Clean energy on wheels: model, optimisation and P2P energy trading for active distribution networks in smart cities

N. K. Meena, Jin Yang
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Abstract

To manage the growing penetration of renewables and electric vehicles (EVs), a concept of clean energy on wheels (CEW) is presented for active distribution networks in smart cities. The CEW is an EV fully equipped with battery energy storage systems and EV chargers to improve the performance of modern distribution systems, especially in peak load hours. A multi-area power flow calculation method is employed to predict energy surplus and deficit feeders and locations at the same time. A bi-level optimisation framework is developed to determine the integration buses and capacities of PV systems and CEW vehicles in multiple distribution systems in smart cities. A Peer-to-Peer (P2P) energy trading scheme is adopted to obtain optimal scheduling and power dispatch of CEW in different areas of the city. An improved version of the genetic algorithm is adopted to determine optimisation variables of both the levels. To demonstrate the applicability of the proposed model, eight low-voltage feeders of different areas are selected from the city. Moreover, multiple scenarios are proposed and investigated. The simulation results obtained are found to be promising to accommodate a high penetration of EVs and renewables while increasing the operational flexibility of associated distribution systems.
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车轮上的清洁能源:智能城市主动配电网络的模型、优化和P2P能源交易
为了管理可再生能源和电动汽车(ev)的日益普及,为智能城市的主动配电网络提出了清洁车轮能源(CEW)的概念。CEW是一款完全配备电池储能系统和电动汽车充电器的电动汽车,旨在改善现代配电系统的性能,特别是在高峰负荷时段。采用多区域潮流计算方法同时预测供电网的供电网和供电网的位置。开发了一个双层优化框架,以确定智能城市多个配电系统中光伏系统和CEW车辆的集成总线和容量。采用点对点(Peer-to-Peer, P2P)能源交易方案,实现城市不同区域电力网的最优调度和电力调度。采用改进的遗传算法来确定两个层次的优化变量。为了验证所提模型的适用性,从城市中选取了不同区域的8条低压馈线。此外,还提出并研究了多种场景。所获得的模拟结果表明,在提高相关配电系统的运行灵活性的同时,有望适应电动汽车和可再生能源的高渗透率。
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