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Neural network algorithm based on Legendre improved extreme learning machine for solving elliptic partial differential equations

机译:基于Legendre改进的极端学习机的神经网络算法求解椭圆偏微分方程

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摘要

To provide a new numerical algorithm for solving elliptic partial differential equations (PDEs), the Legendre neural network (LNN) and improved extreme learning machine (IELM) algorithm are introduced to propose a Legendre improved extreme learning machine (L-IELM) method, which is applied to solving elliptic PDEs in this paper. The product of two Legendre polynomials is chosen as basis functions of hidden neurons. Single hidden layer LNN is used to construct approximate solutions and its derivatives of differential equations. IELM algorithm is used for network weights training, and the algorithm steps of the proposed L-IELM method are summarized. Finally, in order to evaluate the present algorithm, various test examples are selected and solved by the proposed approach to validate the calculation accuracy. Comparative study with the earlier methods in literature is described to verify the superiority of the presented L-IELM method. Experiment results show that the proposed L-IELM algorithm can perform well in terms of accuracy and execution time, which in addition provides a new algorithm for solving elliptic PDEs.
机译:为了提供一种用于求解椭圆部分微分方程(PDE)的新数值算法,引入了Legendre神经网络(LNN)和改进的极限学习机(IELM)算法,提出了一种Legendre改进的极限学习机(L-IELM)方法,该方法应用于本文求解椭圆形PDE。选择了两个legendre多项式的产物作为隐藏神经元的基函数。单个隐藏层LNN用于构建差分方程的近似解及其衍生物。 IELM算法用于网络权重训练,概述了所提出的L-IELM方法的算法步骤。最后,为了评估本算法,通过所提出的方法选择和解决各种测试示例以验证计算精度。描述了与文献中早期方法的比较研究,以验证所呈现的L-IELM方法的优越性。实验结果表明,所提出的L-IELM算法可以在准确性和执行时间方面表现良好,这增加了一种求解椭圆PDE的新算法。

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