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Multi-stage active management of renewable-rich power distribution network to promote the renewable energy consumption and mitigate the system uncertainty

机译:丰富可再生能源配电网络的多阶段主动管理,以促进可再生能源消耗并减轻系统不确定性

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摘要

This paper presents a multi-stage management scheme for renewable-rich medium voltage distribution network (MVDN) to promote the renewable energy consumption and mitigate the system uncertainty. In the first stage, a day-ahead (DA) dispatch model is proposed to promote the renewable distributed generation (RDG) consumption and decrease the power loss. In the second stage, a model predictive control (MPC) based rolling optimization model for intra-day (ID) operation is proposed to minimize the mismatch of the interactive power at the upstream Grid Supply Point (GSP) between the DA schedule and ID operation. Multiple active management elements such as network reconfiguration and soft open point are integrated and a novel second order cone programming (SOCP) model for the centralized optimal power flow in the DA and ID stages is presented. In the third stage, a decentralized P/Q(V) control strategy of RDG inverter for real-time (RT) voltage regulation is proposed to ensure system safety and mitigate the fast voltage fluctuation. The effectiveness of proposed management scheme is demonstrated in a test system integrating a standard network and real-world data of load and RDG output profiles.
机译:本文提出了一种可再生能源丰富的中压配电网(MVDN)的多阶段管理方案,以促进可再生能源的消耗并减轻系统的不确定性。在第一阶段,提出了提前调度(DA)调度模型,以促进可再生分布式发电(RDG)的消耗并减少电力损耗。在第二阶段中,提出了基于模型预测控制(MPC)的日内(ID)操作滚动优化模型,以最大程度地减少DA调度和ID操作之间的上游电网供应点(GSP)的交互式电源的失配。集成了诸如网络重新配置和软开放点之类的多个主动管理元素,并提出了用于DA和ID阶段的集中式最佳潮流的新型二阶锥规划(SOCP)模型。在第三阶段中,提出了用于实时(RT)电压调节的RDG逆变器的分散P / Q(V)控制策略,以确保系统安全并缓解快速电压波动。建议的管理方案的有效性在一个测试系统中得到了证明,该系统集成了标准网络以及负载和RDG输出配置文件的实际数据。

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