Robot positioning of a flexible hydraulic manipulator utilizing genetic algorithm and neural networks

A. Rouvinen, H. Handroos
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引用次数: 11

Abstract

Robot positioning requires that the actuator positions are calculated as a function of end effector position. This mapping is called inverse kinematics of a robot. The inverse kinematics problem is very nonlinear and in some cases it cannot be solved in closed form. Several iterative and neural network approaches are studied in solving the inverse kinematics problem. Deflection of the manipulator arms due to flexibility and mass load causes positioning error. The magnitude of the error depends on the amount of mass load and arm positions and the stiffness characteristics of arms. In this paper a method based on genetic algorithm is used to solve the inverse kinematics of a three degrees of freedom log crane. Neural networks are used to solve the correction values for deflection compensation.
基于遗传算法和神经网络的柔性液压机械臂机器人定位
机器人定位要求将执行器位置作为末端执行器位置的函数进行计算。这种映射称为机器人的逆运动学。逆运动学问题是非常非线性的,在某些情况下,它不能以封闭形式求解。研究了求解运动学逆问题的几种迭代和神经网络方法。由于柔性和质量负载导致的机械臂偏转导致定位误差。误差的大小取决于质量载荷和臂的位置以及臂的刚度特性。本文采用遗传算法求解三自由度原木起重机的运动学逆解。利用神经网络求解挠度补偿的修正值。
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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