Thermal issue is of great importance during layout design of heat source components in systems engineering, especially for high functional-density products. Thermal analysis generally needs complex simulation, which leads to an unaffordable computational burden to layout optimization as it iteratively evaluates different schemes. Surrogate modeling is an effective way to alleviate computation complexity. However, temperature field prediction (TFP) with complex heat source layout (HSL) input is an ultra-high dimensional nonlinear regression problem, which brings great difficulty to traditional regression models. The Deep neural network (DNN) regression method is a feasible way for its good approximation performance. However, it faces great challenges in both data preparation for sample diversity and uniformity in the layout space with physical constraints, and proper DNN model selection and training for good generality, which necessitates efforts of both layout designer and DNN experts. To advance this cross-domain research, this paper proposes a DNN based HSL-TFP surrogate modeling task benchmark. With consideration for engineering applicability, sample generation, dataset evaluation, DNN model, and surrogate performance metrics, are thoroughly studied. Experiments are conducted with ten representative state-of-the-art DNN models. Detailed discussion on baseline results is provided and future prospects are analyzed for DNN based HSL-TFP tasks.
翻译:热量问题在系统工程中热源组件的布局设计过程中非常重要,特别是对于功能密度高的产品而言,热源组件的布局设计十分重要。热量分析一般需要复杂的模拟。热量分析需要复杂的系统工程设计,特别是高功能密度产品的热源组件的布局设计。热量分析通常需要复杂的系统设计,因此需要复杂的热源布局(HSL)输入的温度实地预测(TFP)是一个超高的、非线性回归问题,这给传统的回归模型带来极大的困难。深神经网络(DNNN)回归法是其良好近似性运行的一个可行方法。然而,在为布局空间的样本多样性和统一性与物理限制进行迭代性评估,以及适当的DNNN模型选择和良好通用性培训方面,都面临着无法承受的计算负担。但是,为了推进这一交叉热源布局(HSL-TF)的模拟任务基准基准基准,本文建议采用一个基于HSL-TF模型的DNNNN, 样本生成、 DNNF模型的样本评估模型,目前正在对未来的模型进行详细分析。