A new iterative technique for solving fractal-fractional differential equations based on artificial neural network in the new generalized Caputo sense

被引:0
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作者
A. M. Shloof
N. Senu
A. Ahmadian
M. Pakdaman
S. Salahshour
机构
[1] Universiti Putra Malaysia,Department of Mathematics and Statistics
[2] Universiti Putra Malaysia,Institute for Mathematical Research
[3] Al-Zintan University,Department of Mathematics, Faculty of Science
[4] Mediterranea University of Reggio Calabria,Department of Law, Economics and Human Sciences
[5] Near East University,Department of Mathematics
[6] Climatological Research Institute (CRI),Atmospheric Science and Meteorological Research Center (ASMERC)
[7] Bahcesehir University,Faculty of Engineering and Natural Sciences
来源
关键词
Artificial neural network; Fractal-fractional differential equations; Back-propagation learning algorithm; New generalized Caputo fractal-fractional derivative;
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摘要
This paper attempts to create an artificial neural networks (ANNs) technique for solving well-known fractal-fractional differential equations (FFDEs). FFDEs have the advantage of being able to help explain a variety of real-world physical problems. The technique implemented in this paper converts the original differential equation into a minimization problem using a suggested truncated power series of the solution function. Next, answer to the problem is obtained via computing the parameters with highly precise neural network model. We can get a good approximate solution of FFDEs by combining the initial conditions with the ANNs performance. Examples are provided to portray the efficiency and applicability of this method. Comparison with similar existing approaches are also conducted to demonstrate the accuracy of the proposed approach.
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页码:505 / 515
页数:10
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