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Article

Effect of P2G on Flexibility in Integrated Power-Natural Gas-Heating Energy Systems with Gas Storage

1
School of Mechanical Electronic and Information Engineering, China University of Mining & Technology (Beijing), Beijing 100083, China
2
School of Engineering, University of Edinburgh, Edinburgh EH9 3DW, UK
*
Author to whom correspondence should be addressed.
Submission received: 3 December 2020 / Revised: 25 December 2020 / Accepted: 27 December 2020 / Published: 2 January 2021

Abstract

:
The low carbon transition requires the high growth of renewable generation penetration in energy systems to ultimately achieve net-zero carbon target. To ensure the reliable operation of energy systems with high intermittent renewable output, it is critical to have sufficient flexible resources to avoid curtailment. Therefore, the integrated power-natural gas-heating energy systems with power to gas (P2G) and gas storage has attracted great research interest especially on the combined operation method to enhance the flexibility provision between each other. In this paper, taking heating demand, P2G and gas storage into consideration, a multi-objective optimal operation strategy of integrated power-natural gas-heating energy systems is presented to obtain the maximum economic and environmental benefits. Furthermore, a novel model of flexibility metric is proposed based on redundant linepack and gas storage. Case studies without P2G and with P2G are carried out on integrated IEEE 39-bus power and Belgian 20-node gas system. Simulation results demonstrate that P2G not only can be beneficial for operation of the integrated energy systems in terms of total operational cost decline from M$2.510 to M$2.503, CO2 emission reduction from 62,860 ton to 62,240 ton and wind curtailment decrease from 25.58% to 4.22% but also has significant effect on flexibility improvement of a 71.72% increase.

1. Introduction

With the acceleration of low carbon transition in energy system, the renewable energy generation is growing quickly worldwide. However, due to intermittency and variability of renewable generations, the operation of energy systems faces unprecedent challenges. The curtailment issue of renewable generation caused by the lack of system flexibility to provide additional reserves and ramping capability is expected to be worse in the future. Therefore, it is critical to explore additional flexible resources to support the high level of renewable integration and ultimately achieve the net-zero carbon target.
Flexibility in energy systems is the ability to provide supply-demand balance, maintain continuity in unexpected situations and cope with uncertainty on supply-demand sides [1]. For power systems, gas turbines as traditional flexibility providers play an important role in meeting variable and unpredicted changes in net demand [2,3]. Driven by flexibility support required by renewable generation, the interaction between power systems and natural gas network is expected to increase [4]. Furthermore, some heating requirements are provided by natural gas which leads to high gas demand in winter when heating demand is increased obviously. In particular, gas demand would rise in winter with high ramp rate, which could lead to lack of linepack and low gas node pressure. Meanwhile the shortage of pipeline linepack in natural gas network could also cause the decline of power out of gas turbines which are the main flexibility provider in power systems. As such, both power systems and natural gas systems face flexibility challenges and the linepack of pipelines in gas network is the key factor affecting the flexibility of both power systems and natural gas network. It is essential to analyze flexibility of integrated power-natural gas-heating energy systems.
Many studies have been carried out on quantifying the energy system flexibility. Lannoye E. and et al. used the insufficient ramping resource expectation metric to measure power system flexibility in long-term planning [5]. Guo Z.Y. and et al. proposed flexibility metrics of power systems based on flexibility definition and physical mechanism [6]. Xu X. D. et al. developed a three-stage methodology to quantify the maximum flexibility of a district heating sector for power grid [7]. Huo Y. C. et al. designed a spatio-temporal flexibility management scheme in low-carbon power systems [8]. Impram S. et al. investigated flexibility measurement studies and evaluated methods of providing flexibility in power systems [1]. The influence of gas network on flexibility of power systems is not considered in these studies. Generally, integrated power-natural gas energy systems with renewable generation and power to gas (P2G) [9,10,11,12,13] are recognized to have a crucial role in delivering affordable low-carbon energy and exhibits significant potential to unlock more flexibility in planning [14,15,16,17,18,19,20,21,22,23,24]. More specifically, P2G converting renewable energy to gas to increase gas supply for both gas turbines and gas network will increase power output of gas turbines and replenish linepack of pipelines and thus enhance the flexibility of both power systems and natural gas network. Ameli H. et al. emphasized the important role of gas network infrastructure flexibility in efficiently accommodating the expected expansion of intermittent renewable energy sources in future power systems. Moreover, the benefits of employing flexible multi-directional compressor stations and adopting a fully integrated approach to operate gas and electricity networks were investigated [25]. Clegg S. and et al. presented a novel integrated electricity-heat-gas transmission network model that considers electrical and gas network flows coupled with heating sector [26,27], quantified flexibility of gas network and discussed effect of gas network constraints on electricity system operation [4]. Chicco G. and et al. provided a comprehensive overview of technical flexibility assessment of multi-energy systems and distributed multi-energy systems, with a focus on their potential to provide support to a low-carbon grid [28]. These studies described flexibility of power systems, gas network and multi-energy systems and provided good enlightenment for further research on flexibility assessment of multi-energy systems. While, a systematic methodology to assess flexibility of integrated power-natural gas-heating energy systems with P2G and gas storage has not been given.
With regards to the significant benefit of P2G on the integrated power-natural gas energy systems in terms of reducing renewable curtailment and providing additional gas supply for gas network [16,17,24], P2G will increase flexibility of the integrated power-natural gas energy systems. In particular, P2G generates methane (synthetic natural gas, SNG) through electrolysis and methanation [16,17,24] and replenishes linepack of pipelines, raises gas pressure and strengthens the ability to deal with high ramp caused by gas demand/heating demand particularly in winter. In addition, gas storage affects flexibility directly, which can absorb excess gas when a lot of SNG is injected into a natural gas network and can supply gas when gas demand or heating demand increases. Moreover, sufficient natural gas can guarantee power output of gas turbines and improve flexibility of power systems. Therefore, it is of importance to analyze flexibility of integrated power-natural gas-heating energy systems with P2G and gas storage.
This work here developed a framework for evaluating the flexibility in integrated power-natural gas-heating energy systems with P2G and gas storage based on a multi-objective economic/environmental optimal operation strategy. Both linepack of pipelines and volume of gas storage are modelled as the sources of system flexibility and their capability are evaluated. More specifically, at first, output of renewable generations, output of thermal units, gas flow of P2G, volume of gas storage, linepack of each pipeline and gas pressure of each gas node are obtained using the proposed optimal operation strategy. Then the flexibility of the integrated power-natural gas-heating energy systems can be evaluated using the proposed flexibility assessment model. Case studies are carried out on a hybrid IEEE 39-bus power system and Belgian 20-node gas system [9,16,23] in a period of 24 h to investigate effects of P2G on operation results, cost, emissions, wind curtailment and flexibility.

