Department of Applied Mathematics, Faculty of Mathematical Sciences, payame noor University, Tehran, Iran.
10.22067/ijnao.2024.86494.1380
Abstract
Sinc numerical methods are essential approaches to solving nonlinear problems. In this work, based on this method, the sinc neural networks (SNNs) are designed and applied to solve the fractional optimal control problem (FOCP) in the sense of the Riemann–Liouville (RL) derivative. To solve the FOCP, we first approximate the RL derivative using Grunwald–Letnikov (GL) operators. Then, according to Pontryagin’s minimum principle (PMP) for FOCP and using an error function, we construct an unconstrained minimization problem. We approximate the solution of the ordinary differential equation obtained from the Hamiltonian condition using the sinc neural network. Simulation results show the efficiencies of the proposed approach.
Heydari Dastjerdi, R., & Ahmadi, G. (2024). Designing the sinc neural networks to solve the fractional optimal control problem. Iranian Journal of Numerical Analysis and Optimization, 14(Issue 4), 1016-1036. doi: 10.22067/ijnao.2024.86494.1380
MLA
Rasoul Heydari Dastjerdi; Ghasem Ahmadi. "Designing the sinc neural networks to solve the fractional optimal control problem", Iranian Journal of Numerical Analysis and Optimization, 14, Issue 4, 2024, 1016-1036. doi: 10.22067/ijnao.2024.86494.1380
HARVARD
Heydari Dastjerdi, R., Ahmadi, G. (2024). 'Designing the sinc neural networks to solve the fractional optimal control problem', Iranian Journal of Numerical Analysis and Optimization, 14(Issue 4), pp. 1016-1036. doi: 10.22067/ijnao.2024.86494.1380
VANCOUVER
Heydari Dastjerdi, R., Ahmadi, G. Designing the sinc neural networks to solve the fractional optimal control problem. Iranian Journal of Numerical Analysis and Optimization, 2024; 14(Issue 4): 1016-1036. doi: 10.22067/ijnao.2024.86494.1380
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