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2020 | OriginalPaper | Chapter

Fault Diagnosis of Ball Bearing Using Walsh–Hadamard Transform and Random Tree Classifier

Authors : Vipul Dave, V. Vakharia

Published in: Reliability and Risk Assessment in Engineering

Publisher: Springer Singapore

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Abstract

Bearing failure may result in the breakdown of machinery or possibly damage the human being operating the machinery. It is therefore necessary to diagnose bearing faults at an early stage. This paper presents the application of Walsh–Hadamard transform and tree-based classifier for detecting bearing faults. An experimental was conducted from the Case Western Reserve University bearing data center. At the initial stage, coefficients from inner race fault, outer race fault, ball fault, and healthy bearing were calculated from the measured signal. Twenty-five statistical features are calculated from the acquire signals with different speeds and fault sizes. Feature vector form is used for classification purpose using various classifiers, i.e., random tree and logistic model tree. Training and testing of classifier are done, and the result revealed that 100% fault identification accuracy is obtained with random tree for both training and testing. Similarly, 98.43% training and 100% fault identification accuracy are obtained with logistic model tree. The result shows that the methodology adopted is effective to diagnose various bearing faults.

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Metadata
Title
Fault Diagnosis of Ball Bearing Using Walsh–Hadamard Transform and Random Tree Classifier
Authors
Vipul Dave
V. Vakharia
Copyright Year
2020
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-15-3746-2_34