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Comparison of Global Optimization Algorithms for Inverse Design of Substrate Metal Density for Low Warpage Design in Ultra-Thin Packages

机译:超薄套件低翘曲设计逆翘起仿真逆设计全局优化算法的比较

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An inverse design framework incorporating a physics-based surrogate model and global optimization is proposed to assist in the design of low warpage ultra-thin packages by adjusting the metal densities over substrate subsections and layers. The surrogate model is derived from two finite element analysis (FEA) models. The first one describes the relationship between the metal density in the substrate layer to the coefficient of thermal expansion (CTE) while the second one describes the relationship between in-plane CTE variation of the substrate to the warpage profile. Results from these two FEA models are used to train separate artificial neural networks (ANN). When these ANNs are run sequentially, the surrogate model can accurately determine the warpage profile for any set of metal densities. Three global optimization algorithms, Particle Swarm Optimization (PSO), Genetic Algorithm (GA) and Cross Entropy (CE) were then evaluated using this surrogate model. Three case studies consisting of different warpage profiles (original and 20% reduced warpage) and constraints to the optimization search space (±20% or ±50% change to metal density) were then evaluated using these algorithms. For all three cases, the three algorithms converged to similar solutions, indicating that indeed the global minimum has been attained and determined. However, GA took a significantly longer time to converge than PSO and CE. Based on these results, PSO and CE are recommended to be suitable algorithms to carry out inverse design for this type of problem.
机译:提出了一种具有基于物理学的代理模型和全局优化的逆设计框架,以通过调节基板小节和层上的金属密度来帮助设计低翘曲的超薄包装。代理模型来自两个有限元分析(FEA)模型。第一个描述基板层中的金属密度与热膨胀系数(CTE)之间的关系描述,而第二人描述了基板的平面内CTE变化与翘曲轮廓之间的关系。来自这两个FEA模型的结果用于培训单独的人工神经网络(ANN)。当这些ANNS顺序运行时,代理模型可以准确地确定任何一组金属密度的翘曲曲线。然后使用该替代模型评估三种全局优化算法,粒子群优化优化(PSO),遗传算法(GA)和交叉熵(CE)。使用这些算法评估由不同的翘曲型材(原始和20%的翘曲)组成的三种案例研究,以及对优化搜索空间的限制(±20%或±50%或金属密度的变化)。对于所有三种情况,三种算法融合到类似的解决方案,表明实际上已经实现并确定了全局最小值。然而,GA比PSO和CE收敛了更长的时间。基于这些结果,建议PSO和CE是适当的算法,以便对这种类型的问题进行逆设计。

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