Effectiveness Evaluation of Financing Platform Operation of Buildings Energy Saving Transformation Using ANP-Fuzzy in China: An Empirical Study
Abstract
:1. Introduction
2. Methods
2.1. Construction of ANP Model
2.1.1. Constructing ANP-Typical Structure
2.1.2. Determining Index Weight
- According to CR = CI/RI, the consistency test of the judgment matrix is tested. If CR ≤ 0.1, the judgment matrix passes the consistency test. If CR ≥ 0.1, the judgment matrix is inconsistent and should be revised and adjusted.
- The eigenvector generates the local weight vector matrix in matrix form, and finally forms initial super matrix.
- Computing weighted super matrix.
- Calculating limit super matrix.
2.2. Construction of Fuzzy Comprehensive Evaluation Model
2.2.1. Establish Evaluation Object Sets and Factor Sets
2.2.2. Create Comment Sets
2.2.3. Establish Weight Set
2.2.4. First-Level Fuzzy Comprehensive Evaluation
2.2.5. Multi-Level Fuzzy Comprehensive Evaluation
2.2.6. Comprehensive Judgment of Evaluation Result
3. Construction of Effectiveness Evaluation Index System of the Financing Platform Operation for Buildings Energy Saving Transformation
3.1. Principles of Index System Construction
- (1)
- (2)
- Systematic. This principle requires that the index system reflect various factors that may have an impact on the evaluation object. In addition, the refinement of evaluation indicators must be logical, statistical indicators can complement each other, lower indicators and higher indicators have levels, so as to achieve a balanced and unified evaluation system
- (3)
- Reliability. This principle requires that the evaluation index system must conform to objective facts, and each index can be easily measured and calculated [41]. Financial indicators should be supported by authoritative data and non-financial indicators should be scientifically determined, such as through scientific research or expert evaluation
- (4)
- Combination of quantitative and qualitative indicators. This principle requires that the selection of evaluation indicators include not only quantitative analysis indicators, but also qualitative analysis indicators, while minimizing the impact of subjective factors [42].
- (5)
- Testability. This principle requires that the index system be concise and easy to understand and data collection, evaluation results can be obtained more quickly. In order to ensure the comparability between indicators, the same type of indicators need to be unified sources, different types of indicators can be quantified, easy to calculate and compare [43].
3.2. Analysis of Evaluation Content
3.3. Construction of Evaluation Index System
4. Case Study
4.1. ANP Structure for Effectiveness Evaluation of Financing Platform Operation
4.2. Empowerment of Evaluation Indicators Based on ANP
4.3. Fuzzy Comprehensive Evaluation
4.3.1. Establish Factor Sets and Weight Sets for Evaluation
4.3.2. Establish a Platform Operation Effectiveness Review Set
4.3.3. First-Level Fuzzy Comprehensive Evaluation
4.3.4. Second-Level Fuzzy Comprehensive Evaluation
4.3.5. Third-Level Fuzzy Comprehensive Evaluation
4.4. Comprehensive Judgment of Evaluation Results
5. Discussion
- Improve the information management system and standardize the platform-operating environment. First, develop an information sharing system to make the financing platform an interactive channel and resource-sharing platform for energy saving information. The energy saving information is more timely and accurate feedback to all participants. Under the integration of resources, the financing platform becomes the cooperation medium between the owners and ESCOs. Secondly, establish an information rating system to break the market information asymmetry and reduce the information status difference between the owners and ESCOs. Owners can better understand ESCO credit information and save on the cost of evaluating corporate credit. ESCO can reach deals with owners based on lower costs, increase trust between subjects, and lay the foundation for cooperation. Finally, establish a standardized management and monitoring system for transaction information to ensure the fairness and order of the project financing transaction market, help to create a cooperative environment of mutual trust, and attract more participants to actively participate in the platform construction. Through the information management system, improve market transparency and create a good market competition environment.
