[Oral Presentation]Wavelet-Based Compressive Reconstruction for Real-Time IGBT Switching Time Monitoring

Wavelet-Based Compressive Reconstruction for Real-Time IGBT Switching Time Monitoring
ID:92 Submission ID:97 View Protection:ATTENDEE Updated Time:2025-11-03 11:49:39 Hits:94 Oral Presentation

Start Time:2025-11-09 11:20 (Asia/Shanghai)

Duration:15min

Session:[S2] 2. Power electronics technology and application » [S2] 2.Power electronics technology and application

Presentation File

Tips: The file permissions under this presentation are only for participants. You have not logged in yet and cannot view it temporarily.

Abstract
Insulated gate bipolar transistors (IGBTs) are critical in high-power systems, where reliable monitoring of switching transients is essential for condition assessment. Conventional approaches require high sample-level acquisition, leading to high cost and data burdens. This paper proposes a wavelet-optimized orthogonal matching pursuit (WO-OMP) framework for compressive reconstruction of IGBT switching transients. By leveraging wavelet-domain sparsity and adaptive reconstruction, the method reduces sampling rates while maintaining fidelity. Experiments on a double-pulse test platform show that WO-OMP achieves nanosecond-level accuracy in turn-off time toff, with relative errors below 1% under compression ratios up to 100. Performance metrics including RMSE, PRD, and PSNR further verify that waveform fidelity and timing precision are preserved under sub-Nyquist sampling. The results demonstrate the feasibility of cost-effective and real-time IGBT monitoring.
Keywords
Compressed sensing,Condition monitoring,Sparse reconstruction,Wavelet transform,IGBT switches
Speaker
Weiye Wang
Harbin Engineering University

Submission Author
Weiye Wang Harbin Engineering University
Xiaotian Zhang Harbin Engineering University
Menglong Wu Harbin Engineering University
Jingwei Zhang China University of Mining and Technology
Zechao Liu Harbin Engineering University
Chao Gong Northwestern Polytechnical University
Comment submit
Verification code Change another
All comments

Contact us

CIYCEE 2025 Official E-mail:

ciycee2025@163.com

 

WeChat public account: 

IEEE IAS SWJTU Student Branch