Laxity-Aware Scalable Reinforcement Learning for HVAC Control
Ruohong Liu, Yuxin Pan, Yize Chen

TL;DR
This paper introduces a scalable reinforcement learning approach for HVAC control that leverages laxity to efficiently manage large populations of systems, improving demand flexibility and energy cost savings.
Contribution
It proposes a two-level control framework using laxity and RL to address high-dimensional HVAC management and optimize demand response.
Findings
Outperforms centralized methods in most scenarios
Achieves comparable results to model-based approaches in some cases
Effective in both single-zone and multi-zone HVAC systems
Abstract
Demand flexibility plays a vital role in maintaining grid balance, reducing peak demand, and saving customers' energy bills. Given their highly shiftable load and significant contribution to a building's energy consumption, Heating, Ventilation, and Air Conditioning (HVAC) systems can provide valuable demand flexibility to the power systems by adjusting their energy consumption in response to electricity price and power system needs. To exploit this flexibility in both operation time and power, it is imperative to accurately model and aggregate the load flexibility of a large population of HVAC systems as well as designing effective control algorithms. In this paper, we tackle the curse of dimensionality issue in modeling and control by utilizing the concept of laxity to quantify the emergency level of each HVAC operation request. We further propose a two-level approach to address…
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Taxonomy
TopicsSmart Grid Energy Management · Building Energy and Comfort Optimization · Energy Efficiency and Management
