Non-Intrusive Occupancy Monitoring using Smart Meters

Dong Chen, S. Barker, Adarsh Subbaswamy, David E. Irwin, P. Shenoy
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引用次数: 167

Abstract

Detailed information about a home's occupancy is necessary to implement many advanced energy-efficiency optimizations. However, monitoring occupancy directly is intrusive, typically requiring the deployment of multiple environmental sensors, e.g., motion, acoustic, CO2, etc. In this paper, we explore the potential for Non-Intrusive Occupancy Monitoring (NIOM) by using electricity data from smart meters to infer occupancy. We first observe that a home's pattern of electricity usage generally changes when occupants are present due to their interact with electrical loads. We empirically evaluate these interactions by monitoring ground truth occupancy in two homes, then correlating it with changes in statistical metrics of smart meter data, such as power's mean and variance, over short intervals. In particular, we use each metric's maximum value at night as a proxy for its maximum value in an unoccupied home, and then signal occupancy whenever the daytime value exceeds it. Our results highlight NIOM's potential and its challenges.
使用智能电表进行非侵入式占用监控
关于房屋占用率的详细信息对于实施许多先进的能源效率优化是必要的。然而,直接监测占用情况是侵入性的,通常需要部署多个环境传感器,例如运动、声学、二氧化碳等。在本文中,我们通过使用来自智能电表的电力数据来推断占用情况,探索非侵入式占用监测(NIOM)的潜力。我们首先观察到,当居住者在场时,由于他们与电力负荷的相互作用,家庭的电力使用模式通常会发生变化。我们通过监测两个家庭的地面真实占用率来经验地评估这些相互作用,然后将其与智能电表数据的统计指标变化(如功率的平均值和方差)在短时间间隔内进行关联。特别是,我们使用每个指标在夜间的最大值作为其在无人住宅中的最大值的代理,然后在白天的值超过该值时发出占用信号。我们的研究结果突出了NIOM的潜力和挑战。
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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