Vibration and Acoustic-Based Fault Diagnosis in Renewable Energy Systems

Deadline for Manuscript Submissions: December 30, 2025

 

Special Issue Editors

Jipeng Gu, Assistant Researcher  Website  E-Mail: jipenggu@163.com
Peking University, China
Interests: Computer-aided engineering;Complex system modeling and control;Computer simulation; Fuzzy logic control;New energy power generation technology

Xiaodong Yang, Associate Professor  Website  E-Mail: xd.yang@hfut.edu.cn
Hefei University of Technology, China
Interests: Computer-aided engineering;AC/DC distribution system operation; Fault diagnosis ; Service restoration ; Demand side management

 

Special Issue Information

Dear colleagues,

The integration of renewable energy systems (e.g., wind turbines, hydropower) relies heavily on robust condition monitoring to mitigate mechanical failures caused by dynamic loads and environmental stresses. Vibration and acoustic signals are critical for detecting faults in rotating machinery (e.g., bearings, gearboxes), structural components (e.g., turbine blades), and fluid-structure interactions (e.g., hydroelectric turbines).

This Special Issue invites research on advanced fault diagnosis methods leveraging dynamic signal analysis, with emphasis on:

-Novel sensor technologies for vibration/acoustic data acquisition in harsh environments
-Time-frequency analysis (e.g., wavelet transforms) of non-stationary vibration signals
-AI-driven anomaly detection in mechanical systems (CNNs for bearing faults, LSTMs for blade cracks)
-Digital twins for simulating vibration responses under fault conditions
-Multisensor fusion (vibration + acoustic emission) for early fault
-Fault monitoring and control of renewable energy systems based on intelligent algorithms

 

Keywords

-Fault diagnosis
-Deep learning
-Wavelet transform
-Condition monitoring
-Vibration signal processing
-Acoustic emission analysis
-Structural health monitoring (SHM)
-Rotating machinery diagnostics
-Modal analysis
-Noise-induced failure mechanisms