Neural network system for inverse kinematics problem in 3 DOF robotics

B. Daya, S. Khawandi, P. Chauvet
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引用次数: 7

Abstract

Inverse kinematics computation has been one of the main problems in robotics research. An inverse kinematic analysis addresses the problem of computing the sequence of joint motion from the Cartesian motion of an interested member, most often the end effector. Traditional methods such as geometric, iterative and algebraic are inadequate if the joint structure of the manipulator is more complex. In addition, periodic characteristic of trigonometric resulted non-convexity of IKM. As alternative approaches, neural networks have been widely used for inverse kinematics modeling and control in robotics. The idea is to build a network that learned all the trajectory path of a model in different setting. Computer simulations conducted on 3DOF robot manipulator shows the effectiveness of the approach.
三自由度机器人运动学逆问题的神经网络系统
逆运动学计算一直是机器人研究中的主要问题之一。逆运动学分析解决了从感兴趣的成员(通常是末端执行器)的笛卡尔运动计算关节运动序列的问题。当机械臂的关节结构比较复杂时,传统的几何、迭代和代数等方法是不够的。此外,三角函数的周期特性导致了IKM的非凸性。作为一种替代方法,神经网络已广泛应用于机器人的逆运动学建模和控制。这个想法是建立一个网络,学习模型在不同环境下的所有轨迹路径。通过对三维机械臂的计算机仿真,验证了该方法的有效性。
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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