We consider large-scale industrial computer model calibration, combining multi-output simulation with limited physical observation, involved in the development of a honeycomb seal. Toward that end, we adopt a localized sampling and emulation strategy called "on-site surrogates (OSSs)", designed to cope with the amalgamated challenges of high-dimensional inputs, large-scale simulation campaigns, and nonstationary response surfaces. In previous applications, OSSs were one-at-a-time affairs for multiple outputs leading to dissonance in calibration efforts for a common parameter set across outputs for the honeycomb. We demonstrate that a principal-components representation, adapted from ordinary Gaussian process surrogate modeling to the OSS setting, can resolve this tension. With a two-pronged - optimization and fully Bayesian - approach, we show how pooled information across outputs can reduce uncertainty and enhance efficiency in calibrated parameters and prediction for the honeycomb relative to the previous, "data-poor" univariate analog.
翻译:我们考虑大规模工业计算机模型校准,将多输出模拟与有限的物理观测相结合,参与蜂窝密封的开发。为此,我们采取了一个叫做“现场代孕(OSS)”的局部取样和模拟战略,旨在应对高维投入、大规模模拟运动和非静止反应表面等综合挑战。在以往的应用中,开放源码软件是多项产出的一次性事务,导致在对蜂窝产出各产出设定的共同参数校准工作中出现不一致。我们证明,从普通高山进程代谢模型到普通的Gaussian进程代谢模型,主要组成部分代表能够解决这一紧张状况。我们用双管齐下的优化和完全的巴耶斯-方法,我们展示了各种产出的集合信息如何能够减少不确定性,提高经校准参数和预测蜂窝比先前的“数据贫乏”非湿气模拟的效率。