2. Optimal Operation Model of Integrated Power-Natural Gas-Heating Energy Systems with P2G and Gas Storage

In the integrated power-natural gas-heating energy systems, heating supplied by gas affects gas demand and gas ramp. P2G and gas turbines coupled with power system and natural gas system are flexibility providers. P2G is both the gas source and power load. Similarly, gas turbines are power sources and gas load. In addition, the flexibility analysis framework relies on operation of the integrated power-natural gas-heat energy systems.

2.1. Gas Supplied for Heating and Gas Turbines

Gas flow supplied for heating demand at time t, QHD(t) (MSm3/h) and gas flow of gas turbines, QGT(t) ((MSm3/h)), can be calculated as presented below.
Q H D ( t ) = E h e a t ( t ) η h e a t L H V
Q G T ( t ) = P G T ( t ) η G T H H V

2.2. Gas Flowing out of P2G

P2G can produce methane whereby electrolysis process and methanation process [16,17,24]. More specifically, the curtailed renewables are used by P2G to generate methane which directly injects into natural gas network. The relationship between gas flowing out of P2G, QP2G(t) (MSm3/h) and power consumed by P2G, PP2G(t) (MW), can be expressed as presented below.
Q P 2 G ( t ) = P P 2 G ( t ) η P 2 G H H V

2.3. Relationship between Gas Flow of Pipelines and Gas Pressure of Gas Nodes

The natural gas network follows the mass conservation law of fluid dynamics and can be modelled using Bernoulli equation [17]. In the tth time period, for the pipeline ij between gas node i and gas node j, the gas flow of the pipeline ij, Qij(t) (MSm3/h), is related to gas pressure of gas node i and j, Mi(t) (bar) and Mj(t) (bar). The relationship among Qij(t), Mi(t) and Mj(t) is presented below [23].
Q i j ( t ) | Q i j ( t ) | = C i j ( M i ( t ) 2 M j ( t ) 2 )
Q i j ( t ) = Q i j i n ( t ) + Q i j o u t ( t ) 2

