Sang-Hun Kim, Dong-Yeon Yoo, Sang-Won An, Ye-Seul Park, Jung-Won Lee, and Kyo-Beum Lee, "Fault Detection Method Using a Convolution Neural Network for Hybrid Active Neutral-Point Clamped Inverters," IEEE Access, vol. 8, pp. 140632–140642, Jul. 2020. -SCIE > Paper

본문 바로가기

Paper

International Journals Sang-Hun Kim, Dong-Yeon Yoo, Sang-Won An, Ye-Seul Park, Jung-Won Lee, and Kyo-Beum Lee, "Fault Detection Method Using a Convolution Neural Network for Hybrid Active Neutral-Point Clamped Inverters," IEEE Access, vol. 8, pp. 140632–140642, Jul. 2020. -SCIE

2020

본문

This article presents an open-switch fault detection method for a hybrid active neutral-point clamped (HANPC) inverter based on

deep learning technology. The HANPC inverter generates a three-level output voltage with four silicon switches and two silicon

carbide switches per phase. The probability of open fault in switching devices increases because of the large number of switches of

the entire power converter. The open-switch fault causes distortion of output currents. A convolution neural network (CNN)

comprising several convolution layers and fully connected layers is used to extract features of distorted currents. A CNN network was

trained using three-phase current information to determine the location of the open-switch fault. Our proposed CNN model can

accurately detect approximately 99.6% of open-switch faults without requiring additional circuitry and regardless of the current level

within an average time of 1.027ms. The feasibility and effectiveness of the proposed method are verified by experimental results.

 

첨부파일

  • 194.pdf (2.9M) 93회 다운로드 | DATE : 2020-08-10 09:47:17
Total 282건 6 페이지
Paper 목록
번호 년도 논문명
207 2020 International Journals
206 2020 International Journals
205 2020 International Journals
204 2020 International Journals
203 2020 International Journals
202 2020 International Journals
201 2020 International Journals
200 2020 International Journals
199 2020 International Journals
198 2020 International Journals
197 2020 International Journals
196 2020 International Journals
195 2020 International Journals
열람중 2020 International Journals
193 2020 International Journals
게시물 검색

회원로그인

접속자집계

오늘
704
어제
893
최대
3,510
전체
836,112

그누보드5