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Augmenting a simulation campaign for hybrid computer model and field data experiments

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The Kennedy and O'Hagan (KOH) calibration framework uses coupled Gaussian processes (GPs) to meta-model an expensive simulator (first GP), tune its ``knobs" (calibration inputs) to best match observations from a real physical/field experiment and correct for any modeling bias (second GP) when predicting under new field conditions (design inputs). There are well-established methods for placement of design inputs for data-efficient planning of a simulation campaign in isolation, i.e., without field data: space-filling, or via criterion like minimum integrated mean-squared prediction error (IMSPE). Analogues within the coupled GP KOH framework are mostly absent from the literature. Here we derive a closed form IMSPE criterion for sequentially acquiring new simulator data for KOH. We illustrate how acquisitions space-fill in design space, but concentrate in calibration space. Closed form IMSPE precipitates a closed-form gradient for efficient numerical optimization. We demonstrate that our KOH-IMSPE strategy leads to a more efficient simulation campaign on benchmark problems, and conclude with a showcase on an application to equilibrium concentrations of rare earth elements for a liquid-liquid extraction reaction.

Scott Koermer, Justin Loda, Aaron Noble, Robert B. Gramacy• 2023

Related benchmarks

TaskDatasetResultRank
Posterior Estimation2+2D synthetic problem Unimodal posterior
DKL(pT || p*)1.05
5
Posterior Estimation2+2D synthetic problem Bimodal posterior
DKL(pT || p*)0.7
5
Source LocalizationLocation finding problem 2D environment with 2 hidden sources T=30 iterations, B=4, R=20
DKL(pT || p*)0.45
5
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