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A Semi-supervised and Online Learning Approach for Non-Intrusive Load Monitoring

机译:用于非侵入式负载监控的半监督在线学习方法

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Non-Intrusive Load Monitoring (NILM) approaches aim at identifying the consumption of a single appliance from the total load provided by smart meters. Several research works based on Hidden Markov Models (HMM) were developed for NILM where training is performed offline. However, these approaches suffer from different issues: First, they fail to generalize to unseen appliances with different configurations or brands than the ones used for training. Second, obtaining data about all active states of each appliance requires long time, which is impractical for residents. Third, offline training requires storage of huge amount of data, yielding to share resident consumption data with external servers and causing privacy issues. Therefore, in this paper, a new approach is proposed in order to tackle these issues. This approach is based on the use of a HMM conditioned on discriminant contextual features (e.g., time of usage, duration of usage). The conditional HMM (CHMM) is trained online using data related to a single appliance consumption extracted from aggregated load in order to adapt its parameters to the appliance specificity's (e.g., brand, configuration, etc.). Experiments are performed using real data from publicly available data sets and comparative evaluation are performed on a publicly available NILM framework.
机译:非侵入式负载监控(NILM)方法旨在从智能电表提供的总负载中识别单个设备的消耗。针对NILM开发了一些基于隐马尔可夫模型(HMM)的研究工作,其中离线进行培训。但是,这些方法存在不同的问题:首先,它们无法推广到与培训所用的配置或品牌不同的看不见的设备。其次,获取有关每个设备的所有活动状态的数据需要很长时间,这对于居民来说是不切实际的。第三,离线培训需要存储大量数据,从而与外部服务器共享居民消费数据并引起隐私问题。因此,本文提出了一种新的方法来解决这些问题。该方法基于对HMM的使用,该HMM以可区分的上下文特征(例如使用时间,使用持续时间)为条件。有条件的HMM(CHMM)使用与从汇总负载中提取的单个设备消耗有关的数据进行在线培训,以使其参数适应设备的特定性(例如,品牌,配置等)。实验使用来自公开数据集的真实数据进行,而比较评估则基于公开的NILM框架进行。

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