Electricity consumed by residential consumers counts for a significant part of global electricity consumption and utility companies can collect high-resolution load data thanks to the widely deployed advanced metering infrastructure. There has been a growing research interest toward appliance load disaggregation via nonintrusive load monitoring. As the electricity consumption of appliances is directly associated with the activities of consumers, this paper proposes a new and more effective approach, i.e., activity disaggregation. We present the concept of activity disaggregation and discuss its advantage over traditional appliance load disaggregation. We develop a framework by leverage machine learning for activity detection based on residential load data and features. We show through numerical case studies to demonstrate the effectiveness of the activity detection method and analyze consumer behaviors by time-dependent activity modeling. Last but not least, we discuss some potential use cases that can benefit from activity disaggregation and some future research directions.
翻译:住宅消费者消费的电力占全球电力消费的很大一部分,公用事业公司可以收集高分辨率的负载数据,这要归功于广泛部署的先进计量基础设施。人们越来越有兴趣通过非侵入性负载监测对电器负载进行分类。由于电器的用电与消费者的活动直接相关,本文件建议了一种新的和更有效的方法,即活动分类。我们介绍了活动分类的概念,并讨论了它比传统用具负载分解的优势。我们开发了一个框架,利用机器学习来根据住宅负载数据和特征进行活动检测。我们通过数字案例研究展示了活动检测方法的有效性,并通过根据时间进行活动模型分析消费者行为。最后但并非最不重要的是,我们讨论了一些可以利用活动分类和未来研究方向的潜在使用案例。