Exploring Lightweight Federated Learning for Distributed Load Forecasting

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Conference PaperDate:
2023Access:
openAccessCitation:
Abhishek Duttagupta, Jin Zhao, Shanker Shreejith, Exploring Lightweight Federated Learning for Distributed Load Forecasting, IEEE SmartGridComm 2023 Conference, Glasgow, UK, 31/10/2023, 2023Download Item:

Abstract:
Federated Learning (FL) is a distributed learning
scheme that enables deep learning to be applied to sensitive data
streams and applications in a privacy-preserving manner. This
paper focuses on the use of FL for analyzing smart energy meter
data with the aim to achieve comparable accuracy to state-of-
the-art methods for load forecasting while ensuring the privacy
of individual meter data. We show that with a lightweight fully
connected deep neural network, we are able to achieve forecasting
accuracy comparable to existing schemes, both at each meter
source and at the aggregator, by utilising the FL framework. The
use of lightweight models further reduces the energy and resource
consumption caused by complex deep-learning models, making
this approach ideally suited for deployment across resource-
constrained smart meter systems. With our proposed lightweight
model, we are able to achieve an overall average load forecasting
RMSE of 0.17, with the model having a negligible energy
overhead of 50 mWh when performing training and inference
on an Arduino Uno platform.
Author's Homepage:
http://people.tcd.ie/shankershttp://people.tcd.ie/zhaoj6
Author: Shanker, Shreejith; Zhao, Jin
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IEEE SmartGridComm 2023 ConferenceType of material:
Conference PaperAvailability:
Full text availableSubject (TCD):
Digital Engagement , Smart & Sustainable Planet , Federated Learning , Smart Cities , Smart Grid , deep learningSource URI:
https://data.london.gov.uk/dataset/smartmeter-energy-usedata- in-london-householdsLicences: