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Design Collocation Neural Network to Solve Singular Perturbation Problems for Partial Differential Equations

机译:设计搭配神经网络解决偏微分方程奇摄动问题

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he aim of this paper is to design neural network to present a method to solve Singular perturbation problems (SPP) for Partial Differential Equations (PDE’s) with initial and boundary conditions by using network having one hidden layer with 5 hidden units (neurons) and one linear output unit, the sigmoid activation of each hidden units is tansigmoid. The neural network trained by the back propagation with different algorithms such as quasi-Newton, Levenberg-Marquardt, and Bayesian Regulation. Finally the results of numerical experiments are compared with the exact solution in illustrative examples to confirm the accuracy and efficiency of the presented scheme.
机译:他的目的是设计一种神经网络,以提出一种方法,该方法通过使用具有一个具有5个隐藏单元(神经元)和一个隐藏单元的隐藏层的网络来解决具有初始和边界条件的偏微分方程(PDE)的奇异摄动问题(SPP)。线性输出单元中,每个隐藏单元的S形激活都是tansigmoid。通过反向传播使用不同的算法(如拟牛顿算法,Levenberg-Marquardt算法和贝叶斯规则)对神经网络进行训练。最后,将数值实验的结果与示例性例子中的精确解进行比较,以确认所提出方案的准确性和效率。

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