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Diagnosis of Short-Circuit Fault in Large-Scale Permanent-Magnet Wind Power Generator Based on CMAC

机译:基于CMAC的大型永磁风力发电机短路故障诊断

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摘要

This study proposes a method based on the cerebellar model arithmetic controller (CMAC) for fault diagnosis of large-scale permanent-magnet wind power generators and compares the results with Error Back Propagation (EBP). The diagnosis is based on the short-circuit faults in permanent-magnet wind power generators, magnetic field change, and temperature change. Since CMAC is characterized by inductive ability, associative ability, quick response, and similar input signals exciting similar memories, it has an excellent effect as an intelligent fault diagnosis implement. The experimental results suggest that faults can be diagnosed effectively after only training CMAC 10 times. In comparison to training 151 times for EBP, CMAC is better than EBP in terms of training speed.
机译:本研究提出了一种基于小脑模型算术控制器(CMAC)的方法,用于大规模永磁风力发电机的故障诊断,并将结果与​​误差反向传播(EBP)进行比较。诊断基于永磁风力发电机的短路故障,磁场变化和温度变化。由于CMAC的特征在于诱导能力,关联能力,快速响应和类似的输入信号激发了类似的存储器,因此它具有良好的效果作为智能故障诊断工具。实验结果表明,只有训练CMAC 10次,可以有效地诊断出故障。与EBP的EBP训练相比,CMAC在训练速度方面比EBP更好。

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