Non-Intrusive Load Monitoring for High Power Consuming Appliances using Neural Networks

W. Wickramarachchi, P. H. Panawenna, J. Majuran, V. Logeeshan, S. Kumarawadu
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引用次数: 2

Abstract

The topic of Energy Conservation requires urgent attention worldwide to avoid the impending energy crisis and reduce the impact on the environment through emissions. A crucial step in energy conservation is to motivate individual consumers to reduce their consumption. Itemized energy consumption feedback on each appliance helps users to plan their consumption patterns in an optimum way. Non-intrusive load monitoring is a low-cost and low-maintenance method for identifying consumptions of individual devices from the aggregate data of the mains supply. However, high power-consuming devices with power patterns with varying states are generally difficult to identify, despite them making a huge impact on the overall consumption of a household. Research shows that machine learning techniques are a promising approach for this disaggregation process. This paper focuses on developing data preprocessing methods and neural network algorithms to accurately disaggregate four common household appliances including ones with multistate power patterns.
基于神经网络的高功耗电器非侵入式负荷监测
为了避免迫在眉睫的能源危机,减少排放对环境的影响,节能这个话题需要全世界的迫切关注。节约能源的一个关键步骤是激励个人消费者减少他们的消费。每个设备的逐项能耗反馈可以帮助用户以最佳方式规划他们的消费模式。非侵入式负载监测是一种低成本和低维护的方法,用于从主电源的汇总数据中识别单个设备的消耗。然而,具有不同状态的电源模式的高能耗设备通常难以识别,尽管它们对家庭的总体消耗产生了巨大影响。研究表明,机器学习技术是解决这一分解过程的一种很有前途的方法。本文重点研究了数据预处理方法和神经网络算法,以准确分解四种常见的家用电器,包括具有多状态功率模式的家用电器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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