Solving nonlinear optimization problem using new closed loop method for optimal path tracking

F. Barat, M. Irani, M. Pahlevanzade
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Abstract

The purpose of this paper is to investigate the ability of the manipulator in point-to-point motion and determine its dynamic loading capacity using an optimal control method for controlling the new closed loop. The proposed method for designing an optimal nonlinear controller in a closed loop shape, in contrast to the usual methods based on indirect methods, is a combination of direct and indirect methods. The law of control is based on the solution of the nonlinear Hamilton-Jacobi-Bellman equation (HJB). For complex dynamics, this equation is solved using the Galerkin method and a nonlinear optimization algorithm. Another goal is to determine the dynamic loading capacity using this controller. The simulation results indicate the efficiency of the method in tracking the preset path from the manipulator, as well as determining the load capacity of the dynamic.Industrial robots are now widely used in various fields. So their production is increasing rapidly. Manipulator are a type of industrial robot that attracts the attention of many engineers of control and mechanics. Also, in this article, the 3Rrobot and 6R robot have been investigated.
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用新的闭环方法求解最优路径跟踪的非线性优化问题
本文的目的是研究机械手点对点运动的能力,并利用最优控制方法来控制新的闭环,确定其动态负载能力。本文提出的设计闭环形状最优非线性控制器的方法不同于通常基于间接方法的方法,而是直接法和间接法相结合的方法。控制律基于非线性Hamilton-Jacobi-Bellman方程(HJB)的解。对于复杂动力学问题,采用伽辽金法和非线性优化算法求解。另一个目标是使用该控制器确定动态负载能力。仿真结果表明,该方法可以有效地跟踪机械手的预定路径,并确定动态机械手的负载能力。工业机器人现在广泛应用于各个领域。因此,它们的产量正在迅速增长。机械手是一种工业机器人,引起了许多控制和机械工程师的注意。此外,本文还对3r机器人和6R机器人进行了研究。
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