Efficient and Accurate Peer-to-Peer Training of Machine Learning Based Home Thermal Models

Karim Boubouh, Robert Basmadjian, Omid Ardakanian, Alexandre Maurer, Rachid Guerraoui
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引用次数: 1

Abstract

The integration of smart thermostats in home automation systems has created an opportunity to optimize space heating and cooling through the use of machine learning, for example for thermal model identification. Nonetheless, its full potential remains untapped due to the lack of a suitable learning scheme. Traditional centralized learning (CL) and federated learning (FL) schemes could pose privacy and security concerns, and result in a generic model that does not adequately represent thermal requirements and characteristics of each individual home. To overcome these limitations, in this paper we embrace the novel peer-to-peer learning scheme for on-device training of home thermal models. Specifically, we adapt the personalized peer-to-peer algorithm proposed in recent work (called P3) to efficiently train personalized thermal models on resource-constrained devices. Our preliminary experiments with data from 1,000 homes, using the LSTM model, demonstrate that the adapted P3 algorithm produces accurate and personalized thermal models while being extremely energy-efficient, consuming respectively 600 and 40 times less energy than the CL and FL schemes. This result suggests that the P3 algorithm offers a privacy-conscious, accurate, and energy-efficient solution for training thermal models for the many homes in the building stock.
基于家庭热模型的机器学习点对点高效准确训练
智能恒温器在家庭自动化系统中的集成创造了一个机会,通过使用机器学习来优化空间供暖和制冷,例如用于热模型识别。然而,由于缺乏合适的学习方案,其全部潜力仍未得到充分开发。传统的集中式学习(CL)和联邦学习(FL)方案可能会带来隐私和安全问题,并导致通用模型不能充分代表每个家庭的热需求和特征。为了克服这些限制,在本文中,我们采用了新颖的点对点学习方案,用于家庭热模型的设备上训练。具体来说,我们采用了最近工作中提出的个性化点对点算法(称为P3)来有效地训练资源受限设备上的个性化热模型。我们使用LSTM模型对1,000个家庭的数据进行了初步实验,结果表明,经过调整的P3算法产生了准确和个性化的热模型,同时非常节能,比CL和FL方案分别消耗的能量少600倍和40倍。这一结果表明,P3算法为建筑中许多家庭的热模型训练提供了一个注重隐私、准确和节能的解决方案。
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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