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A new hopfield-type neural network approach to multi-goal vehicle navigation in unknown environments

机译:一种新的Hopfield型神经网络方法在未知环境中的多目标车辆导航

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A Hopfield-type neural networks (HNN) algorithm associated with histogram navigation method is proposed in this paper for real-time map building and path planning for multiple goals applications. In real world applications such as rescue robots, service robots, mining mobile robots, and mine searching robots, etc., an autonomous vehicle needs to reach multiple goals with a shortest path that, in this paper, is capable of being implemented by a HNN method with minimized overall distance. Once a global trajectory is planned, a foraging-enabled trail is created to guide the vehicle to the multiple goals. A histogram-based local navigation algorithm is employed to plan a collision-free path along the trail planned by the global path planner. A re-planning-based algorithm aims to generate trajectory while an autonomous vehicle explores through a terrain with map building in unknown environments. In this paper, simulation and experimental results demonstrate that the real-time concurrent mapping and multi-goal navigation of an autonomous vehicle is successfully performed under unknown environments.
机译:本文提出了与直方图导航方法相关联的Hopfield型神经网络(HNN)算法,用于实时地图建设和多个目标应用的路径规划。在现实世界应用中的救援机器人,服务机器人,采矿机器人,以及矿山搜索机器人等中,一种自主车辆需要达到多种目标,在本文中,能够通过HNN实现最小化总距离的方法。一旦计划了全局轨迹,创建了一个启用了觅食的路径,以指导车辆到多个目标。基于直方图的本地导航算法用于沿着全局路径策划器计划的路径规划无碰撞路径。基于重新计划的算法旨在生成轨迹,而自主车辆通过在未知环境中使用地形建筑物的地形探讨。在本文中,模拟和实验结果表明,在未知环境下成功执行了自主车辆的实时并发映射和多目标导航。

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