyngby, Denmark
2
Life Cycle Assessment group, Institute for Sustainability Sciences, Agroscope Reckenholzstrasse 191, CH-8046 Zurich, Switzerland
3
The Organic Research Centre, Elm Farm, Hamstead Marshall, Newbury, Berkshire RG20 0HR, UK
*
Author to whom correspondence should be addressed.
Sustainability 2014, 6(4), 1913-1945; https://0-doi-org.brum.beds.ac.uk/10.3390/su6041913
Submission received: 29 December 2013 / Revised: 3 March 2014 / Accepted: 26 March 2014 / Published: 9 April 2014
(This article belongs to the Special Issue Organic Farming and a Systems Approach to Sustainable Agroecosystems)

Abstract

:
Resource use and environmental impacts of a small-scale low-input organic vegetable supply system in the United Kingdom were assessed by emergy accounting and Life Cycle Assessment (LCA). The system consisted of a farm with high crop diversity and a related box-scheme distribution system. We compared empirical data from this case system with two modeled organic food supply systems representing high- and low-yielding practices for organic vegetable production. Further, these systems were embedded in a supermarket distribution system and they provided the same amount of comparable vegetables at the consumers’ door as the case system. The on-farm resource use measured in solar equivalent Joules (seJ) was similar for the case system and the high-yielding model system and higher for the low-yielding model system. The distribution phase of the case system was at least three times as resource efficient as the models and had substantially less environmental impacts when assessed using LCA. The three systems ranked differently for emissions with the high-yielding model system being the worst for terrestrial ecotoxicity and the case system the worst for global warming potential. As a consequence of being embedded in an industrial economy, about 90% of resources (seJ) were used for supporting labor and service.

1. Introduction

Modern food supply systems (production and distribution) are heavily dependent on fossil energy [1] and other non-renewable resources [2]. The global environmental crisis [3,4] and foreseeable constraints on the supply of energy [5] and fertilizer [6,7] clearly show that there is a need to develop food supply systems that conserve biodiversity and natural systems and rely less on non-renewable resources. A similar conclusion is drawn in a report initiated by the Food and Agriculture Organization of the United Nations (FAO) and The World Bank. It emphasizes the need to maintain productivity, while conserving natural resources by improving nutrient, energy, water and land use efficiency, increasing farm diversification, and supporting agro-ecological systems that take advantage of and conserve biodiversity at both field and landscape scale [8].
It has been shown that the food industry in the UK is responsible for 14% of national energy consumption and for 25% of heavy goods vehicle kilometers [9]. The structural development of the food supply system over the past 60 years means that most goods are now distributed through regional distribution centers before being transported to increasingly centralized and concentrated out-of-town supermarkets. This also means that more shopping trips are done by private cars which make up approximately half of the total food vehicle kilometers [10]. In 2002, 9% of UK’s total consumption of petroleum products was used for transportation of food [10]. This clearly shows that if the environmental impacts of the food supply system are to be significantly reduced, then it is necessary to view the production and distribution of food together. Direct marketing and local selling of products offers a way for farms to by-pass the energy intensive mass distribution system. Such distribution systems are particularly appropriate for vegetables, which have a relative short lifetime and are most attractive to consumers when they are fresh. On the other hand, depending on the distance travelled and the mode of transport, the local system may be more energy consuming than the mass distribution system [11,12].
The development in food supply systems has also resulted in a push towards producers being more specialized and production being in larger, uniform units [10]. These changes tend to imply reductions in crop diversity at the farm level, which in the long run may cause problems for society. For example, the biodiversity loss associated with these systems has been shown to result in decreased productivity and stability of ecosystems due to loss of ecosystem services [13]. Specifically, biodiversity at the farm level has been shown often to have many ecological benefits (ecosystem services) like supporting pollination, pest and disease control. Therefore, it has been suggested that it is time for a paradigm shift in agriculture by embracing complexity through diversity at all levels, including soil, crops, and consumers [14]. However, high levels of crop diversity may be rather difficult to combine with the supermarket mass distribution system, which at present sell 85% of food in the UK [10]. On the contrary, local based direct marketing has been identified as a driving force for increasing on-farm biodiversity [15].
The sustainability aspects of resource use and environmental impacts of food supply systems can be assessed by Life Cycle Assessment (LCA) [16,17] or emergy assessment [18,19]. Emergy accounting and LCA are largely based on the same type of inventory (i.e., accounting for energy and material flows) but apply different theories of values and system boundaries [20]. In emergy accounting, all flows of energy and materials are added based on the total available energy (exergy) directly and indirectly required to produce the flow. Emergy accounting is particularly suited for assessing agricultural systems since the method accounts for use of freely available natural resources (sun, rain, wind and geothermal heat) as well as purchased resources from the society [18]. LCA draws system boundaries around human dominated processes (resource extraction, refining, transportation, etc.) and includes indirect resources used throughout the supply chain, such as the transport of inputs supplied into the production system. Unlike emergy accounting, LCA disregards energy used by nature and normally also labor. LCA on the other hand considers emissions to the environment in addition to resource use. Due to the differences in system boundaries and scope of analysis, emergy and LCA are complementary methods [21].
We studied the sustainability of a small-scale low-input organic vegetable food supply system by evaluating empirical data on resource use and emissions resulting from production and distribution of vegetables in a box-scheme. This specific case was chosen because the farm is managed with a strong preference to increase crop diversity and to close the production system with regard to external inputs. Combined with the box-scheme distribution system it thus represents a fundamentally different way of producing and distributing food compared to the dominating supermarket based systems. Our hypothesis was that the food supply system of the case study uses fewer resources (especially fewer non-renewable resources) when compared to standard practices. To test this we developed two organic vegetable food supply model systems, low and high yielding. Each system provided the same amount of food as the case study system, and the food produced was distributed via supermarkets rather than through a box-scheme. The case supply system is benchmarked against these model systems based on a combined emergy and LCA evaluation. Therefore, within this study we aimed to evaluate whether it is possible to perform better than the dominating systems with respect to resource use including labor and environmental impacts, and at the same time increase resilience.

2. Farm and Food Distribution System—Empirical Data

The case study farm is a small stockless organic unit of 6.36 ha of which 5.58 ha are cropped and a total of 0.78 ha is used for field margins, parking area and buildings. The box-scheme distribution system supplies vegetables to 200–300 customers on a weekly basis.
Data for 2009 and 2010 were collected by two one-day visits at the farm and follow up contacts in the period 2011 to 2013. Data included all purchased goods for crop production and distribution, as well as a complete list of machineries and buildings. The vegetable production was estimated based on sales records of vegetables delivered to consumers for each week during 2009 and 2010 and subsequently averaged to give an average annual production (Table A1). For the years studied, about 20% of the produce was sold to wholesalers. In our analyses, this share was included in the box-scheme sales.

2.1. Production Systems

Forty-eight different crops of vegetables are produced (Table A1) and several different varieties are grown for each crop. Crops are grown in three different systems: open field, intensive managed garden and polytunnels, and greenhouses. The open fields are managed with a 7-year crop rotation and make up 5.09 ha of cropping area. The fields are characterized by a low-fertility soil with a shallow top soil and high stone content. The garden is managed with a 9-year crop rotation and the cropped area is 0.38 ha. In the garden only, walk-behind tractors and hand tools are used for the cultivation. The greenhouse and poly-tunnels make up 0.10 ha.
The farm is managed according to the Stockfree Organic Standard [22], which means that no animals are included in the production system and the farm uses no animal manure. The farm is in general designed and managed with a strong focus on reducing external inputs (e.g., fuel and fertilizers). An example of this is that the fertility is maintained by the use of green manures. The only fertility building input comes from woodchips composted on the farm and small amounts of lime and vermiculite, which are used to produce potting compost for the on-farm production of seedlings. All seed is purchased except for 30% of the seed potatoes, which are farm saved.

