Multifidelity and Multiscale Bayesian Framework for High-Dimensional Engineering Design and Calibration

Author:

Sarkar Soumalya1,Mondal Sudeepta2,Joly Michael3,Lynch Matthew E.4,Bopardikar Shaunak D.5,Acharya Ranadip6,Perdikaris Paris7

Affiliation:

1. Department of Autonomous and Intelligent Systems, United Technologies Research Center (UTRC), East Hartford, CT 06108

2. Department of Mechanical Engineering, Pennsylvania State University, University Park, PA 16802

3. Department of Thermal and Fluid Science, UTRC, East Hartford, CT 06108

4. Department of Physical Science, UTRC, East Hartford, CT 06118

5. Department of ECE, Michigan State University, East Lansing, MI 48824

6. Department of Physical Science, UTRC, East Hartford, CT 06106

7. Department of MEAM, University of Pennsylvania, Philadelphia, PA 19104

Abstract

AbstractThis paper proposes a machine learning–based multifidelity modeling (MFM) and information-theoretic Bayesian optimization approach where the associated models can have complex discrepancies among each other. Advantages of MFM-based optimization over a single-fidelity surrogate, specifically under complex constraints, are discussed with benchmark optimization problems involving noisy data. The MFM framework, based on modeling of the varied fidelity information sources via Gaussian processes, is augmented with information-theoretic active learning strategies that involve sequential selection of optimal points in a multiscale architecture. This framework is demonstrated to exhibit improved efficiency on practical engineering problems like high-dimensional design optimization of compressor rotor via implementing its multiscale architecture and calibration of expensive microstructure prediction model. From the perspective of the machine learning–assisted design of multiphysics systems, advantages of the proposed framework have been presented with respect to accelerating the search of optimal design conditions under budget constraints.

Publisher

ASME International

Subject

Computer Graphics and Computer-Aided Design,Computer Science Applications,Mechanical Engineering,Mechanics of Materials

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