Condition-Based Maintenance (CBM) optimizes asset management by integrating multisensor data, advanced analytics, and decision-making. This tertiary review analyzes CBM’s evolving architecture across sensing, analytics, and decision layers. It highlights mature vibration sensing, challenges in applying deep learning models industrially, and complexities in edge-cloud integration and digital twin deployment. Multimodal sensor fusion improves fault diagnosis but faces practical issues like synchronization and cost. Despite academic progress, gaps remain between research and industrial use due to data variability and lack of standardization. Future work should focus on physics-informed learning, federated learning, autonomous sensing, and scalable digital twins. This review identifies key challenges and paths for broader CBM adoption.

A tertiary review of condition-based maintenance literature: insights and future directions / Zhao, Q., Lolli, F., Balugani, E., Gamberini, R.. - In: ...SUMMER SCHOOL FRANCESCO TURCO. PROCEEDINGS. - ISSN 2283-8996. - (2025). (30th Summer School Francesco Turco, 2025 Lecce, Italia 10/09/2025 - 12/09/2025).

A tertiary review of condition-based maintenance literature: insights and future directions

Zhao Qian
;
Lolli Francesco;Balugani Elia;Gamberini Rita
2025

Abstract

Condition-Based Maintenance (CBM) optimizes asset management by integrating multisensor data, advanced analytics, and decision-making. This tertiary review analyzes CBM’s evolving architecture across sensing, analytics, and decision layers. It highlights mature vibration sensing, challenges in applying deep learning models industrially, and complexities in edge-cloud integration and digital twin deployment. Multimodal sensor fusion improves fault diagnosis but faces practical issues like synchronization and cost. Despite academic progress, gaps remain between research and industrial use due to data variability and lack of standardization. Future work should focus on physics-informed learning, federated learning, autonomous sensing, and scalable digital twins. This review identifies key challenges and paths for broader CBM adoption.
2025
no
Inglese
30th Summer School Francesco Turco, 2025
Lecce, Italia
10/09/2025 - 12/09/2025
Proceedings of the Summer School Francesco Turco
AIDI - Italian Association of Industrial Operations Professors
Condition-Based Maintenance, Predictive Maintenance, Multimodal Sensor Fusion, Deep Learning, Digital Twin
Zhao, Qian; Lolli, Francesco; Balugani, Elia; Gamberini, Rita
Atti di CONVEGNO::Relazione in Atti di Convegno
273
4
A tertiary review of condition-based maintenance literature: insights and future directions / Zhao, Q., Lolli, F., Balugani, E., Gamberini, R.. - In: ...SUMMER SCHOOL FRANCESCO TURCO. PROCEEDINGS. - ISSN 2283-8996. - (2025). (30th Summer School Francesco Turco, 2025 Lecce, Italia 10/09/2025 - 12/09/2025).
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info:eu-repo/semantics/conferenceObject
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1395768
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