Reinforcement Learning Model for Energy System Management to Ensure Energy Efficiency and Comfort in Buildings
作者机构:Department of Heat and Alternative Power EngineeringNational Technical University of Ukraine“KPI”Kyiv03056Ukraine Department of Structural Transformation of the Fuel and Energy ComplexGeneral Energy Institute of NAS of UkraineKyiv03150Ukraine
出 版 物:《Energy Engineering》 (能源工程(英文))
年 卷 期:2024年第121卷第12期
页 面:3617-3634页
核心收录:
学科分类:08[工学] 0812[工学-计算机科学与技术(可授工学、理学学位)]
主 题:Building energy management building heating system dynamic modeling reinforcement learning energy efficiency comfortable temperature
摘 要:This article focuses on the challenges ofmodeling energy supply systems for buildings,encompassing both methods and tools for simulating thermal regimes and engineering systems within *** the comfort of living or working in buildings often necessitates increased consumption of energy and material,such as for thermal upgrades,which consequently incurs additional economic *** is crucial to acknowledge that such improvements do not always lead to a decrease in total pollutant emissions,considering emissions across all stages of production and usage of energy and materials aimed at boosting energy efficiency and comfort in *** addition,it explores the methods and mechanisms for modeling the operating modes of electric boilers used to collectively improve energy efficiency and indoor climatic *** the developed mathematical models,the study examines the dynamic states of building energy supply systems and provides recommendations for improving their *** dynamic models are executed in software environments such as MATLAB/Simscape and Python,where the component detailing schemes for various types of controllers are ***,controllers based on reinforcement learning(RL)displayed more adaptive load level *** RL-based controllers can lower instantaneous power usage by up to 35%,reduce absolute deviations from a comfortable temperature nearly by half,and cut down energy consumption by approximately 1%while maintaining *** the energy source produces a constant energy amount,the RL-based heat controllermore effectively maintains the temperature within the set range,preventing *** conclusion,the introduced energydynamic building model and its software implementation offer a versatile tool for researchers,enabling the simulation of various energy supply systems to achieve optimal energy efficiency and indoor climate control in buildings.