Environmental Performance Evaluation of New Type Thermal Power Enterprises Considering Carbon Peak and Neutrality
Abstract
:1. Introduction
2. Theoretical Background
2.1. Definition of Environmental Performance
2.2. Selection of Evaluation Indicators
2.3. Determination of Evaluation Methods
3. Establishment of an Evaluation Indicator System for New Type Thermal Power Enterprises
3.1. Setting Ideas
3.2. Setting Indicators
- The management level of environmental responsibility includes two aspects: policy implementation and environmental management. The level of policy implementation is used to characterize the enterprise’s compliance with environmental protection-related rules and regulations. The number of environmental safety incidents and the amount of environmental pollution penalties received are used to reflect the level of implementation in environmental protection and safe production. The environmental management level is used to characterize the enterprise’s environmental management plan and management structure and use the environmental assessment pass rate of new projects and whether the enterprise has obtained ISO14001 certification to reflect the construction and operation of the enterprise’s internal environmental management system.
- The response level of environmental responsibility includes three aspects: energy saving, waste treatment, and carbon emission reduction. The level of energy saving and consumption reduction is used to characterize the energy consumption of the enterprise in the whole process of production and operation. The coal consumption of power supply, boiler efficiency, total water consumption, and comprehensive power consumption rate are used to reflect the energy consumption efficiency and its technical aspects in the power production process of the enterprise. The waste treatment level is used to characterize the waste discharge and recycling of the enterprise in the production and operation process. The desulfurization efficiency, comprehensive denitration efficiency, SO2 emission performance, NOx emission performance, and smoke emission performance are used to reflect the waste emission level of the enterprise and its treatment effect. The carbon emission reduction level is used to characterize the comprehensive carbon source and carbon sink level in the production and operation process of the enterprise. It adopts the proportion of new energy installed capacity, the approval of new energy projects, the intensity of CO2 emissions, the proportion of ultra-low emission unit capacity, the saving of standard coal, and the reduction of carbon emissions. The amount reflects the current power generation structure and carbon emission level of the enterprise, and it also reflects the measures to reduce carbon emissions and their effectiveness.
- The financial aspect of environmental responsibility mainly includes the level of investment in environmental protection. The level of environmental protection investment is used to characterize the enterprise’s direct or indirect use of funds for various environmental protection undertakings during the operating cycle, and the environmental protection investment rate (ratio of environmental protection investment to operating income) is used to reflect the enterprise’s financial environmental performance.
3.3. Setting Evaluation Model
- (1)
- All the original observed data of all evaluation objects corresponding to the evaluation indexes were collected and standardized, and the standardized covariance matrix was calculated. At the same time, there are two commonly used test methods to test whether the data of the evaluation object can be applied with factor analysis method, Kaiser–Meyer–Olkin (KMO) test, and Bartlett sphericity test. The KMO test is mainly used to test whether the variables have high bias correlation; the KMO value is generally between 0 and 1, and when its value is less than 0.5, it means that the variable is not suitable for factor analysis, while when its value is greater than 0.9, it means that the variable is very suitable for factor analysis. The Bartlett Sphericity test is mainly used to test whether the correlation matrix between the variables to be analyzed is a unit matrix. The original hypothesis is that “variables are independent”. If the test result does not reject the original hypothesis, it means that the correlation between the evaluation indicators of the evaluation object is low, and it is not suitable for factor analysis.
- (2)
- Build an initial factor model and estimate the relevant parameters. The general representation of the factor model is shown in (1), and the parameters to be estimated include the minimum number of factors k, the common variance and factor contribution rate, and the factor loading coefficient. There are many methods for parameter estimation, and the default principal component method is generally adopted. The number of factors k is different, and the results of the final comprehensive evaluation will also be different. Therefore, the number of factors must follow certain principles. In this study, the basic principle commonly used by scholars is adopted, that is, the cumulative variance contribution rate is greater than 85%.
- (3)
- The expressions of the common factors are given. Based on the above parameter estimation, the factor model determined by the number of public factors and the factor loading matrix can be obtained. To obtain the evaluation value of the evaluation object, the expression of the public factor is also obtained on this basis, as shown in (2), where Fi represents the i-th common factor, and cij is the coefficient to be estimated of the common factor expression. The method uses regression analysis.
- (4)
- A comprehensive evaluation model was constructed, and a comprehensive evaluation analysis was implemented. After obtaining the public factor expressions using the above steps, its comprehensive evaluation model is shown in (3).
