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Privacy Preserving Demand Forecasting to Encourage Consumer Acceptance of Smart Energy Meters

Briggs, Christopher; Fan, Zhong; Andras, Peter

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Authors

Christopher Briggs

Zhong Fan

Peter Andras



Abstract

In this proposal paper we highlight the need for privacy preserving energy demand forecasting to allay a major concern consumers have about smart meter installations. High resolution smart meter data can expose many private aspects of a consumer's household such as occupancy, habits and individual appliance usage. Yet smart metering infrastructure has the potential to vastly reduce carbon emissions from the energy sector through improved operating efficiencies. We propose the application of a distributed machine learning setting known as federated learning for energy demand forecasting at various scales to make load prediction possible whilst retaining the privacy of consumers' raw energy consumption data.

Citation

Briggs, C., Fan, Z., & Andras, P. (2021, December). Privacy Preserving Demand Forecasting to Encourage Consumer Acceptance of Smart Energy Meters. Poster presented at NeurIPS 2020 Workshop Tackling Climate Change with Machine Learning

Presentation Conference Type Poster
Conference Name NeurIPS 2020 Workshop Tackling Climate Change with Machine Learning
Start Date Dec 6, 2021
End Date Dec 12, 2021
Acceptance Date Dec 6, 2021
Publication Date Dec 6, 2021
Public URL https://keele-repository.worktribe.com/output/420278
Publisher URL https://www.climatechange.ai/papers/neurips2020/78.html

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