On Electrical Load Disaggregation using Recurrent Neural Networks

R. Gopu, Anusha Gudimallam, Vishnu Brindavanam, N. Thokala, M. Chandra
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引用次数: 3

Abstract

In a residential setting, Load disaggregation (LD) is about obtaining appliance-specific operational details in terms of time and power consumption by processing aggregate power consumption data. The disaggregated load information helps utilities to categorize customers based on their usage patterns, facilitating optimal demand response design. Further, LD helps customers to know about their energy-consuming behavior, which is beneficial in reducing the consumption. To be able to provide appliance-specific consumption patterns for aforementioned goals, apart from accurate load identification, estimates of energy consumption of appliances of interest are necessary. In short, it is essential to cull out operational waveform of each of the requisite appliance. Towards this end, very few results have been reported in the literature related to estimating the operational wave-forms, even for large power consuming appliances. In this work, we address this problem using a deep-learning architecture with Recurrent Neural Networks (RNN) variants like Long-Short Term Memory networks (LSTM) and Generalized Recurrent Unit networks (GRU). In addition, a simple but effective technique in pre-processing of the aggregated data is proposed and implemented to identify and reconstruct the consumption pattern of low-power consuming appliances like Refrigerator.
基于递归神经网络的电力负荷分解研究
在住宅环境中,负载分解(Load disaggregation, LD)是关于通过处理总功耗数据来获得与时间和功耗相关的特定于设备的操作细节。分解的负载信息有助于公用事业公司根据客户的使用模式对其进行分类,从而促进最佳需求响应设计。此外,LD帮助客户了解他们的能源消耗行为,这有利于减少消耗。为了能够为上述目标提供特定于设备的消耗模式,除了准确的负载识别之外,还需要对相关设备的能耗进行估计。简而言之,必须剔除每个必要设备的工作波形。为此,文献中很少报道与估计工作波形有关的结果,即使是对于大功耗电器。在这项工作中,我们使用循环神经网络(RNN)变体(如长短期记忆网络(LSTM)和广义循环单元网络(GRU))的深度学习架构来解决这个问题。此外,提出并实现了一种简单而有效的聚合数据预处理技术,用于识别和重构冰箱等低功耗电器的消费模式。
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