Federated Learning based Energy Demand Prediction with Clustered Aggregation
Ye Lin Tun, Kyi Thar, Chu Myaet Thwal, Choong Seon Hong

TL;DR
This paper introduces a federated learning approach with clustered aggregation using recurrent neural networks to predict energy demand, aiming to improve convergence speed and efficiency in distributed energy management systems.
Contribution
It proposes a novel clustered federated learning method with RNNs for energy demand prediction, enhancing convergence speed and handling client heterogeneity.
Findings
Clustered aggregation accelerates model convergence.
Recurrent neural networks improve prediction accuracy.
Federated learning reduces communication costs.
Abstract
To reduce negative environmental impacts, power stations and energy grids need to optimize the resources required for power production. Thus, predicting the energy consumption of clients is becoming an important part of every energy management system. Energy usage information collected by the clients' smart homes can be used to train a deep neural network to predict the future energy demand. Collecting data from a large number of distributed clients for centralized model training is expensive in terms of communication resources. To take advantage of distributed data in edge systems, centralized training can be replaced by federated learning where each client only needs to upload model updates produced by training on its local data. These model updates are aggregated into a single global model by the server. But since different clients can have different attributes, model updates can…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
