A Fault Diagnostic Method for Position Sensor of Switched Reluctance Wind Generator |
Wang, Chao
(Dept. of Energy Technology, Aalborg University)
Liu, Xiao (Dept. of Energy Technology, Aalborg University) Liu, Hui (Dept. of Energy Technology, Aalborg University) Chen, Zhe (Dept. of Energy Technology, Aalborg University) |
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