首页> 美国卫生研究院文献>Sensors (Basel Switzerland) >A Parallel Evolutionary Computing-Embodied Artificial Neural Network Applied to Non-Intrusive Load Monitoring for Demand-Side Management in a Smart Home: Towards Deep Learning
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A Parallel Evolutionary Computing-Embodied Artificial Neural Network Applied to Non-Intrusive Load Monitoring for Demand-Side Management in a Smart Home: Towards Deep Learning

机译:应用于智能家居需求侧管理的非侵入式负载监控的并行进化计算嵌入式人工神经网络:面向深度学习

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摘要

Non-intrusive load monitoring (NILM) is a cost-effective approach that electrical appliances are identified from aggregated whole-field electrical signals, according to their extracted electrical characteristics, with no need to intrusively deploy smart power meters (power plugs) installed for individual monitored electrical appliances in a practical field of interest. This work addresses NILM by a parallel Genetic Algorithm (GA)-embodied Artificial Neural Network (ANN) for Demand-Side Management (DSM) in a smart home. An ANN’s performance in terms of classification accuracy depends on its training algorithm. Additionally, training an ANN/deep NN learning from massive training samples is extremely computationally intensive. Therefore, in this work, a parallel GA has been conducted and used to integrate meta-heuristics (evolutionary computing) with an ANN (neurocomputing) considering its evolution in a parallel execution relating to load disaggregation in a Home Energy Management System (HEMS) deployed in a real residential field. The parallel GA that involves iterations to excessively cost its execution time for evolving an ANN learning model from massive training samples to NILM in the HEMS and works in a divide-and-conquer manner that can exploit massively parallel computing for evolving an ANN and, thus, reduce execution time drastically. This work confirms the feasibility and effectiveness of the parallel GA-embodied ANN applied to NILM in the HEMS for DSM.
机译:非侵入式负载监控(NILM)是一种经济高效的方法,可根据提取的电气特性从汇总的全场电信号中识别出电器,而无需为每个人强行安装智能电表(电源插头)在实际感兴趣的领域中监控电器。这项工作通过并行遗传算法(GA)体现的人工神经网络(ANN)解决了智能家居中的需求方管理(DSM)的NILM问题。人工神经网络在分类准确性方面的表现取决于其训练算法。另外,从大量的训练样本中训练ANN /深度NN学习非常耗费计算资源。因此,在这项工作中,已经进行了并行遗传算法,并考虑到了在与部署的家庭能源管理系统(HEMS)中的负载分解有关的并行执行中的演进,将元启发式算法(进化计算)与ANN(神经计算)集成在一起。在一个真正的住宅领域。涉及迭代的并行GA过度花费了其执行时间,从而使ANN学习模型从大量训练样本发展为HEMS中的NILM,并且采用分治法工作,可以利用大规模并行计算来发展ANN,因此,大大减少执行时间。这项工作证实了在HEMS for DSM中将并行GA体现的神经网络应用于NILM的可行性和有效性。

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