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Article

Bridging AI and Maintenance: Fault Diagnosis in Industrial Air-Cooling Systems Using Deep Learning and Sensor Data

by
Ioannis Polymeropoulos
,
Stavros Bezyrgiannidis
,
Eleni Vrochidou
and
George A. Papakostas
*
MLV Research Group, Department of Informatics, Democritus University of Thrace, 65404 Kavala, Greece
*
Author to whom correspondence should be addressed.
Machines 2025, 13(10), 909; https://doi.org/10.3390/machines13100909
Submission received: 18 August 2025 / Revised: 27 September 2025 / Accepted: 1 October 2025 / Published: 2 October 2025

Abstract

This work aims towards the automatic detection of faults in industrial air-cooling equipment used in a production line for staple fibers and ultimately provides maintenance scheduling recommendations to ensure seamless operation. In this context, various deep learning models are tested to ultimately define the most effective one for the intended scope. In the examined system, four vibration and temperature sensors are used, each positioned radially on the motor body near the rolling bearing of the motor shaft—a typical setup in many industrial environments. Thus, by collecting and using data from the latter sources, this work exhaustively investigates the feasibility of accurately diagnosing faults in staple fiber cooling fans. The dataset is acquired and constructed under real production conditions, including variations in rotational speed, motor load, and three fault priorities, depending on the model detection accuracy, product specification, and maintenance requirements. Fault identification for training purposes involves analyzing and evaluating daily maintenance logs for this equipment. Experimental evaluation on real production data demonstrated that the proposed ResNet50-1D model achieved the highest overall classification accuracy of 97.77%, while effectively resolving the persistent misclassification of the faulty impeller observed in all the other models. Complementary evaluation confirmed its robustness, cross-machine generalization, and suitability for practical deployment, while the integration of predictions with maintenance logs enables a severity-based prioritization strategy that supports actionable maintenance planning.deep learning; fault classification; industrial air-cooling; industrial automation; maintenance scheduling; vibration analysis
Keywords: deep learning; fault classification; industrial air-cooling; industrial automation; maintenance scheduling; vibration analysis deep learning; fault classification; industrial air-cooling; industrial automation; maintenance scheduling; vibration analysis

Share and Cite

MDPI and ACS Style

Polymeropoulos, I.; Bezyrgiannidis, S.; Vrochidou, E.; Papakostas, G.A. Bridging AI and Maintenance: Fault Diagnosis in Industrial Air-Cooling Systems Using Deep Learning and Sensor Data. Machines 2025, 13, 909. https://doi.org/10.3390/machines13100909

AMA Style

Polymeropoulos I, Bezyrgiannidis S, Vrochidou E, Papakostas GA. Bridging AI and Maintenance: Fault Diagnosis in Industrial Air-Cooling Systems Using Deep Learning and Sensor Data. Machines. 2025; 13(10):909. https://doi.org/10.3390/machines13100909

Chicago/Turabian Style

Polymeropoulos, Ioannis, Stavros Bezyrgiannidis, Eleni Vrochidou, and George A. Papakostas. 2025. "Bridging AI and Maintenance: Fault Diagnosis in Industrial Air-Cooling Systems Using Deep Learning and Sensor Data" Machines 13, no. 10: 909. https://doi.org/10.3390/machines13100909

APA Style

Polymeropoulos, I., Bezyrgiannidis, S., Vrochidou, E., & Papakostas, G. A. (2025). Bridging AI and Maintenance: Fault Diagnosis in Industrial Air-Cooling Systems Using Deep Learning and Sensor Data. Machines, 13(10), 909. https://doi.org/10.3390/machines13100909

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