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Load Identification in Neural Networks for a Non-intrusive Monitoring of Industrial Electrical Loads

机译:神经网络中的负载识别,用于工业电荷的非侵入性监测

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This paper proposes the use of neural network classifiers to evaluate back propagation (BP) and learning vector quantization (LVQ) for feature selection of load identification in a non-intrusive load monitoring (NILM) system. To test the performance of the proposed approach, data sets for electrical loads were analyzed and established using a computer supported program - Electromagnetic Transient Program (EMTP) and onsite load measurement. Load identification techniques were applied in neural networks. The efficiency of load identification and computational requirements was analyzed and compared using BP or LVQ classifiers method. This paper revealed some contributions below. The turn-on transient energy signatures can improve the efficiency of load identification and computational time under multiple operations. The turn-on transient energy has repeatability when used as a power signature to recognize industrial loads in a NILM system. Moreover, the BP classifier is better than the LVQ classifier in the efficiency of load identification and computational requirements.
机译:本文提出了使用神经网络分类器来评估反向传播(BP)和学习矢量量化(LVQ),用于非侵入式负载监测(NILM)系统中的负载识别特征选择。为了测试所提出的方法的性能,使用计算机支持的程序 - 电磁瞬态程序(EMTP)和现场负载测量来分析和建立电负载的数据集。在神经网络中应用负载识别技术。使用BP或LVQ分类器方法进行分析和比较了负载识别和计算要求的效率。本文揭示了以下一些贡献。导通瞬态能量签名可以提高多次操作下的负载识别和计算时间的效率。当用作识别尼尔系统中的工业载荷时,导通瞬态能量具有可重复性。此外,在负载识别和计算要求的效率下,BP分类器优于LVQ分类器。

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