- Enhance the owner’s enthusiasm for energy saving and expand the scale of platform transactions. The owner is the subject of buildings energy saving transformation and provides endogenous power for market development. That is to say, the demand of the owner determines the market size. First, the government should continuously strengthen the implementation of incentive policies, provide more powerful external support for the owners to implement energy saving transformation, avoids failure of the owners to worry about the investment due to excessive transformation costs, and guide more owners to participate in the construction of the platform. Thereby expanding the source of funds and playing a greater role in the financing platform. Second, innovative financing products, such as future earnings securitization, carbon trading, energy-saving income bonds, etc. will expand the scale of platform trading. Deeply understand market demand, promote the diversification of platform functions, achieve scale effect, promote platform development, and improve the success rate of financing. Thirdly, change the owner’s consumption concept and enhance the owner’s social responsibility consciousness. Owners should actively respond to the call of the national low-carbon policy, change consumption concepts, establish a green low-carbon consumption concept, and enhance social responsibility awareness.
- Optimizing the systematization of operational objectives is in line with the development trend of the platform. First of all, we should pay attention to the impact of changes in national policy environment, the changes of demand of the main body of operation, the level of development of related industries, and energy saving technological innovations on the overall development of the platform. According to those, the optimization system is adjusted to adapt to the dynamic development characteristics of the market. Secondly, from the perspective of improving the system of optimization objectives, we can improve the degree of inter-organizational information interaction, enhance the efficiency of organizational management and the consistency of optimization objectives among the subjects by building an energy saving management information exchange platform. Finally, pay attention to the optimization of links, in-depth market research, feedback of optimization effect, to avoid occurrence of optimization process segmentation.
6. Conclusions
- 1
- Improve the cooperation between subjects and improve operation efficiency of the platform. The operation of financing platform needs to be based on a certain relationship framework. In order to optimize the subject’ cooperation relationship, it is necessary to strengthen the level of information sharing among the platform operators, such as establish the information exchange platform, the information sharing mechanism and feedback mechanism, so as to improve the trust between the subjects and lay the foundation for their cooperation. At the same time, corresponding management policies should also be formulated for the stability of the cooperation between the subjects to ensure the stability and long-term of the cooperation, such as guarantee mechanism, reputation rating mechanism, etc. It can also help to optimize the institutionalization and legalization of cooperative relations through other ways.
- 2
- Pay attention to the formulation and implementation of financing guarantee policies for building energy saving transformation. Because of the differences in the characteristics and laws of different financing subjects in economic activities, it is necessary for the state to establish buildings energy saving transformation project financing guarantee policy system from system level. On the one hand, the government should improve existing laws and regulations and basic policy planning, establish specific safeguard measures and policy evaluation methods, and create a good environment for project financing. On the other hand, we should strengthen the application of insurance strategy. Through the establishment of perfect insurance policies, the implementation of various insurance strategies, according to the different nature and types of enterprises to develop targeted insurance strategies, reduce the risk coefficient of project financing failure. According to the different nature and types of enterprises, government should make targeted insurance strategies to reduce the risk coefficient of project financing failure. This can not only improve the cost-effectiveness of project financing, but also ensure that investors can safely invest the funds into the financing platform, and provide more sufficient financial support for the existing building energy saving transformation projects.
- 3
- Strengthen the capital management of buildings energy saving transformation financing platform, and improve the cost-effectiveness of project financing. After the EPC project is completed, the financing platform shall repay the principal and interest to the investors in time according to relevant contract, so as to improve social reputation of the financing platform. At the same time, the financing platform should also strengthen management of the asset pool, determine the cash flow during project operation, strengthen the management of idle funds, and take effective measures to ensure the maintenance and appreciation of the invested capital through the energy measurement and audit of buildings energy saving transformation project.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Scale | Meaning Description |
