Skip to main content
Article
Data-driven based HVAC optimisation approaches: A Systematic Literature Review
Journal of Building Engineering
  • Maher Ala’raj, Zayed University
  • Mohammed Radi, Brunel University London
  • Maysam F. Abbod, Brunel University London
  • Munir Majdalawieh, Zayed University
  • Marianela Parodi, Zayed University; Brunel University London
Document Type
Article
Publication Date
11-1-2021
Abstract

Improving the energy efficiency of Heating, Ventilation, and Air Conditioning (HVAC) systems is crucial to reduce buildings’ energy costs and their carbon footprint. HVAC systems are complex, large-scale structures with pure lag time and high thermal inertia. Although traditionally, physical-based methods have been used to model, control and optimise them, data-driven approaches have demonstrated to be more application relevant, easier to compute and better suited to handle nonlinearities. Based only on measured or estimated data, data-driven approaches are highly dependent on the quality of the used data. In recent years, the advances in Information and Communication Technology (ICT), decreasing hardware cost, and improving data accessibility, have allowed the collection and storage of a large amount of high-quality building-related data, allowing the development of more accurate and robust data-driven approaches, making them gain great popularity in HVAC applications. In this paper, a Systematic Literature Review (SLR) based on a database search is conducted to give an in-depth insight into the major challenges regarding modelling, controlling and optimising HVAC systems, making the especial focus on the capability of data-driven models to improve their energy performance while keeping the users’ comfort. The main results of the SLR highlight the importance of taking users’ needs into account when modelling, controlling and optimising HVAC systems to avoid their underutilisation. In particular, the increasing tendency to include users’ feedback into Model Predictive Control (MPC) loops and use easy-to-access technologies, such as WiFi and Smartphone Applications (Apps), to acquire users’ information suggests promising future research horizons.

Publisher
Elsevier
Disciplines
Keywords
  • Heating,
  • Ventilation,
  • Air conditioning (HVAC) systems,
  • HVAC modelling,
  • HVAC control,
  • HVAC Optimisation,
  • Data-driven based models,
  • Artificial intelligence
Scopus ID
85120468718
Indexed in Scopus
Yes
Open Access
No
https://doi.org/10.1016/j.jobe.2021.103678
Citation Information
Maher Ala’raj, Mohammed Radi, Maysam F. Abbod, Munir Majdalawieh, et al.. "Data-driven based HVAC optimisation approaches: A Systematic Literature Review" Journal of Building Engineering (2021) ISSN: <a href="https://v2.sherpa.ac.uk/id/publication/issn/2352-7102" target="_blank">2352-7102</a>
Available at: http://works.bepress.com/munir-majdalawieh/21/