首页> 外文会议>Robotics and Automation, 1997. Proceedings., 1997 IEEE International Conference on >Acquisition of visually guided swing motion based on genetic algorithms and neural networks in two-armed bipedal robot
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Acquisition of visually guided swing motion based on genetic algorithms and neural networks in two-armed bipedal robot

机译:基于遗传算法和神经网络的两臂双足机器人视觉引导挥杆动作的获取

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We describe the method in which a visually guided swing motion for a 16 DOF two-armed bipedal robot is acquired by applying a GA (genetic algorithm) to a NN (neural network) controller. The evolutionary approach to the acquisition of various motions for robots has been successfully used by many researchers, but most studies have been carried out only through computer simulations. In this research, we adopt a real robot with a complicated body used in a noisy environment. The evolutionary processes are examined in. A virtual world constructed on a CRS-CS6400 parallel computer which simulates such factors as swing dynamics, visual processes noise reduction processes, and time lags in a control system. It took about and hours for an artificial evolution to create a successfully individual after 50 generations from an initial population of 200 unsuccessful genes. Using the NN decoded from the most successful individual of the last generation, a real two-armed bipedal robot that could swing successfully was obtained.
机译:我们描述了通过将Ga(遗传算法)应用于NN(神经网络)控制器来获取用于16dof两臂双向机器人的视觉引导的摆动运动的方法。许多研究人员已经成功地使用了获取机器人各种动作的进化方法,但大多数研究也仅通过计算机模拟进行。在这项研究中,我们采用一个具有在嘈杂环境中使用的复杂体型的真正机器人。检查进化过程。在CRS-CS6400并行计算机上构建的虚拟世界,该计算机模拟了这样的因素,作为摆动动态,视觉处理降噪过程和控制系统中的时间滞后。人工演变需要大约时间,从初始的200个不成功基因的初始群体后创建一个成功的个体。使用从最后一代的最成功的个人解码的NN解码,获得了可以成功摆动的真正双臂双方机器人。

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