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Two-stage hybrid stochastic/robust optimal coordination of distributed battery storage planning and flexible energy management in smart distribution network

机译:智能配电网中分布式电池存储计划的两阶段混合随机/鲁棒最优协调和灵活的能源管理

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This paper presents a two-stage formwork for the coordinated distributed battery energy storage systems (DBESSs) planning and the flexible energy management (FEM) in a smart distribution network (SDN) in the presence of electric vehicles' (EVs') parking lot and variable renewable energy sources (VRESs). In the first stage, from distribution system operator's (DSO's) viewpoint, the linear DBESSs planning problem minimizes the difference between summation of its investment, degradation and charging costs and its revenue due to injecting power into the network at the discharging mode, where this problem subjects to the linear SDN optimal power flow equations and VRES, DBESS and EVs' parking lot constraints. Noted that the bounded uncertainty-based robust model (BURM) is used to model the uncertainty of load, charging/discharging price, VRES power and EV parameters according to the uncertainty levels. In addition, the FEM strategy is applied to the SDN to obtain the suitable flexibility, security and operational indices based on the second stage problem formulation. This strategy minimizes the difference between energy cost paid to the upstream network and flexibility benefit from DSO and flexibility operator (FO) viewpoints while it considers linear AC optimal power flow and renewable and flexible sources equations as problem constraints. Moreover, in order to achieve the robust flexibility capability of EVs' parking lot in the SDN, the uncertainty of the FEM strategy is modelled in the proposed hybrid stochastic/robust optimization. Hence, the scenario-based stochastic programming (SBSP) is used for the uncertain parameters of load, energy price and VRES power, but, BURM models the EVs uncertainty. Finally, the proposed two-stage formwork is simulated on the 19-bus LV CIGRE benchmark grid using GAMS software to investigate the capability and efficiency of the model. According to numerical results, the proposed strategy calculates the optimal location and size for DBESSs depending on the energy price, consumers and EVs demand and VRESs size in the SDN, and thus, it can obtain flexible, secure and efficient operation indices in this network based on the lowest possible cost for the investment of DBESSs.
机译:本文提出了一个两阶段的模板,用于存在电动汽车(EV)停车场和智能停车场的智能配电网(SDN)中的协调分布式电池储能系统(DBESS)规划和灵活能源管理(FEM)。可变可再生能源(VRESs)。在第一阶段,从配电系统运营商(DSO)的角度来看,线性DBESS规划问题最大程度地减少了由于在放电模式下向网络中注入电力而导致的投资,降级和充电成本与收益之和之间的差异。服从线性SDN最优潮流方程以及VRES,DBESS和EV的停车场约束。注意,基于有界不确定性的鲁棒模型(BURM)用于根据不确定性级别对负载,充电/放电价格,VRES功率和EV参数的不确定性建模。此外,基于第二阶段问题的表述,将有限元策略应用于SDN,以获得适当的灵活性,安全性和运营指标。这种策略最大程度地减少了支付给上游网络的能源成本与DSO和灵活性运营商(FO)观点带来的灵活性收益之间的差异,同时将线性AC最佳潮流以及可再生资源和灵活能源方程式视为问题约束。此外,为了在SDN中实现电动汽车停车场的鲁棒性,在提出的混合随机/鲁棒优化中对FEM策略的不确定性进行了建模。因此,基于情景的随机规划(SBSP)用于负载,能源价格和VRES功率的不确定性参数,但是BURM可对EV的不确定性进行建模。最后,使用GAMS软件在19总线LV CIGRE基准网格上模拟了拟议的两阶段模板,以研究模型的功能和效率。根据数值结果,该策略根据能源价格,消费者和电动汽车的需求以及SDN中VRES的大小,计算出DBESS的最佳位置和大小,从而可以在该网络中获得灵活,安全和高效的运营指标。以最低的成本投资DBESS。

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