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Solving Fractional Differential Equations by Using Triangle Neural Network

机译:使用三角形神经网络求解分数微分方程

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In this paper, numerical methods for solving fractional differential equations by using a triangle neural network are proposed. The fractional derivative is considered Caputo type. The fractional derivative of the triangle neural network is analyzed first. Then, based on the technique of minimizing the loss function of the neural network, the proposed numerical methods reduce the fractional differential equation into a gradient descent problem or the quadratic optimization problem. By using the gradient descent process or the quadratic optimization process, the numerical solution to the FDEs can be obtained. The efficiency and accuracy of the presented methods are shown by some numerical examples. Numerical tests show that this approach is easy to implement and accurate when applied to many types of FDEs.
机译:本文提出了一种通过使用三角形神经网络来解决分数微分方程的数值方法。 分数衍生物被认为是Caputo类型。 首先分析三角形神经网络的分数衍生。 然后,基于最小化神经网络的损耗功能的技术,所提出的数值方法将分数微分方程减少到梯度下降问题或二次优化问题中。 通过使用梯度下降过程或二次优化过程,可以获得对FDE的数值解决方案。 通过一些数值示例示出了所提出的方法的效率和准确性。 数值测试表明,当应用于许多类型的FDE时,这种方法易于实现和准确。

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