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Journal Article Continuous variable quantum reinforcement learning for HVAC control and power management in residential building
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Authors
Sarvar Hussain Nengroo, Dongsoo Har, Hoon Jeong, Taewook Heo, Sangkeum Lee
Issue Date
2025-09
Citation
Energy and AI, v.21, pp.1-20
ISSN
2666-5468
Publisher
Elsevier
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.1016/j.egyai.2025.100541
Abstract
The use of occupancy information for heating, ventilation, and air conditioning (HVAC) control in smart buildings has become increasingly important for enhancing energy efficiency and occupant comfort. However, residential HVAC control presents significant challenges due to the complex dynamic nature of buildings and the uncertainties associated with heat loads and weather conditions. This study addresses this gap in adaptive and energy efficient HVAC control by introducing a quantum reinforcement learning (QRL) based approach. Unlike conventional reinforcement learning techniques, the QRL leverages quantum computing principles to efficiently handle high dimensional state and action spaces, enabling more precise HVAC control in multi-zone residential buildings. The proposed framework integrates real-time occupancy detection using deep learning with operational data, including power consumption patterns, air conditioner control data, and external temperature variations. To evaluate the effectiveness of the proposed approach, simulations were conducted using real world data from 26 residential households over a three month period. The results demonstrate that the QRL based HVAC control significantly reduces energy consumption and electricity costs while maintaining thermal comfort. Compared to the deep deterministic policy gradient method, the QRL approach achieved a 63% reduction in power consumption and a 64.4% decrease in electricity costs. Similarly, it outperformed the proximal policy optimization algorithm, leading to an average reduction of 62.5% in electricity costs and 62.4% in power consumption.
KSP Keywords
Air conditioner, Based Approach, Electricity cost, Energy efficiency, HVAC control, High-dimensional, Multi-zone, Occupancy information, Occupant comfort, Operational Data, Optimization algorithm
This work is distributed under the term of Creative Commons License (CCL)
(CC BY NC ND)
CC BY NC ND