2.4. Gas Consumed by Compressors

Compressors in natural gas network is used to boost pressure and facilitate the gas transportation. Gas consumed by compressor s, Q c s c o n ( t ) (MSm3/h), relates to gas flowing through compressor s, Qcs(t) (MSm3/h), efficiency, ηcs and gas pressure of gas nodes connected with compressor s [16].
Q c s c o n ( t ) = β c s P c s ( t )
P c s ( t ) = Q c s ( t ) η c s τ ( ( M o s ( t ) M i s ( t ) ) τ 1 )

2.5. Optimal Economic/Environmental Dispatch of Integrated Power-Natural Gas-Heating Energy Systems with P2G and Gas Storage

In this paper, the operation of integrated power-natural gas-heating energy systems is optimized as a multi-objective problem. Both operational cost and emissions are considered as objectives along with equality constraints and inequality constraints indicating the complex characteristics of integrated energy systems.

2.5.1. Objectives

The objectives include both the minimum operational cost and the minimum pollutant emissions of the integrated power-natural gas-heating energy systems which are presented as below. In the model, the valve point effect [29] of coal-fired units is considered to describe fuel cost more accurately.
Min C = t = 1 T ( i = 1 N G F i p o w e r ( t ) + j = 1 N w F j w e l l ( t ) + m = 1 N g s F m g s ( t ) + k = 1 N P 2 G F k P 2 G ( t ) )
Min E = t = 1 T i = 1 N G ( α i + β i P G i ( t ) + γ i P G i ( t ) 2 + δ i e λ i P G i ( t ) )
F i p o w e r ( t ) = a i + b i P G i ( t ) + C i P G i 2 ( t ) + d i | sin [ e i ( P G i ( t ) P G i min ) ] |
In Equation (8), F j w e l l ( t ) can be expressed as the product of gas well’s flow and gas price, F m g s ( t ) can be expressed as the product of storage flow and storage cost and F k P 2 G ( t ) can be expressed as the product of power supplied to kth P2G and unit operational cost.

2.5.2. Constraints

(1) Equality constraints
Equality constraints in the integrated power-natural gas-heating energy systems include power demand balance equation, dynamic gas flow balance equation of gas node i and linepack equation as shown below.
P D ( t ) + k = 1 N P 2 G P P 2 G , k ( t ) i = 1 N G P G i ( t ) = 0
n i Q w n ( t ) + m i Q g s , m ( t ) + k i Q P 2 G , k ( t ) + j S e t _ O ( i ) Q i j o u t ( t ) j S e t _ I ( i ) Q i j i n ( t ) Q G T , i ( t ) Q G D , i ( t ) Q H D , i ( t ) = 0
L P i j ( t ) = L P i j ( t 1 ) + Q i j i n ( t ) Q i j o u t ( t )
(2) Inequality constraints
Inequality constraints mainly include limits of power output, ramp rate limits, gas flow limits of gas wells, gas storage and P2G, gas pressure limits of gas nodes and capacity limits of gas storage which can be described by the following unified form.
X p min X p ( t ) X p max

3. Flexibility Assessment Model of Integrated Power-Natural Gas-Heating Energy Systems with P2G and Gas Storage

3.1. Flexibility Metric

The proposed flexibility model takes linepack of pipelines and volume of gas storage into consideration. Gas demand, heating demand and gas for gas turbines affect linepack and further have influence on flexibility. In this paper, flexibility metric F is established respectively according to different types of pipelines as presented below.
F = t = 1 T k = 1 N p l F p k ( t ) Q G L ( t ) + Q H L ( t ) + Q G T ( t )
From the model of flexibility metric, it can be seen the higher the flexibility metric is, the more gas redundancy it is. Redundancy of gas at time t is calculated in different cases as presented below.

