Intelligent Condition Based Monitoring Techniques for Bearing Fault Diagnosis
Vikas Singh, Nishchal K. Verma

TL;DR
This paper introduces combined mRMR feature selection with deep learning and transfer learning frameworks to enhance fault diagnosis accuracy and efficiency in bearing systems, addressing data redundancy and limited dataset issues.
Contribution
It proposes novel frameworks integrating mRMR with deep learning and transfer learning, improving fault diagnosis performance and reducing data dependency in bearing fault detection.
Findings
Enhanced diagnostic accuracy over existing methods
Reduced computational complexity and data redundancy
Effective on multiple bearing datasets
Abstract
In recent years, intelligent condition-based monitor-ing of rotary machinery systems has become a major researchfocus of machine fault diagnosis. In condition-based monitoring,it is challenging to form a large-scale well-annotated datasetdue to the expense of data acquisition and costly annotation.The generated data have a large number of redundant featureswhich degraded the performance of the machine learning models.To overcome this, we have utilized the advantages of minimumredundancy maximum relevance (mRMR) and transfer learningwith a deep learning model. In this work,mRMRis combinedwith deep learning and deep transfer learning framework toimprove the fault diagnostics performance in terms of accuracyand computational complexity. ThemRMRreduces the redundantinformation from data and increases the deep learning perfor-mance, whereas transfer learning, reduces a large amount of…
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