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Uncertainty identification method using kriging surrogate model for industrial electromagnetic device

机译:工业电磁装置Kriging代理模型的不确定性识别方法

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To obtain accurate results from various probabilistic design optimization applied to electromagnetic devices, the uncertainty in the motor should be first identified correctly. This paper presents an efficient uncertainty identification method by using finite element analysis and experimental data. Kriging surrogate model is employed to reduce the computation and maximum likelihood estimation is used to identify the probability distribution of uncertainty and find its parameters. The proposed method is applied to identify the uncertainties in a surface-mounted permanent magnet synchronous motor that cause the cogging torque.
机译:为了获得应用于电磁器件的各种概率设计优化的准确结果,应首先正确识别电动机中的不确定性。本文通过使用有限元分析和实验数据提出了有效的不确定性识别方法。 Kriging代理模型用于降低计算和最大似然估计用于识别不确定性的概率分布并找到其参数。应用了所提出的方法以识别导致齿轮扭矩的表面安装的永磁同步电动机中的不确定性。

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