Bearing Health Monitoring and Fault Diagnosis Using Intelligent Methods
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Abstract
Rolling element bearings form a very common and imperative component in almost all types of
newlinerotating machines. There are many causes due to which theses bearings get damaged which
newlineinclude mainly wear and tear, aging, environmental effects, incorrect mounting, improper bearing
newlinelubrication, fatigue etc. The defective bearing often results in reduced efficiency or even severe
newlinedamage to the machine under consideration. Therefore, bearing health monitoring and fault
newlinediagnosis have received great attention in last many years, which can be conducted based on
newlineinformation carriers such as acoustic emission, stress waveform, oil analysis, temperature,
newlinevibration etc. The commonly used technique for fault detection is vibration monitoring and
newlineanalysis, which offers very important information about anomalies formed in the internal
newlinestructure of the bearings. In this work, an experimental setup is prepared to capture the vibration
newlineof faulty sample bearings and two new methods are developed for bearing health monitoring and
newlinefault diagnosis.
newlineThe first method expounds a novel system which includes generation of unique patterns called
newlinesignatures of various bearing faults using continuous wavelet transform (CWT) and recognition
newlineof these signatures using the neural network.
newlineIn the second method, Ensemble Empirical Mode Decomposition (EEMD) is used for extracting
newlinethe features in the form of Intrinsic Mode Functions (IMF) values. These IMF values are further
newlineused with ANN and knowledge based expert system for recognition and classification of the
newlinebearing faults