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Deep Gaussian Process metamodeling of sequentially sampled non-stationary response surfaces

机译:顺序采样的非平稳响应面的深高斯过程元建模

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Simulations are often used for the design of complex systems as they allow to explore the design space without the need to build several prototypes. Over the years, the simulation accuracy, as well as the associated computational cost has increased significantly, limiting the overall number of simulations during the design process. Therefore, metamodeling aims to approximate the simulation response with a cheap-to-evaluate mathematical approximation, learned from a limited set of simulator evaluations. Kernel-based methods using stationary kernels are nowadays wildly used. However, using stationary kernels for non-stationary responses can be inappropriate and result in poor models when combined with sequential design. We present the application of a novel kernel-based technique, known as Deep Gaussian Processes, which is better able to cope with these difficulties. We evaluate the method for non-stationary regression on a series of real-world problems, showing that it outperforms the standard Gaussian Processes with stationary kernels.
机译:仿真通常用于复杂系统的设计,因为它们无需设计多个原型即可探索设计空间。多年来,仿真精度以及相关的计算成本已大大提高,从而限制了设计过程中仿真的总数。因此,元建模的目的是通过从一组有限的模拟器评估中获知的廉价评估数学近似来近似模拟响应。如今,使用固定内核的基于内核的方法被广泛使用。但是,将平稳内核用于非平稳响应可能是不合适的,并且在与顺序设计结合使用时会导致模型不佳。我们介绍了一种新的基于内核的技术的应用,称为深度高斯过程,它能够更好地应对这些困难。我们评估了一系列实际问题的非平稳回归方法,结果表明该方法优于具有固定核的标准高斯过程。

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