3.1.1. Case 1: Only Gas Demand/Heating Demand at Pipeline k

In case 1, Fpk(t) is calculated as presented below.
F p k ( t ) = L P k ( t ) L P k min
L P k min = ω k M i min + M j min 2

3.1.2. Case 2: Only Gas Storage at Pipeline k

In case 2, Fpk(t) is calculated as presented below.
F p k ( t ) = min { L P k ( t ) L P k min , V g s max V g s ( t ) , Q g s max } + V g s ( t )

3.1.3. Case 3: Only Gas Turbine at Pipeline k

In case 3, Fpk(t) is calculated as presented below.
F p k ( t ) = min { L P k ( t ) L P k min , Q G T p }
Q G T p = P G T max P G T ( t ) η G T H H V

3.1.4. Case 4: Gas Demand/Heating Demand and Gas Storage at Pipeline k

In case 4, Fpk(t) is calculated as presented below.
F p k ( t ) = L P k ( t ) L P k min + V g s ( t )

3.1.5. Case 5: Gas Demand/Heating Demand and Gas Turbine at Pipeline k

In case 5, Fpk(t) is calculated as same as case 1.

3.1.6. Case 6: Gas Storage and Gas Turbine at Pipeline k

In case 6, Fpk(t) is calculated as presented below.
F p k ( t ) = min { L P k ( t ) L P k min , Q G T p + min { V g s max V g s ( t ) , Q g s max } } + V g s ( t )

3.1.7. Case 7: Gas Demand/Heating Demand, Gas Storage and Gas Turbine at Pipeline k

In case 7, Fpk(t) is calculated as same as case 4.

3.2. Flow Chart

Flexibility capability is evaluated based on the proposed flexibility metric. The flexibility metric is calculated according to the presented optimal economic/environmental operation of integrated power-natural gas-heating energy systems with P2G and gas storage (i.e., Equations (8)–(14)). This non-convex, coupled, non-linear, multi-objective and multi-constraint optimization problem is solved by the multi-objective improved black-hole particle swarm optimization algorithm (MOIBHPSO) [29,30] which has been applied to several optimal operation studies of power systems and integrated energy systems [16,24]. The equality and inequality constraints are handled using the method presented in References [16,24]. The overall flow chart is shown in Figure 1.

4. Case Studies

4.1. Description of Case Studies

The integrated power-natural gas-heating energy systems shown in Figure 2 is composed by 39-bus power system and Belgian 20-node gas system [9,16,23]. The integrated network has 5 coal-fired units, 3 gas-fired units, 2 wind power units, 2 P2G facilities, 24 pipelines, 2 gas wells, 3 gas storages and 2 compressors. Total power generation capacity is 3903 MW. Power demand, gas demand and heating demand are shown in Figure 3 where maximum power load is at 19:00 and maximum gas/heating load is at 20:00. The parameters of cost and emissions for power systems and gas network are shown in Table 1, Table 2 and Table 3. In addition, initial line pack is given as 0.952 MSm3 and the initial capacity of gas storage is given as 0 MSm3, 0 MSm3 and 0.003 MSm3. Predicted wind power generation is 29,335.399 MWh. Other parameters can be found in [16]. The optimal economic/environmental dispatch of the integrated power-natural gas-heating energy systems with P2G and gas storage is studied to illustrate behavior of the proposed model and calculate metric of flexibility in two case studies using MATLAB language programming.

