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Anomaly Detection in Smart Grid using Wavelet Transform and Artificial Neural Network

机译:基于小波变换和人工神经网络的智能电网异常检测

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This paper presents a scheme for detecting anomalous power consumption patterns attack using wavelet transform and artificial neural network for smart grid. The main procedure of the proposed algorithm consists of following steps: ?) Creating normal and anomaly patterns of power consumption to train the proposed method. ?) Wavelet transform is applied on power consumption patterns to extract features. ?) Training artificial neural network with extracted features as an input. ?) Launching the trained artificial neural network to detect anomalous power consumption attack based on a threshold. In the simulations, the proposed method can detect anomalous power consumption attack with 74.25% accuracy in the worst case scenario. Also, four levels of wavelet transform make different features, so the proposed method has different performance.
机译:本文提出了一种基于小波变换和人工神经网络的智能电网异常功耗模式攻击检测方案。所提出算法的主要过程包括以下步骤:?)创建正常和异常的功耗模式以训练所提出的方法。 ?)小波变换应用于功耗模式以提取特征。 ?)用提取的特征作为输入来训练人工神经网络。 ?)启动训练有素的人工神经网络,以基于阈值检测异常功耗攻击。在仿真中,所提出的方法可以在最坏的情况下以74.25%的精度检测异常的功耗攻击。而且,四个级别的小波变换具有不同的特征,因此所提出的方法具有不同的性能。

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