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[ARTICLE · art-58248] src=arxiv.org ↗ pub= topic=machine-learning verified=true sentiment=↑ positive

Knowledge-Constrained Shape Optimization with a Mixture-of-Experts Neural Operator for High-Confidence Design

Researchers proposed a knowledge-constrained shape-optimization framework using a Mixture-of-Experts Neural Operator (MoE-NO) for aerodynamic design, achieving up to 10% drag reduction in vehicle shape optimization. The framework translates expert constraints into quantifiable parameters and uses uncertainty estimation to improve surrogate model reliability.

read1 min views1 publishedJul 14, 2026

arXiv:2607.09763v1 Announce Type: new Abstract: Engineering shape optimization faces challenges in both expert-dependent problem setup and surrogate-model reliability. In practical aerodynamic design, optimization settings such as editable regions, deformation ranges, and design-preservation constraints are typically specified manually by experienced engineers, while surrogate-based optimization may become unreliable for heterogeneous geometry databases and out-of-distribution designs. To address these challenges, we propose a knowledge-constrained shape-optimization framework that translates knowledge-based constraints and user intent into quantifiable parameters of DFFD-based deformation operators, enabling engineering-aware and controllable constrained optimization. We further develop a Mixture-of-Experts Neural Operator (MoE-NO) to improve drag prediction and trend consistency over heterogeneous aerodynamic datasets. Based on the MoE-NO encoder and Mahalanobis distance, an uncertainty-estimation strategy is introduced to detect out-of-distribution geometries and selectively trigger physics-solver feedback for local sample enrichment. Experiments on in-house MPV, SUV, and Sedan datasets show that MoE-NO achieves a test-set MAPE of $1.16%$ and a trend-prediction accuracy of $94.34%$, outperforming the best baseline results of $1.52%$ and $90.34%$, respectively. Vehicle shape-optimization experiments further yield CFD-validated drag coefficient reductions of approximately $4%$ to $10%$.

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