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Central pattern generator and feedforward neural network-based self-adaptive gait control for a crab-like robot locomoting on complex terrain under two reflex mechanisms

机译:两种反射机制在复杂地形上游动的蟹状机器人的基于中央模式发生器和前馈神经网络的自适应步态控制

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摘要

Although quite a few central pattern generator controllers have been developed to regulate the locomotion of terrestrial bionic robots, few studies have been conducted on the central pattern generator control technique for amphibious robots crawling on complex terrains. The present article proposes a central pattern generator and feedforward neural network-based self-adaptive gait control method for a crab-like robot locomoting on complex terrain under two reflex mechanisms. In detail, two nonlinear ordinary differential equations are presented at first to model a Hopf oscillator with limit cycle effects. Having Hopf oscillators as the basic units, a central pattern generator system is proposed for the waveform-gait control of the crab-like robot. A tri-layer feedforward neural network is then constructed to establish the one-to-one mapping between the central pattern generator rhythmic signals and the joint angles. Based on the central pattern generator system and feedforward neural network, two reflex mechanisms are put forward to realize self-adaptive gait control on complex terrains. Finally, experiments with the crab-like robot are performed to verify the waveform-gait generation and transition performances and the self-adaptive locomotion capability on uneven ground.
机译:尽管已经开发了许多中央模式生成器控制器来调节陆地仿生机器人的运动,但是对于用于在复杂地形上爬行的两栖机器人的中央模式生成器控制技术的研究很少。本文提出了一种基于中心模式生成器和前馈神经网络的自适应步态控制方法,用于在两种反射机制下在复杂地形上移动的蟹状机器人。详细地,首先提出两个非线性常微分方程来模拟具有极限循环效应的Hopf振荡器。以霍普夫振荡器为基本单元,提出了一种中央模式发生器系统,用于对蟹形机器人的波形步态进行控制。然后构造三层前馈神经网络,以建立中央模式发生器的有节奏信号和关节角度之间的一对一映射。基于中央模式发生器系统和前馈神经网络,提出了两种反射机制来实现复杂地形的自适应步态控制。最后,使用类似螃蟹的机器人进行实验,以验证在不平坦地面上的波形步态生成和过渡性能以及自适应运动能力。

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