skip to main content
OSTI.GOV title logo U.S. Department of Energy
Office of Scientific and Technical Information

Title: Linear Regression Based Multi-fidelity Surrogate for Disturbance Amplification in Multi-phase Explosion

Journal Article · · Structural and Multidisciplinary Optimization

When simulations are very expensive and many are required, as for optimization or uncertainty quantification, a way to reduce cost is using surrogates. With multiple simulations to predict the quantity of interest, some being very expensive and accurate (high-fidelity simulations) and others cheaper but less accurate (low-fidelity simulations), it may be worthwhile to use multifidelity surrogates (MFSs). Moreover, if we can afford just a few high-fidelity simulations or experiments, MFS becomes necessary. Co-Kriging, which is probably the most popular MFS, replaces both low-fidelity and high-fidelity simulations by a single MFS. A recently proposed linear regression–based MFS (LR-MFS) offers the option to correct the LF simulations instead of correcting the LF surrogate in the MFS. When the low-fidelity simulation is cheap enough for use in an application, such as optimization, this may be an attractive option. Here, we explore the performance of LR-MFS using exact and surrogate-replaced low-fidelity simulations. The concern studied is a cylindrical dispersal of 100-μ m-diameter solid particles after detonation and the quantity of interest is a measure of the amplification of the departure from axisymmetry. We find very substantial accuracy improvements for this problem using the LR-MFS with exact low-fidelity simulations. Inspired by these results, we also compare the performance of co-Kriging to the use of Kriging to correct exact low-fidelity simulations and find a similar accuracy improvement when simulations are directly used. For this problem, further improvements in accuracy are achievable by taking advantage of inherent parametric symmetries. These findings may alert users of MFSs to the possible advantages of using exact low-fidelity simulations when this is affordable.

Research Organization:
Los Alamos National Laboratory (LANL), Los Alamos, NM (United States)
Sponsoring Organization:
USDOE National Nuclear Security Administration (NNSA)
Grant/Contract Number:
89233218CNA000001; NA0002378
OSTI ID:
1571620
Report Number(s):
LA-UR-19-22491
Journal Information:
Structural and Multidisciplinary Optimization, Vol. 60, Issue 6; ISSN 1615-147X
Publisher:
SpringerCopyright Statement
Country of Publication:
United States
Language:
English
Citation Metrics:
Cited by: 7 works
Citation information provided by
Web of Science

References (19)

Effect of a bimodal initial particle volume fraction perturbation in an explosive dispersal of particles
  • Ouellet, Frederick; Annamalai, Subramanian; Rollin, Bertrand
  • SHOCK COMPRESSION OF CONDENSED MATTER - 2015: Proceedings of the Conference of the American Physical Society Topical Group on Shock Compression of Condensed Matter, AIP Conference Proceedings https://doi.org/10.1063/1.4971740
conference January 2017
Global sensitivity analysis using polynomial chaos expansions journal July 2008
Construction of bootstrap confidence intervals on sensitivity indices computed by polynomial chaos expansion journal January 2014
Recursive Co-Kriging Model for Design of Computer Experiments with Multiple Levels of Fidelity journal January 2014
On the Use of Symmetries in Building Surrogate Models journal January 2019
Adaptive sparse polynomial chaos expansion based on least angle regression journal March 2011
Surrogate-based analysis and optimization journal January 2005
Efficient computation of global sensitivity indices using sparse polynomial chaos expansions journal November 2010
Issues in Deciding Whether to Use Multifidelity Surrogates journal May 2019
Multifidelity Surrogate Based on Single Linear Regression journal December 2018
A Python surrogate modeling framework with derivatives journal September 2019
Statistics for Spatial Data book September 1993
Early Time Evolution of Circumferential Perturbation of Initial Particle Volume Fraction in Explosive Cylindrical Multiphase Dispersion journal April 2019
Predicting the output from a complex computer code when fast approximations are available journal March 2000
The Orthogonal Development of Non-Linear Functionals in Series of Fourier-Hermite Functionals journal April 1947
Global sensitivity indices for nonlinear mathematical models and their Monte Carlo estimates journal February 2001
Effects of Initial Perturbations in the Early Moments of an Explosive Dispersal of Particles journal April 2016
Statistics for spatial data journal April 1993
Matrix formulation of co-kriging journal June 1982

Figures / Tables (13)


Similar Records

Reliability estimation of an advanced nuclear fuel using coupled active learning, multifidelity modeling, and subset simulation
Journal Article · Wed Jul 06 00:00:00 EDT 2022 · Reliability Engineering and System Safety · OSTI ID:1571620

Active learning with multifidelity modeling for efficient rare event simulation
Journal Article · Fri Jul 29 00:00:00 EDT 2022 · Journal of Computational Physics · OSTI ID:1571620

A Kriging Surrogate Model for Computing Gas Mixture Equations of State
Journal Article · Mon Mar 25 00:00:00 EDT 2019 · Journal of Fluids Engineering · OSTI ID:1571620