Determination of Weights for the Integrated Energy System Assessment Index with Electrical Energy Substitution in the Dual Carbon Context
Abstract
:1. Introduction
- (1)
- Electrical energy substitution is introduced to the industrial-park-integrated energy system and a correlated indicators model for electrical energy substitution is established.
- (2)
- A target-criteria-indicator tri-level index system is established taking the five influential factors of economy, energy consumption, society, reliability and environmental protection into account comprehensively.
- (3)
- The G1 method of constructing a consistency matrix is used to calculate the weights of the established index systems. Case studies indicates that compared with the G1 method, the weight acquired via the proposed method is more genuine.
2. Integrated Energy System Evaluation Index
2.1. Integrated Energy System Structure
2.2. Quantitative Model of Evaluation Indicators
2.2.1. Electrical Energy Substitution Indicators
- (1)
- Comprehensive energy utilization rate [28]: the ratio of the total energy used by the system to the total energy supplied.
- (2)
- The proportion of clean energy supply [29]: this reflects the system’s ability to consume new energy generation. Increasing the proportion of clean energy supply has an important impact on reducing energy costs, alleviating the problem of wind power and photovoltaic power curtailment, and reducing environmental pollution.
- (3)
- The terminal electrical energy ratio [29]: there are various types of loads in the integrated energy system of the industrial park. As the application of electrical energy substitution equipment can be re-flected in the index of terminal energy proportion, the larger the index value, the higher the electrification level of the industrial park.
- (4)
- Effective replacement power [29]: this is a visual reflection of the improvement of power consumption and optimization of the energy structure of the integrated energy system.
2.2.2. Low-Carbon Indicators
- (1)
- Energy consumption per unit of GDP : this is the main indicator reflecting the level of energy consumption and the status of energy saving and consumption reduction.
- (2)
- Carbon dioxide emissions [23]: this is obtained by summing the estimated amount of CO2 emissions due to various energy consumptions.
- (3)
- CCUS technology A: carbon dioxide emissions reduction per unit of power generation after adopting CCUS technology in the power system.
2.2.3. Technical Indicators
- (1)
- Relative energy saving rate [30]: this can reflect the energy consumption saved by the integrated energy system after the introduction of electrical energy substitution technology; the higher the relative energy saving rate, the better the result.
- (2)
- Energy storage allocation rate ε [30]: the total ratio of energy storage capacity connected to the grid to the total installed capacity of new energy.
- (3)
- Load point failure rate [31] is represented as follows:
- (4)
- Average annual power outage time [31] is represented as follows:
- (5)
- Average power supply availability [31] is described as follows:
- (6)
- Expected value of system power shortage [31] is described by the following equation:
2.2.4. Economic Indicators
- (1)
- Initial investment construction cost [29]: the initial investment refers to the initial construction equipment investment of the park:
- (2)
- Operation and maintenance cost [29]: the operation and maintenance cost include the energy consumption cost and equipment maintenance cost during the operation of the equipment.
- (3)
- Income index of unit energy supply [32]: the revenue per unit of energy supply is the ratio of the system revenue from the sale of electricity, heat and cooling to the system’s supply of electricity, heat and cooling energy to customers.
- (4)
- Investment payback period [30]: the payback period is the time required to make the accumulated economic benefits equal to the initial investment cost. The payback period is the number of years to recover the investment through the return flow of funds. In general, the shorter the payback period time, the more profitable the project will be.
3. Indicator Weight Calculation Method
3.1. G1 Method
- (1)
- Determine the order relationship of indicators.
- (2)
- The importance of adjacent indicators is assigned.
- (3)
- Calculate the weights of the indicator set.
3.2. G1 Method for Constructing the Consistency Matrix
4. Main Results: Case Study
4.1. Index Weights Determined by the G1 Method for Constructing a Consistency Matrix
- (1)
- Secondary indicator
- (2)
- Three-level indicator
4.2. Comparison of Calculation Results for Both Methods
5. Conclusions
- (1)
- Compared with the G1 method, the weight of each index in the proposed index system determined by the G1 method and a constructed consistency matrix is more reasonable and more consistent with reality. Moreover, the proposed method is convenient and fast to determine the weight coefficients of indexes.
