A Multi-Objective Energy and Environmental Systems Planning Model: Management of Uncertainties and Risks for Shanxi Province, China
Abstract
:1. Introduction
2. Overview of the Study Area
2.1. The Province of Shanxi
2.2. Shanxi Electric Power System
2.3. Statement of Problems
3. Model Development
3.1. Methodology
3.2. Fuzzy Chance-Constrained Fractional Programming-Shanxi Modeling Formulation
- (1)
- the total cost for primary energy supply:
- (2)
- fixed and variable operating costs for power generation:
- (3)
- cost for capacity expansions:
- (4)
- cost for pollutant mitigation:
- (5)
- penalty for pollutant emission:
- (6)
- transmission cost of electricity export:
- (7)
- fiscal subsidy of renewable energy generation and pollution treatment:
- (1)
- electricity demand constraints:
- (2)
- capacity limitation constraint for power generation facilities:
- (3)
- primary energy availability constraints:
- (4)
- capacity expansion constraints:
- (5)
- expansion options constraints:Ytjm = 1, if expansion is undertakenYtjm = 0, otherwise
- (6)
- renewable energy availability constraints:
- (7)
- export electricity constraints:
- (1)
- pollutants emission constraints:
- (2)
- export constraints:
- (3)
- non-negativity constraints:
4. Data Collection and Results Analysis
5. Conclusions
- (a)
- A FCFP approach could balance the dual objectives of maximizing clean energy generation and minimizing economic cost and the trade-offs between the environmental constraints and system efficiency.
- (b)
- A FCFP approach could convert the availability parameters of renewable energy with intermittent characteristics into determined model input parameters.
- (c)
- A FCFP approach could provide various decision alternatives with different risk preferences. Comparison and sensitivity analysis of results obtained from the alternatives could help decision makers make more appropriate decisions.
- (d)
- A FCFP approach could offer a large number of scenario-based results, which could capture the impact of different energy policies on an expansion scheme, power generation patterns, and system costs.
Author Contributions
Funding
Conflicts of Interest
Nomenclature
Indices | |
t | index for the time periods (t = 1, 2, …, T, 5 year for each period). |
j | index for the power generation technology (j = 1, 2, …, J, and j = 1 coal-fired power, j = 2 coalbed methane power, j = 3 hydropower, j = 4 wind power, j = 5 photovoltaic). |
I | the number of non-renewable power generation technology (I = 2). |
k | the type of electricity demand (where k = 1 for local demand, k = 2 for export). |
m | index for the capacity expansion options (m = 1, 2, …, M). |
n | the type of pollutant, n = 1, 2, 3 (where n = 1 for SOx, 2 for NOx, 3 for PM). |
Decision Variables | |
supply of primary energy resource (coal and coalbed methane) for power generation technology j in period t (TJ). | |
decision variable and represents electricity generation from power generation technology j in period t (GWh). | |
capacity option m for power generation technology j in period t. | |
Parameters | |
availability of hydropower in period t. | |
availability of wind energy in period t under level pr. | |
availability of solar energy in period t under level pr. | |
cost for expanding capacity for generating electricity technology j in period t (103 $/GW). | |
penalty of pollutant n emission of power generation technology j in period t (103 $/tonne). | |
cost for primary energy supply for power generation technology in period t (103 $/TJ). | |
fixed and variable costs for generating electricity via technology j in period t (103 $/GWh). | |
cost for pollutant n mitigation of power generation technology j in period t (103 $/tonne). | |
cost for transmission and distribution in period t (103 $/GWh). | |
local electricity demand (GWh) in period t. | |
export electricity demand of other provinces (GWh) in period t. | |
capacity expansion option m of power generation technology j under different scheme in period t (GW). | |
the permitted emission of air contaminant in period t (103 tonne). | |
the current capacity of power generation technology j in period t (GW). | |
retirement capacity of power generation technology j in period t (GW). | |
subsidy of pollution treatment from fossil-fired generation technology j in period t. | |
subsidy of renewable energy generation technology j in period t. | |
the maximum service time of power generation technology j in period t (h). | |
