Wise-local response convolutional neural network based on Naïve Bayes theorem for rotating machinery fault classification
Autor: | Anas H. Aljemely, Long Xu, Jianping Xuan, Farqad K. J. Jawad, Osama Al-Azzawi |
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Rok vydání: | 2021 |
Předmět: |
Computer science
business.industry Noise (signal processing) Reliability (computer networking) Pattern recognition 02 engineering and technology Fault (power engineering) Convolutional neural network Support vector machine Naive Bayes classifier Artificial Intelligence 0202 electrical engineering electronic engineering information engineering 020201 artificial intelligence & image processing Artificial intelligence business |
Zdroj: | Applied Intelligence. 51:6932-6950 |
ISSN: | 1573-7497 0924-669X |
DOI: | 10.1007/s10489-021-02252-2 |
Popis: | Fault identification is a vital task to ensure the integrity and reliability of rotating machinery. The vibration signals produced by the defective system components typically bear a significant amount of noise, including non-linear and non-stationary characteristics induced by the intricate operational environment. Advanced signal processing technologies still have difficulty in detecting faults in mechanical systems. This paper presents a wise local response convolution neural network-based Naive Bayes algorithm (WCNN-NB) to identify multiple faults in rotating machines. In WCNN-NB, the WCNN structure is first used to characterize the features of the gray-scale images transformed from the original vibration signals. The nonlinearity parameter value of WCNN is explored in order to enhance learning efficiency. The NB algorithm is then used as a robust steady-state method to identify the learned features. Experimental data regarding helical gears and bearing test rigs are used to validate the feasibility of the WCNN-NB model. The superiority of the classification results is verified by comparing the current model with the WCNN-support vector machine, WCNN-random forest, standard CNN, the support vector machine (SVM) and the neural backpropagation network (BP) models. The results demonstrate that the classification accuracy is 99.68%, 92.5% and 97.5% for three data sets with tolerable misclassification rates under all operational conditions. |
Databáze: | OpenAIRE |
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