- (2)
- On the basis of ensuring reliability, IESs should build a green consumption model with clean energy on the source side and electrical energy on the user side, promote the implementation of an electrical energy substitution strategy and CCUS technology to reduce carbon dioxide emissions, and realize the configuration and optimization of different types of energy through technical performance to improve energy utilization.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Ref. | Year | Evaluation Index | Weight Calculation Method | Method Strength |
---|---|---|---|---|
[10] | 2009 | economic, energetic, environmental | AHP and PROMETHEE | different evaluation methods may give different results |
[11] | 2012 | energy, economic, environmental and integrated | - | a wise practice |
[12] | 2015 | economic, energy consumption, environment | information entropy and expert assessment | objective and practical |
[13] | 2017 | reliable energy supply, natural gas accommodation, peak-cutting and valley-filling, renewable overcapacity | - | - |
[14] | 2018 | technology, economy, environment, society | rank correlation analysis and entropy information | simple and practical |
[15] | 2019 | economic, reliability, renewable accommodation, environmental | Mixed Scatter-Monte Carlo sampling | high evaluation efficiency and effectively identify weaknesses in IES |
[16] | 2021 | economic, load peak valley ratio, carbon emission | AHP and PROMETHEE | - |
[17] | 2022 | economy, environmental protection, energy efficiency, reliability, technology | integrated the Best–worst Method and the CRITIC | excellent robustness and effective |
[18] | 2023 | technology, economy, environment, society | TFN and AHP | intuitive and consistent with reality, and high data information utilization rate |
Explanation | |
---|---|
1.0 | Indicator has the same importance as indicator |
1.1 | Indicator and are between equally important and marginally important |
1.2 | Indicator is slightly more important than indicator |
1.3 | Indicator and are between slightly important and relatively important |
1.4 | Indicator is very important compared to indicator |
1.5 | Indicator and are between relatively important and very important |
1.6 | Indicator is more important than indicator |
1.7 | Indicator is extremely important compared to indicator |
1.8 | Indicator and are between more important and extremely important |
Indicator | Nomenclature | |
---|---|---|
Secondary indicator | Electricity substitution indicators | |
Low-Carbon Indicators | ||
Technical Indicators | ||
Economic Indicators | ||
Three-level indicator | Comprehensive energy utilization rate | |
The proportion of clean energy supply | ||
The terminal electrical energy ratio | ||
Effective replacement power | ||
Energy consumption per unit of GDP | ||
Carbon dioxide emissions | ||
CCUS technology | ||
Relative energy saving rate | ||
Energy storage allocation rate | ||
Load point failure rate | ||
Average annual power outage time | ||
Average power supply availability | ||
Expected value of system power shortage | ||
Initial investment construction cost | ||
Operation and maintenance cost | ||
Income index of unit energy supply | ||
Investment payback period |
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Share and Cite
Zhao, Y.; Lv, X.; Shen, X.; Wang, G.; Li, Z.; Yu, P.; Luo, Z. Determination of Weights for the Integrated Energy System Assessment Index with Electrical Energy Substitution in the Dual Carbon Context. Energies 2023, 16, 2039. https://doi.org/10.3390/en16042039
Zhao Y, Lv X, Shen X, Wang G, Li Z, Yu P, Luo Z. Determination of Weights for the Integrated Energy System Assessment Index with Electrical Energy Substitution in the Dual Carbon Context. Energies. 2023; 16(4):2039. https://doi.org/10.3390/en16042039
Chicago/Turabian StyleZhao, Yitao, Xin Lv, Xin Shen, Gang Wang, Zhao Li, Pinqin Yu, and Zhao Luo. 2023. "Determination of Weights for the Integrated Energy System Assessment Index with Electrical Energy Substitution in the Dual Carbon Context" Energies 16, no. 4: 2039. https://doi.org/10.3390/en16042039
APA StyleZhao, Y., Lv, X., Shen, X., Wang, G., Li, Z., Yu, P., & Luo, Z. (2023). Determination of Weights for the Integrated Energy System Assessment Index with Electrical Energy Substitution in the Dual Carbon Context. Energies, 16(4), 2039. https://doi.org/10.3390/en16042039