Building Energy Efficiency: Enhancing HVAC Fault Detection with Transformer and Transfer Learning
en-GBde-DEes-ESfr-FR

Building Energy Efficiency: Enhancing HVAC Fault Detection with Transformer and Transfer Learning

28/03/2024 TranSpread

Heating, ventilation, and air conditioning (HVAC) systems, a critical component of building energy consumption, are prone to faults that can reduce their efficiency. Traditional data-driven fault detection and diagnosis (FDD) models often suffer from limited generalizability, making their application across diverse systems challenging.

A study (DOI: 10.1016/j.enss.2024.02.004) published in Energy Storage and Saving in February 2024 by researchers from Xi'an Jiaotong University introduces a novel approach to FDD in HVAC systems. This research leverages a modified transformer model and adapter-based transfer learning to enhance the generalizability of FDD models across various HVAC systems.

The team developed a transformer model enhanced with an encoder and two decoders, enabling simultaneous identification of multiple fault types and severities. This innovation is complemented by an adapter-based transfer learning strategy, allowing the model to adapt efficiently across various HVAC systems, even with limited data. Two designed transfer learning scenarios demonstrate the effectiveness of the proposed HVAC FDD transfer learning framework, compared with the popular fine-tuning method. By integrating an efficient transfer learning technique, the model can be seamlessly transferred from one comprehensive dataset to another with less available data. This approach significantly enhances the model's versatility, facilitating its application to different systems without the need for extensive retraining or data collection.

Dong Li, a contributing researcher to the study, states, “Leveraging the power of transformer and adapter-based transfer learning, this study not only propels us closer to achieving energy savings in buildings, but also enhances the safe and reliability of HVAC operations.”

This research represents a significant step in HVAC system maintenance, introducing a highly adaptable fault detection method that ensures systems operate at peak efficiency with reduced energy consumption. By leveraging advanced transfer learning techniques, it offers a scalable solution that can be applied across various HVAC systems, promising widespread benefits in energy savings and system reliability.

###

References

DOI

10.1016/j.enss.2024.02.004

Original Source URL

https://doi.org/10.1016/j.enss.2024.02.004

Funding information

The study is supported by the National Natural Science Foundation of China (Nos. 52293413, 52076161).

About Energy Storage and Saving

Energy Storage and Saving (ENSS) is an interdisciplinary, open access journal that disseminates original research articles in the field of energy storage and energy saving. The aim of ENSS is to present new research results that are focused on promoting sustainable energy utilisation, improving energy efficiency, and achieving energy conservation and pollution reduction.

Paper title: A modified transformer and adapter-based transfer learning for fault detection and diagnosis in HVAC systems
Attached files
  • Modified transformer model with one encoder and two decoders.
28/03/2024 TranSpread
Regions: North America, United States, Asia, China
Keywords: Science, Energy

Testimonials

For well over a decade, in my capacity as a researcher, broadcaster, and producer, I have relied heavily on Alphagalileo.
All of my work trips have been planned around stories that I've found on this site.
The under embargo section allows us to plan ahead and the news releases enable us to find key experts.
Going through the tailored daily updates is the best way to start the day. It's such a critical service for me and many of my colleagues.
Koula Bouloukos, Senior manager, Editorial & Production Underknown
We have used AlphaGalileo since its foundation but frankly we need it more than ever now to ensure our research news is heard across Europe, Asia and North America. As one of the UK’s leading research universities we want to continue to work with other outstanding researchers in Europe. AlphaGalileo helps us to continue to bring our research story to them and the rest of the world.
Peter Dunn, Director of Press and Media Relations at the University of Warwick
AlphaGalileo has helped us more than double our reach at SciDev.Net. The service has enabled our journalists around the world to reach the mainstream media with articles about the impact of science on people in low- and middle-income countries, leading to big increases in the number of SciDev.Net articles that have been republished.
Ben Deighton, SciDevNet

We Work Closely With...


  • BBC
  • The Times
  • National Geographic
  • The University of Edinburgh
  • University of Cambridge
Copyright 2024 by AlphaGalileo Terms Of Use Privacy Statement