Optimization and Generation in Aerodynamics Inverse Design
AI 摘要
论文提出优化和引导生成方法,解决气动逆向设计中高维几何与昂贵仿真的挑战。
主要贡献
- 提出新的成本预测器训练损失
- 开发密度梯度优化方法
- 统一现有无训练引导生成方法
- 提出时间高效的近似协方差估计算法
方法论
结合优化和引导生成视角,改进成本预测,优化设计,并通过OpenFOAM和风洞实验验证。
原文摘要
Inverse design with physics-based objectives is challenging because it couples high-dimensional geometry with expensive simulations, as exemplified by aerodynamic shape optimization for drag reduction. We revisit inverse design through two canonical solutions, the optimal design point and the optimal design distribution, and relate them to optimization and guided generation. Building on this view, we propose a new training loss for cost predictors and a density-gradient optimization method that improves objectives while preserving plausible shapes. We further unify existing training-free guided generation methods. To address their inability to approximate conditional covariance in high dimensions, we develop a time- and memory-efficient algorithm for approximate covariance estimation. Experiments on a controlled 2D study and high-fidelity 3D aerodynamic benchmarks (car and aircraft), validated by OpenFOAM simulations and miniature wind-tunnel tests with 3D-printed prototypes, demonstrate consistent gains in both optimization and guided generation. Additional offline RL results further support the generality of our approach.