A multi-task learning for cavitation detection and cavitation intensity recognition of valve acoustic signals
Yu Sha, Johannes Faber, Shuiping Gou, Bo Liu, Wei Li, Stefan Schramm,, Horst Stoecker, Thomas Steckenreiter, Domagoj Vnucec, Nadine Wetzstein,, Andreas Widl, Kai Zhou

TL;DR
This paper introduces a multi-task deep learning framework using 1-D double hierarchical residual networks for simultaneous cavitation detection and intensity recognition in valve acoustic signals, addressing data scarcity and feature separability issues.
Contribution
It proposes a novel multi-task learning model with a data augmentation method and specialized residual blocks, achieving state-of-the-art accuracy in cavitation analysis.
Findings
Achieved up to 100% accuracy in cavitation detection.
Reached over 93% accuracy in cavitation intensity recognition.
Outperformed existing models on multiple datasets.
Abstract
With the rapid development of smart manufacturing, data-driven machinery health management has received a growing attention. As one of the most popular methods in machinery health management, deep learning (DL) has achieved remarkable successes. However, due to the issues of limited samples and poor separability of different cavitation states of acoustic signals, which greatly hinder the eventual performance of DL modes for cavitation intensity recognition and cavitation detection. In this work, a novel multi-task learning framework for simultaneous cavitation detection and cavitation intensity recognition framework using 1-D double hierarchical residual networks (1-D DHRN) is proposed for analyzing valves acoustic signals. Firstly, a data augmentation method based on sliding window with fast Fourier transform (Swin-FFT) is developed to alleviate the small-sample issue confronted in…
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