A method for the detection of electricity theft behavior based on Xavier weight initialization

J. Liang
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Abstract

With the advancement of machine learning technology, intelligent detection of electricity theft has become a more widely used technical means. The detection of electricity theft behavior includes data collection, data preprocessing, establishment of electricity theft model and online detection process of electricity theft, in which the establishment of the electricity theft model is modeled by neural network, and the random initialization method and Xavier weight initialization method are used in the modeling process. Experiments show that the Xavier weight initialization method has a good effect on error histogram and network performance, and the mean squared normalization error of 0.0686 is lower than that of the stochastic optimization method.
一种基于泽维尔权重初始化的窃电行为检测方法
随着机器学习技术的进步,智能检测窃电已成为一种应用更为广泛的技术手段。窃电行为的检测包括数据采集、数据预处理、窃电模型的建立和窃电在线检测过程,其中窃电模型的建立采用神经网络建模,建模过程中采用随机初始化方法和Xavier权值初始化方法。实验表明,Xavier权值初始化方法对误差直方图和网络性能都有很好的影响,其均方归一化误差为0.0686,低于随机优化方法。
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