---|---|
1 | i and j are equally important |
3 | i is slightly more important than j |
5 | i is obviously more important than j |
7 | i is strongly important than j |
9 | i is extremely important than j |
1,1/3,1/5,1/7,1/9 | If the importance ratio of i to j is one of the above values, then the importance ratio of j to i is the reciprocal of i. |
Target Layer | First Grade Index | Second Grade Index | Third Grade Index |
---|---|---|---|
Effectiveness of financing platform for buildings energy saving transformation | Effectiveness of operating mechanism implementation | Systematization of operating objectives [49] | Target consistency [46] |
Efficiency of platform organization and management | |||
Degree of information sharing among departments [10] | |||
Comprehensiveness of operation mechanism | Coordination of operation mechanism | ||
Diversity of mechanism functions [12] | |||
Effectiveness of feedback mechanism [48] | |||
Coordination of operation process | Rationality of operation process | ||
Linkage of operation links | |||
Compatibility between operating mechanism and market environment | Dynamic change of operating process | ||
Differences in operating mechanism | |||
Effectiveness of operation subject’s behavior | Development of ESCO | ESCO’s economic strength [39] | |
ESCO’s technical level | |||
ESCO’s market credit | |||
Energy saving enthusiasm of owners | Demand for energy saving transformation of owners | ||
Proportion of owner’s investment [20] | |||
Investor enthusiasm | Investor’s willingness to invest [17] | ||
Investor’s income distribution ratio [29] | |||
Cooperation among subjects | Trust level among operating subjects | ||
Benefit sharing ratio of energy saving transformation | |||
Input of operating mechanism and supporting funds | |||
Risk sharing ratio of energy saving transformation [46] |
Target Layer | First Grade Index | Second Grade Index | Third Grade Index | Intra-Group Weight | Objective Weight |
---|---|---|---|---|---|
Effectiveness of financing platform for buildings energy saving transformation | Effectiveness of operating mechanism implementation 0.4722 | Systematization of operating objectives 0.2084 | Target consistency | 0.3070 | 0.0408 |
Efficiency of platform organization and management | 0.3446 | 0.0458 | |||
Degree of information sharing among departments | 0.3484 | 0.0463 | |||
Comprehensiveness of operation mechanism 0.2916 | Coordination of operation mechanism | 0.3336 | 0.0443 | ||
Diversity of mechanism functions | 0.3237 | 0.0430 | |||
Effectiveness of feedback mechanism | 0.3426 | 0.0455 | |||
Coordination of operation process 0.2500 | Rationality of operation process | 0.5651 | 0.0751 | ||
Linkage of operation links | 0.4349 | 0.0578 | |||
Compatibility between operating mechanism and market environment 0.2500 | Dynamic change of operating process | 0.5177 | 0.0688 | ||
Differences in operating mechanism | 0.4823 | 0.0641 | |||
Effectiveness of operation subject’s behavior 0.5278 | Development of ESCO 0.2376 | ESCO’s economic strength | 0.3440 | 0.0268 | |
ESCO’s technical level | 0.3440 | 0.0268 | |||
ESCO’s market credit | 0.3220 | 0.0251 | |||
Energy-saving enthusiasm of owners 0.2469 | Demand for energy saving transformation of owners | 0.4816 | 0.0640 | ||
Proportion of owner’s investment | 0.5184 | 0.0689 | |||
Investor enthusiasm 0.2907 | Investor’s willingness to invest | 0.4996 | 0.0617 | ||
Investor’s income distribution ratio | 0.5004 | 0.0618 | |||
Cooperation among subjects 0.2248 | Trust level among operating subjects | 0.2380 | 0.0398 | ||
Benefit sharing ratio of energy saving transformation | 0.2500 | 0.0418 | |||
Input of operating mechanism and supporting funds | 0.2614 | 0.0437 | |||
Risk sharing ratio of energy saving transformation | 0.2506 | 0.0419 |
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Share and Cite
Guo, H.; Qiao, W.; Zheng, Y. Effectiveness Evaluation of Financing Platform Operation of Buildings Energy Saving Transformation Using ANP-Fuzzy in China: An Empirical Study. Sustainability 2020, 12, 2826. https://doi.org/10.3390/su12072826
Guo H, Qiao W, Zheng Y. Effectiveness Evaluation of Financing Platform Operation of Buildings Energy Saving Transformation Using ANP-Fuzzy in China: An Empirical Study. Sustainability. 2020; 12(7):2826. https://doi.org/10.3390/su12072826
Chicago/Turabian StyleGuo, Handing, Wanzhen Qiao, and Yuehong Zheng. 2020. "Effectiveness Evaluation of Financing Platform Operation of Buildings Energy Saving Transformation Using ANP-Fuzzy in China: An Empirical Study" Sustainability 12, no. 7: 2826. https://doi.org/10.3390/su12072826
APA StyleGuo, H., Qiao, W., & Zheng, Y. (2020). Effectiveness Evaluation of Financing Platform Operation of Buildings Energy Saving Transformation Using ANP-Fuzzy in China: An Empirical Study. Sustainability, 12(7), 2826. https://doi.org/10.3390/su12072826