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Detection of unidentified appliances in non-intrusive load monitoring using Siamese neural networks

机译:使用暹罗神经网络的非侵入式负载监控中未识别设备的检测

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摘要

Non-intrusive load monitoring methods aim to disaggregate the total power consumption of a household into individual appliances by analyzing changes in the voltage and current measured at the grid connection point of the household. The goal is to identify the active appliances, based on their unique fingerprint. Most state-of-the-art classification algorithms rely on the assumption that all events in the data stream are triggered by known appliances, which is often not the case. This paper proposes a method capable of detecting previously unidentified appliances in an automated way. For this, appliances represented by their VI trajectory are mapped to a newly learned feature space created by a siamese neural network such that samples of the same appliance form tight clusters. Then, clustering is performed by DBSCAN allowing the method to assign appliance samples to clusters or label them as 'unidentified'. Benchmarking on PLAID and WHITED shows that an F-1.macro-measure of respectively 0.90 and 0.85 can be obtained for classifying the unidentified appliances as 'unidentified'.
机译:非侵入式负载监视方法旨在通过分析在家庭的电网连接点处测得的电压和电流的变化,将家庭的总功耗分解为单个设备。目的是根据活动设备的唯一指纹来识别它们。大多数最新的分类算法都基于这样的假设,即数据流中的所有事件都是由已知设备触发的,而事实并非如此。本文提出了一种能够以自动化方式检测先前未识别的设备的方法。为此,将以其VI轨迹表示的设备映射到由暹罗神经网络创建的新学习的特征空间,以使同一设备的样本形成紧密的簇。然后,由DBSCAN执行聚类,从而允许该方法将设备样本分配给聚类或将其标记为“未标识”。在PLAID和WHITED上进行的基准测试表明,可以将F-1.macro-measure分别设为0.90和0.85,以将未识别的设备分类为“未识别”。

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