LGOCMLOct 30, 2024

Multi-fidelity Machine Learning for Uncertainty Quantification and Optimization

arXiv:2410.23482v19 citationsh-index: 12J Mach Learn Model Comput
Originality Synthesis-oriented
AI Analysis

It addresses the challenge of balancing computational cost and accuracy in system analysis and design optimization for engineers and researchers, but is incremental as it reviews existing methods.

This perspective paper provides an overview of machine learning-based multi-fidelity methods for uncertainty quantification and optimization, highlighting current state-of-the-art approaches and identifying research gaps.

In system analysis and design optimization, multiple computational models are typically available to represent a given physical system. These models can be broadly classified as high-fidelity models, which provide highly accurate predictions but require significant computational resources, and low-fidelity models, which are computationally efficient but less accurate. Multi-fidelity methods integrate high- and low-fidelity models to balance computational cost and predictive accuracy. This perspective paper provides an in-depth overview of the emerging field of machine learning-based multi-fidelity methods, with a particular emphasis on uncertainty quantification and optimization. For uncertainty quantification, a particular focus is on multi-fidelity graph neural networks, compared with multi-fidelity polynomial chaos expansion. For optimization, our emphasis is on multi-fidelity Bayesian optimization, offering a unified perspective on multi-fidelity priors and proposing an application strategy when the objective function is an integral or a weighted sum. We highlight the current state of the art, identify critical gaps in the literature, and outline key research opportunities in this evolving field.

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