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首页> 外文期刊>Control Theory & Applications, IET >Design and experimentation of acceleration-level drift-free scheme aided by two recurrent neural networks
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Design and experimentation of acceleration-level drift-free scheme aided by two recurrent neural networks

机译:两个递归神经网络辅助的加速度级无漂移方案的设计与实验

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摘要

To solve the joint-angle and joint-velocity drift problems in cyclic motion of redundant robot manipulators, an acceleration-level drift-free (ALDF) scheme subject to a linear equality constraint is proposed, of which the effectiveness is analysed and proved via the theory of second-order system. The scheme is then reformulated into a quadratic program (QP). Furthermore, two recurrent neural networks (RNNs) are developed for solving the resultant QP problem. The first RNN solver is based on Zhang et al's neural-dynamic method and called Zhang neural network (ZNN), whereas the other is based on the gradient-descent method and called gradient neural network (GNN). Comparison results based on computer simulations between the ZNN and GNN solvers with a circular-path tracking task demonstrate that the ZNN solver has faster convergence and fewer errors. In addition, the hardware experiments of tracking a straight-line path and a rhombic path based on a six degrees of freedom manipulator validate the physical realisability and efficacy of the proposed ALDF scheme and the two RNN QP-solvers. Moreover, the position, velocity and acceleration error analyses indicate the accuracy of the proposed ALDF scheme and the corresponding RNN QP-solvers.
机译:为解决冗余机器人操纵器在循环运动中的关节角和关节速度漂移问题,提出了一种受线性等式约束的无加速度水平漂移(ALDF)方案,并通过分析验证了其有效性。二阶系统理论。然后将该方案重新表述为二次程序(QP)。此外,开发了两个递归神经网络(RNN)来解决由此产生的QP问题。第一个RNN求解器基于Zhang等人的神经动力学方法,称为“张神经网络”(ZNN),而另一个基于梯度下降法,则称为“梯度神经网络”(GNN)。基于具有循环路径跟踪任务的ZNN和GNN求解器之间基于计算机模拟的比较结果表明,ZNN求解器具有更快的收敛速度和更少的错误。此外,基于六自由度操纵器跟踪直线路径和菱形路径的硬件实验验证了所提出的ALDF方案和两个RNN QP求解器的物理可实现性和有效性。此外,位置,速度和加速度误差分析表明了所提出的ALDF方案和相应的RNN QP解算器的准确性。

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  • 来源
    《Control Theory & Applications, IET》 |2013年第1期|25-42|共18页
  • 作者

    Zhang Z.; Zhang Y.;

  • 作者单位

    School of Information Science and Technology, Sun Yat-sen University, Guangzhou 510006, People''s Republic of China;

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