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Multi-State Energy Classifier to Evaluate the Performance of the NILM Algorithm

机译:用于评估NILM算法性能的多状态能量分类器

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摘要

With the large-scale deployment of smart meters worldwide, research in non-intrusive load monitoring (NILM) has seen a significant rise due to its dual use of real-time monitoring of end-user appliances and user-centric feedback of power consumption usage. NILM is a technique for estimating the state and the power consumption of an individual appliance in a consumer’s premise using a single point of measurement device such as a smart meter. Although there are several existing NILM techniques, there is no meaningful and accurate metric to evaluate these NILM techniques for multi-state devices such as the fridge, heat pump, etc. In this paper, we demonstrate the inadequacy of the existing metrics and propose a new metric that combines both event classification and energy estimation of an operational state to give a more realistic and accurate evaluation of the performance of the existing NILM techniques. In particular, we use unsupervised clustering techniques to identify the operational states of the device from a labeled dataset to compute a penalty threshold for predictions that are too far away from the ground truth. Our work includes experimental evaluation of the state-of-the-art NILM techniques on widely used datasets of power consumption data measured in a real-world environment.
机译:随着智能电表在全球的大规模部署,非侵入式负载监控(NILM)的研究已显着增长,这是因为它同时使用了最终用户设备的实时监控和以用户为中心的功耗使用反馈。 NILM是一种使用单点测量设备(例如智能电表)估算消费者房屋中单个设备的状态和功耗的技术。尽管有几种现有的NILM技术,但尚没有有意义和准确的度量标准来评估这些多态设备(如冰箱,热泵等)的NILM技术。在本文中,我们演示了现有度量标准的不足之处,并提出了一个建议。结合事件分类和运行状态能量估计的新指标,可以对现有NILM技术的性能进行更真实,更准确的评估。特别是,我们使用无监督的聚类技术从标记的数据集中识别设备的运行状态,以计算惩罚性阈值,以用于离地面实况太远的预测。我们的工作包括对在现实环境中测得的功耗数据广泛使用的数据集进行最新的NILM技术的实验评估。

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