Attention-guided Temporal Convolutional Network for Non-intrusive Load Monitoring

Huamin Ren, Xiaomeng Su, R. Jenssen, Jingyue Li, S. Anfinsen
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Abstract

With the prevalence of smart meter infrastructure, data analysis on consumer side becomes more and more important in smart grid systems. One of the fundamental tasks is to disaggregate users' total consumption into appliance-wise values. It has been well noted that encoding of temporal dependency is a key issue for successful modelling of the relations between the total consumption and its decomposed consumption on an appliance historically, and therefore has been implemented in many state-of-the-art models. However, how to encode the varied long-term and short-term dependency coming from different appliances is yet an open and under-addressed question. In this paper, we propose an attention-guided temporal convolutional network (ATCN), which generates different temporal residual blocks and provides an attention mechanism to indicate the importance of those blocks with respect to the appliance. Ul-timately, we aim to address these two questions: i) How to employ both long-term and short-term temporal dependency to better disaggregate future loads while maintaining an affordable memory cost? ii) How to employ attention during the training of an appliance to obtain a better representation of the consumption pattern? We have demonstrated the effectiveness of our approach through comprehensive experiments and show that our proposed ATCN model achieves state-of-the-art performance, particularly on multi-status appliances that are normally hard to cope with regarding disaggregation accuracy and generalization capability.
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非侵入式负荷监测的注意引导时间卷积网络
随着智能电表基础设施的普及,用户侧数据分析在智能电网系统中变得越来越重要。其中一项基本任务是将用户的总消费分解为与设备相关的价值。人们已经注意到,时间依赖性的编码是一个关键问题,对于一个设备上的总消耗与其分解消耗之间的关系成功建模历史,因此已在许多最先进的模型中实现。然而,如何对来自不同设备的各种长期和短期依赖进行编码仍然是一个开放和未解决的问题。在本文中,我们提出了一个注意引导的时间卷积网络(ATCN),它产生不同的时间残差块,并提供一个注意机制来表明这些块相对于设备的重要性。最终,我们的目标是解决这两个问题:i)如何使用长期和短期时间依赖关系来更好地分解未来的负载,同时保持可负担的内存成本?ii)如何在器具的训练过程中运用注意力,以更好地反映消费模式?我们已经通过综合实验证明了我们方法的有效性,并表明我们提出的ATCN模型达到了最先进的性能,特别是在通常难以处理的多状态设备上的分解精度和泛化能力。
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