Appliance-level demand identification through signature analysis

W. A. K. Dhananjaya, R. Rathnayake, S. Samarathunga, C. Senanayake, N. Wickramarachchi
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引用次数: 3

Abstract

Appliance specific load monitoring is very useful in energy management solutions that are becoming a challenging task with growing energy demand. It facilitates appliance recognition and load monitoring such that optimum resource utilization can be achieved by correct appliance scheduling. In this paper we present a study of non-intrusive load recognition using steady state appliance signatures for identifying commonly used household appliances. Current harmonics, active and reactive power components acquired from data loggers are used as appliance signature in this study. This analysis enables the capability of providing detailed information on appliances in use and consumers could benefit from customized energy management recommendations. Also, suppliers could implement smart metering technology introducing appliance level information as well. We propose algorithms for non-intrusive load recognition using combination of several methods and techniques. It was seen that a higher accuracy of identification could be achieved when a combination of techniques are used rather than using a single technique.
通过签名分析进行设备级需求识别
设备特定负载监控在能源管理解决方案中非常有用,随着能源需求的增长,能源管理解决方案正成为一项具有挑战性的任务。它便于设备识别和负载监控,以便通过正确的设备调度实现最佳的资源利用。在本文中,我们提出了一种非侵入式负载识别的研究,使用稳态电器签名来识别常用的家用电器。电流谐波、有功功率和无功功率分别从数据记录仪中获取,作为本研究的电器特征。这种分析能够提供使用中的设备的详细信息,消费者可以从定制的能源管理建议中受益。此外,供应商也可以实施引入家电级信息的智能计量技术。我们提出了一种非侵入式负载识别算法,该算法结合了几种方法和技术。人们认为,当使用多种技术而不是使用单一技术时,可以实现更高的识别准确性。
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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