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      مشاهده مورد 
      •   صفحهٔ اصلی
      • نشریات انگلیسی
      • International Journal of Engineering
      • Volume 31, Issue 11
      • مشاهده مورد
      •   صفحهٔ اصلی
      • نشریات انگلیسی
      • International Journal of Engineering
      • Volume 31, Issue 11
      • مشاهده مورد
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      Fault Detection of Anti-friction Bearing using Ensemble Machine Learning Methods

      (ندگان)پدیدآور
      Patil, S.Phalle, V.
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      نوع مدرک
      Text
      زبان مدرک
      English
      نمایش کامل رکورد
      چکیده
      Anti-Friction Bearing (AFB) is a very important machine component and its unscheduled failure leads to cause of malfunction in wide range of rotating machinery which results in unexpected downtime and economic loss. In this paper, ensemble machine learning techniques are demonstrated for the detection of different AFB faults. Initially, statistical features were extracted from temporal vibration signals and are collected using experimental test rig for different input parameters like load, speed and bearing conditions. These features are ranked using two techniques, namely Decision Tree (DT) and Randomized Lasso (R Lasso), which are further used to form training and testing input feature sets to machine learning techniques.  It uses three ensemble machine learning techniques for AFB fault classification namely Random Forest (RF), Gradient Boosting Classifier (GBC) and Extra Tree Classifier (ETC). The impact of number of ranked features and estimators have been studied for ensemble techniques. The result showed that the classification efficiency is significantly influenced by the number of features but the effect of number of estimators is minor. The demonstrated ensemble techniques give more accuracy in classification as compared to tuned SVM with same experimental input data. The highest AFB fault classification accuracy 98% is obtained with ETC and DT feature ranking.
      کلید واژگان
      Anti-friction Bearing
      Ensemble Learning
      Vibration Signal
      fault detection

      شماره نشریه
      11
      تاریخ نشر
      2018-11-01
      1397-08-10
      ناشر
      Materials and Energy Research Center
      سازمان پدید آورنده
      Centre of Excellence in Complex and Nonlinear Dynamical Systems (CoE-CNDS), Veermata Jijabai Technological Institute, Mumbai, India
      Mechanical Engineering Department, Veermata Jijabai Technological Institute, Mumbai, India

      شاپا
      1025-2495
      1735-9244
      URI
      http://www.ije.ir/article_82254.html
      https://iranjournals.nlai.ir/handle/123456789/337909

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