2.2. Distribution System

The distribution is done by weekly round-trips of 70 km, where multiple bags are delivered to neighborhood representatives. Other customers may then come to the representatives’ collection points to collect the bags. Customers are encouraged to collect the bag on foot or on bike, and the bags are designed to make this easier (i.e., a wooden box is more difficult to carry). Potential customers are rejected if they live in a location from where they would need to drive by car to pick up their bags, even though they offer to pick up the bags themselves and pay the same price. The neighborhood representatives have some administrative tasks and are paid by getting boxes for free.

3. Assessment Methods—Emergy and LCA

The system boundary in this study is the farm and its distribution system. Cooking, consumption, human excretion and wastewater treatment are excluded from the scope of the analysis. The functional unit, which defines the service that is provided, is baskets of vegetables produced during one year and delivered at consumer’s door as average of the years 2009 and 2010. Resource consumption and environmental impacts associated with consumers’ transport is included except for transport by foot or bike, which was assumed negligible.

3.1. Emergy Accounting

Emergy accounting quantifies direct input of energy and materials to the system and multiplies these with suitable conversion factors for the solar equivalent joules required per unit input. These are called unit emergy values (UEV) and given in seJ/unit, e.g., seJ/g or seJ/J. Emergy used by a system is divided into different categories [23] and in the following we describe how they are applied in this study.
Local renewable resources (R). The term “R” includes flows of sun, rain, wind and geothermal heat and is the freely available energy flows that an agricultural system captures and transforms into societal useful products. We include the effect of rainfall as evapotranspiration. To avoid double counting only the largest flow of sun, rain and wind is included.
Local non-renewable recourses (N). This includes all stocks of energy and materials within the system boundaries that are subject to depletion. In agricultural systems, this is typically soil carbon and soil nutrients. In this study we assume that these stocks are maintained.
Feedback from the economy (F) consists of purchased materials (M) and purchased labor and services (L&S) [23]. M includes all materials and assets such as machinery and buildings. Assets are worn down over a number of years and the emergy use takes into account the actual age and expected lifetime of each asset. The materials come with a service or indirect labor component. This represents the emergy used to support the labor needed in the bigger economy to make the products and services available for the studied system. It is reflected in the price of purchased goods.
Labor and service (L&S). In this study, the L&S component is accounted for based on monetary expenses calculated from the sales price of the vegetables. This approach rests on the assumption that all money going into the system is used to pay labor and services (including the services provided in return for government taxes or insurances). This revenue is multiplied with the emergy money ratio, designated em£-ratio (seJ/£), which is the total emergy used by the UK society divided by the gross domestic product (GDP). Thus the em£-ratio is the average emergy used per £ of economic activity. To avoid counting the service component twice, UEVs assigned to purchased materials (M) are without the L&S component.
Total emergy use (U). The sum of all inputs is designated “U”. We use three emergy indicators to reveal the characteristics of the food supply system: (1) Emergy Yield Ratio (U/F), a measure of how much the system takes advantage of local resources (in this study only R) for each investment from the society in emergy terms (F), (2) Renewability (R/U), a measure of the share of the total emergy use that comes from local renewable resources, and (3) Unit Emergy Value, UEV (U/output from system) [23].

3.2. Life Cycle Assessment (LCA)

The LCA approach quantifies the environmental impacts associated with a product, service or activity throughout its life cycle [24]. The method looks at the impact of the whole system on the global environment by tracing all material flows from their point of extraction from nature through the technosphere and up to the moment of their release into the environment as emissions. LCA takes into account all direct and indirect manmade inputs to the system and all outputs from the system and quantifies the associated impacts on the environment.
Impact categories that are relevant and representative for the assessment of agricultural systems [16] were considered: non-renewable resource use as derived from fossil and nuclear resources [25], Global Warming Potential over 100 years according to the IPCC method [26] and a selection of other impacts from CML01 methods [27] and EDIP2003 [28], (i.e., eutrophication potential to aquatic and terrestrial ecosystems, acidification, terrestrial and aquatic ecotoxicity potentials, human toxicity potential). In addition the use of fossil phosphorus was assessed.
The inventories for the LCA were constructed with the use of Swiss Agricultural Life Cycle Assessment (SALCA) models [28], Simapro V 7.3.3 [29] and the Ecoinvent database v2.2 [30]. The following inputs and emissions were based on other studies: life cycle inventory for vegetable seedlings [31]; biomulch [32]; nitrous oxide and methane emissions from open field woodchip composting on the case study farm [33]. The Life Cycle Inventory for irrigation pipeline from ecoinvent was adjusted to reflect the irrigation system of the case farm and the Swiss inventory for irrigation was adjusted to reflect the British electricity mix.
The analysis was carried out from cradle to the consumer’s door with respect to the ISO14040 [24] and ISO14044 [34] standards for environmental Life Cycle Assessment. Upstream environmental impacts related to the production of woodchips or manure were not considered. This is following a cut-off approach that makes a clear division between the system that produces a by-product or waste and the system using it. The emissions from livestock farming (associated with the production of manure used in the models of standard practice) are fully assigned to the livestock farmer and the gardener is responsible for the production of woodchips. However, environmental impacts from the transport of both type of inputs to the farm, their storage and composting at the farm and all the emissions to soil, air and water that arise from their application were considered in this study. The results of the impact category non-renewable resource use were investigated in more detail by looking at the relative contribution of particular processes to the overall resource use, because of some similarities with the emergy assessment.

4. Models for Standard Practice of Vegetable Supply System

The overall aim of developing these models is to assess the resource use and environmental impacts of providing the same service as the case system but in the dominating supermarket based system. The two model systems, M-Low and M-High, express the range of standard practice for organic vegetable production as defined from the Organic Farm Management Handbook [35]. Since the information in this handbook is independent of scale, i.e., all numbers are given per ha or per kg, then the model systems are also independent of scale. Both model systems provide vegetables in the same quantity at the consumer’s door (in food energy) and of comparable quality as the case study. The mix of vegetables provided is identical to the case system for the eight crops (two types of potatoes, carrots, parsnips, beetroots, onions, leeks and squash) constituting 75% of the food energy provided (Table 1). For the remaining 25% representing 40 crops at the case farm, four crops (white cabbage, cauliflower, zucchini and lettuce) have been chosen based on the assumption that they provide a similar utility for the consumer.
Table 1. Characteristics of vegetables produced annually in the case system and their counterparts in the model systems.
Table 1. Characteristics of vegetables produced annually in the case system and their counterparts in the model systems.
Case farm cropsModel farm cropsFood energy at consumers (MJ)Share of total food energy
Storable crops
Potatoes, main cropPotatoes, main crop25,59734.4%
Potatoes, earlyPotatoes, early853211.5%
Carrots (stored and fresh)Carrots46356.2%
Beetroots (stored and fresh)Beetroots42715.7%
Onions (stored, fresh and spring)Onions36885.0%
ParsnipsParsnips35554.8%
LeeksLeeks29023.9%
SquashSquash26973.6%
Cabbages (red-, black-, green-, sprouts, kale, pak choi)Cabbages, white53907.3%
Cauliflower, broccoli and minor crops (celeriac, fennel, turnips, kohlrabi, rutabaga, daikon, garlic)Cauliflower33444.5%
Storable crops, total64,61086.9%
Fresh crops
18 different crops (see Table A1 for list of crops)50% Courgettes48596.5%
50% Lettuce48596.5%
Fresh crops, total971713.1%
All crops, total (functional unit)74,328100.0%

