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A Neural Network Approach for Solving a Class of Fractional Optimal Control Problems

机译:求解一类分数最优控制问题的神经网络方法

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In this paper the perceptron neural networks are applied to approximate the solution of fractional optimal control problems. The necessary (and also sufficient in most cases) optimality conditions are stated in a form of fractional two-point boundary value problem. Then this problem is converted to a Volterra integral equation. By using perceptron neural network's ability in approximating a nonlinear function, first we propose approximating functions to estimate control, state and co-state functions which they satisfy the initial or boundary conditions. The approximating functions contain neural network with unknown weights. Using an optimization approach, the weights are adjusted such that the approximating functions satisfy the optimality conditions of fractional optimal control problem. Numerical results illustrate the advantages of the method.
机译:本文将感知器神经网络应用于分数最优控制问题的近似解。以分数两点边界值问题的形式陈述了必要的(在大多数情况下也是足够的)最优条件。然后将此问题转换为Volterra积分方程。通过使用感知器神经网络逼近非线性函数的能力,我们首先提出逼近函数,以估计满足初始或边界条件的控制,状态和共态函数。逼近函数包含权重未知的神经网络。使用优化方法,调整权重,以使逼近函数满足分数最优控制问题的最优条件。数值结果说明了该方法的优点。

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