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Power System Connectivity Monitoring Using a Graph Theory Network Flow Algorithm

机译:图论网络流算法的电力系统连通性监测

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摘要

A method of applying network flow analyses during real time power system operation, to provide better network connectivity visualization, is developed and presented. Graph theory network flow analysis is capable of determining the maximum flow that can be transported between two nodes within a directed graph. These network flow algorithms are applied to a graphical representation of a power system topology to determine the minimum number of system branches needed to be lost in order to guarantee disconnecting the two nodes in the system that are selected. The number of system branches that are found serves as an approximate indicator of system vulnerabilities. The method used in these connectivity analyses makes use of well known graph theory network flow maximum flow algorithms, but also introduces a new algorithm for updating an old network flow solution for the loss of only a single system branch. The proposed new algorithm allows for significantly decreased solution time that is desired in a real-time environment. The value of using the proposed method is illustrated by using a detailed example of the 2008 island formation that occurred in the Entergy power system. The method was applied to a recreation of the 2008 event using a 20,000-bus model of the Entergy system to show both the proposed method's benefits as well as practicality of implementation.
机译:开发并提出了一种在实时电力系统运行期间应用网络流量分析以提供更好的网络连接可视化的方法。图论网络流量分析能够确定有向图内两个节点之间可以传输的最大流量。将这些网络流算法应用于电力系统拓扑的图形表示,以确定需要丢失的最小系统分支数,以确保断开所选系统中的两个节点。找到的系统分支数量用作系统漏洞的近似指标。这些连通性分析中使用的方法利用了众所周知的图论网络流量最大流量算法,但也引入了一种新算法,用于更新旧网络流量解决方案,而只损失了单个系统分支。提出的新算法可以大大减少实时环境中所需的求解时间。通过使用在Entergy电力系统中发生的2008年岛屿形成的详细示例,说明了使用建议的方法的价值。该方法已应用Entergy系统的20,000巴士模型应用于2008年活动的娱乐,以显示所提出的方法的好处以及实施的实用性。

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