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RedoxFormer: A two-stage deep neural diagnosis framework for early-stage degradation in fuel cells via in-situ sensor measurements

Author

Listed:
  • Tofigh, Mohamadali
  • Hasanabadi, Masood Fakouri
  • Nourpour, Nafiseh Sang
  • Hanifi, Amir Reza
  • Smith, Daniel J.
  • Shahbakhti, Mahdi

Abstract

Solid Oxide Fuel Cells (SOFCs) are promising clean energy conversion systems, yet their commercialization remains limited by vulnerability to unexpected degradation under real-world operating conditions. Early-stage diagnosis of degradation is therefore critical to enable predictive maintenance and prevent irreversible failures. Conventional diagnostics, such as Electrochemical Impedance Spectroscopy, provide valuable insights but are costly for real-time monitoring. This study presents an intelligent diagnostic framework for detecting the onset of nickel-redox degradation using readily available in-situ signals, such as power density. Ten identical anode-supported, lab-scale SOFCs were subjected to accelerated redox-cycling experiments to generate diverse run-to-failure datasets. The collected data were carefully labeled through an extensive knowledge-based analysis, providing a foundation for supervised fault detection. A novel two-stage algorithm is then proposed that integrates a Transformer-based neural forecasting model with a convolutional time-series classifier. This architecture aims to classify real-time streams of post-redox data into either healthy or faulty categories, enabling the detection of degradation signs far earlier than existing diagnostic methods. Benchmarking against state-of-the-art machine learning and deep learning classifiers demonstrates that the proposed framework not only achieves competitive performance across multiple metrics but also predicts failure events up to 81% earlier than existing models. By jointly considering diagnostic error performance and timeliness through the area under the Accuracy–Earliness Curve score, our model demonstrates a 40% improvement over the best-performing baselines. These results highlight the potential of the proposed framework to deliver accurate and timely detection of Ni-redox degradation, supporting predictive maintenance strategies that mitigate degradation effects and minimize SOFC downtime.

Suggested Citation

  • Tofigh, Mohamadali & Hasanabadi, Masood Fakouri & Nourpour, Nafiseh Sang & Hanifi, Amir Reza & Smith, Daniel J. & Shahbakhti, Mahdi, 2026. "RedoxFormer: A two-stage deep neural diagnosis framework for early-stage degradation in fuel cells via in-situ sensor measurements," Applied Energy, Elsevier, vol. 413(C).
  • Handle: RePEc:eee:appene:v:413:y:2026:i:c:s0306261926004344
    DOI: 10.1016/j.apenergy.2026.127782
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