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Comprehensive Analysis of Convolutional Neural Network Models for Non-Instructive Load Monitoring

机译:非教学负荷监测综合分析卷积神经网络模型

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Non-Instructive Load Monitoring (NILM) schemes have become more popular in recent years with the availability of smart meters. It provides energy use data to utilities and per-appliance energy consumption details to end users. This study carries out a comprehensive analysis of existing Convolutional Neural Network (CNN) architectures that have been used for NILM. Nevertheless, it provides an unbiased comparison of the existing architectures thereby helping to select the best performing model for NILM applications. The commonly used CNN disaggregation models were categorized into distinctive groups based on their architectures which considered structure of the Neural Network (NN) and outputs. It considers regression-based sequence to sequence and sequence to point mapping, classification-based sequence to point hard association and soft association-based mapping. The CNN models are improved and modified to bring them onto a common platform for comparison. Thereafter, a rigorous comparison was performed using indices which included accuracy, precision, F-measure and recall. The results reveal interesting relationships between architectures, appliances and measures.
机译:近年来,非指导性负荷监测(尼尔)方案随着智能电表的可用性而变得更加流行。它为Extilities和Per-Appliance能量消耗细节提供了能量使用数据到最终用户。本研究执行对已经用于尼尔的现有卷积神经网络(CNN)架构进行全面分析。然而,它提供了对现有架构的无偏见的比较,从而有助于为NILM应用选择最佳的执行模型。常用的CNN分类模型基于其架构分类为独特的组,该架构考虑了神经网络(NN)和输出的结构。它考虑基于回归的序列来序列和序列,以点映射,基于分类的序列到点硬关联和基于软关联的映射。 CNN模型得到改进和修改,以将它们带到共同的平台上进行比较。此后,使用索引进行严格的比较,该指数包括精度,精度,F测量和召回。结果揭示了架构,家电和措施之间有趣的关系。

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