The Possibility of Neural Network Approach to Solve Singular Perturbed Problems

Jee-Hyun Kim, Young-Im Cho
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Abstract

Recentlly neural network approach for solving a singular perturbed integro-differential boundary value problem have been researched. Especially the model of the feed-forward neural network to be trained by the back propagation algorithm with various learning algorithms were theoretically substantiated, and neural network models such as deep learning, transfer learning, federated learning are very rapidly evolving. The purpose of this paper is to study the approaching method for developing a neural network model with high accuracy and speed for solving singular perturbed problem along with asymptotic methods. In this paper, we propose a method that the simulation for the difference between result value of singular perturbed problem and unperturbed problem by using neural network approach equation. Also, we showed the efficiency of the neural network approach. As a result, the contribution of this paper is to show the possibility of simple neural network approach for singular perturbed problem solution efficiently.
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神经网络方法求解奇异摄动问题的可能性
近年来研究了求解奇异摄动积分微分边值问题的神经网络方法。特别是用反向传播算法训练的前馈神经网络模型与各种学习算法在理论上得到了证实,深度学习、迁移学习、联邦学习等神经网络模型的发展非常迅速。本文的目的是研究用渐近方法建立求解奇异摄动问题的高精度、快速的神经网络模型的逼近方法。本文提出了一种用神经网络逼近方程模拟奇异摄动问题与非摄动问题结果值之差的方法。此外,我们还展示了神经网络方法的有效性。因此,本文的贡献在于展示了简单神经网络方法有效求解奇异摄动问题的可能性。
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