A Holistic Federated Learning Approach Employing
Neural Networks for Climate Control within Smart
Buildings
Journal:
GRENZE International Journal of Engineering and Technology
Authors:
Caleb Stephen, Chitra R, Richie Suresh Koshy, Joel Mathew
Volume:
10
Issue:
2
Grenze ID:
01.GIJET.10.2.233_1
Pages:
4304-4311
Abstract
Comfort is a universally understood concept of physical and mental well-being.
Maximizing comfort is of paramount importance to everyone be it at home or in a workspace.
Smart Buildings offers the technology to facilitate a greater enhancement of comfort in every
occupied space. This research delves into the realm of intelligent climate control within smart
buildings by leveraging new machine-learning techniques. This research proposes a holistic
approach to climate control by incorporating federated learning, to learn the user’s preferences
across many buildings. The federated learning framework ensures that data privacy is
maintained at all times. A global neural network regression model has been created that has
trained on a wide variety of input data. The study contributes to the evolving field of smart
building technologies, offering a sustainable and efficient solution for enhanced living and climate
control.