Literature DB >> 28293137

Nonlinear information fusion algorithms for data-efficient multi-fidelity modelling.

P Perdikaris1, M Raissi2, A Damianou3, N D Lawrence4, G E Karniadakis2.   

Abstract

Multi-fidelity modelling enables accurate inference of quantities of interest by synergistically combining realizations of low-cost/low-fidelity models with a small set of high-fidelity observations. This is particularly effective when the low- and high-fidelity models exhibit strong correlations, and can lead to significant computational gains over approaches that solely rely on high-fidelity models. However, in many cases of practical interest, low-fidelity models can only be well correlated to their high-fidelity counterparts for a specific range of input parameters, and potentially return wrong trends and erroneous predictions if probed outside of their validity regime. Here we put forth a probabilistic framework based on Gaussian process regression and nonlinear autoregressive schemes that is capable of learning complex nonlinear and space-dependent cross-correlations between models of variable fidelity, and can effectively safeguard against low-fidelity models that provide wrong trends. This introduces a new class of multi-fidelity information fusion algorithms that provide a fundamental extension to the existing linear autoregressive methodologies, while still maintaining the same algorithmic complexity and overall computational cost. The performance of the proposed methods is tested in several benchmark problems involving both synthetic and real multi-fidelity datasets from computational fluid dynamics simulations.

Keywords:  Bayesian inference; Gaussian processes; deep learning; uncertainty quantification

Year:  2017        PMID: 28293137      PMCID: PMC5332612          DOI: 10.1098/rspa.2016.0751

Source DB:  PubMed          Journal:  Proc Math Phys Eng Sci        ISSN: 1364-5021            Impact factor:   2.704


  1 in total

1.  Model inversion via multi-fidelity Bayesian optimization: a new paradigm for parameter estimation in haemodynamics, and beyond.

Authors:  Paris Perdikaris; George Em Karniadakis
Journal:  J R Soc Interface       Date:  2016-05       Impact factor: 4.118

  1 in total
  15 in total

1.  An Emergent Space for Distributed Data with Hidden Internal Order through Manifold Learning.

Authors:  Felix P Kemeth; Sindre W Haugland; Felix Dietrich; Tom Bertalan; Kevin Höhlein; Qianxiao Li; Erik M Bollt; Ronen Talmon; Katharina Krischer; Ioannis G Kevrekidis
Journal:  IEEE Access       Date:  2018-11-22       Impact factor: 3.367

2.  Linking Gaussian process regression with data-driven manifold embeddings for nonlinear data fusion.

Authors:  Seungjoon Lee; Felix Dietrich; George E Karniadakis; Ioannis G Kevrekidis
Journal:  Interface Focus       Date:  2019-04-19       Impact factor: 3.906

3.  Omics, big data and machine learning as tools to propel understanding of biological mechanisms and to discover novel diagnostics and therapeutics.

Authors:  Nikolaos Perakakis; Alireza Yazdani; George E Karniadakis; Christos Mantzoros
Journal:  Metabolism       Date:  2018-08-08       Impact factor: 8.694

4.  Hierarchical deep learning of multiscale differential equation time-steppers.

Authors:  Yuying Liu; J Nathan Kutz; Steven L Brunton
Journal:  Philos Trans A Math Phys Eng Sci       Date:  2022-06-20       Impact factor: 4.019

5.  Propagation of uncertainty in the mechanical and biological response of growing tissues using multi-fidelity Gaussian process regression.

Authors:  Taeksang Lee; Ilias Bilionis; Adrian Buganza Tepole
Journal:  Comput Methods Appl Mech Eng       Date:  2019-12-09       Impact factor: 6.756

6.  Machine learning for weather and climate are worlds apart.

Authors:  D Watson-Parris
Journal:  Philos Trans A Math Phys Eng Sci       Date:  2021-02-15       Impact factor: 4.226

7.  Learning functionals via LSTM neural networks for predicting vessel dynamics in extreme sea states.

Authors:  J Del Águila Ferrandis; M S Triantafyllou; C Chryssostomidis; G E Karniadakis
Journal:  Proc Math Phys Eng Sci       Date:  2021-01-27       Impact factor: 2.704

8.  Multiscale modeling meets machine learning: What can we learn?

Authors:  Grace C Y Peng; Mark Alber; Adrian Buganza Tepole; William R Cannon; Suvranu De; Salvador Dura-Bernal; Krishna Garikipati; George Karniadakis; William W Lytton; Paris Perdikaris; Linda Petzold; Ellen Kuhl
Journal:  Arch Comput Methods Eng       Date:  2020-02-17       Impact factor: 7.302

Review 9.  Data-driven cardiovascular flow modelling: examples and opportunities.

Authors:  Amirhossein Arzani; Scott T M Dawson
Journal:  J R Soc Interface       Date:  2021-02-10       Impact factor: 4.118

Review 10.  Integrating machine learning and multiscale modeling-perspectives, challenges, and opportunities in the biological, biomedical, and behavioral sciences.

Authors:  Mark Alber; Adrian Buganza Tepole; William R Cannon; Suvranu De; Salvador Dura-Bernal; Krishna Garikipati; George Karniadakis; William W Lytton; Paris Perdikaris; Linda Petzold; Ellen Kuhl
Journal:  NPJ Digit Med       Date:  2019-11-25
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