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A Hybrid Event Detection Approach for Non-Intrusive Load Monitoring

机译:用于非侵入式负载监控的混合事件检测方法

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摘要

Non-intrusive load monitoring (NILM) is a practical method to provide appliance-level electricity consumption information. Event detection, as an important part of event-based NILM methods, has a direct impact on the accuracy of the ultimate load disaggregation results in the entire NILM framework. This paper presents a hybrid event detection approach for relatively complex household load datasets that include appliances with long transients, high fluctuations, and/or near-simultaneous actions. The proposed approach includes a base algorithm based on moving average change with time limit, and two auxiliary algorithms based on derivative analysis and filtering analysis. The structure, steps, and working principle of this approach are described in detail. The proposed approach does not require additional information about household appliances, nor does it require any training sets. Case studies on different datasets are conducted to evaluate the performance of the proposed approach in comparison with several existing approaches including log likelihood ratio detector with maxima (LLD-Max) approach, active window-based (AWB) approach, and generalized likelihood ratio (GLR) approach. Results show that the proposed approach works well in detecting events in complex household load datasets and performs better than the existing approaches.
机译:非侵入式负载监视(NILM)是提供设备级用电量信息的实用方法。事件检测作为基于事件的NILM方法的重要组成部分,直接影响整个NILM框架中最终负载分解结果的准确性。本文针对相对复杂的家庭负荷数据集提出了一种混合事件检测方法,该数据集包括具有长瞬态,高波动和/或几乎同时动作的设备。所提出的方法包括基于随时间限制的移动平均变化的基本算法,以及基于导数分析和滤波分析的两个辅助算法。详细介绍了此方法的结构,步骤和工作原理。提议的方法不需要有关家用电器的其他信息,也不需要任何培训。与几种现有方法(包括具有最大值的对数似然比检测器(LLD-Max),基于活动窗口的(AWB)方法和广义似然比(GLR)的几种现有方法相比,对不同数据集进行了案例研究,以评估该方法的性能。 )方法。结果表明,所提出的方法在检测复杂的家庭负荷数据集中的事件时效果很好,并且比现有方法具有更好的性能。

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