4. Environmental Performance Evaluation of New Type Thermal Power Enterprises
4.1. Data Sources and Processing
4.2. Sub-Item Evaluation Based on First Order Factor Analysis
- From the perspective of policy implementation level, most of the sample enterprises strictly abide by the laws and regulations related to environmental protection and safety, and ensure that they abide by the environmental protection rules under the premise of safe production; the comparison also shows that Huadian Power International, Huaneng Power International, and Datang Power Generation are characterized by insufficient enforcement and attention in policy implementation, resulting in a large gap between industries;
- From the perspective of environmental management level, only five sample enterprises, Jingneng Electric Power, Shenzhen Energy, Shanxi Coking Coal Group, Guodian Power, and Shanghai Power, exceed the average level, which is closely related to the size of the enterprise, region, and CEO attitude, etc.; The number of digits shows that the overall management level of the industry is not high, and it is urgent to improve the level of environmental protection response;
- From the perspective of energy saving level, the gap between Shanghai Electric Power, which ranks first, and Huadian International, which ranks last, is enormous. The lower median indicates that the overall energy saving efficiency of the industry is general, and the larger variance indicates that there are large technical barriers for upstream and downstream enterprises, and there is still more room for technological progress and breakthrough. It is worth noting that half of the enterprises exceed the average level, indicating that enterprises are willing to pay attention to energy saving ability and investment;
- From the perspective of waste disposal level, more than half of the sample enterprises are higher than the average, which fully shows the standardization degree of this indicator and the importance the industry attaches to it, the huge gap between leading enterprises and tailing enterprises also shows that there is a huge difference in the level of waste disposal technology between enterprises and that there exists ample room for improvement;
- From the perspective of environmental investment level, only four sample enterprises, Shanxi Coking Coal, Yudean Group, Shanghai Electric Power, and Hubei Energy, exceeded the average level, indicating that the industry as a whole is less concerned about environmental investment, making this level the lowest point among the sub-indicators;
- From the perspective of carbon reduction level, leading enterprises such as Shanghai Electric Power and Shanghai Energy have developed relatively well, while Shanxi Coking Coal and Shenneng Shares started late and developed slowly. This is closely related to the scale, region, and energy structure of the enterprises. The overall development level of the industry in general is poor and there is a large room for development.
4.3. Comprehensive Evaluation Based on Second-Order Factor Analysis
4.3.1. Comprehensive Evaluation
4.3.2. Cluster Analysis
- The first type includes Shanghai Electric Power, Yudean Group, Shanghai Energy, and Huadian Power International. The technical level of environmental protection and other aspects is leading in the industry, the development of clean energy has a good foundation, and the overall environmental performance level is relatively high. The focus of such enterprises in improving environmental performance in the future should be to ensure remaining at the leading edge of technology and to pay close attention to the environmental management of the whole process of production and operation.
- The second type of enterprises includes Hubei Energy, Shenzhen Energy, and Guodian Power. The common point of these enterprises is to vigorously develop clean energy, seize the opportunity of carbon emission reduction and carbon neutrality, take the lead in developing low-carbon related technologies, and improve their own image and development prospects in the industry. The focus of such enterprises to improve their environmental performance in the future should be to unswervingly carry out technology research and development, and to continuously adjust the energy structure of the enterprise.
- The third type of enterprises includes Jingneng Electric Power, Jiangsu Guoxin, and Shenneng Shares. The common point of these enterprises is that they have a high level of environmental management but a lack of technological breakthroughs and have failed to seize the opportunity to develop technology in the rapidly changing market. The focus of such enterprises is improving environmental performance in the future while ensuring the sustainable development of clean energy and focusing on technological innovation.
- The fourth type of enterprises includes China Shenhua, Huadian Energy, Shanxi Coking Coal and Datang Power Generation. What these enterprises have in common is that coal power accounts for the majority of the energy structure. Spending on pollution prevention and control of thermal power generation leads to the backward development of clean energy and the relatively lagging technical level. In the future, such enterprises should learn from the valuable experience of the first type of enterprises in improving environmental performance and strive to improve the investment in environmental protection based on their own advantages and characteristics to improve the economic benefits.
