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Purpose

The model feature extraction is enhanced by suppressing noise interference and optimizing feature sensitivity to improve its robustness in practical applications.

Design/methodology/approach

A fault diagnosis method for rolling bearings based on convolutional neural networks in a strong noise environment.

Findings

Experiments show that this model demonstrates high robustness and generalization ability under noisy conditions.

Originality/value

It provides a novel framework for industrial fault diagnosis to solve the problem of fault signals being submerged by noise.

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