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CNN based power system transient stability margin and voltage stability index prediction

机译:基于CNN的电力系统暂态稳定裕度和电压稳定指数预测

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Operators at electric grid control centers are faced with the task of making important decisions in real-time. With the plethora of data available it becomes important to extract information from the available data, based on which knowledge of system condition can be formed. This knowledge can then be used in decision making. Metrics such as transient stability margin (TSM) and voltage stability load index (VSLI) help in assessing the stability of the system. In this study, cellular neural network (CNN) based stability margin prediction system is developed in a distributed computing framework. The developed system not only extracts information from available data but also predicts the same, one step ahead of time. Moreover, the framework employed uses distributed computing and hence could be used on a large scale power system with a linear increase in computation time instead of an exponential increase. A reduced version of New Zealand's South Island power system is used as the test system to demonstrate the feasibility of CNNs for TSM and VSLI prediction.
机译:电网控制中心的操作员面临着实时做出重要决策的任务。在拥有大量可用数据的情况下,重要的是从可用数据中提取信息,并以此为基础形成系统条件的知识。然后,可以将这些知识用于决策。诸如暂态稳定裕度(TSM)和电压稳定负载指数(VSLI)之类的指标有助于评估系统的稳定性。在这项研究中,在分布式计算框架中开发了基于细胞神经网络(CNN)的稳定裕度预测系统。开发的系统不仅可以从可用数据中提取信息,而且可以提前一个步骤进行预测。而且,所采用的框架使用分布式计算,因此可以在计算时间线性增加而不是指数增加的情况下用于大型电力系统。新西兰南岛电力系统的简化版本用作测试系统,以证明CNN用于TSM和VSLI预测的可行性。

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