Deformation simulation based on model reduction with rigidity-guided sampling

被引:0
作者
Shuo-Ting Chien
Chen-Hui Hu
Cheng-Yang Huang
Yu-Ting Tsai
Wen-Chieh Lin
机构
[1] National Chiao Tung University,Department of Computer Science, College of Computer Science
[2] Yuan Ze University,Department of Computer Science and Engineering
来源
The Visual Computer | 2018年 / 34卷
关键词
Deformation; Model reduction; Rigidity fields; Finite element method; Harmonic fields;
D O I
暂无
中图分类号
学科分类号
摘要
The deformation results of previous model reduction methods with external forces applied show noticeable differences from full-scale finite element method (FEM) simulation. We found that data-driven approaches, specifically proper orthogonal decomposition, can be a solution to this nonlinear deformation simulation problem in the subspace. Nevertheless, off-line FEM simulation with an infinite number of possible input forces at different locations makes it infeasible if no prior information is given. We propose rigidity-guided sampling to efficiently select the points of application of forces (force sample points) to construct more effective and compact subspace bases, thereby improving the simulation accuracy of reduced deformable models with applied external forces and still retaining fast run-time performance. The key idea of our approach is that distinct deformations of an object at different force sample points can be estimated prior to FEM simulation. By selecting the force sample points with distinct deformations, the computational cost of off-line FEM simulation can be reduced significantly. Our run-time deformation results are much closer to the full-scale FEM simulation with external forces applied, compared to the results of using only the modal derivative bases while the speedup over full-scale simulation is still substantial.
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页码:937 / 947
页数:10
相关论文
共 43 条
[1]  
An S(2008)Optimizing cubature for efficient integration of subspace deformations ACM Trans. Graph. 27 165:1-165:10
[2]  
Kim T(2000)An introduction to the proper orthogonal decomposition Curr. Sci. 78 808-817
[3]  
James D(2016)Toward real-time finite-element simulation on GPU IEEE Trans. Magn. 52 1-4
[4]  
Chatterjee A(2015)Structure-preserving, stability, and accuracy properties of the energy-conserving sampling and weighting method for the hyper reduction of nonlinear finite element dynamic models Int. J. Numer. Methods Eng. 102 1077-1110
[5]  
Dinh Q(1985)A reduction method for nonlinear structural dynamic analysis Comput. Methods Appl. Mech. Eng. 49 253-279
[6]  
Marechal Y(2002)DyRT: dynamic response textures for real time deformation simulation with graphics hardware ACM Trans. Graph. 21 582-585
[7]  
Farhat C(2003)Multiresolution green’s function methods for interactive simulation of large-scale elastostatic objects ACM Trans. Graph. 22 47-82
[8]  
Chapman T(2005)The method of proper orthogonal decomposition for dynamical characterization and order reduction of mechanical systems: an overview Nonlinear Dyn. 41 147-169
[9]  
Avery P(2001)Dimensional model reduction in non-linear finite element dynamics of solids and structures Int. J. Numer. Methods Eng. 51 479-504
[10]  
Idelsohn SR(2004)Interactive virtual materials Proc. Graph. Interface 2004 239-246