首页> 外文会议>Robotics and Automation, 1997. Proceedings., 1997 IEEE International Conference on >Stabilization control of biped locomotion robot based learning with GAs having self-adaptive mutation and recurrent neural networks
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Stabilization control of biped locomotion robot based learning with GAs having self-adaptive mutation and recurrent neural networks

机译:具有自适应突变和递归神经网络的GA的两足机器人运动的稳定控制

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The purpose of this research is to generate natural motion of the biped locomotion robot such as the walking of a human in various environments. In this paper, we propose a method of stable motion generation of a biped locomotion robot. We apply the control of this proposed method with eight force sensors at the soles of the biped locomotion robot. The zero moment point (ZMP) is a well known index of stability in walking robots. ZMP is determined by the configuration of the robots. However, there are many configurations against the ZMP. Because of that, when we use ZMP as the stabilization index, we must select the best configuration in many stability configurations. Then it is a problem of which configurations are selected. In this paper, we solve the problem with recurrent neural networks. In both the single support and double support periods, we calculate the position of ZMP by using values from four force sensors at each sole, and actuation joints and the angles can be determined by recurrent neural networks without ZMP moving out from the supporting area of sole. We employ the recurrent neural networks with genetic algorithms for learning capability and self-adaptive mutation operator. Further, we build a biped locomotion robot in trial, which has 13 joints and verified that the calculated stable motion trajectory can be successfully applied to the practical biped locomotion.
机译:这项研究的目的是生成Biped运动机器人的自然运动,例如人类在各种环境中的行走。在本文中,我们提出了一种两足动物运动机器人的稳定运动生成方法。我们在八足动物运动机器人的脚底使用八个力传感器来控制此方法的控制。零力矩点(ZMP)是步行机器人中众所周知的稳定性指标。 ZMP由机械手的配置确定。但是,有许多针对ZMP的配置。因此,在将ZMP用作稳定指标时,必须在许多稳定配置中选择最佳配置。然后是选择哪种配置的问题。在本文中,我们用递归神经网络解决了这个问题。在单支撑和双支撑期间,我们通过使用来自每个鞋底的四个力传感器的值来计算ZMP的位置,并且可以通过递归神经网络确定驱动关节和角度,而ZMP不会从鞋底的支撑区域移出。我们采用具有遗传算法的递归神经网络来学习能力和自适应变异算子。此外,我们在试验中构建了一个具有13个关节的Biped运动机器人,并验证了所计算的稳定运动轨迹可以成功地应用于实际的Biped运动。

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