Comprehensive Performance Comparison of Supervised Machine Learning Algorithms in Non-Intrusive Load Monitoring

A. Ersen, Ayşe Kübra Erenoğlu, O. Erdinç, İbrahim Şengör, J. Catalão
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Abstract

Recent developments in the field of smart grid have led to renewed interest in load monitoring strategies for achieving effective energy management schemes. There are vast amount of published studies describing the role of non-intrusive load monitoring (NILM) system based on various learning algorithms. It is widely known that the accuracy of load identification depends strongly on utilized methods and its features. Thus, the main aim of this study is to investigate the comparative accuracy of machine learning algorithms which have the same training data with different feature subsets. Afterwards, a low-cost data acquisition system for NILM using bagged tree ensemble algorithm is developed and demonstrated in detail. The proposed structure is tested on the ThingSpeak IoT platform to reveal the effectiveness of the evaluated concept.
监督机器学习算法在非侵入式负荷监测中的综合性能比较
智能电网领域的最新发展使人们对实现有效能源管理方案的负荷监测策略重新产生了兴趣。大量已发表的研究描述了基于各种学习算法的非侵入式负荷监测系统的作用。众所周知,载荷识别的准确性很大程度上取决于所采用的方法及其特点。因此,本研究的主要目的是研究具有不同特征子集的相同训练数据的机器学习算法的比较准确性。然后,开发了一种基于袋树集成算法的低成本NILM数据采集系统,并进行了详细的演示。提出的结构在ThingSpeak物联网平台上进行了测试,以揭示评估概念的有效性。
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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