IEEE Access (Jan 2022)

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

DOI
https://doi.org/10.1109/access.2021.3139529
Journal volume & issue
Vol. 10
pp. 5037 – 5050

Abstract

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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.

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