Stacking designs: designing multi-fidelity computer experiments with confidence

11/01/2022
by   Chih-Li Sung, et al.
0

In an era where scientific experiments can be very costly, multi-fidelity emulators provide a useful tool for cost-efficient predictive scientific computing. For scientific applications, the experimenter is often limited by a tight computational budget, and thus wishes to (i) maximize predictive power of the multi-fidelity emulator via a careful design of experiments, and (ii) ensure this model achieves a desired error tolerance with confidence. Existing design methods, however, do not jointly tackle objectives (i) and (ii). We propose a novel stacking design approach which addresses both goals. Using a recently proposed multi-level Gaussian process emulator model, our stacking design provides a sequential approach for designing multi-fidelity runs such that a desired prediction error of ϵ > 0 is met under regularity conditions. We then prove a novel cost complexity theorem which, under this multi-level Gaussian process emulator, establishes a bound on the computation cost (for training data simulation) needed to ensure a prediction bound of ϵ. This result provides novel insights on conditions under which the proposed multi-fidelity approach improves upon a standard Gaussian process emulator which relies on a single fidelity level. Finally, we demonstrate the effectiveness of stacking designs in a suite of simulation experiments and an application to finite element analysis.

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