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Event-Detection Algorithms for Low Sampling Nonintrusive Load Monitoring Systems Based on Low Complexity Statistical Features

机译:基于低复杂度统计特征的低采样非侵入式负荷监测系统的事件检测算法

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摘要

One of the key techniques toward energy efficiency and conservation is nonintrusive load monitoring (NILM) which lies in the domain of energy monitoring. Event detection is a core component of event-based NILM systems. This paper proposes two new low-complexity and computationally fast algorithms that detect the variations of load data and return the time occurrences of the corresponding events. The proposed algorithms are based on the phenomenon of a sliding window (SW) that tracks the statistical features of the acquired aggregated load data. The performance of the proposed algorithms is evaluated using real-world data and a comparative analysis has been carried out with one of the recently proposed event detection algorithms. Based on the simulations and sensitivity analysis, it is shown that the proposed algorithm can provide the results of up to 93% and 88% in terms of recall and precision, respectively.
机译:提高能源效率和节约能源的关键技术之一是非介入式负荷监测(NILM),它位于能源监测领域。事件检测是基于事件的NILM系统的核心组件。本文提出了两种新的低复杂度和计算速度快的算法,它们可以检测负载数据的变化并返回相应事件的时间发生。所提出的算法基于滑动窗口(SW)的现象,该现象跟踪获取的聚集负载数据的统计特征。使用现实世界的数据评估了所提出算法的性能,并使用最近提出的事件检测算法之一进行了比较分析。通过仿真和灵敏度分析,表明该算法在查全率和查准率上分别可提供高达93%和88%的结果。

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