Dynamic Time Series Data Reduction for NILM Appliance Identification

Saad Tariq, K. Sim, K. Sim
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Abstract

Advancements in Internet of Things capabilities along with cheap & easy-to-use sensors have led to the development of many new domains, Non-Intrusive Load Monitoring being one of them. A crucial element of these technologies is appliance identification based on disaggregated power consumption signatures. The length of said signatures depends on the data collection frequency, with higher frequencies corresponding to longer time series. A dynamic time series data reduction method is introduced which can effectively extract a region of interest from very long time series. Appliance classification accuracy with these sub-ranges is then tested using Matrix Profile. Plug-Load Appliance Identification Dataset was used to carry out the experiments.
动态时间序列数据约简用于NILM电器识别
物联网功能的进步以及廉价和易于使用的传感器导致了许多新领域的发展,非侵入式负载监测就是其中之一。这些技术的一个关键要素是基于分解的功耗签名的设备识别。这些特征的长度与数据采集频率有关,频率越高对应的时间序列越长。介绍了一种动态时间序列数据约简方法,可以有效地从很长的时间序列中提取出感兴趣的区域。然后使用矩阵配置文件测试这些子范围的器具分类准确性。实验采用插件负载器具识别数据集进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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