the maximum service time of electric transmission line in period t (h). | |
maximum capacity of generation technology j in period t (GW). | |
available primary energy j in period t (TJ). | |
the maximum electric transmission capacity in period t. | |
emission factor of the pollutant n in period t (103 tonne/GWh). | |
conversion rate from hydropower to electricity in period t. | |
conversion rate from wind energy to electricity in period t. | |
conversion rate from solar energy to electricity in period t. | |
energy consumption conversion rate by power generation technology j in period t (TJ/GWh). | |
transmission loss in period t (k = 1, local; k = 2, export). | |
the minimum share of power generation by renewable energy in the whole energy supply. |
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Ref. No. | Objective Type | Mathematical Method | Solution Type | Analysis Mode | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
SO | MO | DO | FMP | SMP | ILP | FP | Others | MC | MB | MSE | Others | Scenario | Sensitivity | |
[1] | ✓ | - | - | - | - | ✓ | - | - | ✓ | - | - | - | ✓ | ✓ |
[4] | ✓ | - | - | ✓ | ✓ | ✓ | - | - | ✓ | - | - | - | - | - |
[5] | ✓ | - | - | ✓ | ✓ | ✓ | - | - | ✓ | - | - | - | ✓ | - |
[6] | ✓ | - | - | - | ✓ | ✓ | - | - | ✓ | - | - | - | ✓ | - |
[7] | ✓ | - | - | ✓ | - | ✓ | - | - | ✓ | - | - | - | ✓ | - |
[8] | ✓ | - | - | - | ✓ | - | - | - | ✓ | - | - | - | ✓ | - |
[9] | ✓ | - | - | ✓ | - | - | - | - | ✓ | - | - | - | - | - |
[10] | ✓ | - | - | ✓ | - | ✓ | - | - | ✓ | - | - | - | ✓ | - |
[12] | ✓ | - | - | - | ✓ | ✓ | - | - | ✓ | - | - | - | ✓ | ✓ |
[17] | ✓ | - | - | ✓ | - | - | - | - | ✓ | - | - | - | - | ✓ |
[19] | ✓ | - | - | - | - | - | - | ✓ | ✓ | - | - | - | - | ✓ |
[21] | - | ✓ | - | - | - | - | ✓ | - | - | - | ✓ | - | - | |
[24] | - | - | ✓ | - | ✓ | - | ✓ | - | - | - | ✓ | - | ✓ | - |
[26] | - | - | ✓ | - | ✓ | - | ✓ | - | - | - | ✓ | - | ✓ | - |
[31] | ✓ | - | - | ✓ | - | ✓ | - | - | ✓ | - | - | - | - | - |
[33] | ✓ | - | - | ✓ | - | - | - | - | - | - | - | ✓ | - | - |
[37] | ✓ | - | - | ✓ | ✓ | - | - | ✓ | - | ✓ | - | - | - | ✓ |
Period | t = 1 | t = 2 | t = 3 | ||
---|---|---|---|---|---|
Energy supply cost (103 $/TJ) | Coal | [3.26,4.05,4.48] | [4.46,4.68,5.19] | [5.38,5.76,5.90] | |
Coalbed methane | [6.36,6.86,6.96] | [7.14,7.42,7.77] | [7.98,8.18,8.38] | ||
Units of energy carrier per units of power generation (TJ/GWh) | Coal | 9.23 | 9.06 | 8.89 | |
Coalbed methane | 7.81 | 7.54 | 6.79 | ||
Emission factor of the pollutant (tonne/GWh) | Coal | SOx | 3.9 | 3.315 | 2.702 |
NOx | 3.6 | 3.06 | 2.6 | ||
PM | 0.8 | 0.65 | 0.5 | ||
Coalbed methane | SOx | 3.734 | 3.174 | 2.698 | |
NOx | 1.881 | 1.599 | 1.359 | ||
PM | 0.703 | 0.563 | 0.45 |
Residual | Period | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
Capacity | t = 1 | t = 2 | t = 3 | |||||||
Capacity expansion options (GW) | m = 1 | m = 2 | m = 3 | m = 1 | m = 2 | m = 3 | m = 1 | m = 2 | m = 3 | |
Coal | 59.43 | 2.2 | 6.55 | 10.9 | 2.2 | 6.55 | 10.9 | 2.2 | 6.55 | 10.9 |
Coalbed methane | 3.88 | 3.12 | 5.12 | 7.12 | 3.12 | 5.12 | 7.12 | 3.12 | 5.12 | 7.12 |
Wind | 8.72 | 5.28 | 6.28 | 7.28 | 5.28 | 6.28 | 7.28 | 5.28 | 6.28 | 7.28 |
PV | 5.9 | 4.1 | 6.1 | 8.1 | 4.1 | 6.1 | 8.1 | 4.1 | 6.1 | 8.1 |
Hydro | 2.44 | 0.6 | 1.35 | 2.07 | 0.6 | 1.35 | 2.07 | 0.6 | 1.35 | 2.07 |
Retirement unit capacity of coal-fired (GW) | 7.86 | 12.6 | 10.13 |
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Zhou, C.; Huang, G.; Chen, J. A Multi-Objective Energy and Environmental Systems Planning Model: Management of Uncertainties and Risks for Shanxi Province, China. Energies 2018, 11, 2723. https://doi.org/10.3390/en11102723
Zhou C, Huang G, Chen J. A Multi-Objective Energy and Environmental Systems Planning Model: Management of Uncertainties and Risks for Shanxi Province, China. Energies. 2018; 11(10):2723. https://doi.org/10.3390/en11102723
Chicago/Turabian StyleZhou, Changyu, Guohe Huang, and Jiapei Chen. 2018. "A Multi-Objective Energy and Environmental Systems Planning Model: Management of Uncertainties and Risks for Shanxi Province, China" Energies 11, no. 10: 2723. https://doi.org/10.3390/en11102723
APA StyleZhou, C., Huang, G., & Chen, J. (2018). A Multi-Objective Energy and Environmental Systems Planning Model: Management of Uncertainties and Risks for Shanxi Province, China. Energies, 11(10), 2723. https://doi.org/10.3390/en11102723