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首页> 外文期刊>Neural processing letters >Legendre Neural Network Method for Several Classes of Singularly Perturbed Differential Equations Based on Mapping and Piecewise Optimization Technology
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Legendre Neural Network Method for Several Classes of Singularly Perturbed Differential Equations Based on Mapping and Piecewise Optimization Technology

机译:基于映射和分段优化技术的若干奇异扰动微分方程的Legendre神经网络方法

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摘要

In this paper, we develop a novel neural network model with mapping and piecewise optimization technology for several classes of the linear singularly perturbed initial value and boundary value differential equations with variable coefficients. First, the Legendre polynomials are selected as the activation function of the artificial neural network, the mapping technology is employed to transform the original uniform partition points and the piecewise optimization technology is used to improve the calculation accuracy. Then, the solution of the linear singularly perturbed differential equations is solved by using the extreme learning machine optimization algorithm. Finally, the numerical experiments show that the developed method can effectively improve the accuracy of the calculation.
机译:在本文中,我们开发了一种具有映射和分段优化技术的新型神经网络模型,用于多种具有变系数的线性奇异扰动的初始值和边界值差分方程的映射和分段优化技术。首先,选择图例多项式作为人工神经网络的激活功能,采用映射技术来改变原始统一分区点,分段优化技术用于提高计算精度。然后,通过使用极端学习机优化算法来解决线性奇异扰动的微分方程的解决方案。最后,数值实验表明,开发方法可以有效地提高计算的准确性。

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