ARCHIVES

Original Article

Model predictive control of indoor thermal environment using building thermal mass as renewable energy source

Gum Ryong Pak1 Un Jin Pak*2
1 2 Faculty of Automation Engineering, Kim Chaek University of Technology, Pyongyang, Democratic People’s Republic of Korea.

Published Online: September-October 2025

Pages: 130-137

Abstract

An effective way to reduce heating cost of building is to utilize the building thermal mass as a renewable energy source. In particular, floor heating (FH) system is superior in using building thermal mass to switch heating energy demand to off-peak hours. However, thermal environment control of room integrated with floor heating system is a challenging problem, due to the complex dynamic characteristics of indoor thermal environment and the large thermal inertia of floor heating systems. Variation of outdoor climate and occupancy also adds complexity to the control. In this paper, a model predictive controller is proposed, which allows the indoor thermal comfort to be maintained within the desired range, taking into account external influencing variables such as outdoor climate, occupancy and dynamic energy price. Considering the accuracy of prediction model and the computational burden, the predictive model is obtained in the form of a statistic state space. Different control strategies are tested and compared in terms of energy consumption, thermal comfort and operating cost using TRNSYS-MATLAB integrated simulation environment. Simulation results show that the proposed method improves indoor thermal comfort and reduces energy demand during peak load using building thermal mass.

Related Articles

2025

Exploring Mathematical Concepts in Ramcharit Manas: A Unique Perspective on Navadha Bhakti

2025

ARMOIRE An Augmented Reality Fashion Try On

2025

Sign Vision AI powered sign language Recognition

2025

Drowzy Alert AI Powered Driver Fatigue Detection

2025

Beauty Care Shopping using 3D Modelling

2025

Tryfitai Realtime Outfit Visualisation

Share Article

X
LinkedIn
Facebook
WhatsApp

Or copy link

https://ijrtmr.com/archives/10.59256/ijrtmr.20250505021

*Instagram doesn't support direct link sharing from web. Copy the link and share it in your Instagram story or post.