4.1. Crop Management for M-Low and M-High

M-Low and M-High systems were defined from yields per ha using the range in the Organic Farm Management Handbook [35]. The M-Low farm represents a standard low-yielding farm, the lowest value in the Handbook, and the M-High farm represents a standard high yielding farm, the highest value in the Handbook. The range is shown in Table 2 for each crop considered. These yield differences, combined with the food chain losses assumed (see Section 4.2), implied that different areas were needed to provide the functional unit, i.e., the average annual amount of vegetables (in food energy) at the consumer’s door (Table 2).
Table 2. Yields and corresponding areas needed to provide the amount of vegetables sold in the case system for M-Low and M-High. Areas for the case farm are given for comparison.
Table 2. Yields and corresponding areas needed to provide the amount of vegetables sold in the case system for M-Low and M-High. Areas for the case farm are given for comparison.
Case (ha)M-LowM-High
Yields a (t/ha)Areas (ha)Yields a (t/ha)Areas (ha)
Potatoes, early 100.42200.21
Potatoes, main crop 150.83400.31
Carrots 150.41500.12
Beetroots 100.35300.12
Onions 100.35250.14
Parsnips 100.21300.07
Leeks 60.48180.16
Squash 150.17400.06
Cabbage, white 200.26500.11
Cauliflower 160.23240.15
Zucchini 70.88130.47
Lettuce 61.739.61.08
Vegetables4.026.323.01
Green manure1.561.58 b0.75 b
Field margins and infrastructure0.781.12 c0.53 c
Total area6.369.024.29
a From Organic Farm Management Handbook [35], the lowest and highest yield for each crop; b 20% of cultivated area; c 14% of cultivated area based on the proportion for the case.
The further definition of the two model systems was based on the assumption that yields are determined by the level of fertilization and irrigation. Therefore, M-Low is defined with a low input of fertilizers and M-High with a higher fertilizer input. The NPK-budgets were calculated based on farm gate inputs and outputs from an average farm with the same crop production and management using a NPK-budget tool from the Organic Research Center [36,37]. Both systems were assumed to have 20% green manure (red clover) in their crop rotation. Input of cattle manure, rock phosphate and rock potash was then modeled such that M-High reached a balance of 90 kgN/ha, 10 kgP/ha and 10 kgK/ha and M-Low a balance of 0 kgP/ha and 0 kgK/ha (Table A2). For the M-Low N balance, the lowest possible value was 54 kgN/ha due to atmospheric deposits and N-fixation.
Further, for M-Low irrigation was only included for the crops for which irrigation is considered essential according to the Handbook [34], whereas for M-High irrigation was also included for crops which “may require irrigation”.
Based on the field operations needed for each crop described in Organic Farm Management Handbook [35], the resource use in terms of fuel and machinery was modeled according to resource use per unit process [38] (see Supplementary Material for detailed description of the farming model). The approach for determining yields and resource use was similar to a previous study commissioned by Defra [39].

4.2. Model Distribution System

The model distribution system from farm gate to consumer’s door was modeled on a crop by crop basis based on published LCA reports for supermarket based food distribution chains [40,41,42] (Table 3). The chain is thus assumed to consist of 200 km transport to and storage for 5 days at regional distribution center (RDC), 50 km transport to and storage for 2 days at retailers and 6.4 km transport from the retailer to the customer’s home [40] (see Supplementary Material for detailed assumptions.) Transportation from the farm to the RDC is assumed to be in a chilled 32 t truck with an energy consumption of 22.9 mL diesel per euro pallet kilometer [41]. Throughout the system, food waste is taken into account for each crop [42].
The total expenses to labor, service and materials throughout the supply system were estimated based on 12 month average supermarket prices (from March 2012 to March 2013) for each of the vegetables [43]. The prices were adjusted for inflation to reflect average 2009–2010 prices according to the price index for vegetables including potatoes and tubers [44].

5. Results of Sustainability Assessment

The service provided by the three systems is a comparable “basket” of vegetables produced during one year and delivered to the consumer’s door. This service is measured in food energy and is equal to 74,328 MJ/year as an average of 2009 and 2010 (Table 1). This corresponds to the total annual food energy needed for 19–23 people (based on a recommended daily intake of 8.8–11 MJ [45]). The emergy flows are illustrated for the case (Figure 1A) and for the model systems (Figure 1B). The two diagrams demonstrate clearly the different distribution systems and that in the case the full money flow goes to the farm whereas in the model systems part of money flows to the freight companies, supermarkets, and regional distribution centers (RDC).

