A Secure Federated Deep Learning-Based Approach for Heating Load Demand Forecasting in Building Environment

Arash Moradzadeh, Hamed Moayyed, Behnam Mohammadi-Ivatloo, A Pedro Aguiar, Amjad Anvari-Moghaddam

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningpeer review

26 Citationer (Scopus)
77 Downloads (Pure)

Abstract

Recently, with the establishment of new thermal regulation, the energy efficiency of buildings has increased significantly, and various deep learning-based methods have been presented to accurately forecast the heating load demand of buildings. However, all of these methods are executed on a dataset with specific distribution and do not have the property of global forecasting, and have no guarantee of data privacy against cyber-attacks. This paper presents a novel approach to heating load demand forecasting based on Cyber-Secure Federated Deep Learning (CSFDL). The suggested CSFDL provides a global super-model for forecasting heating load demand of different local clients without knowing their location and, most importantly, without revealing their privacy. In this study, a CSFDL global server is trained and tested considering the heating load demand of 10 different clients in their building environment. The presented results, including a comparative study, prove the viability and accuracy of the proposed procedure.
OriginalsprogEngelsk
TidsskriftIEEE Access
Vol/bind10
Sider (fra-til)5037-5050
Antal sider14
ISSN2169-3536
DOI
StatusUdgivet - 2022

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