广东工业大学学报 ›› 2024, Vol. 41 ›› Issue (05): 111-118.doi: 10.12052/gdutxb.230121
张慧菁, 莫艳
Zhang Hui-jing, Mo Yan
摘要: 边值问题是方程问题中的一个热门领域,对常微分方程边值问题的研究已相当成熟。然而,当已知条件为离散点而非给定函数时如何求解边值问题仍有很大的研究空间。支持向量回归机是一种基于统计学习理论的机器学习方法,在逼近问题上有独特的优势,在经验风险最小化同时保证了泛化能力。因此,本文结合正则化、再生核理论和支持向量回归机对边值问题展开研究。将边值问题视为算子方程问题,利用再生核空间的性质得到方程解与已知条件的关系式,将问题转化为逼近问题后正则化为二次规划问题,然后利用支持向量回归机进行求解,最终得到一个由支持向量构成的稀疏解。通过Sobolev空间中的范数关系对所得数值解进行误差分析,给出了数值解与解析解的误差上界。以二阶三点边值问题为例,仅有离散值作为已知条件求解方程,实验结果表明该方法优于传统再生核方法和W-POAFD方法,验证了该方法的高精度和有效性。
中图分类号:
[1] ILIN V A, MOISEEV E I. Nonlocal boundary value of the first kind for a sturm-liouville operator in its differential and finite difference aspects [J]. Differential Equations, 1987, 23: 803-810. [2] MOHAMED M S, SEAID M, BOUHAMIDI A. Iterative solvers for generalized finite element solution of boundary value problems [J]. Numerical Linear Algebra with Applications, 2018, 25(6): e2205. [3] GEORGE K, TWIZELL E H. Stable second-order finite-difference methods for linear initial-boundary-value problems [J]. Applied Mathematics Letters, 2006, 19(2): 146-154. [4] GROZA G, POP N. Approximate solution of multipoint boundary value problems for linear differential equations by polynomial functions [J]. Journal of Difference Equations and Applications, 2008, 14(12): 1289-1309. [5] MCFALL K S, MAHAN J R. Artificial neural network method for solution of boundary value problems with exact satisfaction of arbitrary boundary conditions [J]. IEEE Transactions on Neural Networks, 2009, 20(8): 1221-1233. [6] BEIDOKHTI R S, MALEK A. Solving initial-boundary value problems for systems of partial differential equations using neural networks and optimization techniques [J]. Journal of the Franklin Institute, 2009, 346(9): 898-913. [7] CYBENKO G. Approximation by superpositions of a sigmoidal function [J]. Mathematics of Control, Signals and Systems, 1989, 2(4): 303-314. [8] CORTES C, VAPNIK V. Support-vector networks [J]. Machine Learning, 1995, 20: 273-297. [9] VAPNIK V, GOLOWICH S, SMOLA A. Support vector method for function approximation, regression estimation and signal processing [J]. Advances in Neural Information Processing Systems, 1996, 9: 281-287. [10] 富坤, 汪友华, 何平, 等. 应用支持向量机回归求解不规则边界边值问题[J]. 河北省科学院学报, 2005, 022(z1): 92-93. [11] MO Y, QIAN T. Support vector machine adapted tikhonov regularization method to solve dirichlet problem [J]. Applied Mathematics and Computation, 2014, 245: 509-519. [12] 王丹荣, 莫艳. 基于支持向量机的离散线性微分方程求解方法[J]. 广东工业大学学报, 2020, 37(2): 87-93. WANG D R, MO Y. Support vector machines based method to solve discrete linear differential equations [J]. Journal of Guangdong University of Technology, 2020, 37(2): 87-93. [13] LIN Y Z, NIU J, CUI M G. A numerical solution to nonlinear second order three-point boundary value problems in the reproducing kernel space [J]. Applied Mathematics and Computation, 2012, 218(14): 7362-7368. [14] LYU X Q, CUI M G. Existence and numerical method for nonlinear third-order boundary value problem in the reproducing kernel space [J]. Boundary Value Problems, 2010, 2010: 1-19. [15] CUI M G, LIN Y Z. Nonlinear numerical analysis in reproducing kernel space[M]. New York: Nova Science Publishers, Inc. , 2009. [16] GAO E, SONG S H, ZHANG X J. Solving singular second-order initial/boundary value problems in reproducing kernel hilbert space [J]. Boundary Value Problems, 2012(1): 1-11. [17] CASTRO L, SAITOH S, SAWANO Y, et al. Discrete linear differential equations [J]. International Mathematical Journal of Analysis & Its Applications, 2012, 32(3): 181-191. [18] CASTRO L P, SAITOH S, SAWANO Y, et al. General inhomogeneous discrete linear partial differential equations with constant coefficients on the whole spaces [J]. Complex Analysis and Operator Theory, 2012, 6(1): 307-324. [19] QIAN T. Reproducing kernel sparse representations in relation to operator equations [J]. Complex Analysis and Operator Theory, 2020, 14(2): 36. [20] BAI H F, LEONG I T, DANG P. Reproducing kernel representation of the solution of second order linear three-point boundary value problem [J]. Mathematical Methods in the Applied Sciences, 2022, 45(17): 11181-11205. [21] RIEGER C, ZWICKNAGL B. Deterministic error analysis of support vector regression and related regularized kernel methods [J]. Journal of Machine Learning Research, 2009, 10(9): 2115-2132. [22] BRENNER S C. The mathematical theory of finite element methods[M]. New York: Springer, 2008. [23] WENDLAND H, RIEGER C. Approximate interpolation with applications to selecting smoothing parameters [J]. Numerische Mathematik, 2005, 101: 729-748. |
[1] | 王丹荣, 莫艳. 基于支持向量机的离散线性微分方程求解方法[J]. 广东工业大学学报, 2020, 37(02): 87-93. |
[2] | 叶向荣, 刘怡俊, 陈云华, 熊炯涛. 基于L1/2自适应稀疏正则化的图像重建算法[J]. 广东工业大学学报, 2017, 34(06): 43-48. |
[3] | 蔡念, 李飞洋, 陈文杰, 陈伟建. 基于主成分分析与支持向量回归的精明增长建模与预测[J]. 广东工业大学学报, 2017, 34(05): 29-33. |
[4] | 仇治国; 彭世国; . 一阶脉冲微分方程周期边值问题的正解[J]. 广东工业大学学报, 2007, 24(1): 85-88. |
[5] | 王莉萍; . 超定椭圆型方程组的边值问题[J]. 广东工业大学学报, 2000, 17(1): 92-95. |
[6] | 田凤; 王莉萍; . 四维空间中退化椭圆型方程组的混合边值问题[J]. 广东工业大学学报, 1999, 16(3): 114-119. |
|