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Voltage Sag Estimation in Sparsely Monitored Power Systems Based on Deep Learning and System Area Mapping

机译:基于深度学习和系统区域映射的稀疏监视电力系统电压暂降估计

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摘要

This paper proposes a voltage sag estimation approach based on a deep convolutional neural network. The proposed approach estimates the sag magnitude at unmonitored buses regardless of the system operating conditions and fault location and characteristics. The concept of system area mapping is also introduced via the use of bus matrix, which maps different patches in input matrix to various areas in the power system network. In this way, relevant features are extracted at various local areas in the power system and used in the analysis for higher level feature extraction, before feeding into a fully-connected multiple layer neural network for sag classification. The approach has been tested on the IEEE 68-bus test network and it has been demonstrated that the various sag categories can be identified accurately regardless of the operating condition under which the sags occur.
机译:本文提出了一种基于深度卷积神经网络的电压暂降估计方法。所提出的方法可以估算不受监控的总线上的下垂幅度,而与系统的运行条件,故障位置和特性无关。系统区域映射的概念也通过使用总线矩阵来介绍,该总线矩阵将输入矩阵中的不同色块映射到电力系统网络中的各个区域。以这种方式,在馈入完全连接的多层神经网络以进行下陷分类之前,在电力系统的各个局部区域提取相关特征并将其用于分析中以进行更高级别的特征提取。该方法已经在IEEE 68总线测试网络上进行了测试,并且证明了可以准确识别各种下垂类别,而不管下垂发生的工作条件如何。

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