4.2. Analysis of Simulation Results

4.2.1. Effects of P2G on Operation of Integrated Power-Natural Gas-Heating Energy Systems

The optimal dispatch results are shown in Table 4. Wind power output and curtailed wind power without P2G and with P2G are given in Figure 4 and Figure 5, respectively. The power output of coal-fired units and gas-fired units is shown in Figure 6. Besides, the linepack of pipelines and gas pressure of node 6 are given in Figure 7 and Figure 8. Gas flow of gas wells and gas storage as well as volume of gas storage can be found in Figure 9, Figure 10 and Figure 11.
From these obtained results, when P2G is considered, it has obvious advantages in many aspects which can be described in details as below.
(1)
The total operational cost declined by $7000 and SOx emissions decreased by 790 kg. The main reasons for the decrease in operational cost are the injection of gas produced by P2G to gas network and thus the reduction of gas from gas wells. The main reason for the reduction of SOx emissions is the decrease of power output of coal-fired units. More specifically, the power output of coal-fired units is increased by 25.895MW at 20:00 but decreased by 39.938 MW and 9.760 MW at 19:00 and 21:00, respectively. In general, the power output of coal-fired units is declined when P2G is taken into account and thus SOx emissions are decreased accordingly.
(2)
CO2 is reduced by 620 ton due to the reduction of gas flow of gas wells and absorption of CO2 by methanation process.
(3)
Wind power output is increased by 6266.742 MWh as well as the rate of wind power accommodation is raised from 74.42% to 95.78%. It is noted that increased wind power is converted to methane to be stored in natural gas network which can be used to supply peak gas load or heating load later.
(4)
As both gas load and heating load are peaked at 20:00, linepack is not sufficient at the time and gas pressure of gas node (for example node 6) may below its minimum pressure which will affect normal operation of natural gas network. In order to solve this problem, gas consumption for gas-fired units is decreased and accordingly power output of coal-fired units is also adjusted, which can be seen from Figure 6. Due to gas produced from P2G inflowing to natural gas network, linepack as well as node pressure are increased significantly which can be found from Figure 7 and Figure 8.
(5)
Due to the increased gas from P2G to supply gas demand and heating demand, there has been a certain decline in the gas flow of gas wells and gas storage as well as an obvious increase in the volume of gas storage which can be seen from Figure 9, Figure 10 and Figure 11.

4.2.2. Effects of P2G on Flexibility of Integrated Power-Natural Gas-Heating Energy Systems

The total gas redundancy and flexibility metric of integrated energy systems without P2G and with P2G are given in Table 5. Moreover, the hourly flexibility metric of integrated energy systems without P2G and with P2G are shown in Table 6.
Owing to the gas injection from P2G, the gas redundancy of natural gas network is increased from 10.267 Mm3 to 11.749 Mm3 (increased by 14.43%) as well as flexibility metric is raised from 0.244 to 0.419 (raised by 71.72%). It is noted that the peak load of power, gas and heating almost appears at 20:00 and at this time there is no wind curtailment. The integrated power-natural gas-heating energy systems has great challenge in reliable operation and flexibility. If gas flow of gas turbines is not declined to decrease gas load of natural gas network, the simulated pressure of node 6 is below zero which means the natural gas network cannot operate normally. After the adjustment of gas flow of gas turbines, pressure of node 6 is still below its lowest value (10 bar) which can be found from Figure 8. Even though there is no wind curtailment at the time of peak load, this problem still can be solved through gas injection from P2G which can be stored, transported in natural gas network and supply gas and heating load when peak demand arrives. That is exactly why flexibility of the integrated power-natural gas-heating energy systems can be raised significantly by P2G.
The increase of flexibility metric from 0.244 to 0.419 greatly benefits the integrated power- natural gas-heating energy systems. More specifically, the ability to deal with high ramp caused by gas demand/heating demand is better, the linepack of pipelines is more adequate to maintain gas pressure of gas nodes and gas supplying for gas turbines in power systems is more abundant.

5. Conclusions

A multi-objective optimization model is presented to maximize both economic and environmental benefits from operating the integrated power-natural gas-heating energy systems with P2G and gas storage. The flexibility contribution of P2G is assessed using a novel flexibility metric based on redundant linepack and gas storage. The results of case studies demonstrate that economic/environmental benefit of P2G in cost saving ($7000), emissions reduction (790 kg of SOx and 620 ton of CO2) and accommodation of wind power (from 74.42% to 95.78%). Moreover, P2G significantly improves the flexibility of integrated energy systems with a 71.72% increase. These contribution from P2G is critical in the operation performance of power system, gas network and heating sector in view of reducing decline of gas supply to power system, lessening dependance on gas wells and preventing large drop of node pressure when peak demand arrives.

