基于需求侧灵活性聚合的分布式电热水器热水需求预测的联邦学习与边缘学习

Surya Pandiyan, Jayaprakash Rajasekharan
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引用次数: 0

摘要

热水需求预测对于估计分布式电热水器(EWHs)的总体灵活性至关重要。用于预测的高性能深度学习模型需要大量的训练数据,而这些数据可能无法用于聚合器。保护隐私的边缘学习方法不能从其他EWHs学习。为了解决这些挑战,本文提出了一个联邦学习(FL)框架,用于在需求数据有限的情况下跨多个分布式EWHs进行热水需求类别预测。基于前馈神经网络(FNN)的全局模型是由多个边缘设备在不共享数据的情况下协同训练来预测热水需求的。全局模型还特别针对使用各自数据的各个EWHs进行了进一步微调。采用40个家庭的综合热水需求数据对所提出的方法进行了测试,结果表明所提出的FL框架比边缘学习性能更好,并且具有许多其他优势。
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Federated Learning vs Edge Learning for Hot Water Demand Forecasting in Distributed Electric Water Heaters for Demand Side Flexibility Aggregation
Hot water demand forecasting is crucial for estimating aggregated flexibility from distributed electric water heaters (EWHs). High-performance deep learning models for forecasting require large amounts of training data that may not be available to aggregators. Privacy preserving edge learning methods for individual EWHs cannot learn from other EWHs. To address these challenges, this paper proposes a federated learning (FL) framework for hot water demand class forecasting across multiple distributed EWHs with limited demand data. Feed-forward neural network (FNN) based global model is collaboratively trained by multiple edge devices without sharing data to predict hot water demand. The global model is specifically further fine-tuned to individual EWHs using their own data. The proposed approach is tested with synthetic hot water demand data from 40 households and the results indicate that the proposed FL framework can perform better than edge learning and has numerous other advantages.
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