Data-Driven Inter-Turn Short Circuit Fault Detection in Induction Machines
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Chi-Keong Goh | Sivakumar Nadarajan | Feng Yang | Changhua Hu | Zhao Xu | Shyh-Hao Kuo | Amit Gupta | Changhua Hu | A. Gupta | C. Goh | S. Kuo | Zhao Xu | Feng Yang | S. Nadarajan
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