Li Yongtao, Kurata Shuhei, Morita Shogo, Shimizu So, Munetaka Daigo, Nara Shigetoshi
Okayama University, Okayama, 700-8530, Japan.
Biol Cybern. 2008 Sep;99(3):185-96. doi: 10.1007/s00422-008-0249-6. Epub 2008 Sep 10.
Originating from a viewpoint that complex/chaotic dynamics would play an important role in biological system including brains, chaotic dynamics introduced in a recurrent neural network was applied to control. The results of computer experiment was successfully implemented into a novel autonomous roving robot, which can only catch rough target information with uncertainty by a few sensors. It was employed to solve practical two-dimensional mazes using adaptive neural dynamics generated by the recurrent neural network in which four prototype simple motions are embedded. Adaptive switching of a system parameter in the neural network results in stationary motion or chaotic motion depending on dynamical situations. The results of hardware implementation and practical experiment using it show that, in given two-dimensional mazes, the robot can successfully avoid obstacles and reach the target. Therefore, we believe that chaotic dynamics has novel potential capability in controlling, and could be utilized to practical engineering application.
基于复杂/混沌动力学在包括大脑在内的生物系统中会发挥重要作用这一观点,将循环神经网络中引入的混沌动力学应用于控制。计算机实验结果成功应用于一种新型自主漫游机器人,该机器人只能通过少数传感器以不确定的方式获取粗略的目标信息。利用嵌入了四种原型简单运动的循环神经网络产生的自适应神经动力学,该机器人被用于解决实际的二维迷宫问题。神经网络中系统参数的自适应切换会根据动态情况导致静止运动或混沌运动。硬件实现和使用该机器人的实际实验结果表明,在给定的二维迷宫中,机器人能够成功避开障碍物并到达目标。因此,我们认为混沌动力学在控制方面具有新的潜在能力,可用于实际工程应用。