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Unsupervised algorithms for non-intrusive load monitoring: An up-to-date overview

机译:用于非侵入式负载监控的无监督算法:最新概述

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Research on Smart Grids has recently focused on the energy monitoring issue, with the objective to maximize the user consumption awareness in building contexts on one hand, and to provide a detailed description of customer habits to the utilities on the other. One of the hottest topic in this field is represented by Non-Intrusive Load Monitoring (NILM): it refers to those techniques aimed at decomposing the consumption aggregated data acquired at a single point of measurement into the diverse consumption profiles of appliances operating in the electrical system under study. The focus here is on unsupervised algorithms, which are the most interesting and of practical use in real case scenarios. Indeed, these methods rely on a sustainable amount of a-priori knowledge related to the applicative context of interest, thus minimizing the user intervention to operate, and are targeted to extract all information to operate directly from the measured aggregate data. This paper reports and describes the most promising unsupervised NILM methods recently proposed in the literature, by dividing them into two main categories: load classification and source separation approaches. An overview of the public available dataset used on purpose and a comparative analysis of the algorithms performance is provided, together with a discussion of challenges and future research directions.
机译:智能电网的研究最近集中在能源监控问题上,其目的是一方面在构建环境时最大化用户的消费意识,另一方面为公用事业提供客户习惯的详细描述。非介入式负载监控(NILM)代表了该领域最热门的主题之一:它是指旨在将在单个测量点上获取的能耗汇总数据分解为在电气中运行的设备的各种能耗分布的那些技术。系统正在研究中。这里的重点是无监督算法,这是最有趣的,并且在实际案例中具有实际用途。实际上,这些方法依赖于与感兴趣的应用环境有关的可持续的先验知识量,从而使操作的用户干预最小化,并且旨在从测量的汇总数据中提取所有信息以直接操作。本文报告并描述了文献中最近提出的最有前途的无监督NILM方法,将它们分为两个主要类别:负载分类和源分离方法。概述了有目的使用的公共可用数据集,并对算法性能进行了比较分析,并讨论了挑战和未来的研究方向。

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