Author Contributions

J.L.: Conceptualization, Funding acquisition, Methodology, Project administration, Software, Supervision, Writing—original draft; W.S.: Data curation, Methodology, Resources, Writing—review &editing; J.Y.: Formal analysis, Investigation, Validation. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Fundamental Research Funds for the Central Universities, grant number 2020YQJD09 and Training Program of Innovation and Entrepreneurship for Undergraduates of China University of Mining and Technology-Beijing, grant number C202004924.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

Nomenclature

Parameters
TTime intervals
τConstant value related to the variability index of the compressor
CijConstant value related to physical parameters and compressibility factor of pipeline ij
βcsEnergy conversion coefficient of compressor s
ωkConstant related to parameters of pipeline k
ηheat, ηGT, ηcsHeating efficiency of natural gas, efficiency of gas turbines, efficiency of compressor s
ηP2GEfficiency of P2G which indicates the total conversion efficiency of electricity (i.e. curtailed renewable energies) to gas (i.e. methane)
EheatHeating demand (MJ)
LHV, HHVLower heating value and higher heating value of natural gas (MJ/m3)
NG, Nw, Ngs, NP2G, NplNumber of thermal units, gas wells, gas storage, P2G and pipelines
ai, bi, ci, di, eiCoefficient of the fuel cost of thermal units
αi, βi, γi, δi, λiCoefficient of the pollutant emissions
PDPower demand (MW)
QGD, QHDGas demand, gas flow supplied for heating demand (MSm3/h)
L P k min Minimum Linepack of pipeline k (MSm3)
M i min , M j min Minimum pressure of gas node i and gas node j (bar)
P G T max Maximum power output of the gas turbine (MW)
P G i min Minimum power output of ith thermal unit (MW)
Q g s max Maximum gas flow of gas storage (MSm3/h)
V g s max Maximum volume of the gas storage (MSm3)
X p min , X p max Minimum and maximum value of the pth state variable
Sets and Variables
tTime t (h)
Set_I(i)The set of pipeline ij which lets gas node i as the input node
Set_O(i)The set of pipeline ij which lets gas node i as the output node
COperational cost ($)
EEmissions (lb or kg)
F i p o w e r , F j w e l l Fuel cost of ith thermal unit, gas cost of the jth gas well ($)
F m g s , F k P 2 G Operational cost of mth gas storage, operational cost of kth P2G ($)
FFlexibility metric
FpkRedundancy of gas in pipeline k and gas storage (MSm3)
LPij, LPkLinepack of pipeline ij and pipeline k (MSm3)
Mi, MjGas pressure of gas node i and gas node j (bar)
Mos, MisGas pressure of output node and input node connected with compressor s (bar)
PGTPower output of the gas turbine (MW)
PP2G, PcsPower consumed by P2G and compressor s (MW)
PGiPower output of ith thermal unit (MW)
QGT, QP2GGas flow of gas turbines, gas flow of P2G (MSm3/h)
Q c s c o n , QcsGas consumed by compressor s, gas flowing through compressor s (MSm3/h)
Qwj, Qgs,mGas flow of gas well j, gas flow of gas storage m (MSm3/h)
QijGas flow of the pipeline ij (MSm3/h)
Q i j i n , Q i j o u t Injection and withdrawal gas flow of pipeline ij (MSm3/h)
VgsVolume of gas storage (MSm3)
XpThe pth state variable