5.1. Empirical System

The basis of any emergy assessment is the emergy table (Table 4) that shows all environmental and societal flows, which support the system. Notably labor and services (L&S) make up 89% of total emergy used by the case (calculated from Table 4). As emergy use for L&S is calculated as a function of the emergy use for the national economy, this reflects the national resource consumption rather than the specific business. To avoid distorting the results of the actual farm with the implications of being embedded in an industrialized economy, we consider the emergy indicators both with and without L&S.
The main result of the emergy evaluation for the case system is the transformity of the vegetables, which amounts to 5.20 × 106 seJ/J with L&S and 5.54 × 105 seJ/J without (Table 5). The Emergy Yield Ratio (EYR) of 1.15 disregarding L&S shows that free local environmental services (R) contribute with only 0.15 seJ per seJ invested from the society. The renewability indicator shows that the system uses 13% local resources when disregarding L&S but only 1% when including L&S. The latter reflects that L&S is considered as non-renewable.
Figure 1. Material and emergy flow diagrams for the case system (1A) and the two model systems M-Low and M-High, which have identical distribution systems (1B).
Figure 1. Material and emergy flow diagrams for the case system (1A) and the two model systems M-Low and M-High, which have identical distribution systems (1B).
Sustainability 06 01913 g001
Disregarding L&S, the emergy profiles of the case system are as follows (calculated from Table 4). Purchased miscellaneous materials for the cultivation phase contribute 38% of total emergy used. Fuel used for cultivation and electricity used for production of seedlings are the biggest flows with 18% and 11%, respectively. Notably, irrigation contributes 24% of the total flow with the water used constituting the most important element (17%). Likewise, the woodchips, used as soil enhancement and used to produce potting compost, contribute with 10% and farm assets contribute with 7%. The diesel used on the weekly round-trip was estimated to 465 L/year (1.6 × 1010 J, Table 4) and it is the major component of the emergy used in the distribution phase (7% of the total emergy used).
Table 3. Outputs and energy use in model distribution system: from farm to regional distribution center (RDC), to retailer and to consumer’s home.
Table 3. Outputs and energy use in model distribution system: from farm to regional distribution center (RDC), to retailer and to consumer’s home.
Farm gate output (t)Diesel use, transport to RDC (L) aEl. use, 5 days storage at RDC (kWh) bRDC gate output (t) cDiesel use, transport to retailer (L) aEl. use, storage at retailer (kWh) dNG use, storage at retailer (MJ) dRetail gate output (t) cGasoline use, transport to home by car (L) eDiesel use, transport to home by bus (L) e
Potatoes16.764.663.911.811.578.1346.511.5101.22.7
Carrots6.224.023.74.44.329.0128.74.337.61.0
Cabbages5.378.377.55.319.634.7591.75.145.41.2
Cauliflower3.755.454.93.713.924.5419.03.632.10.9
Parsnips2.18.18.01.51.49.843.51.412.70.3
Beetroots3.513.813.62.52.416.673.82.421.60.6
Onions3.516.816.63.23.821.2115.63.228.10.8
Leeks2.942.542.12.910.618.8321.72.824.70.7
Squash2.537.737.32.59.416.7285.22.521.90.6
Zucchini6.191.590.56.122.940.5691.46.053.01.4
Lettuce10.4219.2216.910.153.666.81620.19.987.62.4
Total62.9651.8645.054.0153.3356.74637.252.7465.912.6
a The produce is transported 200 km to RDC and 50 km from RDC to retail [40] using 22.9 ml diesel per pallet-km (chilled single drop, 32 t artic) [41]. b Electricity consumption in RDC is 0.00059 kWh/l/day [40]. c For each crop losses in storage and packaging are taken into account [42]. See Supplementary Material for details. d Storage at ambient temperature. Energy use is 0.027 MJ/kg/day (44% electricity for light and 56 % natural gas (NG) for heating) [40]. e Based on an average UK shopping trip of 6.4 km with an average shopping basket of 28 kg and where 58% of trips made by private car and 8% made by bus [40]. See Supplementary Material for details.
Table 4. Use of emergy per functional unit for the three systems: the case, M-Low and M-High. See Table A3 and Table A4 for notes with details for each item.
Table 4. Use of emergy per functional unit for the three systems: the case, M-Low and M-High. See Table A3 and Table A4 for notes with details for each item.
UnitCase (Unit)M-Low (Unit)M-High (Unit)UEV (seJ/unit)Case emergy flow (× 1014 seJ)M-Low emergy flow (× 1014 seJ)M-High emergy flow (× 1014 seJ)
LOCAL RENEWABLE FLOWS (R)
1SunJ9.7 × 10131.4 × 10146.6 × 10131.0 a1.01.40.7
2Evapotranspirationg3.0 × 10104.3 × 10102.1 × 10101.5 × 105 b44.062.629.8
3WindJ3.9 × 10115.5 × 10112.6 × 10112.5 × 103 c9.713.86.5
4Geo-thermal heatJ9.0 × 10101.3 × 10116.1 × 10101.2 × 104 b10.815.47.3
SUM (excluding sun and wind)54.878.037.1
PURCHASED MATERIALS (M)
Cultivation Phase
Miscellaneous materials
5Diesel, fieldsJ4.0 × 10102.7 × 10101.5 × 10101.8 × 105 d73.048.927.4
6Lubricant and greaseJ1.9 × 1091.1 × 1095.7 × 1081.8 × 105 d3.52.11.0
7LPGJ9.1 × 1086.6 × 1092.3 × 1091.7 × 105 d1.611.33.8
8Fleece and propagation trayg8.8 × 1031.9 × 1059.8 × 1048.9 × 109 e0.816.78.7
9ElectricityJ1.6 × 10103.8 × 1093.8 × 1092.9 × 105 f45.410.910.9
10Seedlingspcs0.03.2 × 1051.8 × 1059.6 × 109 g0.031.017.0
11Seedg2.1 × 1042.9 × 1041.3 × 1041.5 × 109 h0.30.40.2
12Potato seedsg1.1 × 1063.1 × 1061.3 × 1062.9 × 109 i30.189.437.3
SUM154.6210.7106.3
Irrigation
13DieselJ1.5 × 10106.6 × 1084.6 × 1081.8 × 105 d27.81.20.8
14ElectricityJ0.01.3 × 10108.9 × 1092.9 × 105 f0.036.925.9
15Ground waterg3.6 × 1093.0 × 1092.1 × 1091.1 × 106 j41.534.524.2
16Tap waterg1.4 × 1090.00.02.3 × 106 j30.80.00.0
SUM100.072.650.9
Soil fertility enhancement
17WoodchipsJ3.7 × 10110.00.01.1 × 104 k38.80.00.0
18Lime g2.0 × 1040.00.01.7 × 109 k0.30.00.0
19Nitrogen (N)g0.0182.8 × 1044.1 × 1010 l0.00.0105.7
20Phosphorus (P2O5)g0.03.0 × 1047.4 × 1043.7 × 1010 l0.027.159.3
21Potash (K2O)g6.6 × 1042.5 × 1052.9 × 1052.9 × 109 k2.38.49.8
SUM41.535.6174.8
Farm Assets
22Tractorsg1.4 × 1058.2 × 1043.8 × 1048.2 × 109 m11.716.65.8
23Other machineryg1.5 × 1052.5 × 1051.3 × 1055.3 × 109 m8.011.45.4
24Irrigation pipeg8.9 × 1038.9 × 1038.9 × 1038.9 × 109 e0.80.80.8
25Wood for buildingsJ9.9 × 1099.9 × 1099.9 × 1091.1 × 104 k1.01.01.0
26Glass for buildingsg7.6 × 1040.00.03.6 × 109 e2.80.00.0
27Plastic for buildingsg1.9 × 1040.00.08.9 × 109 e5.80.00.0
28Steel for buildingsg2.5 × 1040.00.03.7 × 109 n0.90.00.0
SUM30.929.812.7
Distribution Phase q
29DieselJ1.62.8 × 10101.8 × 105 d28.650.3
30GasolineJ0.01.6 × 10101.9 × 105 d0.029.6
31ElectricityJ0.03.6 × 1092.9 × 105 f0.010.5
32Natural GasJ0.04.6 × 1096.8 × 104 d0.03.2
33Machinery (van)km5.7 × 1030.02.5 × 1010 o1.40.0
34Machinery (truck)tkm0.01.5 × 1044.1 × 109 p0.00.6
SUM30.094.2
35LABOR AND SERVICE (L&S) q£8.7 × 1041.5 × 1054.0 × 1012 f3451.15,854.9
SUM Purchased materials (M)357.0442.9439.0
SUM Feedback from economy (M + L&S)3808.26297.86293.9
TOTAL EMERGY USED (U) with L&S3863.06375.86330.9
TOTAL EMERGY USED (U) without L&S411.9520.9476.1
a By definition, b Odum (2000) [46], c Odum (2000) [47], d Brown et al (2011) [48], e Buranakarn (1998) [49], f NEAD database [50], g This study. Based on input of 20 cm3 peat and 1/774 l diesel per seedling [31], h Coppola (2009) [51], i This study, based on total M-High emergy use (less emergy for distribution phase and seed potato), allocated based on the yields and share of cultivated area used for main crop potato, j Buenfil (1998) [52], k Odum (1996) [23], l Brandt-Williams (2002) [53], m Kamp (2011) [54], n Bargigli (2003) [55], ° This study. Weight of vehicle: 1500 kg, lifetime 500.000 km and same transformity as for tractors, p This study. Transformity per tkm calculated based on Pulselli (2008) [56]. q M-Low and M-High have identical distribution system and need the same L&S calculated based on the consumer prices.
Table 5. Emergy indices for the case system, M-Low and M-High with and without labor and service.
Table 5. Emergy indices for the case system, M-Low and M-High with and without labor and service.
With labor and serviceWithout labor and service
CaseM-LowM-HighCaseM-LowM-High
Emergy Yield Ratio (U/F)1.011.011.011.151.181.08
Renewability (R/U)1%1%1%13%15%8%
Solar transformity (seJ/J)5.20 × 1068.58 × 1068.52 × 1065.54 × 1057.01 × 1056.40 × 105
Analyzing the case system using the LCA perspective, the processes related to the cultivation phase have a much larger environmental impact than the processes involved in the distribution phase, for all nine categories (Figure 2). The LCA impact category non-renewable resource use includes all direct and indirect use of fossil and nuclear fuels converted to MJ. Crude oil in the ground contributes more than 50% of the total raw materials for energy (Figure 3). Crude oil is used to produce diesel for operating tractors and pumping the water for irrigation, and to a smaller extent for the manufacture and transport of other inputs.
Figure 2. LCA results for the case, M-Low and M-High for the nine impact categories considered. Impacts per functional unit are divided into distribution phase and cultivation phase.
Figure 2. LCA results for the case, M-Low and M-High for the nine impact categories considered. Impacts per functional unit are divided into distribution phase and cultivation phase.
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Figure 3. Contribution of raw materials to the overall result for the Life Cycle Impact category non-renewable resource use (fossil and nuclear) per functional unit for the case, M-Low and M-High.
Figure 3. Contribution of raw materials to the overall result for the Life Cycle Impact category non-renewable resource use (fossil and nuclear) per functional unit for the case, M-Low and M-High.
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5.2. Benchmarking Against Model Systems

An important difference between the food supply system of the case study and the model systems is the amount of food lost. The long chain in the model systems generates a high percentage of food loss, up to 29% for root vegetables [42]. The direct marketing of the case system implies that the crop loss is smaller due to higher acceptance of less-than-perfect crops. Therefore, the case farm does not need to produce as much to provide the same amount of vegetables at the consumer’s door as the model production system.
Land required for providing the food service using standard practices vary between 4.29 ha for the high-yielding model system to 9.02 ha for the low-yielding model system (Table 2). The area required by the case farm (6.36 ha) is within this range. The land use efficiency at the system level may be calculated as the food energy provided to the consumer per hectare of cultivated area (Table 2, vegetables + green manure). This value is 13.3 GJ/ha for the case farm and varies between 9.4 GJ/ha (M-Low) and 19.8 GJ/ha (M-High) for the model systems. This indicates that the case farm has yields within the range of the standard practices.
The consumer price of total output from the case system is £86,800. This is significantly lower than the consumer price for the model systems’ output, which is £147,300 (Table 4). That the case farmer is able to sell the products at a significantly lower price may be explained by the fact that the full revenue goes directly to the farm (Figure 1A) whereas in the modeled systems the supermarkets, freight companies and regional distribution centers (RDC) need to make a profit as well (Figure 1B).

