شماره ركورد كنفرانس :
3222
عنوان مقاله :
Artificial Neural Network Based Fault Diagnostics of Rolling Element bearings using Continuous Wavelet Transform
پديدآورندگان :
Zaeri R Mechanical Engineering Department - University of Shahid Chamran , Attaran B Mechanical Engineering Department - University of Shahid Chamran , Ghanbarzadeh A Mechanical Engineering Department - University of Shahid Chamran , Moradi S Mechanical Engineering Department - University of Shahid Chamran
كليدواژه :
Artificial Neural Network , Fault Diagnostics , Rolling Element bearings , Continuous Wavelet Transform
سال انتشار :
دي 1390
عنوان كنفرانس :
دومين كنفرانس بين المللي كنترل، ابزار دقيق و اتوماسيون
زبان مدرك :
انگليسي
چكيده لاتين :
Any industry needs an efficient predictive plan in order to optimize the management of resources and improve the economy of the plant by reducing unnecessary costs and increasing the level of safety. A great percentage of breakdowns in productive processes are caused by bearings. This paper presents a methodology for fault diagnosis of ball bearings based on continuous wavelet transform (CWT) and artificial neural network (ANN). Three wavelet selection criteria Maximum Energy, Minimum Shannon Entropy, and Maximum Energy to Shannon Entropy ratio are used and compared to select an appropriate wavelet to extract statistical features. Total 15 feature set and 87 mother wavelet candidates were studied, and results show that complex morlet 1-1 has a best diagnosis performance based on minimum shannon entropy than the other mother wavelets and criteria. Also results show the potential application of proposed methodology with ANN for the development of on-line fault diagnosis systems for machine condition.
كشور :
ايران
تعداد صفحه 2 :
6
از صفحه :
1
تا صفحه :
6
لينک به اين مدرک :
بازگشت