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Can non-intrusive load monitoring be used for identifying an appliance's anomalous behaviour?

机译:可以使用非侵入式负载监视来识别设备的异常行为吗?

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摘要

Identification of faulty appliance behaviour in real time can signal energy wastage and the need for appliance servicing or replacement leading to energy savings. The problem of appliance fault or anomaly detection has been tackled vastly in relation to submetering, which is not scalable since it requires separate meters for each appliance. At the same time, for applications such as energy feedback, Non-intrusive load monitoring (NILM) has been recognised as a scalable and practical alternative to submetering. However, the usability of NILM for anomaly detection has not yet been investigated. Since the goal of NILM is to provide energy consumption estimate, it is unclear if the signal fidelity of appliance signatures generated by state-of-the-art NILM is sufficient to enable accurate appliance fault detection. In this paper, we attempt to determine whether appliance signatures detected by NILM can be used directly for anomaly detection. This is carried out by proposing an anomaly detection algorithm which performs well for submetering data and evaluate its ability to identify the same faulty behaviour of appliances but with NILM-generated appliance power traces. Our results on a dataset of six residential homes using four state-of-the-art NILM algorithms show that, on average, NILM traces are not as robust to identification of faulty behaviour as compared to using submetered data. We discuss in detail observations pertaining to the reconstructed appliance signatures following NILM and their fidelity with respect to noise-free submetered data.
机译:实时识别出故障的设备行为可以表明能源浪费,以及对设备进行维修或更换的需求,从而节省了能源。设备故障或异常检测的问题已在子计量方面得到了广泛解决,该方法无法扩展,因为每个设备都需要单独的仪表。同时,对于诸如能量反馈之类的应用,非侵入式负载监控(NILM)已被认为是可替代子计量的可扩展且实用的替代方案。但是,尚未研究NILM在异常检测中的可用性。由于NILM的目标是提供能耗估算,因此尚不清楚由最新的NILM生成的设备签名的信号保真度是否足以实现准确的设备故障检测。在本文中,我们尝试确定NILM检测到的设备签名是否可以直接用于异常检测。这是通过提出一种异常检测算法来实现的,该算法对于子计量数据表现良好,并评估其识别具有NILM生成的设备电源迹线的设备相同故障行为的能力。我们使用四种最新的NILM算法在六个住宅房屋的数据集上的结果表明,与使用亚计量数据相比,平均而言,NILM迹线在识别故障行为方面不那么可靠。我们将详细讨论与遵循NILM的重构设备签名有关的观察结果,以及有关无噪声次计量数据的保真度。

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