Title of article :
A Neural Network Method Based on Mittag-Leffler Function for Solving a Class of Fractional Optimal Control Problems
Author/Authors :
Ghasemi, S Faculty of Mathematical Sciences - Shahrood University of Technology, Shahrood , Nazemi, A.R Faculty of Mathematical Sciences - Shahrood University of Technology, Shahrood
Abstract :
In this paper, a computational intelligence method is used for solution of fractional
optimal control problems (FOCPs) with equality and inequality constraints. According to the Ponteryagin
minimum principle (PMP) for FOCP with fractional derivative in the Riemann- Liouville sense and
by constructing a suitable error function, we define an unconstrained minimization problem. In the
optimization problem, we use trial solutions for the states, Lagrange multipliers and control functions
where these trial solutions are constructed by a feed-forward neural network model. We then minimize
the error function using a numerical optimization scheme where weight parameters and biases associated
with all neurons are unknown. Examples are included to demonstrate the validity and capability of the
proposed method. The strength of the proposed method is its equal applicability for the integer-order
case as well as fractional order case. Another advantage of the presented approach is to provide results
on entire finite continuous domain unlike some other numerical methods which provide solutions only
on discrete grid of point.
Keywords :
Ponteryagin minimum principle , fractional optimal control problem , artificial neural network , equality and inequality constraints , optimization
Journal title :
Astroparticle Physics