Abstract

Because of extensive variations in occupancy patterns around office space environments and their use of electrical equipment, accurate occupants’ behaviour detection is valuable for reducing the building energy demand and carbon emissions. Using the collected occupancy information, building energy management system can automatically adjust the operation of heating, ventilation and air-conditioning (HVAC) systems to meet the actual demands in different conditioned spaces in real-time. Existing and commonly used ‘fixed’ schedules for HVAC systems are not sufficient and cannot adjust based on the dynamic changes in building environments. This study proposes a vision-based occupancy and equipment usage detection method based on deep learning for demand-driven control systems. A model based on region-based convolutional neural network (R-CNN) was developed, trained and deployed to a camera for real-time detection of occupancy activities and equipment usage. Experiments tests within a case study office room suggested an overall accuracy of 97.32% and 80.80%. In order to predict the energy savings that can be attained using the proposed approach, the case study building was simulated. The simulation results revealed that the heat gains could be over or under predicted when using static or fixed profiles. Based on the set conditions, the equipment and occupancy gains were 65.75% and 32.74% lower when using the deep learning approach. Overall, the study showed the capabilities of the proposed approach in detecting and recognising multiple occupants’ activities and equipment usage and providing an alternative to estimate the internal heat emissions.

Highlights

  • Introduction and Literature ReviewA significant proportion of global energy demand and emissions is due to the built environment sector [1]

  • To address the literature gaps, this study aims to detect and recognise the real-time usage of multiple equipments and occupancy patterns in a room or space using a computer vision and deep learning approach

  • This study proposes a vision-based occupancy and equipment usage detection approach for demand-driven control systems to minimise the unnecessary energy usage and enhance thermal comfort

Read more

Summary

Introduction

A significant proportion of global energy demand and emissions is due to the built environment sector [1]. A significant proportion (40%) of the operational energy use is due to the use of HVAC [4]. This is even higher in areas with very hot or cold climates [5]. The comfort and well-being of the occupants should be considered when developing solutions [6] Solutions such as demand-driven controls can achieve substantial energy savings by reducing or eliminating avoidable energy usage and provide a comfortable indoor environment for occupants [7,8]

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call