Chiller faults detection and diagnosis with sensor network and adaptive 1D CNN

Digital Communications and Networks - Tập 8 Số 4 - Trang 531-539 - 2022
Ke Yan1, Xiaokang Zhou2,3
1Department of the Built Environment, National University of Singapore, 4 Architecture Drive, 117566, Singapore
2Faculty of Data Science, Shiga University, Hikone, 5228522, Japan
3RIKEN Center for Advanced Intelligence Project, RIKEN, Tokyo, 1030027, Japan

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