• Title of article

    Distance and Density Similarity Based Enhanced -NN Classifier for Improving Fault Diagnosis Performance of Bearings

  • Author/Authors

    Uddin, Sharif School of Electrical - Electronics and Computer Engineering - University of Ulsan, Ulsan, Republic of Korea , Islam,Md. Rashedul Department of Computer Science and Engineering - University of Asia Pacific, Dhaka, Bangladesh , Ali Khan,Sheraz School of Electrical - Electronics and Computer Engineering - University of Ulsan, Ulsan, Republic of Korea , Kim,Jaeyoung School of Electrical - Electronics and Computer Engineering - University of Ulsan, Ulsan, Republic of Korea , Kim,Jong-Myon School of Electrical - Electronics and Computer Engineering - University of Ulsan, Ulsan, Republic of Korea , Sohn, Seok-Man Power Generation Laboratory - KEPCO Research Institute - Jeollanam-do, Republic of Korea , Choi,Byeong-Keun Department of Energy Mechanical Engineering - Gyeongsang National University - Gyeongsangnam-do, Republic of Korea

  • Pages
    12
  • From page
    1
  • To page
    12
  • Abstract
    An enhanced -nearest neighbor (-NN) classification algorithm is presented, which uses a density based similarity measure in addition to a distance based similarity measure to improve the diagnostic performance in bearing fault diagnosis. Due to its use of distance based similarity measure alone, the classification accuracy of traditional -NN deteriorates in case of overlapping samples and outliers and is highly susceptible to the neighborhood size, . This study addresses these limitations by proposing the use of both distance and density based measures of similarity between training and test samples. The proposed -NN classifier is used to enhance the diagnostic performance of a bearing fault diagnosis scheme, which classifies different fault conditions based upon hybrid feature vectors extracted from acoustic emission (AE) signals. Experimental results demonstrate that the proposed scheme, which uses the enhanced -NN classifier, yields better diagnostic performance and is more robust to variations in the neighborhood size, .
  • Keywords
    Density Similarity , Enhanced -NN Classifier , Improving Fault Diagnosis
  • Journal title
    Shock and Vibration
  • Serial Year
    2016
  • Record number

    2614906