Incentive Mechanism and Subsidy Design for Continuous Monitoring of Energy Consumption in Public Buildings (CMECPB): An Overview Based on Evolutionary Game Theory
Abstract
:1. Introduction
2. Literature Review
2.1. Building Energy Efficiency and Energy Conservation Systems
2.2. Evolutionary Game Theory
3. Model Building
3.1. Research Design and Model Usability Analysis
3.2. Application of Evolutionary Game
3.3. Problem Description and Basic Assumptions
3.3.1. Definition of the Integrated Value of Energy Consumption Monitoring System Data Acquisition
3.3.2. Basic Ideas and Assumptions
3.4. Model Construction
3.4.1. Dynamic Game Model Construction between Owners and ESCOs
3.4.2. Introducing Government Actions
3.4.3. Principal-Agent Model Construction
- Optimal incentive model under information symmetry
- 2.
- Optimal incentive model under non-information symmetry
4. Results
4.1. Analysis of Game Results between Owners and ESCOs
4.1.1. Analysis of Owners′ Stability Strategy
4.1.2. Analysis of ESCOs′ Stability Strategy
4.2. Analysis of the Effects of Introducing Government Actions
4.2.1. Analysis of Owners′ Stability Strategy after Introducing Government Actions
4.2.2. Analysis of ESCOs′ Stability Strategy after Introducing Government Actions
4.3. Equilibrium Point Stability Analysis
4.4. Analysis of Incentive Model Results
- < 0, that is, the ratio of the variable government subsidies received by the agent to the effort cost coefficient b, is negatively correlated. This way, under other conditions that remain the same, the agent can only receive a higher economic subsidy by reducing the unit effort cost. In this case, public building owners will partner with ESCOs to implement continuous energy consumption monitoring and reduce costs.
- < 0, that is, the government shift subsidy ratio received by the agent is negatively related to the risk aversion coefficient p, that is, the larger the risk aversion coefficient of the agent, the smaller the government economic incentive received. The risk aversion coefficient p will be different for ESCOs and public building owners, and the economic incentives also will be different.
- < 0, that is, the ratio of the variable government subsidies received by the agent is negatively correlated with the external uncertainty variance , indicating that the larger the external uncertainty, the greater the economic incentive received. For public building owners and ESCOs, the condition that external uncertainty reduces their returns is imposed.
- 0, that is, the ratio of government shift subsidies received by agents is positively correlated with the composite value transformation factor i. The greater the value created by the agent, the higher the economic incentive it receives. Since there is virtually no cost to the owner in the CMECPB project, the economic incentive to the owner is mainly based on the external value it creates, while the incentive to the section ESCO should be carried out by considering the external value created by it and the regular value of the project.
5. Discussion
5.1. Incentive Mechanism Design
- Incentives for public building owners
- 2.
- Incentives for ESCOs
5.2. Policy Implications
- In regard to legal policies, normative documents such as CMECPB technical rules and energy consumption standards for public buildings should be improved, and the dynamic management of standard rules should be strengthened. Monitoring data with higher consistency are currently lacking. By setting and closely following operating standards for monitoring systems, the foundation for energy conservation in buildings can be laid.
- From the aspect of administrative management, it is necessary to clarify the supervision and assessment system, establish a continuous monitoring evaluation mechanism, link the performance of the person in charge, and explore the organizational structure of CMECPB supervision. Large government public buildings, a major energy consumer, account for 5% of China′s total annual electricity consumption. The government should play an active and exemplary role in promoting energy-saving management and target management in government office buildings. By utilizing the reputation incentive, that is, recognizing good owners or users in CMECPB, good ESCOs, and other internal drivers, the propaganda effect of energy conservation in buildings can be formed throughout society.
- From the aspect of economic incentives, subsidies and various incentives are provided to CMECPB project suppliers, demanders, and investors. To broaden the scope of ESCOs, the government should set up a special guarantee fund for CMECPB and encourage banks to innovate financial products to reduce their credit difficulties. It is necessary to introduce loan subsidies for owners or users of commercial public buildings to increase the enthusiasm of project owners. In addition, the owners or users and ESCOs should be promptly penalized for their negative behavior.
