仿生章鱼仿生变形机器人建模分析与仿真

Liwei Pan, Yan Wu, Qiuxuan Wu, Hongkun Zhou, Qingshan She, Botao Zhang, Jian Wang, Farong Gao
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引用次数: 0

摘要

拟态章鱼可以模仿多达15种动物的形状。通过逐帧观察模拟章鱼的形态变化视频,得出章鱼的形态变化规律。我们提出高斯混合模型(GMM)来研究章鱼轨迹的模仿行为。通过建立和训练教学样本数据,提取样本特征点,得到教学行为特征。然后,通过在Robotics Toolbox中设置一系列D-H参数,建立基于分段常曲率假设的仿章鱼机器人离散建模。这个仿章鱼机器人由8个灵活的手臂和一个半球形的外壳组成。最后,通过设置机器人初始状态和目标位置的D-H参数,实现机器人的变换仿真。它不仅能模仿海星的形状,还能模仿海蛇的形状。在变换过程中,各关节的末端位置轨迹和速度变化都是平滑的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and Simulation of Modeling for Transformable Robot Bio-inspired by Mimetic Octopus
Mimetic octopus can imitate up to fifteen animal shape. By observing the morphological change video of mimetic octopus frame by frame, the law of octopus morphologic is drawn. We propose a Gaussian mixture model (GMM) to study the imitation behavior of octopus trajectory. By establishing and training the teaching sample data, the sample feature points are extracted and the teaching behavior characteristics are obtained. And then, set up the discrete modeling of mimetic octopus robot based on the assumption of piecewise constant curvature by setting a series of D-H parameters in Robotics Toolbox. The mimetic octopus robot is composed of eight flexible arms and a hemispherical cover. Finally, simulation of transformation of the robot is implemented by setting the D-H parameters of the initial state and the target state of the end position. It can not only imitate the shape of a star fish but also imitate that of a sea snake. And, the trajectory of the end position and the speed change of each joint are both smooth during the transform process.
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