5.2.1. Benchmarking Based on Emergy Use

The emergy use for purchased materials in the model systems is very similar in total but is differently distributed among the different components, e.g., M-Low has twice as much input in the cultivation phase whereas M-High has five times higher input for soil fertility enhancement. By definition, the emergy use in the distribution phase and for L&S is identical for the two systems. The L&S constitute by far the biggest contribution for both M-Low and M-High with about 92% in both systems. The total emergy used for L&S is 5.9 × 1017 seJ for the model systems (Table 4), which is 70% more than for the case system. This directly reflects that consumer price for the vegetables are 70% higher in the supermarket than in the direct marketing scheme.
When disregarding L&S, the case system uses less emergy to produce the total amount of vegetables sold compared to both model systems (Figure 4). This is especially due to a reduced emergy need for purchased seedlings and seed potato as compared to M-Low and a reduced emergy use for soil enhancements as compared to M-High. In addition, the case distribution system only use one third of the emergy used by the model supply chain. However, the case has a substantial higher consumption of on-farm fuel use and needs more emergy for water for irrigation (Figure 4).
Figure 4. Emergy profiles without L&S for the case, M-Low and M-High.
Figure 4. Emergy profiles without L&S for the case, M-Low and M-High.
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The case-study farm uses significantly more diesel in the cultivation phase (Table 4). This may partially be explained by the tractors being less efficient than those assumed for the model systems. Another factor is that the diesel use per area is more or less independent of the yields, which means that high yielding crops tend to use less fuel per unit output. This is clearly reflected in the comparison of M-Low and M-High, but does not explain why M-Low uses less diesel than the case system.
On-farm electricity use (Figure 4) consists of electricity use for on-farm production of seedlings and offices (only for the case-study) as well as for irrigation (only model farms). Disregarding electricity for irrigation, the case uses significantly more electricity than the model systems. However, the electricity consumption of 4350 kWh is still relatively small as it corresponds to the average UK household (4391 kWh, [57]). The emergy needed for electricity in the case system (4.5 × 1015 seJ) is partly compensated by the emergy needed for purchased seedlings in M-Low (3.1 × 1015 seJ) and M-High (1.7 × 1015 seJ) (Table 4). The fact that 30% of the seed potatoes are farm-saved in the case system results in a considerable emergy saving as compared to both model systems. M-Low is particularly bad in this respect since it needs a larger area (Table 2) and thus more seed potatoes to produce the required amount of potatoes (Table 4).
M-High has the lowest emergy use for irrigation with M-Low using 50% more and the case using twice as much. The latter is in the first place a consequence of that the case uses more water (3.6 × 109 g groundwater and 1.4 × 109 g tap water) (Table 4). As the annual variation in precipitation is not considered in the model systems, the higher use of water for irrigation in the case system may reflect that the studied period, 2009–2010, was relatively dry, and for instance in 2008 the water use was 70% less. In addition, tap water, which accounts for 28% of total water used, has an UEV value twice as high as ground water due to the extra work that is needed for pumping and treatment (Table 4).
Emergy used for soil enhancement is the biggest input to M-High (Table 4). With 1.7 × 1016 seJ it is more than four times higher than the other systems. This reflects that fertilizer is a valuable resource, and that reducing the import of fertilizer is a key element in reducing emergy use in agricultural systems.
The model supply chain needs a total of 805 L diesel (calculated from Table 3) for HGV-transport. In addition, 932 L of gasoline is used for the 58% of the shopping trips done by car and 12.6 L of diesel for the 8% of the trips done by bus. The total use of liquid fuels in the model supply chain (4.5 × 1010 J) is thus bigger than on-farm use of diesel in the cultivation phase in all three systems (Table 4). The total emergy use for the distribution system is three times higher for the model systems than for the case system.
M-Low has the largest contribution of local renewable flows as these are calculated directly from the size of the farm (Table 4). Further, the emergy indices (Table 5) reveal that, disregarding L&S, M-High has the smallest share of local renewable inputs (8%). The renewable resources contribute only with 0.08 seJ per seJ invested from society (EYR = 1.08). M-low is in this respect a bit better than the case. The case on the other hand provides the vegetables with the highest resource efficiency (lowest UEV or transformity) and is as such overall more efficient than both model systems (Table 5). This is especially true when also considering L&S in which case the transformity of the case is 39% lower than for M-High.

5.2.2. Benchmarking Based on LCA

The distribution phase has an important contribution to the environmental impacts of the model systems and in particular for the impact categories non-renewable resource use, Global Warming Potential (GWP) and human toxicity (Figure 2). The use of non-renewable resources in the case system is similar to M-Low, while the impact of M-High is around 30% lower (Figure 2). The GWP of the case is about 40% higher than both model systems. The difference in GWP between M-Low and the case was related to differences in management processes. The on-farm production of seedlings and composting of woodchips, respectively, may not be as efficient as centralized production of seedlings and use of only green manure and rock phosphate for nutrient supply. The impact category Phosphorus use was calculated to be higher in the case-study as compared to the model systems due to the use of vermiculite, but it is necessary to bear in mind that the levels of phosphorus use were relatively low for all three analyzed systems. The case system and M-Low have significantly lower aquatic eutrophication N potential, terrestrial ecotoxicity and aquatic ecotoxicity than M-High. This is because these impact categories are more dependent on the applied fertilization and irrigation levels rather than on capital goods and on-farm diesel and electricity. Aquatic ecotoxicity and human toxicity effects of the case were also lower than both model systems. Aquatic ecotoxicity levels were found to be similar for model systems while human toxicity of M-Low was shown to be slightly higher than M-High.
In addition, for model systems, environmental impacts for all impact categories are clearly dominated by agricultural cultivation (Figure 2). As for the case-study farm, more than 50% of the non-renewable resource use in the model systems is from use of crude oil (Figure 4). Nearly 20% of non-renewable resource use in model systems comes from natural gas, while for the case it is only 10%. Uranium ore has a relatively high contribution, nearly 20% of the result for all systems, as the electricity mix in the UK includes nuclear energy. Hard coal contributes to around 9% of the resource use and the remaining raw materials play a minor role (5% or less).
Assessment of environmental impacts exclusively from the distribution phase reveals that the local distribution system provides significantly lower environmental impacts per functional unit for all of the impact categories considered (Table 6). The relative advantage of the case system compared to the model system reached from 69% for the non-renewable resource use up to 98% in the case of human toxicity potential.
Table 6. Environmental impacts per functional unit exclusively for the distribution phase (the same for M-Low and M-High).
Table 6. Environmental impacts per functional unit exclusively for the distribution phase (the same for M-Low and M-High).
Impact CategoryUnitCase DistributionModel DistributionRelative Advantage of Case System (%)
Non-renewable, fossil and nuclearMJ eq23,78375,92369
GWP 100kg CO2 eq1629489067
Acidification, GLOm29246980
Eutrophication aq. N, GLOkg N0.733.7481
Eutrophication aq. P, GLOkg P0.000.0591
Human toxicityHTP122664698
Terrestrial ecotoxicityTEP22192
Aquatic ecotoxicityAEP513144564
Phosphoruskg0071

6. Discussion

6.1. LCA versus Emergy Assessment—Handling of Co-Products

The assessment of sustainability of the organic low-input vegetable supply system using emergy accounting and LCA has shown that the two methods lead to the same conclusion regarding the supply chain but differ to some extent in the assessment of the production systems. The sometimes contradictory results of the emergy and LCA results are to a large part due to differences in how co-products, e.g., manure, are accounted for. In emergy accounting, the focus is on the provision of resources, and a key principle in emergy algebra is that all emergy used in a process should be assigned to all co-products as long as they are considered in separate analyses [23]. As manure cannot be produced without producing meat and milk, the entire input to livestock production should be assigned to each of the three products. We have used this approach despite its disadvantages when comparing systems with or without inputs of manure [58]. As a proxy for the UEV of manure, we have combined the UEVs of mineral N, P and K. In the LCA approach, all environmental impacts from animal production were assigned to the main products of animal production being meat and milk. As a result, only emissions associated with transportation, storage and application are considered and the principle of no import of manure in the case system is only partially reflected in the LCA results. Further, this approach has lead to the counter-intuitive result that M-Low has higher phosphorus use than M-High (Figure 2) even though the latter system imports twice as much phosphorus as the former (Table A2). The assumption that manure is a waste may not reflect the actual situation for many organic growers who experience that the supply of N is often a limiting factor for maintaining productivity [59].

