Fengshou Gu
- Performance of vibration and current signals in the fault diagnosis of induction motors using deep learning and machine learning techniques. In: Structural Health Monitoring. :
- An unsupervised transfer network with adaptive input and dynamic channel pruning for train axle bearing fault diagnosis. In: Structural Health Monitoring. :
- Maximum negative entropy deconvolution and its application to bearing condition monitoring. In: Structural Health Monitoring, v. 23, n. 3 (September 2023). (2023):
- Squared envelope sparsification via blind deconvolution and its application to railway axle bearing diagnostics. In: Structural Health Monitoring, v. 22, n. 6 (April 2023). (2023):
- Power function-based Gini indices: New sparsity measures using power function-based quasi-arithmetic means for bearing condition monitoring. In: Structural Health Monitoring, v. 22, n. 6 (April 2023). (2023):
- A local modulation signal bispectrum for multiple amplitude and frequency modulation demodulation in gearbox fault diagnosis. In: Structural Health Monitoring, v. 22, n. 5 (February 2023). (2023):
- A Modulation Signal Bispectrum Enhanced Squared Envelope for the detection and diagnosis of compound epicyclic gear faults. In: Structural Health Monitoring, v. 22, n. 1 (November 2019). (2019):
- An iterative morphological difference product wavelet for weak fault feature extraction in rolling bearing fault diagnosis. In: Structural Health Monitoring, v. 22, n. 1 (November 2019). (2019):
- Modulation signal bispectrum with optimized wavelet packet denoising for rolling bearing fault diagnosis. In: Structural Health Monitoring, v. 21, n. 3 (August 2021). (2021):
- A phase linearisation–based modulation signal bispectrum for analysing cyclostationary bearing signals. In: Structural Health Monitoring, v. 20, n. 3 (January 2021). (2021):