Optimal investment decision of agrivoltaic coupling energy storage project based on distributed linguistic trust and hybrid evaluation method
Zhengsen Ji,
Wanying Li and
Dongxiao Niu
Applied Energy, 2024, vol. 353, issue PA, No S0306261923015039
Abstract:
Photovoltaic (PV) power generation is becoming a good solution to meet energy demand. However, centralized PV production sites may pose a threat to industrial land or agricultural land. To solve the energy-environment-land conflict, agrivoltaic coupling energy storage (AVCES) projects become a feasible new land use model. The investment decision of AVCES project is a multi-criteria decision problem (MCDM). Therefore, this paper firstly constructs an evaluation index system containing four criteria: resources, economy, social, environment and ecology. Secondly, the subjective weights of each indicator are determined based on the distributed linguistic trust model and the cloud model, and the objective weights are determined based on the cloud model and the integrated determination of objective criteria weights (IDOCRIW) model. Subjective and objective weights are combined based on game theory. Finally, the TODIM model is used to get the optimal choice among multiple schemes. After the case study, the applicability and stability of the proposed framework are validated, and the research results will provide good reference values for the investment decision of AVCES projects.
Keywords: Multi-criteria decision making; Agrivoltaic coupling energy storage; Distributed linguistic trust; Hybrid evaluation method (search for similar items in EconPapers)
Date: 2024
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DOI: 10.1016/j.apenergy.2023.122139
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