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Multi-Contingency Cascading Analysis of Smart Grid Based on Self-Organizing Map

机译:基于自组织映射的智能电网多事件级联分析

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摘要

In the study of power grid security, the cascading failure analysis in multi-contingency scenarios has been a challenge due to its topological complexity and computational cost. Both network analyses and load ranking methods have their own limitations. In this paper, based on self-organizing map (SOM), we propose an integrated approach combining spatial feature (distance)-based clustering with electrical characteristics (load) to assess the vulnerability and cascading effect of multiple component sets in the power grid. Using the clustering result from SOM, we choose sets of heavy-loaded initial victims to perform attack schemes and evaluate the subsequent cascading effect of their failures, and this SOM-based approach effectively identifies the more vulnerable sets of substations than those from the traditional load ranking and other clustering methods. As a result, this new approach provides an efficient and reliable technique to study the power system failure behavior in cascading effect of critical component failure.
机译:在电网安全性研究中,由于其拓扑复杂性和计算成本,多紧急情况下的级联故障分析一直是一个挑战。网络分析和负载排序方法都有其自身的局限性。在本文中,我们基于自组织图(SOM),提出了一种将基于空间特征(距离)的聚类与电气特征(负载)相结合的集成方法,以评估电网中多个组件集的脆弱性和级联效应。利用SOM的聚类结果,我们选择了负荷较重的初始受害者集合来执行攻击方案并评估其故障的后续级联效应,并且这种基于SOM的方法可以有效识别比传统负荷更为脆弱的变电站集。排名和其他聚类方法。结果,这种新方法提供了一种有效且可靠的技术,以研究关键组件故障的级联效应中的电力系统故障行为。

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