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Simultaneous kriging-based estimation and optimization of mean response

机译:基于克里金法的同时估计和均值响应优化

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Robust optimization is typically based on repeated calls to a deterministic simulation program that aim at both propagating uncertainties and finding optimal design variables. Often in practice, the "simulator" is a computationally intensive software which makes the computational cost one of the principal obstacles to optimization in the presence of uncertainties. This article proposes a new efficient method for minimizing the mean of the objective function. The efficiency stems from the sampling criterion which simultaneously optimizes and propagates uncertainty in the model. Without loss of generality, simulation parameters are divided into two sets, the deterministic optimization variables and the random uncertain parameters. A kriging (Gaussian process regression) model of the simulator is built and a mean process is analytically derived from it. The proposed sampling criterion that yields both optimization and uncertain parameters is the one-step ahead minimum variance of the mean process at the maximizer of the expected improvement. The method is compared with Monte Carlo and kriging-based approaches on analytical test functions in two, four and six dimensions.
机译:稳健的优化通常基于对确定性仿真程序的反复调用,该程序旨在传播不确定性并找到最佳设计变量。在实践中,“模拟器”通常是计算密集型软件,在存在不确定性的情况下,其使计算成本成为优化工作的主要障碍之一。本文提出了一种最小化目标函数均值的新有效方法。效率源于同时优化和传播模型不确定性的采样准则。在不失一般性的前提下,将仿真参数分为两组,确定性优化变量和随机不确定性参数。建立了模拟器的克里金法(高斯过程回归)模型,并从中分析出平均过程。提出的同时产生优化参数和不确定参数的采样标准是在预期改进的最大化点处平均过程的最小步伐向前迈进了一步。该方法在两个,四个和六个维度上与基于蒙特卡洛和基于克里格法的分析测试功能进行了比较。

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