Model reduction technique for mechanical behaviour modelling: Efficiency criteria and validity domain assessment
暂无分享,去创建一个
[1] D. W. Scharpf,et al. On the geometrical stiffness of a beam in space—a consistent V.W. approach , 1979 .
[2] M. Lefik,et al. Artificial neural network as an incremental non-linear constitutive model for a finite element code , 2003 .
[3] Mark A. Ganter,et al. Real-time finite element modeling for surgery simulation: an application to virtual suturing , 2004, IEEE Transactions on Visualization and Computer Graphics.
[4] Sven Klinkel,et al. Using finite strain 3D‐material models in beam and shell elements , 2002 .
[5] R. Guyan. Reduction of stiffness and mass matrices , 1965 .
[6] P. Beran,et al. Reduced-order modeling: new approaches for computational physics , 2004 .
[7] J. N. Reddy,et al. A corotational finite element formulation for the analysis of planar beams , 2005 .
[8] Andrew J. Meade,et al. The numerical solution of linear ordinary differential equations by feedforward neural networks , 1994 .
[9] Wang Wei,et al. On the estimation of the large deflection of a cantilever beam , 1993, Proceedings of IECON '93 - 19th Annual Conference of IEEE Industrial Electronics.
[10] F. Filippou,et al. Mixed formulation of nonlinear beam finite element , 1996 .
[11] The cantilevered beam: an analytical solution for general deflections of linear-elastic materials , 2006 .
[12] Michal Rewienski,et al. A trajectory piecewise-linear approach to model order reduction of nonlinear dynamical systems , 2003 .
[13] Dimitrios I. Fotiadis,et al. Artificial neural networks for solving ordinary and partial differential equations , 1997, IEEE Trans. Neural Networks.
[14] T. Low,et al. The use of finite elements and neural networks for the solution of inverse electromagnetic problems , 1992, 1992. Digests of Intermag. International Magnetics Conference.
[15] Igor N. Nikitin,et al. Real-time simulation of elastic objects in Virtual Environments using finite element method and precomputed Green s functions , 2002, EGVE.
[16] C. L. Philip Chen,et al. A rapid supervised learning neural network for function interpolation and approximation , 1996, IEEE Trans. Neural Networks.
[17] Kazufumi Kaneda,et al. Direct solution method for finite element analysis using Hopfield neural network , 1995 .
[18] Michel Tollenaere,et al. Information structuring for use and reuse of mechanical analysis models in engineering design , 1999, J. Intell. Manuf..
[19] Jens Kalkkuhl,et al. FEM-based neural-network approach to nonlinear modeling with application to longitudinal vehicle dynamics control , 1999, IEEE Trans. Neural Networks.
[20] Debasish Roy,et al. Techniques based on genetic algorithms for large deflection analysis of beams , 2004 .
[21] Fabrice Ville,et al. Experimental and Numerical Investigations on the Air-Pumping Phenomenon in High-Speed Spur and Helical Gears , 2005 .
[22] Kurt Hornik,et al. Multilayer feedforward networks are universal approximators , 1989, Neural Networks.
[23] Christian Laugier,et al. Physically realistic simulation of large deformations using LEM for interactive applications , 2002, IEEE/RSJ International Conference on Intelligent Robots and Systems.
[24] R. Taylor. The Finite Element Method, the Basis , 2000 .
[25] Giovanna Castellano,et al. A neuro-fuzzy model reduction strategy , 1997, Proceedings of International Conference on Neural Networks (ICNN'97).
[26] K. Martini. A PARTICLE-SYSTEM APPROACH TO REAL-TIME NON-LINEAR ANALYSIS , 2002 .
[27] Todd K. Leen,et al. Fast nonlinear dimension reduction , 1993, IEEE International Conference on Neural Networks.
[28] Leonard Ziemiański,et al. Neural networks in mechanics of structures and materials – new results and prospects of applications , 2001 .
[29] Mingui Sun,et al. Solving partial differential equations in real-time using artificial neural network signal processing as an alternative to finite-element analysis , 2003, International Conference on Neural Networks and Signal Processing, 2003. Proceedings of the 2003.
[30] Ralf Rabaetje,et al. Real-time simulation of deformable objects for assembly simulations , 2003 .
[31] George A. Hazelrigg,et al. On the role and use of mathematical models in engineering design , 1999 .
[32] Glaucio H. Paulino,et al. Nonlinear Finite Element Analysis using an Object-Oriented Philosophy – Application to Beam Elements and to the Cosserat Continuum , 1999, Engineering with Computers.
[33] Frédéric Boyer,et al. Finite element of slender beams in finite transformations: a geometrically exact approach , 2004 .
[34] L. C. Schmidt,et al. Closed-form solution for the Timoshenko beam theory using a computer-based mathematical package , 1995 .
[35] C. Neipp,et al. Large and small deflections of a cantilever beam , 2002 .
[36] R. V. Patel,et al. A counter-propagation neural network for function approximation , 1990, 1990 IEEE International Conference on Systems, Man, and Cybernetics Conference Proceedings.
[37] Qi Jing,et al. Large-Deflection Beam Model for Schematic-Based Behavioral Simulation in NODAS , 2002 .
[38] Mauro J. Atalla,et al. Model updating using neural networks , 1996 .
[39] Y. H. Kim,et al. A predictor algorithm for fast geometrically-nonlinear dynamic analysis , 2003 .
[40] Janko Slavič,et al. Non-linearity and non-smoothness in multi-body dynamics: Application to woodpecker toy , 2006 .
[41] Salvatore Coco,et al. A multilayer perceptron neural model for the differentiation of Laplacian 3-D finite-element solutions , 2003 .
[42] Shuixiang Li,et al. Global flexibility simulation and element stiffness simulation in finite element analysis with neural network , 2000 .
[43] Filip C. Filippou,et al. Non-linear spatial Timoshenko beam element with curvature interpolation , 2001 .
[44] Siak Piang Lim,et al. A neural-network-based method of model reduction for the dynamic simulation of MEMS , 2001 .
[45] Qingxin Yang,et al. The use of neural networks combined with FEM to optimize the coil geometry and structure of transverse flux induction equipments , 2004 .
[46] Geoffrey E. Hinton,et al. NeuroAnimator: fast neural network emulation and control of physics-based models , 1998, SIGGRAPH.
[47] Terence D. Sanger,et al. A tree-structured adaptive network for function approximation in high-dimensional spaces , 1991, IEEE Trans. Neural Networks.
[48] Michael A. Arbib,et al. The handbook of brain theory and neural networks , 1995, A Bradford book.
[49] Andrew J. Meade,et al. Solution of nonlinear ordinary differential equations by feedforward neural networks , 1994 .
[50] Gary R. Consolazio. Iterative Equation Solver for Bridge Analysis Using Neural Networks , 2000 .
[51] Guido Bugmann,et al. NEURAL NETWORK DESIGN FOR ENGINEERING APPLICATIONS , 2001 .
[52] Kin Keung Lai,et al. An integrated data preparation scheme for neural network data analysis , 2006, IEEE Transactions on Knowledge and Data Engineering.
[53] Alan J. Cartwright,et al. Interactive prototyping—a challenge for computer based design , 1997 .
[54] Daniel Svozil,et al. Introduction to multi-layer feed-forward neural networks , 1997 .
[55] Kuo Mo Hsiao,et al. Nonlinear finite element analysis of elastic frames , 1987 .
[56] J. N. Reddy,et al. Unified finite elements based on the classical and shear deformation theories of beams and axisymmetric circular plates , 1997 .