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Coupled electromagnetic/thermal machine design optimization based on finite element analysis with application of artificial neural network

机译:基于有限元分析的电磁/热机耦合优化设计及人工神经网络应用

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Comprehensive optimization of an electrical machine design requires that its electromagnetic (EM) and thermal performance must be optimized simultaneously since electric machines are heavily constrained by thermal limits. The approach presented in this paper is built around a coupled EM/thermal model that uses finite element analysis to efficiently identify the maximum current density for a given machine during steady-state operation. This coupled model is then integrated into an iterative machine design optimization program. An artificial neural network (ANN) that is capable of effectively characterizing input/output relationships for nonlinear multivariable functions is incorporated into the optimization program, resulting in a significant reduction of the total computation time. Results are presented for application of this software to optimize the design of a 30 kW (cont.) fractional-slot concentrated winding (FSCW) surface permanent magnet (SPM) machine for high torque density. The optimal designs found with the coupled EM/thermal optimization exhibit valuable performance improvements compared to designs found with EM-only optimization.
机译:电机设计的全面优化要求必须同时优化其电磁(EM)和热性能,因为电机受热极限的限制很大。本文介绍的方法是基于耦合的EM /热模型建立的,该模型使用有限元分析来有效地确定给定机器在稳态运行期间的最大电流密度。然后将此耦合模型集成到迭代的机器设计优化程序中。能够有效地表征非线性多元函数的输入/输出关系的人工神经网络(ANN)被并入优化程序,从而显着减少了总计算时间。给出了该软件的应用结果,以优化30 kW(续)分数槽集中绕组(FSCW)表面永磁体(SPM)机器的设计,以实现高转矩密度。与仅采用EM进行优化的设计相比,结合EM /热优化进行的优化设计显示出有价值的性能改进。

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