Adaptive Distributionally Robust Planning for Renewable-Powered Fast Charging Stations Under Decision-Dependent EV Diffusion Uncertainty

被引:0
|
作者
Li Y.
Qiu F.
Chen Y.
Hou Y.
机构
[1] Lawrence Berkeley National Laboratory, Energy Storage & Distributed Resources Division, Berkeley,CA, United States
[2] Argonne National Laboratory, Energy Systems Division, Argonne,IL, United States
[3] The University of Hong Kong, Department of Electrical and Electronic Engineering, Hong Kong
[4] Shenzhen Institute of Research and Innovation, The University of H ong Kong, Shenzhen,518057, China
关键词
Capacity planning; Costs; Coupled transportation and power systems; decision-dependent uncertainty; distributionally robust optimization; fast charging station; flow refueling location model; Planning; Resource management; Security; Stochastic processes; Uncertainty;
D O I
10.1109/TSG.2024.3410910
中图分类号
学科分类号
摘要
When deploying fast charging stations (FCSs) to support long-distance trips of electric vehicles (EVs), there exist indirect network effects: while the gradual diffusion of EVs directly influences the timing and capacities of FCS allocation, the decisions for FCS allocations, in turn, impact the drivers’ willingness to adopt EVs. This interplay, if neglected, can result in uncovered EVs and security issues and even hinder the effective diffusion of EVs. In this paper, we explicitly incorporate this interdependence by quantifying EV adoption rates as decision-dependent uncertainties (DDUs) using decision-dependent ambiguity sets (DDASs). Then, a two-stage decision-dependent distributionally robust FCS planning (DR-FCSP) model is developed for adaptively deploying FCSs with on-site sources and expanding the coupled distribution network. A multi-period capacitated arc cover-path cover (MCACPC) model is incorporated to capture the EVs’ recharging patterns to ensure the feasibility of FCS locations and capacities. To resolve the nonlinearity and nonconvexity, the DR-FCSP model is equivalently reformulated into a single-level mixed-integer linear programming by exploiting its strong duality and applying the McCormick envelope. Finally, case studies highlight the superior out-of-sample performances of our model in terms of security and cost-efficiency. Furthermore, the byproduct of accelerated EV adoption through an implicit positive feedback loop is highlighted. IEEE
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