基于DDIM混合加速采样的飞行器布局生成式设计方法OA
DDIM-based hybrid accelerated sampling method for generative design of aircraft configuration
针对基于点云扩散模型的飞行器三维气动布局设计中采样迭代次数多、计算耗时长的问题,本研究引入了去噪隐式扩散模型(denoising diffusion implicitmodels,DDIM)快速采样方法,以显著减少采样迭代次数.该方法利用非马尔可夫跳步机制,在无需重新训练模型的前提下,当采样步数从 1000 步缩减至 50 步时,生成耗时降低 57.5%(从 30.32 s降至 12.89 s),而平均气动性能相对误差仅从 3.62%增至 8.52%.为进一步平衡生成速度、精度与多样性,本研究提出了一种"确定性-随机性"混合采样策略.该方法通过分析隐空间点云特征梯度的时间演化动态识别关键时间步,并利用分类器自适应调控不同关键性区域的噪声强度参数.实验结果表明:所提出的混合采样策略在50 步条件下,生成耗时在15 s以内,生成多样性达标率为 76.6%,气动性能误差<10%的达标率达到 73.3%,综合性能显著优于单一静态噪声强度采样.本研究成功将 DDIM 加速与动态噪声调控结合到飞行器布局生成的点云扩散模型中,有效提高了生成效率,实现了生成速度、精度与多样性的协同优化,为提高飞行器设计效率和降低设计成本奠定了基础.
Traditional aircraft configuration design faces significant efficiency challenges.This study addresses the critical bottleneck of slow sampling in point cloud diffusion models for generating 3D aerodynamic configurations under multidisciplinary constraints.We introduce the denoising diffusion implicit model(DDIM)acceleration strategy to substantially reduce the required sampling iterations,leveraging its non-Markovian skip-step mechanism without model retraining.Specifically,reducing the sampling steps from 1000 to 50 cuts the generation time by 57.5%(from 30.32 s to 12.89 s),while the average aerodynamic performance relative error increases only from 3.62%to 8.52%.To further optimize the balance between speed,accuracy,and diversity,we propose a novel"deterministic-stochastic"hybrid sampling strategy.This approach dynamically identifies critical timesteps by analyzing the temporal evolution of latent point cloud feature gradients and employs a trained classifier to adaptively modulate the noise strength parameter(η)across regions of varying criticality.Experimental validation demonstrates that the hybrid strategy operating at 50 steps delivers generation time below 15 s,achieves a 76.6%satisfaction rate for Coverage(COV,chamfer distance)below 10%,and attains a 73.3%satisfaction rate for aerodynamic performance error below 10%,outperforming static noise sampling.This work successfully integrates DDIM acceleration with dynamic noise regulation into a point cloud diffusion framework for aircraft configuration generation,effectively overcoming the sampling efficiency hurdle and enabling the rapid production of diverse,constraint-satisfying designs.Future efforts will focus on automating the optimization of the classifier and noise control parameters.
谢睿;舒博文;黄江涛;刘刚
中国空气动力研究与发展中心 空天技术研究所,绵阳 621000中国空气动力研究与发展中心 空天技术研究所,绵阳 621000||西北工业大学 航空学院,西安 710072中国空气动力研究与发展中心 空天技术研究所,绵阳 621000中国空气动力研究与发展中心 空天技术研究所,绵阳 621000
航空航天
飞行器设计扩散模型点云快速采样深度学习
aircraft designdiffusion modelpoint cloudrapid samplingdeep learning
《空气动力学学报》 2026 (5)
41-50,10
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