6.2. Potentials for Reducing Resource Use in the Case System

Even though the case has a strong focus on minimizing use of purchased resources (M), their contribution is still more than six times larger than the contribution from local renewable resources (R) (Table 4). Disregarding L&S, then the largest potential for improving percentage of renewability is to reduce the amount of used fuels (Figure 2). However, to substitute fossil fuelled machinery with more labor intensive practices such as draft animals or manual labor, would under current socio-economic conditions increase overall resource consumption due to the high emergy flow associated with labor. In addition, draft animals would require that a considerable amount of land should be used for feed production.
Ground and tap water used for irrigation constitutes 17% of the total emergy use. Due to the differences in UEV between tap and ground water, the emergy use could be substantially reduced by using only ground water. Producing the woodchips, which accounts for 10% of the total emergy used, within the geographical boundaries of the farm would improve renewability. Currently they are residuals supplied from a local gardener who prunes and trims local gardens. In a larger perspective, there are, thus, few environmental benefits from becoming self-sufficient with wood chips in the case system. According to the LCA analysis, the composting process accounts for 30% of greenhouse gas emissions, and using less wood chip compost would reduce the overall global warming potential.
Electricity, which is primarily used for heating and lighting in the production of seedlings, constitutes 11% of the emergy used. It is no doubt convenient to use electricity for heating, but substituting the electricity with a firewood based system would largely reduce the emergy. Alternatively, it may be worthwhile to consider harvesting excess heat from the composting process to heat the green house.
As for the distribution phase, the case has the potential for decimating fossil fuel consumption by replacing the current customers with some of the many households located within few kilometers of the farm. This could dramatically reduce the 70 km round trip each week. The current way of organizing the distribution, however, is extremely efficient when compared to the alternative where customers would go by car each week and pick up the produce. The latter solution would require up to 1,000,000 car-km per year based on the case farmer’s calculation. With a fuel efficiency of 15 km/L this translates to 66,666 liter of fuel. This is almost 40 times the fuel consumption for the model system (1737 L).

6.3. Outlook for Emergy Use for L&S

In a foreseeable future with increasing constraints on the non-renewable resources [6,60], which currently are powering the society with very high EYR-values [23], it is desirable or even necessary that agricultural systems become net-emergy providers, i.e., that more emergy is returned to society from local renewable resources than the society has invested in the production [61]. This requirement means that the contribution from R has to be bigger than F. Bearing in mind that R cannot be increased as the local renewable flows are flow limited, then achieving this can alone be achieved by reducing the emergy currently invested from society, F (3808.2 × 1014 seJ) to less than R (54.8 × 1014 seJ), i.e., by a factor of 70. Such an improvement seems out of reach without transforming the food supply system. Some improvements can be made on the farm as indicated, but the largest change will need to be in the society which determines the emergy use per unit labor. It is important to note that for the standard practices represented by the model system much larger reduction would be required.
Emergy used for L&S accounts for 89% of total emergy flow and constitutes by far the biggest potential for improvements. The L&S-component reflects the emergy used to support people directly employed on the farm and people employed in the bigger economy to manufacture and provide the purchased inputs. Due to the high average material living standard in UK with emergy use per capita being 8.99 × 1016 seJ/year [50], labor is highly resource intensive.
Emergy used for L&S can be reduced by reducing the revenue, but this is highly undesirable. Nevertheless, the employees already have a relatively low salary, which they accept because of the benefits enjoyed, e.g., free access to vegetables, cheap accommodation on the farm perimeter and in their opinion a meaningful job close to nature. Thus, the case system attracts people with a Spartan lifestyle with few expenses and thus below average emergy use.
In future, it is almost certain that the nation-wide emergy use per capita will be reduced. A likely future scenario for the UK is that the indigenous extraction of non-renewable resources continues to decline (down 23% from 2.4 × 1024 seJ in 2000 to 1.8 × 1024 seJ in 2008 [50]). This is a result of the oil extraction plunging from 2.6 to 1.5 million barrels per day (mbd) from 2000 to 2008 (in 2010 further down to 1.1 mbd) [62]. In the same period the extraction of natural gas dropped from 97.5 to 62.7 million tonnes oil equivalent (and to 40.7 by 2010) [62]. This decline has been compensated by increasing imports of fuels from 57 × 1022 seJ in 2000 to 95 × 1022 seJ by 2008 [50]. The UK has been able to maintain a high level of emergy use per capita by gradually substituting the decline in oil and gas production with imported fuels and services. Such a substitution may continue for some years, but in a longer time perspective a decline in global production of oil, gas and other non-renewable resource is inevitable. Coupled with an increased competition from a growing global population increasing in affluence, it is likely that the import of such resources will eventually decline for the UK as well as other industrialized nations [63].
Such a future scenario imply that the resource consumption per capita will be reduced and thereby that the emergy needed for supporting labor is reduced. However, it may also bring along transformations that are more substantial in the organization of the national economy and all its sub-systems, not least the mass food supply system, which at present uses 9% of UK’s petroleum products. In this perspective, the capacity of a system to adapt to changes is a crucial part of its sustainability, and this characteristic is not directly reflected in the quantitative indicators of emergy assessment and LCA.

6.4. Local Based Box-Scheme versus National-Wide Supermarket Distribution—Resilience

The supermarket based distribution system has during the previous decades been redesigned according to principles of Just-In-Time delivery (JIT). These principles aim at reducing the storage need and storage capacity at every link in a production chain, such that a minimum of capital investment is idle or in excess at any time. Less idle capital means fewer costs and fewer environmental impacts. While JIT may decrease environmental impacts per unit of produce for the particular system, as long as everything is running smoothly, it may compromise the system’s resilience as it becomes more vulnerable to disturbance and systemic risks. Systemic risks include disruption in infrastructure supplying money, energy, fuel, power, communications and IT or transport as well as pandemics and climate change [64,65,66]. As can be imagined any disturbance caused by such events may quickly spread throughout the tightly connected network [65,67]. A loss of IT and communication would make it impossible for a national-wide JIT supply system to coordinate supplies [64]. A loss of money would make it impossible to conduct transactions with customers. A loss of fuel for transportation would results in large bulks of produce being stranded. A loss of power in the RDC would stop the entire chain and retailers would run out of products in a few days.
When benchmarking the case-study against the national wide supermarket system, the former may be more resilient than the latter as it is in a better position to handle infrastructure failures. Due to the higher degree of autonomy and fewer actors involved, the case system would be able to work around many events, which could bring the supermarket-based system to a halt. For instance, a loss of money supply could be handled by delaying payments until the system recovers. Loss of fuel would be difficult to overcome, but produce could still be collected on bike or by public transport.
However, from the consumer’s point of view, the risks have a different nature. Consumers in the case system are vulnerable to a poor or failed harvest (e.g., caused by flooding, unusual weather conditions or pests). The supermarket supply system would be unaffected by a failed harvest at a single farm because of the large number of producers feeding into the system. However, the crop diversity of the case-study minimizes the risk of a complete harvest failure.