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Figure 1. The overall flow chart.
Figure 1. The overall flow chart.
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Figure 2. The integrated power-natural gas-heating energy systems with power to gas (P2G) and gas storage.
Figure 2. The integrated power-natural gas-heating energy systems with power to gas (P2G) and gas storage.
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Figure 3. Hourly demand of power, gas and heating.
Figure 3. Hourly demand of power, gas and heating.
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Figure 4. Wind power output withoutP2G and with P2G.
Figure 4. Wind power output withoutP2G and with P2G.
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Figure 5. Curtailed wind power without P2G and with P2G.
Figure 5. Curtailed wind power without P2G and with P2G.
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Figure 6. Power output of thermal units without P2G and with P2G.
Figure 6. Power output of thermal units without P2G and with P2G.
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Figure 7. Linepack of pipelines without P2G and with P2G.
Figure 7. Linepack of pipelines without P2G and with P2G.
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Figure 8. Gas pressure of gas node 6 without P2G and with P2G.
Figure 8. Gas pressure of gas node 6 without P2G and with P2G.
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Figure 9. Gas flow of gas wells without P2G and with P2G.
Figure 9. Gas flow of gas wells without P2G and with P2G.
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Figure 10. Gas flow of gas storage without P2G and with P2G.
Figure 10. Gas flow of gas storage without P2G and with P2G.
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Figure 11. Total volume of gas storage without P2G and with P2G.
Figure 11. Total volume of gas storage without P2G and with P2G.
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Table 1. Cost coefficient of thermal units in power systems.
Table 1. Cost coefficient of thermal units in power systems.
Unit No.a/(103 $/h)b/(103 $/(MW∙h))c/($/(MW2∙h))d/(103 $/h)e/MW−1
Coal-fired unit 10.7860.0380.1520.450.041
Coal-fired unit 20.4510.0460.1060.60.036
Coal-fired unit 31.050.0410.0280.320.028
Coal-fired unit 41.2440.0380.0350.260.052
Coal-fired unit 51.6580.0360.0210.280.063
Gas-fired unit 12.7130.0760.036//
Gas-fired unit 22.8010.0740.028//
Gas-fired unit 32.9040.0730.024//
Table 2. Emissions coefficient of thermal units in power systems.
Table 2. Emissions coefficient of thermal units in power systems.
Unit No.α/(103lb/h)β/(lb/(MW∙h))γ/(lb/(MW2∙h))δ/(lb/h)λ/MW−1
Coal-fired unit 10.103−2.4440.0310.5040.021
Coal-fired unit 20.103−2.4440.0310.5040.021
Coal-fired unit 30.3−4.070.0510.4970.02
Coal-fired unit 40.3−4.070.0510.4970.02
Coal-fired unit 50.32−3.8130.0340.4970.02
Gas-fired unit 10.103−3.9020.0150.1630.02
Gas-fired unit 20.11−3.9020.0160.1720.021
Gas-fired unit 30.11−3.9020.0160.1720.021
Table 3. Cost parameters of gas network.
Table 3. Cost parameters of gas network.
ItemsCost
Gas price of gas well 1/(M$/MSm3)0.036
Gas price of gas well 2/(M$/MSm3)0.043
Storage cost of gas storage 1/(M$/MSm3)0.034
Storage cost of gas storage 2/(M$/MSm3)0.03
Storage cost of gas storage 3/(M$/MSm3)0.03
Operational cost of P2G 1/(M$/MW)35.55
Operational cost of P2G 2/(M$/MW)35.55
Table 4. Optimal dispatch results of integrated energy systems without P2G and with P2G.
Table 4. Optimal dispatch results of integrated energy systems without P2G and with P2G.
Cost /M$SOx Emissions /tonCO2/104 tonRate of Abandoned Wind PowerIncreased Wind Power by P2G/MWh
Without P2G2.51018.8116.28625.58%0
With P2G2.50318.0216.2244.22%6266.742
Table 5. Total gas redundancy and flexibility metric of integrated energy systems without P2G and with P2G.
Table 5. Total gas redundancy and flexibility metric of integrated energy systems without P2G and with P2G.
Gas Redundancy/Mm3Flexibility Metric
Without P2G10.2670.244
With P2G11.7490.419
Table 6. Hourly flexibility metric of integrated energy systems without P2G and with P2G.
Table 6. Hourly flexibility metric of integrated energy systems without P2G and with P2G.
Time/h123456789101112
Without P2G0.01370.00630.00510.00520.00660.00810.00860.00620.01720.08350.00480.0057
With P2G0.01310.00910.00700.00680.00680.00540.00520.01830.01770.00780.00520.0046
Time/h131415161718192021222324
Without P2G0.00620.00550.00810.00630.01320.00400.00470.00440.00430.00610.00500.0057
With P2G0.00590.14600.09620.01070.00440.00470.00470.00570.00560.00620.00950.0125
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Liu, J.; Sun, W.; Yan, J. Effect of P2G on Flexibility in Integrated Power-Natural Gas-Heating Energy Systems with Gas Storage. Energies 2021, 14, 196. https://0-doi-org.brum.beds.ac.uk/10.3390/en14010196

AMA Style

Liu J, Sun W, Yan J. Effect of P2G on Flexibility in Integrated Power-Natural Gas-Heating Energy Systems with Gas Storage. Energies. 2021; 14(1):196. https://0-doi-org.brum.beds.ac.uk/10.3390/en14010196

Chicago/Turabian Style

Liu, Jing, Wei Sun, and Jinghao Yan. 2021. "Effect of P2G on Flexibility in Integrated Power-Natural Gas-Heating Energy Systems with Gas Storage" Energies 14, no. 1: 196. https://0-doi-org.brum.beds.ac.uk/10.3390/en14010196

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