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Robust Optimization of a Permanent-Magnet Synchronous Machine Considering Uncertain Driving Cycles

机译:考虑不确定行驶周期的永磁同步电机的鲁棒优化

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This article focuses on the robust optimization of a permanent-magnet (PM) synchronous machine while considering a driving cycle. The robustification is obtained by considering geometrical uncertainties caused by manufacturing inaccuracies, uncertainties linked to different driving styles, and uncertainties related to ambient parameters such as traffic and weather conditions. The optimization goal is to minimize the PM's volume while maintaining the machine performance, i.e., the energy efficiency over the driving cycle and the maximal torque. The magnetic behavior of the machine is described by a partial differential equation (PDE) and is simulated by the finite-element method, employing an affine decomposition to avoid the reassembling of the system of equations due to the changing geometry. Sequential quadratic programming is used for the optimization, and stochastic collocation is applied to compute the moments of stochastic quantities. The robustness of the optimized configurations is validated by a Monte Carlo sampling. It is found that the uncertainties have a significant influence on the optimal PM configuration.
机译:本文着重于在考虑驱动周期的同时对永磁(PM)同步电机进行强大的优化。通过考虑由制造误差导致的几何不确定性,与不同驾驶方式相关的不确定性以及与环境参数(例如交通和天气状况)相关的不确定性来获得鲁棒性。优化目标是在保持机器性能(即整个行驶周期的能量效率和最大扭矩)的同时,最大程度地减少PM的体积。电机的磁性能由偏微分方程(PDE)描述,并由有限元方法模拟,并采用仿射分解来避免由于几何形状的变化而重新组合方程组。使用顺序二次规划进行优化,并应用随机搭配来计算随机量的矩。通过蒙特卡洛采样验证了优化配置的鲁棒性。发现不确定性对最佳PM配置有重要影响。

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