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Neural Networks Learning the Inverse Kinetics of an Octopus-Inspired Manipulator in Three-Dimensional Space

机译:神经网络在三维空间中学习章鱼激发机械手的逆动力学

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The control of octopus-like robots with a biomimetic design is especially arduous. Here, a manipulator characterized by the distinctive features of an octopus arm is considered. In particular a soft and continuous structure with a conical shape actuated by three cables is adopted. Despite of the simple design the arm kinetics model is infinite dimensional, which makes exact analysis and solution difficult. In this case the inverse kinetics model (IK-M) cannot be implemented by using mathematical methods based on Jacobian matrix, because the differential equations of the direct kinetics model (DK-M) are non-linear. Different solutions can be evaluated to solve the IK problem. In this work, a neural network approach is employed to overcome the non-linearity problem of the DK-M. The results show that a desired tip position can be achieved with a degree of accuracy of 1.36% relative average error with respect to the total length of the arm.
机译:用仿生设计的章鱼状机器人的控制尤其艰巨。这里,考虑一种以章鱼臂的独特特征为特征的操纵器。特别地,采用具有三根电缆致动的圆锥形状的柔软和连续的结构。尽管设计简单,但ARM动力学模型是无限尺寸的,这使得精确分析和解决方案难以。在这种情况下,不能使用基于雅加族矩阵的数学方法来实现逆动力学模型(IK-M),因为直接动力学模型(DK-M)的微分方程是非线性的。可以评估不同的解决方案以解决IK问题。在这项工作中,采用神经网络方法来克服DK-M的非线性问题。结果表明,相对于臂的总长度,可以以1.36%相对平均误差的精度为1.36%的精度来实现所需的尖端位置。

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