6.5. Limitations of Study—Validity of Model Systems

The vegetables produced from the case-study farm have determined the design of the cultivation phase of the two model systems. It is very likely that other model systems would be developed if the systems were optimized for producing any mix of vegetables of certain food energy content but such analyses are outside the scope of this study. However, as the model systems are scale independent the results can be considered as representing the production from larger areas where different farms are producing different crops. Although in many cases the yields will vary from those presented, the high and low yield scenario should capture the range of possible outcomes.
For both emergy assessment and LCA the on-farm use of fuel and irrigation resulted in higher impacts for the case-study than for the model systems. This is to a large part due that the model systems are based on standard data for field operations and that annual variation in rainfall is not reflected. This implies that any additional driving of tractors and machinery, that may occur for various reasons in a real farming system are not included. This may result in an underestimation of the actual resource consumption, which real UK organic farms would have needed in the same years under the same conditions.

7. Conclusions

The results of the emergy analysis showed that the case study is more resource efficient than the modeled standard practices, and with the identified potential for further reducing the emergy use, the case-study farm can become substantially better. This is especially true when also considering emergy used to support labor and service. The results of the LCA for the cultivation phase were less conclusive as the case had neither consistently more nor consistently less environmental impacts compared to the model systems. However, for the distribution phase, both the emergy assessment and LCA evaluated the case to perform substantially better than model systems. In addition, we have argued that the case may be in a better position to cope with likely future scenario of reduced access to domestic and imported fossil fuels and other non-renewable resources.
The real value of the case study is that it points out that there are alternative ways of organizing the production and distribution of organic vegetables, which are more resource efficient and potentially more resilient. The case-study shows that it is possible to efficiently manage a highly diverse organic vegetable production system independently of external input of nutrients through animal manure, whilst remaining economically competitive. The success of the case system is to a large part due to management based on a clear vision of bringing down external inputs. This vision is generic but the specific practices of the case-study may not always be the most appropriate for a farm to improve its resource efficiency and resilience. For systems in other societal contexts, e.g., farms with livestock and crop production or farms in remote locations, other strategies will be needed.

Acknowledgements

This study was supported by the EU grant no. KBBE-245058-SOLIBAM. Special thanks go to the case farmer for providing the data and allowing us to perform research at his interesting farm. Further, we acknowledge the contribution from other SOLIBAM participants, specifically Elena Tavella at the University of Copenhagen, who calculated the revenues.

Author Contributions

The study was designed by Mads V. Markussen in collaboration with all co-authors. Data was collected by Mads V. Markussen and Michal Kulak with assistance from Laurence G. Smith. All data analysis related to the emergy evaluation was done by Mads V. Markussen, and all data analysis related to LCA was done by Michal Kulak. All authors contributed to combining the analyses and interpreting the results.

Supplementary Materials

Supplementary materials can be accessed at: https://0-www-mdpi-com.brum.beds.ac.uk/2071-1050/6/4/1913/s1.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix

