Investigation of the Evolutionary Optimization Algorithms for the Neural Network Solution of the Optimal Control Problems

I. Bolodurina, L. Zabrodina
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Abstract

In this paper, we consider the neural network approach to solving optimal control problems with mixed constraints at the stage of optimization of the functional approximations through evolutionary algorithms. Based on the necessary optimality conditions and the Lagrange multiplier method, the initial optimal control problem is reduced to a nonlinear optimization problem and the corresponding approximation model of the neural network for the control function and the trajectory is presented. The convergence of the neural network approach using a genetic algorithm, a population-based gravitational search algorithm, and a basic particle swarm algorithm was studied. Also, the results obtained are compared with the operation of the gradient descent algorithm. Computational experiments have shown that evolutionary algorithms for optimizing functions use the least number of iterations to achieve a given accuracy, but multi-agent methods of gravitational search and particle swarming show the longest execution time per iteration. The genetic optimization algorithm showed the fastest convergence rate relative to the total execution time of the algorithm.
最优控制问题神经网络解的进化优化算法研究
本文考虑用神经网络方法在演化算法的泛函逼近优化阶段求解混合约束的最优控制问题。基于必要最优性条件和拉格朗日乘子法,将初始最优控制问题简化为非线性优化问题,并给出了控制函数和轨迹的神经网络逼近模型。研究了基于遗传算法、基于群体的引力搜索算法和基本粒子群算法的神经网络算法的收敛性。并将所得结果与梯度下降算法的运算结果进行了比较。计算实验表明,优化函数的进化算法使用最少的迭代次数来达到给定的精度,但引力搜索和粒子群的多智能体方法每次迭代的执行时间最长。遗传优化算法相对于总执行时间的收敛速度最快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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