Point cloud data are widely used in manufacturing applications for process inspection, modeling, monitoring and optimization. The state-of-art tensor regression techniques have effectively been used for analysis of structured point cloud data, where the measurements on a uniform grid can be formed into a tensor. However, these techniques are not capable of handling unstructured point cloud data that are often in the form of manifolds. In this paper, we propose a nonlinear dimension reduction approach named Maximum Covariance Unfolding Regression that is able to learn the low-dimensional (LD) manifold of point clouds with the highest correlation with explanatory covariates. This LD manifold is then used for regression modeling and process optimization based on process variables. The performance of the proposed method is subsequently evaluated and compared with benchmark methods through simulations and a case study of steel bracket manufacturing.
翻译:点云数据广泛应用于制造应用中的过程检查、建模、监控和优化。最先进的张量回归技术已经有效地用于结构化点云数据的分析,其中在统一网格上的测量可以形成张量。然而,这些技术无法处理通常以流形形式出现的非结构化点云数据。在本文中,我们提出了一种名为最大协方差展示回归的非线性降维方法,它能够学习与解释协变量具有最高相关性的点云的低维流形。然后,将该低维流形用于基于过程变量的回归建模和过程优化。随后通过模拟和钢制支架制造的案例研究评估和比较了所提出的方法的性能。