The Application of Sound and Vibration Signals in Fault Diagnosis

    Deadline for Manuscript Submissions: December 5, 2025

     

     

    Special Issue Editors

     

    Dr. Zhenzhen Jin Website  E-Mail: sdkjdxjz@163.com
    Guangxi University, China
    Interests: Fault diagnosis; signal processing; machine learning

     

    Dr. Yang Fu Website  E-Mail: yangfu@gxu.edu.cn
    Guangxi University, China
    Interests: Condition monitoring and fault diagnosing

     

    Dr. Jinxin Wu Website  E-Mail: 574565456@qq.com
    Guangxi University, China
    Interests: Fault diagnosis and remaining useful life prediction

     

    Dr. Yuan Xu  E-Mail: 2813079927@qq.com
    Guangxi University, China
    Interests: Fault diagnosis of key components of heavy-duty vehicles

     

     

    Special Issue Information

    Reliable fault detection, location and prediction are crucial for ensuring the safe and economical operation of a wide spectrum of machines, structures, and devices. Due to their rich information content, non-invasive acquisition and suitability for continuous monitoring, sound and vibration signals have become indispensable data sources for condition-based maintenance. We particularly welcome research focusing on key components in multiple fields such as rotating machinery, renewable energy devices, rail transportation, aerospace, civil infrastructure, medical devices, and consumer electronics. Strongly encourage benchmark datasets, open-source codes, and papers focusing on reproducibility. By collecting the most advanced research and visionary comments, this special issue aims to plan the future direction and accelerate the practical application of intelligent diagnostic methods based on sound and vibration in various fields.

    This special issue seeks contributions to all stages of fault diagnosis, including but not limited to the following contents:

    • Novel sensing hardware;
    • Enhanced signal conditioning and denoising techniques;
    • Innovative feature extraction and feature selection strategies;
    • Interpretable machine learning and deep learning models for classification and regression tasks;
    • Transfer learning and few-shot methods for alleviating data scarcity;
    • Multimodal or multi-sensor information fusion Edge/embedded implementation for real-time deployment;

    Digital twins or physical frameworks combine analytical models with data-driven approaches.

     

    Keywords

    sound and vibration analysis

    fault diagnosis

    condition monitoring

    signal processing

    predictive maintenance

    machine learning