We consider the problem of optimizing the design of a heat sink used for cooling an insulated gate bipolar transistor (IGBT) power module. The thermal behavior of the heat sink is originally estimated using a high-fidelity computational fluid dynamics (CFD) simulation, which renders numerical optimization too computationally demanding. To enable optimization studies, we substitute the CFD simulation model with an inexpensive polynomial surrogate model that approximates the relation between the device's design features and a relevant thermal quantity of interest. The surrogate model of choice is a data-driven polynomial chaos expansion (DD-PCE), which learns the aforementioned relation by means of polynomial regression. Advantages of the DD-PCE include its applicability in small-data regimes and its easily adaptable model structure. To address the issue of model-form uncertainty and model robustness in view of limited training and test data, ensembles of DD-PCEs are generated based on data re-shuffling. Then, using the full ensemble of surrogate models, the surrogate-based predictions are accompanied by uncertainty metrics such as mean value and variance. Once trained and tested in terms of accuracy and robustness, the ensemble of DD-PCE surrogates replaces the high-fidelity simulation model in optimization algorithms aiming to identify heat sink designs that optimize the thermal behavior of the IGBT under geometrical and operational constraints. Optimized heat sink designs are obtained for a computational cost much smaller than utilizing the original model in the optimization procedure. Due to ensemble modeling, the optimization results can also be assessed in terms of uncertainty and robustness. Comparisons against alternative surrogate modeling techniques illustrate why the DD-PCE should be preferred in the considered setting.
翻译:我们考虑优化用于冷却绝缘门双极晶体管动力模块的热水槽设计的问题。热水槽的热行为最初使用高纤维计算流动态(CFD)模拟来估计上述关系,这使得数字优化的实用性过强。为了能够进行优化研究,我们用一个廉价的多元替代模型来取代CFD模拟模型,该模型可以接近设备设计特点与相关热量之间的关系。替代模型的选择模型是一种数据驱动的多元混乱扩展(DD-PCE),该模型通过多数值回归手段来学习上述关系。DD-PC的热力行为模型包括它在小数据系统中的可适用性及其易于调整的模型结构。为了解决模型组合不确定性和模型坚固性模型模型模型模型模型模型,DD-PC的结合基于数据重新配置的数据生成。随后,利用数据模型的完整模型模型模型模拟模型模拟化多数值的多盘混杂乱变(DD-PC)模型化(Orightality)的精确性变现性(Ormal-deal-deal-deal-dealizal-deal-deal-deal-deal-deal-deal-deal-deal-dealislismismisl-deal-deal)的预测,同时使用经过对数字的模拟的精确性测算。