Automatic HVAC Control with Real-time Occupancy Recognition and Simulation-guided Model Predictive Control in Low-cost Embedded System
Muhammad Aftab, Chien Chen, Chi-Kin Chau, Talal Rahwan

TL;DR
This paper presents a low-cost embedded system that combines real-time occupancy recognition and simulation-guided model predictive control to optimize HVAC operations and reduce energy consumption in large public indoor spaces.
Contribution
It introduces a novel integrated system using Raspberry Pi 3 that performs real-time video-based occupancy detection and thermal simulation-guided predictive control for HVAC systems.
Findings
Significant energy savings achieved in a mosque setting.
Effective real-time occupancy prediction using video and machine learning.
Successful implementation of simulation-guided model predictive control.
Abstract
Intelligent building automation systems can reduce the energy consumption of heating, ventilation and air-conditioning (HVAC) units by sensing the comfort requirements automatically and scheduling the HVAC operations dynamically. Traditional building automation systems rely on fairly inaccurate occupancy sensors and basic predictive control using oversimplified building thermal response models, all of which prevent such systems from reaching their full potential. Such limitations can now be avoided due to the recent developments in embedded system technologies, which provide viable low-cost computing platforms with powerful processors and sizeable memory storage in a small footprint. As a result, building automation systems can now efficiently execute highly-sophisticated computational tasks, such as real-time video processing and accurate thermal-response simulations. With this in…
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