Additive Multi-Index Gaussian process modeling, with application to multi-physics surrogate modeling of the quark-gluon plasma

06/11/2023
by   Kevin Li, et al.
0

The Quark-Gluon Plasma (QGP) is a unique phase of nuclear matter, theorized to have filled the Universe shortly after the Big Bang. A critical challenge in studying the QGP is that, to reconcile experimental observables with theoretical parameters, one requires many simulation runs of a complex physics model over a high-dimensional parameter space. Each run is computationally very expensive, requiring thousands of CPU hours, thus limiting physicists to only several hundred runs. Given limited training data for high-dimensional prediction, existing surrogate models often yield poor predictions with high predictive uncertainties, leading to imprecise scientific findings. To address this, we propose a new Additive Multi-Index Gaussian process (AdMIn-GP) model, which leverages a flexible additive structure on low-dimensional embeddings of the parameter space. This is guided by prior scientific knowledge that the QGP is dominated by multiple distinct physical phenomena (i.e., multiphysics), each involving a small number of latent parameters. The AdMIn-GP models for such embedded structures within a flexible Bayesian nonparametric framework, which facilitates efficient model fitting via a carefully constructed variational inference approach with inducing points. We show the effectiveness of the AdMIn-GP via a suite of numerical experiments and our QGP application, where we demonstrate considerably improved surrogate modeling performance over existing models.

READ FULL TEXT

page 3

page 27

page 32

research
06/20/2022

Additive Gaussian Processes Revisited

Gaussian Process (GP) models are a class of flexible non-parametric mode...
research
09/27/2022

Multi-Stage Multi-Fidelity Gaussian Process Modeling, with Application to Heavy-Ion Collisions

In an era where scientific experimentation is often costly, multi-fideli...
research
08/23/2019

BdryGP: a new Gaussian process model for incorporating boundary information

Gaussian processes (GPs) are widely used as surrogate models for emulati...
research
03/27/2017

Adaptive Simulation-based Training of AI Decision-makers using Bayesian Optimization

This work studies how an AI-controlled dog-fighting agent with tunable d...
research
07/15/2021

Principal component analysis for Gaussian process posteriors

This paper proposes an extension of principal component analysis for Gau...
research
07/04/2023

A PC-Kriging-HDMR integrated with an adaptive sequential sampling strategy for high-dimensional approximate modeling

High-dimensional complex multi-parameter problems are prevalent in engin...
research
02/19/2020

A unified framework for 21cm tomography sample generation and parameter inference with Progressively Growing GANs

Creating a database of 21cm brightness temperature signals from the Epoc...

Please sign up or login with your details

Forgot password? Click here to reset