A stochastic resource planning scheme for PHEV charging station considering energy portfolio optimization and price-responsive demand

Zhaohao Ding, Ying Lu, Lizi Zhang, Weijen Lee, Da-Yu Chen
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引用次数: 31

Abstract

PHEV charging station is playing a critical role in the rapid development of plug-in hybrid electric vehicles (PHEV). The unique characteristics of charging demands provide flexibility for the resource planning of PHEV charging station while its internal generation resources and procurement decisions from utility grid offer various options to meet the charging demand. To achieve the maximum benefits while managing the associated risk, the operator of PHEV charging station should optimally schedule those resources on both supply and demand sides. In this paper, a stochastic resources planning scheme for PHEV charging stations are proposed while two types of PHEV charging loads, including price-responsive commercial charging customers and the contracted controllable charging fleets, are taken into account. Energy supply decisions on energy procurement in multiple markets and internal generation scheduling are co-optimized with demand side decisions on charging service pricing and controllable demands allocation. The uncertainties from spot market price and availability of renewable generations are considered in the proposed model. Numerical case study is also provided to illustrate the effectiveness of the proposed scheme.
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考虑能源组合优化和价格响应需求的插电式混合动力充电站随机资源规划方案
插电式混合动力汽车(PHEV)快速发展的过程中,插电式混合动力汽车充电站起着至关重要的作用。充电需求的独特性为插电式混合动力充电站的资源规划提供了灵活性,其内部发电资源和电网的采购决策为满足充电需求提供了多种选择。为了在管理相关风险的同时获得最大的收益,插电式混合动力充电站运营商应该对供需双方的资源进行优化调度。本文在考虑价格响应型商业充电用户和合同可控充电车队两种充电负荷的情况下,提出了插电式混合动力充电站的随机资源规划方案。多市场能源采购和内部发电计划的能源供应决策与充电服务定价和可控需求分配的需求侧决策协同优化。该模型考虑了来自现货市场价格和可再生能源发电的不确定性。最后给出了数值算例,说明了该方法的有效性。
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