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عدد المساهمات : 18996 التقييم : 35494 تاريخ التسجيل : 01/07/2009 الدولة : مصر العمل : مدير منتدى هندسة الإنتاج والتصميم الميكانيكى
| موضوع: بحث بعنوان Gear Fault Feature Extraction Based on Fuzzy Function and Improved Hu Invariant Moments الجمعة 23 أكتوبر 2020, 11:06 pm | |
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أخوانى فى الله أحضرت لكم بحث بعنوان Gear Fault Feature Extraction Based on Fuzzy Function and Improved Hu Invariant Moments Chun Lv , Peilin Zhang , and Dinghai Wu Department of Vehicle and Electrical Engineering, Army Engineering University, Shijiazhuang 050003, China
و المحتوى كما يلي :
This work was supported in part by the National Natural Science Foundation of China (NSFC) under Grant 51305454. ABSTRACT To intelligently identify gear fault types on the basis of gear vibration signals, due to the nonlinear and non-stationary characteristics of gear vibration signals, a fuzzy function is used to represent the gear vibration signals in different states as two-dimensional time-frequency images. To solve the problem that the recognition effect of discontinuity area in the image by traditional Hu invariant moments is not ideal, improved Hu invariant moments are proposed, and the feature parameters of time-frequency images of gear vibration signals are extracted based on the improved Hu invariant moments. Different intelligent classifiers are used to recognize the gear vibration signals in different states. The recognition accuracy is higher by improved Hu invariant moments than by traditional Hu invariant moments, which shows that the method of gear fault feature extraction based on a fuzzy function and improved Hu invariant moments is quite ideal, and can be used in intelligent diagnosis of gear faults. VI. CONCLUSION The theory of fuzzy function is studied, and gear vibration signals are transformed into two-dimensional time-frequency images (fuzzy domain representations). It is found that the time-frequency images of gear vibration signals in different states have obvious differences, which can be used as the basis of gear fault classification. Based on the improved Hu invariant moments, seven feature parameters are extracted from the fuzzy domain representations of gear vibration signals. The feature parameters of the fuzzy domain representation of gear vibration signals in the same state are nearly the same; the feature parameters of the fuzzy domain representation of gear vibration signals in different states are obviously different, which shows that the extracted feature parameters are effective. The feature parameters extracted based on the improved Hu invariant moments are used as the input of intelligent classifiers. SVM, BPNN, and NBC are used to classify gear vibration signals in different states. The results are compared with those based on the traditional Hu invariant moments. It is found that the recognition accuracy of the three classifiers based on the improved Hu invariant moments is generally higher than that based on the traditional Hu invariant moments. The gear fault feature parameters extracted based on fuzzy function and improved Hu invariant moments are quite ideal and suitable for gear fault diagnosis. In the future, the parameter optimization of intelligent classifiers is researched to further improve the accuracy of gear fault diagnosis.
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