With the commitment to climate, globally many countries started reducing brownfield energy production and strongly opting towards green energy resources. However, the optimal allocation of distributed energy resources (DERs) in electrical distribution systems still pertains as a challenging issue to attain the maximum benefits. It happens due to the systems complex behaviour and inappropriate integration of DERs that adversely affects the distribution grid. In this work, we propose a methodology for the optimal allocation of DERs with vulnerable node identification in active electrical distribution networks. A failure or extreme event at the vulnerable node would interrupt the power flow in the distribution network. Also, the power variation in these vulnerable nodes would significantly affect the operation of other linked nodes. Thus, these nodes are found suitable for the optimal placement of DERs. We demonstrate the proposed data-driven approach on a standard IEEE-123 bus test feeder. Initially, we partitioned the distribution system into optimal microgrids using graph theory and graph neural network (GNN) architecture. Further, using Granger causality analysis, we identified vulnerable nodes in the partitioned microgrid; suitable for DERs integration. The placement of DERs on the vulnerable nodes enhanced network reliability and resilience. Improvement in resilience is validated by computing the percolation threshold for the microgrid networks. The results show a 20.45% improvement in the resilience of the system due to the optimal allocation of DERs.
翻译:面对气候变化,许多国家已开始减少Brownfield产生的能源,而是大力转向绿色能源资源。然而,在电力分布系统中实现分布式能源资源(DERs)的最佳分配仍然是一个具有挑战性的问题,因为系统的复杂行为和DERs的不恰当集成会对分布式网格产生负面影响。在本文中,我们提出了一种在活动电力分布网络中优化分配DERs并确定脆弱节点的方法。脆弱节点的故障或极端事件将中断分布式网络的电力流,并且这些脆弱节点中的电力变化将显着影响其他相连节点的运行。因此,这些节点适合于DERs的最佳放置。我们在标准IEEE-123毫微网测试馈线上展示了所提出的数据驱动方法。首先,我们使用图论和图神经网络(GNN)架构将分布式系统划分为最佳微网。进一步,借助Granger因果分析,我们鉴别了划分的微网中脆弱节点,这些节点适合集成DERs。DERs在脆弱节点上的放置提高了网络的可靠性和弹性。通过计算微电网网络的渗透阈值验证了弹性的改善。结果表明,由于DERs的最佳分配,系统的弹性提高了20.45%。