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Sequential tuning of complex computer models

机译:顺序调整复杂的计算机模型

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摘要

We propose a method that uses a sequential design instead of a space filling design for estimating tuning parameters of a complex computer model. The goal is to bring the computer model output closer to the real system output. The method fits separate Gaussian process (GP) models to the available data from the physical experiment and the computer experiment and minimizes the discrepancy between the predictions from the GP models to obtain estimates of the tuning parameters. A criterion based on the discrepancy between the predictions from the two GP models and the standard error of prediction for the computer experiment output is then used to obtain a design point for the next run of the computer experiment. The tuning parameters are re-estimated using the augmented data set. The steps are repeated until the budget for the computer experiment data is exhausted. Simulation studies show that the proposed method performs better in bringing a computer model closer to the real system than methods that use a space filling design.
机译:我们提出了一种使用顺序设计而不是空间填充设计的方法来估算复杂计算机模型的调整参数。目的是使计算机模型输出更接近实际系统输出。该方法将单独的高斯过程(GP)模型拟合到来自物理实验和计算机实验的可用数据,并使GP模型的预测之间的差异最小化,从而获得调整参数的估计值。然后,基于来自两个GP模型的预测与计算机实验输出的预测标准误差之间的差异的标准,用于为计算机实验的下一次运行获取设计点。使用扩充的数据集重新估计调整参数。重复这些步骤,直到计算机实验数据的预算用尽。仿真研究表明,与使用空间填充设计的方法相比,该方法在使计算机模型更接近真实系统方面表现更好。

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