Advancing machine fault diagnosis: A detailed examination of convolutional neural networks
- URL: http://arxiv.org/abs/2502.08689v1
- Date: Wed, 12 Feb 2025 12:41:13 GMT
- Title: Advancing machine fault diagnosis: A detailed examination of convolutional neural networks
- Authors: Govind Vashishtha, Sumika Chauhan, Mert Sehri, Justyna Hebda-Sobkowicz, Radoslaw Zimroz, Patrick Dumond, Rajesh Kumar,
- Abstract summary: CNNs have emerged as a powerful tool, offering robust and accurate fault detection and classification capabilities.<n>This review delves into the application of CNNs in machine fault diagnosis, covering its theoretical foundation, architectural variations, and practical implementations.
- Score: 4.032805314796963
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The growing complexity of machinery and the increasing demand for operational efficiency and safety have driven the development of advanced fault diagnosis techniques. Among these, convolutional neural networks (CNNs) have emerged as a powerful tool, offering robust and accurate fault detection and classification capabilities. This comprehensive review delves into the application of CNNs in machine fault diagnosis, covering its theoretical foundation, architectural variations, and practical implementations. The strengths and limitations of CNNs are analyzed in this domain, discussing their effectiveness in handling various fault types, data complexities, and operational environments. Furthermore, we explore the evolving landscape of CNN-based fault diagnosis, examining recent advancements in data augmentation, transfer learning, and hybrid architectures. Finally, we highlight future research directions and potential challenges to further enhance the application of CNNs for reliable and proactive machine fault diagnosis.
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