Employing Federated Learning for Training Autonomous HVAC Systems
Fredrik Hagstr\"om, Vikas Garg, Fabricio Oliveira

TL;DR
This paper demonstrates that federated learning enhances the training speed, generalization, and stability of reinforcement learning-based HVAC controllers across diverse building environments, promoting energy efficiency and thermal comfort.
Contribution
It introduces a federated learning approach for training reinforcement learning HVAC controllers, improving data efficiency, transferability, and robustness over traditional methods.
Findings
Faster learning speed with federated approach
Improved generalization to unseen environments
Enhanced training stability and robustness
Abstract
Buildings account for 40% of global energy consumption. A considerable portion of building energy consumption stems from heating, ventilation, and air conditioning (HVAC), and thus implementing smart, energy-efficient HVAC systems has the potential to significantly impact the course of climate change. In recent years, model-free reinforcement learning algorithms have been increasingly assessed for this purpose due to their ability to learn and adapt purely from experience. They have been shown to outperform classical controllers in terms of energy cost and consumption, as well as thermal comfort. However, their weakness lies in their relatively poor data efficiency, requiring long periods of training to reach acceptable policies, making them inapplicable to real-world controllers directly. In this paper, we demonstrate that using federated learning to train the reinforcement learning…
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Taxonomy
TopicsInternet of Things and AI · Context-Aware Activity Recognition Systems · Advanced Computational Techniques in Science and Engineering