Table A1. Case system output as average of 2009 and 2010 and classes of crops used for establishment of model systems.
Table A1. Case system output as average of 2009 and 2010 and classes of crops used for establishment of model systems.
Avg. output per year (kg)Food energy density (KJ/100 g) aFood energy at consumers (MJ)
Individual cropsGroups of crops
STORABLE CROPS
Potatoes, main crop 858929825,59725,597
Potatoes, early286329885328532
Carrots35751093897
Carrot bunches678109739
Carrots total4635
Beetroot14461752531
Beetroot bunches9941751740
Beetroot total4271
Onions29271163396
Spring onions204116237
Onion bunches4811655
Onions, total3688
Parsnips143924735553555
Leeks279110429022902
Squashes247410926972697
Sprout tops16611512508
White cabbage20861052190
Kale140155216
Green cabbage176105185
Red cabbage18192166
Black cabbage75155117
Pak Choi 13587
Cabbage total5390
Cauliflower89092819
Swede/rutabaga476123586
Garlic91590536
Sprouting broccoli345117403
Celeriac48977377
Turnips 184104191
Kohlrabi153104159
Mooli radish126104131
Savoy999291
Fennel518242
Daikon81049
Cauliflower and other storable crops, total3344
FRESH CROPS
Sweet corn8113692992
Courgette1723811396
Broad beans713139991
Beans, French649139902
Tomatoes98873721
Chard and leaf beet105058609
Salad pack121449595
Lettuce82549404
Artichokes24593228
Cucumber39152203
Spinach27367183
Mange tout81179145
Pepper15481125
Spring greens1934995
Asparagus847563
Baby spinach426728
Salad454922
Rocket304915
Fresh crops, total9718
Total output44,73674,32874,328
a From Souci et al. [68].
Table A2. Applied nutrients and nutrient balances for M-Low and M-High.
Table A2. Applied nutrients and nutrient balances for M-Low and M-High.
UnitM-LowaM-Highb
Total input
N-fixationkg N474225
Atmospheric depositskg N19894
Applied Nkg N0261
Applied Pkg P3270
Applied Kkg K241279
Output in producekg N242
kg P32
kg K241
Nutrient balancekg N /ha5490
kg P /ha010
kg K /ha010
a M-Low (7.84 ha) applies 270 kg rock phosphate and 725 kg kali vinasse; b M-High (3.76 ha) applies 44.3 t cattle farm yard manure, 8 kg rock phosphate and 111 kg kali vinasse.
Table A3. Notes for emergy table (Table 4).
Table A3. Notes for emergy table (Table 4).
ParameterCaseM-LowM-HighUnitCommentsReference a
1Sun
Area6.34 × 1049.02 × 1044.29 × 104m2[CD] [SM]
Net radiation48.748.748.7w/m2[50]
Conversion factor (60 × 60 × 24 × 365)3.15 × 1073.15 × 1073.15 × 107sek/year
Net radiation1.54 × 1091.54 × 1091.54 × 109J/year/m2
Total energy9.74 × 10131.39 × 10146.59 × 1013J/year
2Rain
Rain (average for the region)0.650.650.65m/year[69]
Evapotranspiration, arable land747474%[70]
Water density100010001000kg/m3
Total amount = Area × Rain × Water density × Evapotranpiration3.04 × 10104.32 × 10102.05 × 1010g/year
3Wind
Air density1.31.31.3kg/m3[69]
Drag coefficient0.0010.0010.001
Wind speed average 19995.35.35.3m/s[50]
Time3.15 × 1073.15 × 1073.15 × 107sek/year
Energy = Area × Density × Drag coefficient × Wind speed3 × Time3.87 × 10115.504 × 10112.618 × 1011J/year[23]
4Geothermal heat
Heat flow per area45.045.045.0mW/ m2[71]
Heat flow per area1.42 × 1061.42 × 1061.42 × 106J/m2/year
Total heat flow9.00 × 10101.28 × 10116.09 × 1010J/year
CULTIVATION PHASE
5Diesel, fields
Quantity used (3.86 × 1007 J/l)4.03 × 10102.70 × 10101.52 × 1010J/year
6Lubricant /grease
Quantity used (38.6 MJ/l, 43.1 MJ/kg)1.93 × 1091.13 × 1095.73 × 108J/year[CD] [SM]
7LPG/NGthermal weeding (flaming)
Quantity used (45.6 MJ/kg)9.12 × 1086.64 × 1092.26 × 109J/year[CD] [SM]
8Fleece and propagation tray (polypropylene)
Propagation tray016889kg/year[SM]
Quantity used (10 years lifetime)5201197496m2/year[CD] [SM]
Conversion factor171717g/m2[72]
Quantity used88401.88 × 1059.74 × 104g/year
9Electricity (not irrigation)
Electricity
Quantity used435010441044kWh/year[CD] [SM]
Quantity used (3.6 MJ/kWh)1.57 × 10103.76 × 1093.76 × 109J/year
10Seedlings
Quantity used322,933177,577pieces[SM]
Sub-table: Seedlings—calculation of UEV
Peat20cm3/seedling[31]
Fossil fuels (heating)1l/774 seedling
Fossil fuels (heating)35.86MJ/774 seedlings
Conversion factors
Peat. dry matter0.11g/cm3[73]
Peat heating value (average of two values)17,150J/g[74]
Input per seedlingDataUEVEmergy
PeatJ37,73031,9201.204 × 109
DieselJ46,330181,0008.386 × 109
UEV for seedlings9.59 × 109seJ/one seedling
11Seed
Quantity used20,59529,29513,068g/year[SM]
12Potatoe seed1,050,0003,123,4371,301,432g/year[CD] [SM]
M-High emergy flow (less L&S)4.388 × 1016
- less supply chain and seed potato (to avoid circular reference)3.446 × 1016
Area grown with main crop potato0.3ha
Yield (40 t/ha)12.5t/year
Allocation factor (share of area used for maincrop potatoes—0.31/3.76)0.083
UEV seed potatoes2.863 × 109sej/g
IRRIGATION
13Diesel
Quantity used (38.6 MJ/l)1.53 × 10106.55 × 1084.59 × 108J/year[CD] [SM]
14Electricity
Electricity—irrigation35402480kWh/year[SM]
Electricity—irrigation1.27 × 10108.93 × 109J/year
15Ground water
Quantity used3.63 × 1093.02 × 1092.11 × 109g/year[CD] [SM]
16Tap water
Quantity used1.35 × 109g/year[CD]
17Woodchips
Quantity used100m3/year
Density3.88 × 105g/m3[75]
Quantity used (fresh chips, 50 %DM)3.88 × 107g/year
Dry matter1.94 × 107g DM
Wood energy density19.0GJ/t[76]
Wood energy density1.90 × 104J/g
Quantity used3.69 × 1011J/year
18Lime
Quantity used2.00 × 104g[CD]
19Nitrogen
Quantity used0.002.61 × 105g N[CD] [SM]
20Phosphorus
Imported in fertilizer32.070.0kg P[CD] [SM]
Converions factor (kg P2O5 per kg P)2.292.29kg/kg
Quantity used73.0160kg P2O5
Quantity used7.33 × 1041.60 × 105g P2O5
21Potash
Imported in fertilizer66.4242279kg KAppendix 2
Conversion factor (kg K2O per kg K)1.201.201.20kg/kg
Quantity used80.0292336kg K2O
Quantity used8.00 × 1042.92 × 1053.36 × 105g K2O
22Tractors
Weight loss per year1.43 × 1052.03 × 1056.78 × 104g/yearWeight of the case’s tractors and lifetime. Model systems scaled to cropping area
23Other machinery
Weight loss per year1.51 × 1052.14 × 1051.02 × 105Weight of the case’s non-motorized machinery divided lifetime min 20 years. Model systems scaled to cropped area.
24Irrigation pipe (HDPE)
Total weight of irrigation pipe2.23 × 105g[CD]
Estimate lifetime25.0years
Weight loss per year892089208920g/year
25Wood
Storage building, general, wood construction, non-insulated, at farm170m3
Lumber needed per m3 house200kg/m3[CD]
Lumber used for construction of office and storage area3.40 × 104kg
conversion factor2.04 × 107J/kg
Estimated lifetime of building75.0year
Mass depreciation per year9.23 × 1099.23 × 1099.23 × 109J/year
26Glass
Green house 2 (1970—second hand glass—plastic roof) 7*30 m
Glass210m2[CD]
Thickness5000m
Density2400kg/m3[77]
Glass2520kg
Mass depreciation (estimated glass lifetime 50 year)5.04 × 1004g/year
Green house 1 (1890—second hand glass—plastic roof) 8 × 10 m
Glass107m2[CD]
Thickness5000m
Density2400kg/m3
Glass1280kg
Mass depreciation (estimated glass lifetime 50 year)2.57 × 104g/year
27Plastic
Plastic (roof of green houses)290m2[CD]
Thickness5000m
density950kg/m3
Plastic1380kg
Mass depreciation2.76 × 104g/year(glass lifetime 50 year)
Polyethylene covers (polytunnels)
Size of covers214m2Lifetime 7 years. This is average use per year
Thickness1.83 × 104m
Density950kg/m3
Quantity used3.73 × 104g/year
28Steel
Steel part of polytunnels
steel arches84.0pcs
Steel per arch50.0kgEstimated values
total steel2500kg
Lifetime100years
Mass depreciation per year2.50 × 104g/year
DISTRIBUTION PHASE
29Diesel
Average haulage distance70.0Miles/week[CD]
Conversion factor1.61km/M
Distance per year5750km/year
Mileage8.09L/100KM
Mileage12.0km/L
Fuel use465L/year
Conversion factor3.40 × 107J/l
Fuel use1.58 × 1010J/year
Diesel use818818L/yearTable 3
Diesel use2.78 × 10102.78 × 1010J/year
30Gasoline
Gasoline use466466L/year Table 3
conversion factor3.40 × 1073.40 × 107J/L
Gasoline use1.58 × 10101.58 × 1010J/year
31Electricity
Electricity use (RDC and Retail)10011001kWh/yearTable 3
conversion factor3.60 × 1063.60 × 106J/kWh
Electricity use3.61 × 1093.61 × 109J/year
32Natural gas
NG use (Retail)4.64 × 10094.64 × 1009J/yearTable 3
33Machinery (van)
Weight1.50 × 1006g
UEV for lorry8.20 × 1009seJ/gSame as for tractors
Lifetime in km5.00 × 1005kmEstimated values
UEV per km2.46 × 1010seJ/km
34Machinery (Truck)
Total ton-km by truck1.53 × 1041.53 × 104tkmCalculated from Table 3
Emergy per truck8.48 × 10168.48 × 1016seJ/truck[56]
Truck lifetime in tkm2.07 × 1072.07 × 107tkm[56]
Emergy per tkm4.10 × 1094.10 × 109seJ/tkm
35Labor and service
Consumer price86,804.5[CD]
Table A4. Revenue for model system based on supermarket prices.
Table A4. Revenue for model system based on supermarket prices.
Model systems–Labor and service12 month avg. price (March 2012 to March 2013) [43] (£/kg)Sold to consumers (t)Total consumer price (£)Reference a
Potatoes, main crop (3/4 of potatoes)£ 1.118.69491
Potatoes. Early (1/4 of potatoes)£ 1.392.93986
Carrots£ 1.344.35705
Cabbages£ 1.725.18850
Cauliflower£ 2.253.68173
Parsnips£ 2.881.44145
Beetroots£ 3.462.48444
Onions£ 1.323.24196
Leeks£ 4.952.813,813
Squash£ 2.722.56730
Courgettes£ 2.006.012,003
Lettuce (little gem)£ 7.459.973,872
Total/Total price index corrected£159.409/147.264
Price index adjustment201220092010avg 2009–2010
01.1.7 Vegetables including potatoes and tubers (2005 = 1)141.1128.5132.2130.35
Em$ratio (2008 data) 2.10 × 1012Sej/$[50]
Converstion factor 0.53USD/GBP[78]
EM£ratio3.98 × 1012Sej/£
a Numbers in parentheses refer to references in the reference list, [CD] = Collected data, and [SM] = Supplementary Material.

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Markussen, M.V.; Kulak, M.; Smith, L.G.; Nemecek, T.; Østergård, H. Evaluating the Sustainability of a Small-Scale Low-Input Organic Vegetable Supply System in the United Kingdom. Sustainability 2014, 6, 1913-1945. https://0-doi-org.brum.beds.ac.uk/10.3390/su6041913

AMA Style

Markussen MV, Kulak M, Smith LG, Nemecek T, Østergård H. Evaluating the Sustainability of a Small-Scale Low-Input Organic Vegetable Supply System in the United Kingdom. Sustainability. 2014; 6(4):1913-1945. https://0-doi-org.brum.beds.ac.uk/10.3390/su6041913

Chicago/Turabian Style

Markussen, Mads V., Michal Kulak, Laurence G. Smith, Thomas Nemecek, and Hanne Østergård. 2014. "Evaluating the Sustainability of a Small-Scale Low-Input Organic Vegetable Supply System in the United Kingdom" Sustainability 6, no. 4: 1913-1945. https://0-doi-org.brum.beds.ac.uk/10.3390/su6041913

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