New numerical approximation for solving fractional delay differential equations of variable order using artificial neural networks

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作者
C. J. Zúñiga-Aguilar
A. Coronel-Escamilla
J. F. Gómez-Aguilar
V. M. Alvarado-Martínez
H. M. Romero-Ugalde
机构
[1] Interior Internado Palmira S/N,Tecnológico Nacional de México/CENIDET
[2] Col. Palmira,CONACyT
[3] Interior Internado Palmira S/N,Tecnológico Nacional de México/CENIDET
[4] Col. Palmira,undefined
[5] Univ. Grenoble Alpes,undefined
[6] CEA LETI MINATEC Campus,undefined
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摘要
In this paper, we approximate the solution of fractional differential equations with delay using a new approach based on artificial neural networks. We consider fractional differential equations of variable order with the Mittag-Leffler kernel in the Liouville-Caputo sense. With this new neural network approach, an approximate solution of the fractional delay differential equation is obtained. Synaptic weights are optimized using the Levenberg-Marquardt algorithm. The neural network effectiveness and applicability were validated by solving different types of fractional delay differential equations, linear systems with delay, nonlinear systems with delay and a system of differential equations, for instance, the Newton-Leipnik oscillator. The solution of the neural network was compared with the analytical solutions and the numerical simulations obtained through the Adams-Bashforth-Moulton method. To show the effectiveness of the proposed neural network, different performance indices were calculated.
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