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An Isogeometric Cloth Simulation Based on Fast Projection Method
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作者 Xuan Peng Chao Zheng 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第3期1837-1853,共17页
A novel continuum-based fast projection scheme is proposed for cloth simulation.Cloth geometry is described by NURBS,and the dynamic response is modeled by a displacement-only Kirchhoff-Love shell element formulated d... A novel continuum-based fast projection scheme is proposed for cloth simulation.Cloth geometry is described by NURBS,and the dynamic response is modeled by a displacement-only Kirchhoff-Love shell element formulated directly on NURBS geometry.The fast projection method,which solves strain limiting as a constrained Lagrange problem,is extended to the continuum version.Numerical examples are studied to demonstrate the performance of the current scheme.The proposed approach can be applied to grids of arbitrary topology and can eliminate unrealistic over-stretching efficiently if compared to spring-based methodologies. 展开更多
关键词 Cloth simulation isogeometric analysis strain limiting fast projection
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A Fast Algorithm for Training Large Scale Support Vector Machines
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作者 Mayowa Kassim Aregbesola Igor Griva 《Journal of Computer and Communications》 2022年第12期1-15,共15页
The manuscript presents an augmented Lagrangian—fast projected gradient method (ALFPGM) with an improved scheme of working set selection, pWSS, a decomposition based algorithm for training support vector classificati... The manuscript presents an augmented Lagrangian—fast projected gradient method (ALFPGM) with an improved scheme of working set selection, pWSS, a decomposition based algorithm for training support vector classification machines (SVM). The manuscript describes the ALFPGM algorithm, provides numerical results for training SVM on large data sets, and compares the training times of ALFPGM and Sequential Minimal Minimization algorithms (SMO) from Scikit-learn library. The numerical results demonstrate that ALFPGM with the improved working selection scheme is capable of training SVM with tens of thousands of training examples in a fraction of the training time of some widely adopted SVM tools. 展开更多
关键词 SVM Machine Learning Support Vector Machines FISTA fast Projected Gradient Augmented Lagrangian Working Set Selection DECOMPOSITION
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