SYAIDec 2, 2024

Uncertainty-Aware Artificial Intelligence for Gear Fault Diagnosis in Motor Drives

arXiv:2412.01272v24 citationsh-index: 39APEC
Originality Incremental advance
AI Analysis

This work addresses gear fault diagnosis for motor drives, offering incremental improvements in uncertainty quantification over conventional methods.

This paper tackled the problem of fault diagnosis in motor drives by introducing a Bayesian neural network approach to quantify uncertainties, resulting in improved robustness to noisy data and enhanced interpretability of predictions.

This paper introduces a novel approach to quantify the uncertainties in fault diagnosis of motor drives using Bayesian neural networks (BNN). Conventional data-driven approaches used for fault diagnosis often rely on point-estimate neural networks, which merely provide deterministic outputs and fail to capture the uncertainty associated with the inference process. In contrast, BNNs offer a principled framework to model uncertainty by treating network weights as probability distributions rather than fixed values. It offers several advantages: (a) improved robustness to noisy data, (b) enhanced interpretability of model predictions, and (c) the ability to quantify uncertainty in the decision-making processes. To test the robustness of the proposed BNN, it has been tested under a conservative dataset of gear fault data from an experimental prototype of three fault types at first, and is then incrementally trained on new fault classes and datasets to explore its uncertainty quantification features and model interpretability under noisy data and unseen fault scenarios.

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