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A neural-network committee machine approach to the inverse kinematics problem solution of robotic manipulators

机译:神经网络委员会机器方法解决机器人机械手的逆运动学问题

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摘要

In robotics, inverse kinematics problem solution is a fundamental problem in robotics. Many traditional inverse kinematics problem solutions, such as the geometric, iterative, and algebraic approaches, are inadequate for redundant robots. Recently, much attention has been focused on a neural-network-based inverse kinematics problem solution in robotics. However, the result obtained from the neural network requires to be improved for some sensitive tasks. In this paper, a neural-network committee machine (NNCM) was designed to solve the inverse kinematics of a 6-DOF redundant robotic manipulator to improve the precision of the solution. Ten neural networks (NN) were designed to obtain a committee machine to solve the inverse kinematics problem using separately prepared data set since a neural network can give better result than other ones. The data sets for the neural-network training were prepared using prepared simulation software including robot kinematics model. The solution of each neural network was evaluated using direct kinematics equation of the robot to select the best one. As a result, the committee machine implementation increased the performance of the learning.
机译:在机器人技术中,逆运动学问题解决方案是机器人技术中的一个基本问题。许多传统的逆运动学问题解决方案,例如几何,迭代和代数方法,都不适合冗余机器人。近来,人们对机器人技术中基于神经网络的逆运动学问题解决方案进行了广泛关注。但是,对于某些敏感任务,需要改进从神经网络获得的结果。本文设计了一种神经网络委员会机(NNCM)来解决6自由度冗余机器人机械手的逆运动学问题,以提高解决方案的精度。十个神经网络(NN)被设计为获得一个委员会机器,以使用单独准备的数据集来解决逆运动学问题,因为神经网络可以提供比其他网络更好的结果。使用准备好的包括机器人运动学模型在内的仿真软件,为神经网络训练准备了数据集。使用机器人的直接运动学方程评估每个神经网络的解决方案,以选择最佳的解决方案。结果,委员会机器的实施提高了学习的性能。

著录项

  • 来源
    《Engineering with Computers》 |2014年第4期|641-649|共9页
  • 作者单位

    Electronics and Computer Sciences Department, Technical Education Faculty, Sakarya University, 54187 Sakarya, Turkey;

    Industrial Engineering Department, Engineering Faculty, Sakarya University, 54187 Sakarya, Turkey;

    Electronics and Automation Department, Hendek Vocational High School, Sakarya University, 54300 Hendek, Sakarya, Turkey;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Neural networks; Committee machines; Inverse kinematics solution; Robotics;

    机译:神经网络;委员会机器;运动学逆解;机器人技术;

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