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عدد المساهمات : 18312 التقييم : 33662 تاريخ التسجيل : 01/07/2009 الدولة : مصر العمل : مدير منتدى هندسة الإنتاج والتصميم الميكانيكى
 | موضوع: بحث بعنوان Fault Detection and Severity Level Identification of Spiral Bevel Gears الخميس 15 سبتمبر 2022, 4:06 am | |
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أخواني في الله أحضرت لكم بحث بعنوان Fault Detection and Severity Level Identification of Spiral Bevel Gears under Different Operating Conditions Using Artificial Intelligence Techniques
 و المحتوى كما يلي :
Syed Muhammad Tayyab, Steven Chatterton * and Paolo Pennacchi Department of Mechanical Engineering, Politecnico di Milano, Via G. La Masa 1, 20156 Milan, Italy; syedmuhammad.tayyab@polimi.it (S.M.T.); paolo.pennacchi@polimi.it (P.P.) * Correspondence: steven.chatterton@polimi.it; Tel.: +39-02-2399-8442 Abstract: Spiral bevel gears are known for their smooth operation and high load carrying capability; therefore, they are an important part of many transmission systems that are designed for high speed and high load applications. Due to high contact ratio and complex vibration signal, their fault detection is really challenging even in the case of serious defects. Therefore, spiral bevel gears have rarely been used as benchmarking for gears’ fault diagnosis. In this research study, Artificial Intelligence (AI) techniques have been used for fault detection and fault severity level identification of spiral bevel gears under different operating conditions. Although AI techniques have gained much success in this field, it is mostly assumed that the operating conditions under which the trained AI model is deployed for fault diagnosis are same compared to those under which the AI model was trained. If they differ, the performance of AI model may degrade significantly. In order to overcome this limitation, in this research study, an effort has been made to find few robust features that show minimal change due to changing operating conditions; however, they are fault discriminating. Artificial neural network (ANN) and K-nearest neighbors (KNN) are used as classifiers and both models are trained and tested by using the selected robust features for fault detection and severity assessment of spiral bevel gears under different operating conditions. A performance comparison between both classifiers is also carried out. Keywords: fault detection; fault severity level identification; artificial intelligence (AI); artificial neural network (ANN); K-nearest neighbors (KNN); features extraction Conclusions In this study, fault detection and severity level identification of spiral bevel gears are carried out under different operating conditions by using two AI models, ANN and KNN, as classifiers. Time domain statistical features were extracted from the vibration data of spiral bevel gears, one with normal health condition and two with faulty conditions at different severity levels, in order to train the classifiers. The performance of both classifiers in terms of fault detection and severity level identification accuracy gradually degraded as the operating conditions under which the models were deployed for predictions deviated farther away from the operating conditions under which the models were trained. The performance degradation was due to the higher sensitivity of most of the features underconsideration towards the operating conditions. Variation in most of the features due to operating conditions was much more prominent than compared to their change because of the fault or fault severity level. Therefore, most of the features were misleading the classifiers. The features were found more sensitive to change in speed than compared to change in load. Three features (rms, Energy-I and Energy-II) were identified as robust features which showed least sensitivity to operating conditions but were fault discriminative and demonstrated an increasing trend with respect to fault severity level. ANN and KNN performed predictions with 100% accuracy under all operating conditions while using only robust features. Thus, the performance of ANN and KNN classifiers was significantly improved for fault detection and severity level identification of spiral bevel gears under different operating conditions by eliminating misleading features, which were sensitive to operating conditions, and selecting the robust features that are less sensitive to operating conditions but were also fault discriminative. The overall performance of ANN and KNN classifiers was found almost comparable to one another.
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