INDiC: Improved Non-intrusive Load Monitoring Using Load Division and Calibration

Nipun Batra, Haimonti Dutta, Amarjeet Singh
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引用次数: 34

Abstract

Residential buildings contribute significantly to the overall energy consumption across most parts of the world. While smart monitoring and control of appliances can reduce the overall energy consumption, management and cost associated with such systems act as a big hindrance. Prior work has established that detailed feedback in the form of appliance level consumption to building occupants improves their awareness and paves the way for reduction in electricity consumption. Non-Intrusive Load Monitoring (NILM), i.e. the process of disaggregating the overall home electricity usage measured at the meter level into constituent appliances, provides a simple and cost effective methodology to provide such feedback to the occupants. In this paper we present Improved Non-Intrusive load monitoring using load Division and Calibration (INDiC) that simplifies NILM by dividing the appliances across multiple instrumented points (meters/phases) and calibrating the measured power. Proposed approach is used together with the Combinatorial Optimization framework and evaluated on the popular REDD dataset. Empirical results demonstrate significant improvement in disaggregation accuracy, achieved by using INDiC based Combinatorial Optimization, demonstrate significant improvement in disaggregation accuracy.
使用负载划分和校准改进的非侵入式负载监测
在世界大部分地区,住宅建筑对总体能源消耗的贡献很大。虽然智能监控和控制设备可以降低整体能耗,但与此类系统相关的管理和成本是一个很大的障碍。先前的工作已经确定,以电器级消耗的形式向建筑物居住者提供详细的反馈可以提高他们的意识,并为减少电力消耗铺平道路。非侵入式负荷监测(NILM),即将在电表层面测量的整体家庭用电量分解为组成电器的过程,提供了一种简单而经济有效的方法,向住户提供这种反馈。在本文中,我们提出了使用负载划分和校准(INDiC)的改进的非侵入式负载监测,通过将设备划分到多个仪表点(仪表/相位)并校准测量功率来简化NILM。将该方法与组合优化框架结合使用,并在流行的REDD数据集上进行了评估。实证结果表明,使用基于索引的组合优化方法可以显著提高分解精度,从而显著提高分解精度。
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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