Development of Multi-Sensor Convergence Monitoring and Diagnosis Device based on Edge AI for the Modular Main Circuit Breaker of Korean High-Speed Rolling Stock |
Byeong Ju, Yun
(R&D Institute, Tae Hee Evolution Co. Ltd.)
Jhong Il, Kim (R&D Institute, Tae Hee Evolution Co. Ltd.) Jae Young, Yoon (R&D Institute, Tae Hee Evolution Co. Ltd.) Jeong Jin, Kang (Dept. of Information and Communication Engineering, Dongseoul University) You Sik, Hong (Dept. of Information Engineering Software, Sangji University) |
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