TY - JOUR
T1 - Integrating DWT and Bayesian Neural Networks for Effective Bearing Fault Detection With Uncertainty Evaluation in Induction Machines
AU - Rengifo, Johnny
AU - Garcia Aguiar, Reynaldo
AU - Aller, Jose M.
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2026
Y1 - 2026
N2 - Proper maintenance of Induction Machines (IM) is essential to ensure suitable performance, extend their service lifespan, and minimize the risk of catastrophic failures. Bearing failures are the most common failure mode in induction machines reported in industrial applications, and vibration signal monitoring has become an effective technique for their detection. However, accurate interpretation of these signals requires high expertise to differentiate between normal and faulty operating conditions. In this context, supervised artificial intelligence algorithms have emerged as promising tools for pattern classification in vibration signals. This study presents an innovative approach that integrates the energy levels of Discrete Wavelet Transform coefficients as inputs to train two classification models, a Fully Connected Neural Network (FCNN) and a Bayesian Neural Network (BNN), together with the uncertainty assessment of the inferences. The BNN, in particular, allows for the quantification of epistemic uncertainty, providing a measure of confidence in the predictions. The FCNN architectures were optimized using a random search algorithm in Python, while the BNN parameters were tuned through variational inference with normal distributions for the weights. Results demonstrated high accuracy performance, but the BNN model shows the lowest epistemic and aleatory uncertainty compared to the FCNN method. The results prove the ability to use BNNm models with high confidence in diagnostic and condition monitoring for IM applications.
AB - Proper maintenance of Induction Machines (IM) is essential to ensure suitable performance, extend their service lifespan, and minimize the risk of catastrophic failures. Bearing failures are the most common failure mode in induction machines reported in industrial applications, and vibration signal monitoring has become an effective technique for their detection. However, accurate interpretation of these signals requires high expertise to differentiate between normal and faulty operating conditions. In this context, supervised artificial intelligence algorithms have emerged as promising tools for pattern classification in vibration signals. This study presents an innovative approach that integrates the energy levels of Discrete Wavelet Transform coefficients as inputs to train two classification models, a Fully Connected Neural Network (FCNN) and a Bayesian Neural Network (BNN), together with the uncertainty assessment of the inferences. The BNN, in particular, allows for the quantification of epistemic uncertainty, providing a measure of confidence in the predictions. The FCNN architectures were optimized using a random search algorithm in Python, while the BNN parameters were tuned through variational inference with normal distributions for the weights. Results demonstrated high accuracy performance, but the BNN model shows the lowest epistemic and aleatory uncertainty compared to the FCNN method. The results prove the ability to use BNNm models with high confidence in diagnostic and condition monitoring for IM applications.
KW - bayesian neural network (BNN)
KW - bearing failures
KW - condition monitoring
KW - diagnostic applications
KW - discrete wavelet transform (DWT)
KW - epistemic uncertainty
KW - fully connected neural network (FCNN)
KW - Induction machines (IM)
KW - machine learning
KW - maintenance vibration
KW - signal monitoring
KW - supervised artificial intelligence
UR - https://www.scopus.com/pages/publications/105028554900
U2 - 10.1109/ACCESS.2026.3655166
DO - 10.1109/ACCESS.2026.3655166
M3 - Article
AN - SCOPUS:105028554900
SN - 2169-3536
VL - 14
SP - 13098
EP - 13112
JO - IEEE Access
JF - IEEE Access
ER -