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On the Efficiency of a Point Cloud Autoencoder as a Geometric Representation for Shape Optimization

机译:点云自动编码器作为几何优化形状优化的效率

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A crucial step for optimizing a system is to formulate the objective function, and part of it concerns the selection of the design parameters. One of the major goals is to achieve a fair trade-off between exploring feasible solutions in the design space and maintaining admissible computational effort. In order to achieve such balance in optimization problems with Computer Aided Engineering (CAE) models, the conventional constructive geometric representations are substituted by deformation methods, e.g. free form deformation, where the position of a few control points might be capable of handling large scale shape modifications. In light of the recent developments in the field of geometric deep learning, autoencoders have risen as a promising alternative for efficiently condensing high-dimensional models into compact representations. In this paper, we present a novel perspective on geometric deep learning modelsby exploring the applicability of the latent space of a point cloud autoencoder in shape optimization problems with evolutionary algorithms. Focusing on engineering applications, a target shape matching optimization is used as a surrogate to the computationally expensive CAE simulations required in engineering optimizations. Through the quality assessment of the solutions achieved in the optimization and further aspects, such as shape feasibility, point cloud autoencoders showed to be consistent and suitable geometric representations for such problems, adding a new perspective on the approaches for handling high-dimensional models to optimization tasks.
机译:优化系统的关键步骤是制定目标函数,其中一部分涉及设计参数的选择。主要目标之一是要在设计空间中探索可行的解决方案与维持可接受的计算工作之间取得公平的权衡。为了在计算机辅助工程(CAE)模型的优化问题中实现这种平衡,常规的构造几何表示由变形方法替代,例如,变形法。自由变形,其中几个控制点的位置可能能够处理大规模的形状修改。鉴于几何深度学习领域的最新发展,自动编码器已成为一种有前途的选择,可以将高维模型有效地压缩为紧凑的表示形式。在本文中,我们通过探索点云自动编码器的潜在空间在演化算法的形状优化问题中的适用性,提出了关于几何深度学习模型的新颖观点。专注于工程应用,目标形状匹配优化被用来替代工程优化中所需的计算量大的CAE仿真。通过对在优化及其他方面(例如形状可行性)中实现的解决方案的质量评估,点云自动编码器显示出一致且适用于此类问题的几何表示形式,从而为处理高维模型以进行优化提供了新视角任务。

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