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Individual room air-conditioning control in high-insulation residential building during winter: A deep reinforcement learning-based control model for reducing energy consumption

Luning Sun, Zehuan Hu, Masayuki MAE, Taiji Imaizumi

2024Energy and Buildings14 citationsDOIOpen Access PDF

Abstract

In recent years, the thermal insulation performance of residential buildings has been enhanced to reduce energy consumption. However, this enhancement often leads to air conditioning systems operating under ultra-low load conditions for extended periods, especially in individual rooms, which frequently results in sustained low efficiency. Additionally, during the winter, rooms tend to overheat due to the influence of solar radiation. In this study, we developed a deep reinforcement learning-based real-time & prediction full-stack control model, which can automate user-end air-conditioning control through home energy management system (HEMS). In this model, weather forecasts are utilised to mitigate overheating caused by solar radiation, thereby reducing energy consumption . Additionally, it can enhance the COP of air conditioners in low-load domains. Our successful empirical results indicate that the implementation of this model can reduce energy consumption by approximately 40% in winter.

Topics & Concepts

ReinforcementEnergy consumptionAir conditioningConditioningReinforcement learningControl (management)EngineeringConsumption (sociology)Environmental scienceEnergy (signal processing)Architectural engineeringAutomotive engineeringCivil engineeringComputer scienceStructural engineeringArtificial intelligenceMechanical engineeringMathematicsElectrical engineeringStatisticsSociologySocial scienceBuilding Energy and Comfort OptimizationEnergy Efficiency and ManagementRefrigeration and Air Conditioning Technologies