ArXiv TLDR

Multi-fidelity surrogates for mechanics of composites: from co-kriging to multi-fidelity neural networks

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2605.02871

Haizhou Wen, Elham Kiyani, Gang Li, Srikanth Pilla, George Em Karniadakis + 1 more

physics.comp-phcs.LG

TLDR

This review surveys multi-fidelity surrogate models, from co-Kriging to neural networks, for efficient and accurate prediction in composite mechanics.

Key contributions

  • Surveys multi-fidelity models (co-Kriging, neural networks) for composite mechanics.
  • Compares models based on cross-fidelity correlation, discrepancy, uncertainty, and scalability.
  • Details applications in material design exploration, inverse optimization, and workflow integration.
  • Discusses challenges like fidelity gaps, simulation-experiment mismatches, and uncertainty propagation.

Why it matters

Predictive modeling of composites is expensive due to their complex, hierarchical properties. Multi-fidelity surrogates offer a solution by combining cheap, abundant data with limited high-accuracy data for reliable predictions. This review helps researchers navigate these methods for efficient composite design and analysis.

Original Abstract

Composite materials exhibit strongly hierarchical and anisotropic properties governed by coupled mechanisms spanning constituents, plies, laminates, structures, and manufacturing history. This intrinsic complexity makes predictive modeling of composites expensive, because repeated experiments and high-fidelity simulations are needed to cover large design spaces of material, structure, and manufacturing. Multi-fidelity surrogate modeling addresses this challenge by combining abundant, less expensive data with limited high-accuracy data to recover reliable high-fidelity predictions. This review presents a structured overview of multi-fidelity modeling for composite mechanics, covering Gaussian-process or Kriging-based methods, including co-Kriging, coregionalization models, autoregressive formulations, nonlinear autoregressive Gaussian processes, multi-fidelity deep Gaussian processes, and multi-fidelity neural networks. Their distinctions are examined in terms of cross-fidelity correlation, discrepancy representation, uncertainty quantification, and scalability. Selected examples of their applications to composites are introduced according to the roles that multi-fidelity surrogates play in engineering problems, including forward prediction for rapid exploration of material design spaces, inverse optimization for composite parameter identification and design search under limited high-fidelity access, and workflow integration, where heterogeneous data sources, constraints, and validation requirements determine model utility. Open question discussions highlight recurring challenges specific to composites, such as regime-dependent fidelity gaps associated with nonlinear damage and manufacturing history, mismatches between simulations and experiments, and uncertainty propagation across multi-fidelity models.

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