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首页> 外文期刊>Internet of Things Journal, IEEE >An Efficient and Accurate Nonintrusive Load Monitoring Scheme for Power Consumption
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An Efficient and Accurate Nonintrusive Load Monitoring Scheme for Power Consumption

机译:一种高效,准确的非侵入式功耗监控方案

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Nonintrusive load monitoring (NILM) has attracted tremendous attention owing to its cost efficiency in electricity and sustainable development. NILM aims at acquiring individual appliance power consumption rates using an aggregated power smart meter reading. Each individual appliance's power consumption enables users to monitor their electricity usage habits for rational saving strategies. This is also a valuable tool for detecting failure in appliances. However, the major barriers facing NILM schemes are issues of accurately capturing the features of each appliance and decreasing the computing time. Motivated by these challenges, we propose a new, efficient, and accurate NILM scheme, consisting of a learning step and a decomposing step. In the learning step, we propose the fast search-and-find of density peaks (FSFDPs) clustering algorithm aimed at capturing the features of the power consumption patterns of appliances. In the decomposing step, we propose a genetic algorithm (GA)based matching algorithm to estimate the power consumption of each individual appliance using the aggregated power reading. Using elitist and catastrophic strategies, this step reduces the searching space to achieve considerable efficiency. Experimental results using the reference energy disaggregation dataset (REDD) indicate that our proposed scheme promotes accuracy by 10% and reduces the decomposing time by half.
机译:非介入式负载监控(NILM)由于其在电力和可持续发展方面的成本效率而受到了极大的关注。 NILM的目标是使用汇总的功率智能电表读数来获取单个设备的功耗率。每个电器的功耗使用户能够监控其用电习惯,以制定合理的节能策略。这也是检测设备故障的宝贵工具。但是,NILM方案面临的主要障碍是准确捕获每个设备的功能并减少计算时间的问题。受这些挑战的驱使,我们提出了一种新的,高效且准确的NILM方案,该方案包括学习步骤和分解步骤。在学习步骤中,我们提出了一种快速搜索和查找密度峰(FSFDP)聚类算法的方法,旨在捕获设备功耗模式的特征。在分解步骤中,我们提出了一种基于遗传算法(GA)的匹配算法,以使用汇总的功率读数估算每个单独设备的功耗。使用精英策略和灾难性策略,此步骤减少了搜索空间,以实现可观的效率。使用参考能量分解数据集(REDD)进行的实验结果表明,我们提出的方案可将准确性提高10%,并将分解时间减少一半。

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