Ordinary differential equations solution in kernel space

被引:0
作者
Hadi Sadoghi Yazdi
Hamed Modaghegh
Morteza Pakdaman
机构
[1] Ferdowsi University of Mashhad,Engineering Department
[2] Islamic Azad University,Sama Technical and Vocational Training College
来源
Neural Computing and Applications | 2012年 / 21卷
关键词
Least mean square; Kernel least mean square; Ordinary differential equation; BFGS algorithm;
D O I
暂无
中图分类号
学科分类号
摘要
This paper presents a new method based on the use of an optimization approach along with kernel least mean square (KLMS) algorithm for solving ordinary differential equations (ODEs). The new approach in comparison with the other existing methods (such as numerical methods and the methods that are based on neural networks) has more advantages such as simple implementation, fast convergence, and also little error. In this paper, we use the ability of KLMS in prediction by applying an optimization method to predict the solution of ODE. The basic idea is that first a trial solution of the ODE is written by using the KLMS structure, and then by defining an error function and minimizing it via an optimization algorithm (in this paper, we used the quasi-Newton BFGS method), the parameters of KLMS are adjusted such that the trial solution satisfies the DE. After the optimization step, the achieved optimal parameters of the KLMS model are replaced in the trial solution. The accuracy of the method is illustrated by solving several problems.
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页码:79 / 85
页数:6
相关论文
共 42 条
  • [1] Girosi F(1995)Regularization theory and neural networks architectures Neural Comput 7 219-269
  • [2] Jones M(1998)Nonlinear component analysis as a kernel eigenvalue problem Neural Comput 10 1299-1319
  • [3] Poggio T(2002)Kernel independent component analysis J Mach Learn Res 3 1-48
  • [4] Scholkopf B(2008)The kernel least mean square algorithm IEEE Trans Signal Process 56 543-554
  • [5] Smola A(1998)Artificial neural network for solving ordinary and partial differential equations IEEE Trans Neural Netw 9 987-1000
  • [6] Muller KR(1989)Multilayer feedforward networks are universal approximators Neural Netw 2 359-366
  • [7] Bach FR(2004)Modeling the dynamics of nonlinear partial differential equations using neural networks J Comput Appl Math 170 27-58
  • [8] Jordan MI(2000)Multilayer neural networks for solving a class of partial differential equations Neural Netw 13 385-396
  • [9] Liu W(2005)Neural network time series forecasting of finite-element mesh adaptation Neurocomputing 63 447-463
  • [10] Pokharel P(2002)Novel determination of differential-equation solutions: universal approximation method J Comput Appl Math 146 443-457