Author:
Ye Yinlin,Li Yajing,Fan Hongtao,Liu Xinyi,Zhang Hongbing
Abstract
<abstract><p>In this paper, we introduce a shifted Legendre neural network method based on an extreme learning machine algorithm (SLeNN-ELM) to solve fractional differential equations with constant and proportional delays. Based on the properties of Caputo fractional derivatives and shifted Legendre polynomials, the fractional derivatives of SLeNN can be represented analytically without other numerical techniques. SLeNN, in terms of neural network architecture, uses a function expansion block to replace the hidden layer, and thus improving the computational efficiency by reducing parameters. In terms of solving technology of neural networks, the extreme learning machine algorithm is used to replace the traditional gradient-based training algorithm. It dramatically improves our solution efficiency. In addition, the proposed method does not require parameter initialization randomly, making the neural network solution stable. Finally, three examples with constant delays and three examples with proportional delays are given, and the effectiveness and superiority of the proposed method are verified by comparison with other numerical methods.</p></abstract>
Publisher
American Institute of Mathematical Sciences (AIMS)
Subject
Applied Mathematics,Computer Science Applications,General Engineering,Statistics and Probability
Reference45 articles.
1. C. T. Baker, C. A. Paul, D. R. Willé, Issues in the numerical solution of evolutionary delay differential equations, Adv. Comput. Math, 3 (1995), 171–196. https://doi.org/10.1007/BF02988625
2. R. D. Driver, Ordinary and delay differential equations, New York: Springer, 2012.
3. Y. Kuang, Delay Differential Equations with Applications in Population Dynamics, New York: Academic Press, 1993.
4. J. N. Luo, W. H. Tian, S. M. Zhong, K. B. Shi, X. M. Gu, W. Q. Wang, Improved delay-probability-dependent results for stochastic neural networks with randomly occurring uncertainties and multiple delays, Int. J. Syst. Sci., 49 (2018), 2039–2059. https://doi.org/10.1080/00207721.2018.1483044
5. H. Singh, A new numerical algorithm for fractional model of Bloch equation in nuclear magnetic resonance, Alex. Eng. J., 55 (2016), 2863–2869. https://doi.org/10.1016/j.aej.2016.06.032
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