Model predictive control strategy using encoder-decoder recurrent neural networks for smart control of thermal environment

Resource type
Journal Article
Authors/contributors
Title
Model predictive control strategy using encoder-decoder recurrent neural networks for smart control of thermal environment
Abstract
The development of deep learning (DL) technology provides an opportunity for accurate prediction and effective control of complex building systems. However, despite the high prediction performance of DL models, few studies integrate DL with the model predictive control (MPC) algorithm for improving building management. In this study, a DL-based MPC framework using encoder-decoder recurrent neural network is developed for real-time control of building thermal environment to exploit the advantage of both DL and MPC algorithms. In addition, to simulate the dynamic interaction between indoor airflow and HVAC systems, a co-simulation platform by integrating HVAC simulator and CFD model is developed to evaluate the proposed building control strategy. Two case studies including a confined space with mixing ventilation and an office room subjected to solar radiation are used for validation of the proposed method. The performance of the DL-based MPC algorithm for building thermal environment control is compared with the traditional proportion-integration-differentiation (PID) controller and the adaptive PID controller. Approximately 4% and 7% energy savings are achieved on average through DL-based MPC compared with adaptive and conventional PID control, respectively. The proposed DL-based MPC framework shows a promising application prospect for building automationby taking the advantage of both deep learning and MPC algorithms.
Publication
Journal of Building Engineering
Volume
42
Pages
103017
Date
2021-10-01
Journal Abbr
Journal of Building Engineering
ISSN
2352-7102
Accessed
13/02/2024, 19:10
Library Catalogue
ScienceDirect
Call Number
openalex:W3184051402
Extra
openalex: W3184051402
Citation
Li, Y., & Tong, Z. (2021). Model predictive control strategy using encoder-decoder recurrent neural networks for smart control of thermal environment. Journal of Building Engineering, 42, 103017. https://doi.org/10.1016/j.jobe.2021.103017