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Design a Neural Network for Features Selection in Non-intrusive Monitoring of Industrial Electrical Loads

机译:设计神经网络,用于工业电荷的非侵入式监测中的特征选择

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This paper proposes to compare the performance of neural network classifiers between back propagation (BP) and learning vector quantization (LVQ) for pattern analyses of features selection in a non-intrusive load monitoring (NILM) system. Load recognition for identifying loads being connected and disconnected is applied to a NILM by using a neural network, especially for industrial electrical loads, even though some loads are activated at the nearly same time. In order to accurately decompose the aggregate load into its components, a feature-based model for describing the signatures of individual appliances and load combinations is used. The model will suggest the certain signatures which can be detected for all loads in order to indicate the activities of the separate components. To verify the performance of the model for the features selection, the data sets of the electrical loads and the load recognition techniques apply an electromagnetic transient program (EMTP) and a neural network, respectively. The effectiveness and computation equipment of load recognition are analyzed and compared by using the back propagation classifier and the learning vector quantization classifier. To obtain a maximum recognition accuracy rate, the calculation of the turn-on transient energy signature employs a window of samples, 驴t, to adaptively segment a transient representative of a class of loads. Experiments performed with a variety of model data sets which reveal the back propagation classifier is superior to the learning quantization classifier in the effectiveness and computation equipment of load recognition.
机译:本文提出了对非侵入式负载监测(尼核)系统中的特征选择的图案分析来比较神经网络分类器的性能和学习矢量量化(LVQ)。用于识别连接和断开连接的负载的负载识别通过使用神经网络应用于NILM,特别是对于工业电荷,即使一些负载在几乎同时激活。为了将聚合负载准确地分解为其组件,使用用于描述各个设备和负载组合的签名的基于特征的模型。该模型将建议为所有负载检测到的某些签名,以指示单独组件的活动。为了验证特征选择的模型的性能,电负载和负载识别技术的数据集分别应用电磁瞬态程序(EMTP)和神经网络。通过使用后传播分类器和学习矢量量化分类,分析和比较负载识别的有效性和计算设备。为了获得最大识别精度率,计算开启瞬态能量签名的计算采用样本窗口,驴T,自适应地分割一类负载的瞬态代表。利用各种模型数据集执行的实验,该模型数据集显示了回到传播分类器的有效性和计算设备的学习量化分类器优于负载识别。

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