Recent advances in Bayesian optimization with applications to parameter reconstruction in optical nano-metrology

Matthias Plock, S. Burger, Philipp‐Immanuel Schneider
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引用次数: 2

Abstract

Parameter reconstruction is a common problem in optical nano metrology. It generally involves a set of measurements, to which one attempts to fit a numerical model of the measurement process. The model evaluation typically involves to solve Maxwell's equations and is thus time consuming. This makes the reconstruction computationally demanding. Several methods exist for fitting the model to the measurements. On the one hand, Bayesian optimization methods for expensive black-box optimization enable an efficient reconstruction by training a machine learning model of the squared sum of deviations. On the other hand, curve fitting algorithms, such as the Levenberg-Marquardt method, take the deviations between all model outputs and corresponding measurement values into account which enables a fast local convergence. In this paper we present a Bayesian Target Vector Optimization scheme which combines these two approaches. We compare the performance of the presented method against a standard Levenberg-Marquardt-like algorithm, a conventional Bayesian optimization scheme, and the L-BFGS-B and Nelder-Mead simplex algorithms. As a stand-in for problems from nano metrology, we employ a non-linear least-square problem from the NIST Standard Reference Database. We find that the presented method generally uses fewer calls of the model function than any of the competing schemes to achieve similar reconstruction performance.
贝叶斯优化及其在光学纳米计量参数重构中的应用进展
参数重构是光学纳米计量中的一个常见问题。它通常涉及一组测量,人们试图将测量过程的数值模型拟合到这些测量中。模型评估通常涉及求解麦克斯韦方程组,因此非常耗时。这使得重建的计算要求很高。有几种方法可以使模型与测量值拟合。一方面,贝叶斯优化方法用于昂贵的黑箱优化,通过训练偏差平方和的机器学习模型来实现有效的重建。另一方面,曲线拟合算法,如Levenberg-Marquardt方法,考虑了所有模型输出与相应测量值之间的偏差,可以实现快速的局部收敛。本文提出了一种结合这两种方法的贝叶斯目标向量优化方案。我们将所提出的方法与标准的levenberg - marquardt算法、传统的贝叶斯优化方案以及L-BFGS-B和Nelder-Mead单纯形算法的性能进行了比较。作为纳米计量问题的替代,我们采用了NIST标准参考数据库中的非线性最小二乘问题。我们发现,与任何竞争方案相比,所提出的方法通常使用更少的模型函数调用来获得相似的重建性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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