2024
DOI: 10.1002/rob.22405
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Squeeze‐and‐excitation attention residual learning of propulsion fault features for diagnosing autonomous underwater vehicles

Wenliao Du,
Xinlong Yu,
Zhen Guo
et al.

Abstract: Given the demanding and unpredictable operational conditions, autonomous underwater vehicles (AUVs) often encounter different propulsion faults, leading to significant economic losses and mission impairments. To address this challenge, vibratory time‐series features can be extracted for the precise propulsion fault diagnosis of AUVs. A squeeze‐and‐excitation (SE) attention residual network (SEResNet) is therefore put forward to enhance the feature extraction for AUV propulsion fault diagnosis. By leveraging th… Show more

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