SVM-Based Segmentation of Home Appliance Energy Measurements

Marc Wenninger, Dominik Stecher, Jochen Schmidt
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引用次数: 5

Abstract

Generating a more detailed understanding of domestic electricity demand is a major topic for energy suppliers and householders in times of climate change. Over the years there have been many studies on consumption feedback systems to inform householders, disaggregation algorithms for Non-Intrusive-Load-Monitoring (NILM), Real-Time-Pricing (RTP) to promote supply aware behavior through monetary incentives and appliance usage prediction algorithms. While these studies are vital steps towards energy awareness, one of the most fundamental challenges has not yet been tackled: Automated detection of start and stop of usage cycles of household appliances. We argue that most research efforts in this area will benefit from a reliable segmentation method to provide accurate usage information. We propose a SVM-based segmentation method for home appliances such as dishwashers and washing machines. The method is evaluated using manually annotated electricity measurements of five different appliances recorded over two years in multiple households.
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基于svm的家电能耗测量分割
在气候变化时期,更详细地了解国内电力需求是能源供应商和家庭的一个主要课题。多年来,已经有许多关于消费反馈系统的研究,以告知家庭,非侵入式负荷监测(NILM)的分解算法,实时定价(RTP)通过货币激励和家电使用预测算法来促进供应意识行为。虽然这些研究是提高能源意识的重要一步,但最根本的挑战之一尚未得到解决:家用电器使用周期的启动和停止自动检测。我们认为,该领域的大多数研究工作将受益于可靠的分割方法,以提供准确的使用信息。我们提出了一种基于svm的家用电器分割方法,如洗碗机和洗衣机。该方法是通过对多个家庭在两年内记录的五种不同电器的手动注释电力测量来评估的。
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