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Crucial power flow interface discrimination based on distributed improved-SVM classification in a big data set

机译:大数据集中基于分布式改进SVM分类的关键潮流接口判别

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摘要

The operational states of power system become much more complicated and variable, since the size of power system grows larger. To secure power system operation, crucial power flow interfaces should be monitored. Therefore, a power system safe operation knowledge base should be established to help system operators to make decisions. The base works like an automatic operator (AO), which can quickly discriminate the crucial power flow interfaces according to power system real-time operation conditions. In this paper, first a description of the classification problem is given. Next, models of conventional support vector machines (SVM) and increment SVM are briefly described. Then the distributed computing framework of the power system safe operation knowledge is designed and the knowledge base can be established and updated based on improved-SVM. Finally, the application of the knowledge base in Guangdong Province Power System in China shows its advantages in accuracy and classification speed.
机译:由于电力系统的规模越来越大,电力系统的运行状态变得更加复杂和多变。为了确保电力系统的运行,应监视关键的电力流接口。因此,应建立电力系统安全操作知识库,以帮助系统操作员做出决策。该基座的工作方式类似于自动操作员(AO),可以根据电力系统的实时运行条件快速区分出关键的潮流接口。在本文中,首先给出了分类问题的描述。接下来,简要描述传统支持向量机(SVM)和增量SVM的模型。然后设计了电力系统安全运行知识的分布式计算框架,并基于改进的支持向量机对知识库进行建立和更新。最后,该知识库在中国广东省电力系统中的应用表明了其在准确性和分类速度上的优势。

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