Department of Electrical and Computer Engineering, Laboratoire d'innovation et de Recherche en Énergie Intelligent, Hydrogen Research Institute, Université du Québec à Trois-Rivières, Trois-Rivières, QC G8Z 4M3, Canada.
Hydro-Quebec Research Institute, Laboratoire des Technologies de l'énergie d'Hydro-Québec, Shawinigan, QC G9N 0C5, Canada.
Sensors (Basel). 2023 Aug 21;23(16):7288. doi: 10.3390/s23167288.
For many years, energy monitoring at the most disaggregate level has been mainly sought through the idea of Non-Intrusive Load Monitoring (NILM). Developing a practical application of this concept in the residential sector can be impeded by the technical characteristics of case studies. Accordingly, several databases, mainly from Europe and the US, have been publicly released to enable basic research to address NILM issues raised by their challenging features. Nevertheless, the resultant enhancements are limited to the properties of these datasets. Such a restriction has caused NILM studies to overlook residential scenarios related to geographically-specific regions and existent practices to face unexplored situations. This paper presents applied research on NILM in Quebec residences to reveal its barriers to feasible implementations. It commences with a concise discussion about a successful NILM idea to highlight its essential requirements. Afterward, it provides a comparative statistical analysis to represent the specificity of the case study by exploiting real data. Subsequently, this study proposes a combinatory approach to load identification that utilizes the promise of sub-meter smart technologies and integrates the intrusive aspect of load monitoring with the non-intrusive one to alleviate NILM difficulties in Quebec residences. A load disaggregation technique is suggested to manifest these complications based on supervised and unsupervised machine learning designs. The former is aimed at extracting overall heating demand from the aggregate one while the latter is designed for disaggregating the residual load. The results demonstrate that geographically-dependent cases create electricity consumption scenarios that can deteriorate the performance of existing NILM methods. From a realistic standpoint, this research elaborates on critical remarks to realize viable NILM systems, particularly in Quebec houses.
多年来,主要通过非侵入式负载监测(NILM)的概念来寻求最分散层面的能源监测。在住宅领域开发这种概念的实际应用可能会受到案例研究技术特征的阻碍。因此,已经发布了几个主要来自欧洲和美国的数据库,以支持基础研究来解决由其挑战性特征引发的 NILM 问题。然而,由此产生的增强功能仅限于这些数据集的属性。这种限制导致 NILM 研究忽略了与地理位置特定区域和现有实践相关的住宅场景,以面对未知情况。本文对魁北克住宅中的 NILM 进行了应用研究,以揭示其可行实现的障碍。它首先简要讨论了一个成功的 NILM 想法,以突出其基本要求。之后,它提供了一个比较统计分析,通过利用实际数据来代表案例研究的特殊性。随后,本研究提出了一种组合的负载识别方法,利用智能子电表技术的承诺,并将负载监测的侵入性与非侵入性相结合,以减轻魁北克住宅中的 NILM 困难。提出了一种负载分解技术来基于监督和无监督机器学习设计来体现这些复杂性。前者旨在从总负载中提取总加热需求,而后者旨在分解剩余负载。结果表明,依赖地理位置的案例会创建可能会降低现有 NILM 方法性能的用电场景。从现实的角度来看,本研究详细阐述了实现可行的 NILM 系统的关键评论,特别是在魁北克的房屋中。