Classifier-guided neural blind deconvolution: a physics-informed denoising module for bearing fault diagnosis under heavy noise
Blind deconvolution (BD) has been demonstrated as an efficacious approach for extracting bearing fault-specific features from vibration signals under strong background noise. Despite BD's desirable feature in adaptability and mathematical interpretability, a significant challenge persists: How...
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Zusammenfassung: | Blind deconvolution (BD) has been demonstrated as an efficacious approach for
extracting bearing fault-specific features from vibration signals under strong
background noise. Despite BD's desirable feature in adaptability and
mathematical interpretability, a significant challenge persists: How to
effectively integrate BD with fault-diagnosing classifiers? This issue arises
because the traditional BD method is solely designed for feature extraction
with its own optimizer and objective function. When BD is combined with
downstream deep learning classifiers, the different learning objectives will be
in conflict. To address this problem, this paper introduces classifier-guided
BD (ClassBD) for joint learning of BD-based feature extraction and deep
learning-based fault classification. Firstly, we present a time and frequency
neural BD that employs neural networks to implement conventional BD, thereby
facilitating the seamless integration of BD and the deep learning classifier
for co-optimization of model parameters. Subsequently, we develop a unified
framework to use a deep learning classifier to guide the learning of BD
filters. In addition, we devise a physics-informed loss function composed of
kurtosis, $l_2/l_4$ norm, and a cross-entropy loss to jointly optimize the BD
filters and deep learning classifier. Consequently, the fault labels provide
useful information to direct BD to extract features that distinguish classes
amidst strong noise. To the best of our knowledge, this is the first of its
kind that BD is successfully applied to bearing fault diagnosis. Experimental
results from three datasets demonstrate that ClassBD outperforms other
state-of-the-art methods under noisy conditions. |
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DOI: | 10.48550/arxiv.2404.15341 |