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Toward safety navigation in cluttered dynamic environment: A robot neural-based hybrid autonomous navigation and obstacle avoidance with moving target tracking

机译:在杂乱的动态环境中实现安全导航:基于机器人神经的混合自主导航和具有运动目标跟踪的避障

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摘要

In this paper, an autonomous navigation and obstacle avoidance strategy is proposed for an omnidirectional mobile robot. The robot plans a path, starting from an initial point going to a target point. A hybrid approach has been developed where a global approach has been applied to the motion along the desired path (DP) using 2 order polynomial planning, while a local reactive approach is used to avoid collisions with static and/or dynamic obstacles based on the use of neural control. The neural controller design is based on the “sensing vector” and the “gap vector” concepts. The “sensing vector” is a binary vector which provides information about obstacles detection, while the “gap vector” provides information about a possible nearest gap the robot can pass through it. The proposed approach is extended to include the problem of moving target.
机译:本文提出了一种用于全向移动机器人的自主导航与避障策略。机器人计划一条路径,该路径从初始点到目标点。已经开发出一种混合方法,其中使用二阶多项式规划将全局方法应用于沿期望路径(DP)的运动,而局部反应方法则根据使用情况避免与静态和/或动态障碍物发生碰撞神经控制。神经控制器的设计基于“传感向量”和“间隙向量”的概念。 “感应矢量”是一个二进制矢量,提供有关障碍物检测的信息,而“空隙矢量”提供有关机器人可以通过的最近空隙的信息。所提出的方法扩展到包括移动目标的问题。

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