LGFeb 26, 2024

A Multi-Fidelity Methodology for Reduced Order Models with High-Dimensional Inputs

arXiv:2402.17061v1h-index: 46
Originality Incremental advance
AI Analysis

This addresses computational efficiency problems for aerospace engineers, though it appears incremental as it builds on existing ROM techniques.

This study tackles the challenge of high-dimensional inputs in reduced order models for aerospace design by introducing a novel multi-fidelity framework, achieving a 50% improvement over existing methods in handling large input dimensions and offering better cost-accuracy benefits.

In the early stages of aerospace design, reduced order models (ROMs) are crucial for minimizing computational costs associated with using physics-rich field information in many-query scenarios requiring multiple evaluations. The intricacy of aerospace design demands the use of high-dimensional design spaces to capture detailed features and design variability accurately. However, these spaces introduce significant challenges, including the curse of dimensionality, which stems from both high-dimensional inputs and outputs necessitating substantial training data and computational effort. To address these complexities, this study introduces a novel multi-fidelity, parametric, and non-intrusive ROM framework designed for high-dimensional contexts. It integrates machine learning techniques for manifold alignment and dimension reduction employing Proper Orthogonal Decomposition (POD) and Model-based Active Subspace with multi-fidelity regression for ROM construction. Our approach is validated through two test cases: the 2D RAE~2822 airfoil and the 3D NASA CRM wing, assessing combinations of various fidelity levels, training data ratios, and sample sizes. Compared to the single-fidelity PCAS method, our multi-fidelity solution offers improved cost-accuracy benefits and achieves better predictive accuracy with reduced computational demands. Moreover, our methodology outperforms the manifold-aligned ROM (MA-ROM) method by 50% in handling scenarios with large input dimensions, underscoring its efficacy in addressing the complex challenges of aerospace design.

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