English

Federated Learning for Short-term Residential Load Forecasting

Machine Learning 2022-09-09 v2 Computers and Society

Abstract

Load forecasting is an essential task performed within the energy industry to help balance supply with demand and maintain a stable load on the electricity grid. As supply transitions towards less reliable renewable energy generation, smart meters will prove a vital component to facilitate these forecasting tasks. However, smart meter adoption is low among privacy-conscious consumers that fear intrusion upon their fine-grained consumption data. In this work we propose and explore a federated learning (FL) based approach for training forecasting models in a distributed, collaborative manner whilst retaining the privacy of the underlying data. We compare two approaches: FL, and a clustered variant, FL+HC against a non-private, centralised learning approach and a fully private, localised learning approach. Within these approaches, we measure model performance using RMSE and computational efficiency. In addition, we suggest the FL strategies are followed by a personalisation step and show that model performance can be improved by doing so. We show that FL+HC followed by personalisation can achieve a \sim5\% improvement in model performance with a \sim10x reduction in computation compared to localised learning. Finally we provide advice on private aggregation of predictions for building a private end-to-end load forecasting application.

Keywords

Cite

@article{arxiv.2105.13325,
  title  = {Federated Learning for Short-term Residential Load Forecasting},
  author = {Christopher Briggs and Zhong Fan and Peter Andras},
  journal= {arXiv preprint arXiv:2105.13325},
  year   = {2022}
}
R2 v1 2026-06-24T02:32:24.966Z