Federated Non-Intrusive Load Monitoring for Smart Homes Utilizing Attention-Based Aggregation

Shamisa Kaspour, A. Yassine
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Abstract

Nowadays, Non-Intrusive Load Monitoring (NILM) with Federated Learning (FL) framework has become a growing study towards providing a secure energy disaggregation system in smart homes. This study aims at deploying an attention-based aggregation (FedAtt) approach in FL to emphasize agents’ behavioral differences when consuming energy from various appliances. The goal of the proposed technique is to minimize the weighted distance between the parameters of the local model and the global model to better represent each local model’s characteristics. In this paper, we examine two different models for NILM: Short Sequence-to-Point (SS2P) and Variational Auto-Encoder (VAE). Our goal is to evaluate the effectiveness of FedAtt. The evaluation of the framework was carried out using the UK-DALE and REFIT datasets. The obtained results were then compared against centralized approaches of the models as well as FedAvg. Our findings show that FedAtt generates comparable results to the centralized model and FedAvg while improving the stability of FL at different values of added noise to local parameters.
基于注意力聚合的智能家居联合非侵入式负载监测
目前,基于联邦学习(FL)框架的非侵入式负荷监测(NILM)已成为智能家居中安全能源分解系统的研究热点。本研究旨在利用基于注意力的聚合(FedAtt)方法来强调智能体在从不同设备消耗能量时的行为差异。该技术的目标是最小化局部模型和全局模型参数之间的加权距离,以更好地表示每个局部模型的特征。在本文中,我们研究了两个不同的NILM模型:短序列到点(SS2P)和变分自编码器(VAE)。我们的目标是评估FedAtt的有效性。使用UK-DALE和REFIT数据集对该框架进行评估。然后将得到的结果与模型的集中方法以及fedag进行比较。我们的研究结果表明,FedAtt产生的结果与集中式模型和fedag相当,同时在不同的局部参数添加噪声值下提高了FL的稳定性。
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