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Non-Mutually Exclusive Deep Neural Network Classifier for Combined Modes of Bearing Fault Diagnosis. | LitMetric

Non-Mutually Exclusive Deep Neural Network Classifier for Combined Modes of Bearing Fault Diagnosis.

Sensors (Basel)

School of Electrical, Electronics and Computer Engineering, University of Ulsan, 44610 Ulsan, Korea.

Published: April 2018

AI Article Synopsis

  • The paper presents a new approach to diagnosing multiple combined faults in bearings using a deep neural network (DNN) architecture that utilizes a stacked denoising autoencoder non-mutually exclusive classifier (NMEC).
  • The study demonstrates that the NMEC-DNN can effectively classify both single and multiple faults with an impressive accuracy of up to 95%, outperforming traditional multi-class classifiers based on support vector machines (SVMs).
  • This method not only enhances diagnostic performance but also reduces the amount of data needed for accurate fault detection.

Article Abstract

The simultaneous occurrence of various types of defects in bearings makes their diagnosis more challenging owing to the resultant complexity of the constituent parts of the acoustic emission (AE) signals. To address this issue, a new approach is proposed in this paper for the detection of multiple combined faults in bearings. The proposed methodology uses a deep neural network (DNN) architecture to effectively diagnose the combined defects. The DNN structure is based on the stacked denoising autoencoder non-mutually exclusive classifier (NMEC) method for combined modes. The NMEC-DNN is trained using data for a single fault and it classifies both single faults and multiple combined faults. The results of experiments conducted on AE data collected through an experimental test-bed demonstrate that the DNN achieves good classification performance with a maximum accuracy of 95%. The proposed method is compared with a multi-class classifier based on support vector machines (SVMs). The NMEC-DNN yields better diagnostic performance in comparison to the multi-class classifier based on SVM. The NMEC-DNN reduces the number of necessary data collections and improves the bearing fault diagnosis performance.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5948782PMC
http://dx.doi.org/10.3390/s18041129DOI Listing

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