- From the technical support side, a public information platform based on the building energy consumption monitoring industry chain should be actively built to realize resource sharing and information symmetry within the industry chain. The government should combine the practical advantages of ESCOs with the scientific research advantages of universities and research institutes, to improve the management means and technical methods of CMECPB O&M and to reduce the operating costs of CMECPB. At the same time, the “industry-university-research-application” mechanism with the joint participation of ESCOs, scientific research institutions, and universities should be cultivated so that a multi-win-win can be formed by the township.
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Parameter | Meaning |
---|---|
When ESCOs do not provide O&M services to CMECPB, the benefits to the owner are reduced. | |
Benefits to ESCOs when the owner does not support CMECPB. | |
When ESCOs provide O&M services to CMECPB, there is an economic benefit to the owner. | |
When ESCOs provide O&M services to CMECPB, the owner receives additional revenue for supporting the CMECPB. | |
When the owner supports CMECPB, the benefits to ESCOs of providing O&M services to CMECPB are increased. | |
The excess revenue that ESCOs can earn by providing O&M services to a CMECPB is due to the cooperation of the owner when they choose to support the CMECPB. | |
q | Cost for ESCOs to provide O&M services to CMECPB. |
When supporting CMECPB, there is an additional cost paid by the owner for selecting satisfactory ESCOs. |
ESCOs | Provide CMECPB O&M Services y | No CMECPB O&M Services 1-y | |
---|---|---|---|
Owners | |||
Support CMECPB x | , | ||
Do not support CMECPB 1-x | , | , |
ESCOs | Provide CMECPB O&M Services y | Do Not Provide CMECPB O&M Services 1-y | |
---|---|---|---|
Owners | |||
Support CMECPB x | + , | ||
Do not support CMECPB 1-x | , | , |
Case 1: | Case 2: | Case 3: | Case 4: | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Equilibrium Point (x,y) | Symbol of DetJ | Symbol of TrJ | Stability | Symbol of DetJ | Symbol of TrJ | Stability | Symbol of DetJ | Symbol of TrJ | Stability | Symbol of DetJ | Symbol of TrJ | Stability |
P1 (0,0) | + | - | ESS | + | - | ESS | + | - | ESS | + | - | ESS |
P2 (1,0) | - | indeterminacy | Saddle Point | + | + | Unstable | - | indeterminacy | Saddle Point | + | + | Unstable |
P3 (0,1) | - | indeterminacy | Saddle Point | - | indeterminacy | Saddle Point | + | + | Unstable | + | + | Unstable |
P4 (1,1) | + | + | Unstable | - | indeterminacy | Saddle Point | - | indeterminacy | Saddle Point | + | - | ESS |
P5 (x**,y**) | - | 0 | Saddle Point |
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Chen, H.; Xiao, Y.; Liu, Q.; Fu, G. Incentive Mechanism and Subsidy Design for Continuous Monitoring of Energy Consumption in Public Buildings (CMECPB): An Overview Based on Evolutionary Game Theory. Buildings 2023, 13, 984. https://doi.org/10.3390/buildings13040984
Chen H, Xiao Y, Liu Q, Fu G. Incentive Mechanism and Subsidy Design for Continuous Monitoring of Energy Consumption in Public Buildings (CMECPB): An Overview Based on Evolutionary Game Theory. Buildings. 2023; 13(4):984. https://doi.org/10.3390/buildings13040984
Chicago/Turabian StyleChen, Hui, Yao Xiao, Qiyue Liu, and Guanghui Fu. 2023. "Incentive Mechanism and Subsidy Design for Continuous Monitoring of Energy Consumption in Public Buildings (CMECPB): An Overview Based on Evolutionary Game Theory" Buildings 13, no. 4: 984. https://doi.org/10.3390/buildings13040984
APA StyleChen, H., Xiao, Y., Liu, Q., & Fu, G. (2023). Incentive Mechanism and Subsidy Design for Continuous Monitoring of Energy Consumption in Public Buildings (CMECPB): An Overview Based on Evolutionary Game Theory. Buildings, 13(4), 984. https://doi.org/10.3390/buildings13040984