Sound aided vibration-based advanced fault diagnosis methods of machines

    Deadline for Manuscript Submissions: April 30, 2026

     

     

    Special Issue Editors

     

    Prof. Zijian Qiao Website  E-Mail: qiaozijian@nbu.edu.cn

    Ningbo University, China
    Interests: weak characteristic enhancement, intelligent fault diagnosis, remaining useful life prediction, health management of machinery, energy harvesting, intelligent medical equipment and dynamics of nonlinear systems

     

     

     

     

    Special Issue Information

    Failures threaten safe operation of machines, while advanced fault diagnosis methods are able to ensure their reliability and avoid accidents. However, single type of signals-based fault diagnosis methods face low reliability and accuracy. Therefore, this topic attempts to combine vibration and sound signals to improve the accuracy of fault detection, fault diagnosis, health monitoring, remaining useful life prediction and intelligent maintenance. Potential topics include but are not limited to the followings:

    1.Sound-to-vibration transformation for sensorless diagnosis

    2.Sound aided vibration for early fault detection

    3.Sound and vibration fusion for intelligent fault diagnosis and remaining useful life prediction

    4.The relationship between sound and vibration for fault diagnosis

    5.Intelligent operation and maintenance strategy based on complementary advantages of sound and vibration

     

    Keywords

    fault diagnosis

    fault detection

    intelligent fault diagnosis

    vibration signals

    sound signals

    intelligent maintenance