一种改进的移动机器人在复杂动态环境下的实时路径规划

Yan Deng, X. Zhuang, G. Yang, Yanqi Chen
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引用次数: 3

摘要

许多传统的移动机器人路径规划方法无法适应复杂的动态环境。基于人工势场的思想,提出了一种改进的基于细胞神经网络的移动机器人实时路径规划算法。在路径规划中,目标神经元具有最大的正活动值,并通过局部神经元的横向连接阻尼地扩散到整个状态空间。移动机器人通过神经活动的传播被目标吸引,而障碍物通过使自身保持最低的活动值来远离移动机器人以避免碰撞。实验结果表明,该路径规划算法是连续的、最优的,能够对复杂、快速变化的环境做出快速响应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved real-time path planning of mobile robot in a complex and dynamic environment
Many traditional path planning of mobile robot are unable to adapt to the complex and dynamic environment. This paper proposes an improved real-time path planning algorithm of mobile robot based on cellular neural network by idea of artificial potential field. The target neuron has the maximal positive active value which is damply spread to the whole state space by local lateral connections of neurons in the path planning. The mobile robot was attracted to the target through the neural activity propagation, while the obstacles put away the mobile robot to avoid collision by making themselves keep the lowest active value. The experimental results indicate that the path planning algorithm was continuous, optimal, and the mobile robot could respond quickly to the complex and fast changing environmen.
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