A Gaussian process based surrogate approach for the optimization of cylindrical targets

William Gammel, J. Sauppe, Paul Bradley
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Abstract

Simulating direct-drive inertial confinement experiments presents significant computational challenges, both due to the complexity of the codes required for such simulations and the substantial computational expense associated with target design studies. Machine learning models, and in particular, surrogate models, offer a solution by replacing simulation results with a simplified approximation. In this study, we apply surrogate modeling and optimization techniques that are well established in the existing literature to one-dimensional simulation data of a new cylindrical target design containing deuterium–tritium fuel. These models predict yields without the need for expensive simulations. We find that Bayesian optimization with Gaussian process surrogates enhances sampling efficiency in low-dimensional design spaces but becomes less efficient as dimensionality increases. Nonetheless, optimization routines within two-dimensional and five-dimensional design spaces can identify designs that maximize yield, while also aligning with established physical intuition. Optimization routines, which ignore constraints on hydrodynamic instability growth, are shown to lead to unstable designs in 2D, resulting in yield loss. However, routines that utilize 1D simulations and impose constraints on the in-flight aspect ratio converge on novel cylindrical target designs that are stable against hydrodynamic instability growth in 2D and achieve high yield.
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基于高斯过程的圆柱形目标优化替代方法
模拟直驱惯性约束实验给计算带来了巨大挑战,这既是由于此类模拟所需的代码复杂,也是由于目标设计研究需要大量计算费用。机器学习模型,特别是代用模型,通过用简化的近似值取代模拟结果提供了一种解决方案。在本研究中,我们将现有文献中成熟的代理建模和优化技术应用于含有氘氚燃料的新型圆柱形靶设计的一维模拟数据。这些模型无需进行昂贵的模拟就能预测当量。我们发现,使用高斯过程替代物进行贝叶斯优化可提高低维设计空间的采样效率,但随着维度的增加,效率会降低。尽管如此,二维和五维设计空间内的优化例程仍能确定产量最大化的设计,同时也符合既定的物理直觉。事实证明,忽略流体力学不稳定性增长约束的优化程序会导致二维设计不稳定,从而造成产量损失。然而,利用一维模拟并对飞行中的长宽比施加约束的例程,则可收敛到新颖的圆柱形目标设计上,这些设计在二维环境中对流体力学不稳定性的增长具有稳定性,并能实现高产率。
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