5. Conclusions and Recommendations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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General Objective | First Grade Indicators | Second Grade Indicators | Unit | Indicator Attribute |
---|---|---|---|---|
Environmental Performance Evaluation of New type Thermal Power Enterprises Considering Carbon Peak and Neutrality | Policy implementation level | Environmental safety events A1 | Piece | Inverse |
Environmental pollution penalties A2 | Million Yuan | Inverse | ||
Environmental management level | Environmental assessment pass rate of new projects A3 | % | Positive | |
ISO14000 Certification rate A4 | % | Positive | ||
Energy saving level | Power supply coal consumption A5 | g/kWh | Inverse | |
Boiler efficiency A6 | % | Positive | ||
Total water consumption A7 | Million Tons | Inverse | ||
Integrated plant electricity rate A8 | % | Inverse | ||
Waste disposal level | Desulfurization efficiency A9 | % | Positive | |
Integrated denitration efficiency A10 | % | Positive | ||
SO2 Emission performance A11 | g/kWh | Inverse | ||
NOx Emission performance A12 | g/kWh | Inverse | ||
Smoke emission performanceA13 | g/kWh | Inverse | ||
Environmental investment level | Environmental investment rate A14 | % | Positive | |
Carbon reduction level | New energy installation ratio A15 | % | Positive | |
New energy project approval A16 | MW | Positive | ||
CO2 emissions intensity A17 | g/kWh | Inverse | ||
Capacity ratio of ultra-low emission units A18 | % | Positive | ||
Saving standard coal A19 | Million Tons | Positive | ||
Reducing carbon emissions A20 | Million Tons | Positive |
KMO and Bartlett Tests | ||
---|---|---|
KMO sampling suitability quantity | 0.635 | |
Bartlett Sphericity test | Approximate chi-square | 230.395 |
Freedom | 136 | |
Obvious | 0.000 |
Total Variance Explanation | ||||||
---|---|---|---|---|---|---|
Component | Initial Eigenvalue | Extraction of Square Sum of Loads | ||||
Total | Variance Proportion | Cumulative Proportion | Total | Variance Proportion | Cumulative Proportion | |
1 | 2.269 | 37.812 | 37.812 | 2.269 | 37.812 | 37.812 |
2 | 1.220 | 20.337 | 58.149 | 1.220 | 20.337 | 58.149 |
3 | 1.087 | 18.115 | 76.263 | 1.087 | 18.115 | 76.263 |
4 | 0.670 | 11.162 | 87.425 | |||
5 | 0.410 | 6.841 | 94.266 | |||
6 | 0.344 | 5.734 | 100.000 |
Component Score Coefficient Matrix | |||
---|---|---|---|
Indicator Variable | Common Factor | ||
F1 | F2 | F3 | |
New energy installation ratio X1 | 0.626 | −0.241 | 0.516 |
New energy project approval X2 | 0.673 | 0.241 | −0.466 |
CO2 emissions intensity X3 | 0.799 | 0.281 | 0.197 |
Capacity ratio of ultra-low emission units X4 | 0.466 | −0.706 | 0.269 |
Saving standard coal X5 | −0.150 | 0.676 | 0.651 |
Reducing carbon emissions X6 | 0.738 | 0.263 | −0.263 |
Clustering Results | ||||
---|---|---|---|---|
Sample enterprises | First Type | Second Type | Third Type | Fourth Type |
Shanghai electric power | Hubei energy | Jingneng electric power | China shenhua | |
Yudean group | Shenzhen energy | Jiangsu guoxin | Huadian energy | |
Shanghai energy | Guodian power | Shenneng shares | Shanxi coking coal group | |
Huadian power international | Huaneng power international | Huayin electric power | Datang power generation | |
Guangzhou development | Baoxin energy |
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Li, T.; Guo, Y.; Yi, L.; Gao, T. Environmental Performance Evaluation of New Type Thermal Power Enterprises Considering Carbon Peak and Neutrality. Sustainability 2022, 14, 3734. https://doi.org/10.3390/su14073734
Li T, Guo Y, Yi L, Gao T. Environmental Performance Evaluation of New Type Thermal Power Enterprises Considering Carbon Peak and Neutrality. Sustainability. 2022; 14(7):3734. https://doi.org/10.3390/su14073734
Chicago/Turabian StyleLi, Tao, Yunfen Guo, Liqi Yi, and Tian Gao. 2022. "Environmental Performance Evaluation of New Type Thermal Power Enterprises Considering Carbon Peak and Neutrality" Sustainability 14, no. 7: 3734. https://doi.org/10.3390/su14073734
APA StyleLi, T., Guo, Y., Yi, L., & Gao, T. (2022). Environmental Performance Evaluation of New Type Thermal Power Enterprises Considering Carbon Peak and Neutrality. Sustainability, 14(7), 3734. https://doi.org/10.3390/su14073734