Skip to main content
Top

Fault diagnosis of air handling unit via combining probabilistic slow feature analysis and attention residual network

  • 10-08-2023
  • Original Article
Published in:

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

The article introduces a novel fault diagnosis method for air handling units (AHU) by combining probabilistic slow feature analysis (PSFA) and attention residual network (AResNet). The method addresses the challenges posed by noise and dynamic temporal characteristics in AHU systems, which are crucial for accurate fault diagnosis. The PSFA algorithm extends the conventional SFA model to consider measurement noise, enabling it to mine slow features from process data and rank them according to their slowly-changing nature. The AResNet model, enhanced with an attention mechanism, identifies representative feature information and suppresses unnecessary regional responses, improving feature extraction and classification performance. The data spatialization method converts feature variables into spatial grayscale images, enhancing the spatial correlation characteristics and providing rich image data for model training. Detailed experiments and comparisons demonstrate that the PSFA-AResNet method outperforms other methods under various noise levels, achieving higher fault diagnosis accuracy. The article concludes by highlighting the potential applications of the proposed method in other systems with similar characteristics and suggesting future research directions to improve the model's robustness and accuracy.

Not a customer yet? Then find out more about our access models now:

Individual Access

Start your personal individual access now. Get instant access to more than 164,000 books and 540 journals – including PDF downloads and new releases.

Starting from 54,00 € per month!    

Get access

Access for Businesses

Utilise Springer Professional in your company and provide your employees with sound specialist knowledge. Request information about corporate access now.

Find out how Springer Professional can uplift your work!

Contact us now
Title
Fault diagnosis of air handling unit via combining probabilistic slow feature analysis and attention residual network
Authors
Chengdong Li
Yulong Yu
Linyuan Shang
Hanyuan Zhang
Yongqing Jiang
Publication date
10-08-2023
Publisher
Springer London
Published in
Neural Computing and Applications / Issue 30/2023
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-023-08910-5
This content is only visible if you are logged in and have the appropriate permissions.

Premium Partner

    Image Credits
    Neuer Inhalt/© ITandMEDIA, Nagarro GmbH/© Nagarro GmbH, AvePoint Deutschland GmbH/© AvePoint Deutschland GmbH, AFB Gemeinnützige GmbH/© AFB Gemeinnützige GmbH, USU GmbH/© USU GmbH, Ferrari electronic AG/© Ferrari electronic AG