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Multilayer perceptron neural networks with novel unsupervised training method for numerical solution of the partial differential equations

机译:具有新型无监督训练方法的多层感知器神经网络用于偏微分方程数值解

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摘要

In this paper by using MultiLayer Perceptron and Radial Basis Function (RBF) neural networks, a novel method for solving both kinds of differential equation, ordinary and partial differential equation, is presented. From the differential equation and its boundary conditions, the energy function of the network is prepared which is used in the unsupervised training method to update the network parameters. This method was implemented to solve the nonlinear Schrodinger equation in hydrogen atom and triangle-shaped quantum well. Comparison of this method results with analytical solution and two well-known numerical methods, Runge-kutta and finite element, shows the efficiency of Neural Networks with high accuracy, fast convergence and low use of memory for solving the differential equations.
机译:本文利用多层感知器和径向基函数神经网络,提出了一种同时求解常微分方程和偏微分方程的新方法。根据微分方程及其边界条件,准备了网络的能量函数,将其用于无监督训练方法中以更新网络参数。该方法用于求解氢原子和三角形量子阱中的非线性薛定inger方程。将该方法的结果与解析解以及两个著名的数值方法(Runge-kutta和有限元)进行比较,显示了神经网络的高效性,该方法具有较高的精度,快速收敛性和较少的内存来求解微分方程。

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