用于非侵入式负载监控的稳健且注重隐私的联合学习框架

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Transactions on Sustainable Computing Pub Date : 2024-02-28 DOI:10.1109/TSUSC.2024.3370837
Vidushi Agarwal;Omid Ardakanian;Sujata Pal
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引用次数: 0

摘要

随着智能电表的推广,人们可以从家庭中获取大量的能源时间序列,从而实现非侵入式负荷监控(NILM)等应用。然而,这些数据的收集并不显眼,会对客户的隐私造成威胁。联合学习(FL)允许机器学习模型以协作方式在分散数据上进行训练,从而消除了与云服务提供商共享原始数据的问题。虽然近年来已经提出了几种依赖 FL 来训练深度神经网络以识别单个电器能耗的 NILM 技术,但这些技术对恶意用户的鲁棒性以及全面保护用户隐私的能力仍有待探索。在本文中,我们提出了一种基于 FL 的稳健且保护隐私的框架,用于训练 NILM 的双向变压器架构。该框架利用元学习算法来处理现实世界中普遍存在的数据异质性问题。通过使用两个真实世界的 NILM 数据集进行对比实验,证实了所提框架的功效。结果表明,该框架可以达到与集中训练的能量分解模型相当的准确度,同时还能保护用户隐私。
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A Robust and Privacy-Aware Federated Learning Framework for Non-Intrusive Load Monitoring
With the rollout of smart meters, a vast amount of energy time-series became available from homes, enabling applications such as non-intrusive load monitoring (NILM). The inconspicuous collection of this data, however, poses a risk to the privacy of customers. Federated Learning (FL) eliminates the problem of sharing raw data with a cloud service provider by allowing machine learning models to be trained in a collaborative fashion on decentralized data. Although several NILM techniques that rely on FL to train a deep neural network for identifying the energy consumption of individual appliances have been proposed in recent years, the robustness of these techniques to malicious users and their ability to fully protect the user privacy remain unexplored. In this paper, we present a robust and privacy-preserving FL-based framework to train a bidirectional transformer architecture for NILM. This framework takes advantage of a meta-learning algorithm to handle the data heterogeneity prevalent in real-world settings. The efficacy of the proposed framework is corroborated through comparative experiments using two real-world NILM datasets. The results show that this framework can attain an accuracy that is on par with a centrally-trained energy disaggregation model, while preserving user privacy.
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来源期刊
IEEE Transactions on Sustainable Computing
IEEE Transactions on Sustainable Computing Mathematics-Control and Optimization
CiteScore
7.70
自引率
2.60%
发文量
54
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