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首页> 外文期刊>Journal of Computing and Information Technology >Path Following for Autonomous Vehicle Navigation Based on Kinodynamic Control
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Path Following for Autonomous Vehicle Navigation Based on Kinodynamic Control

机译:基于运动学控制的自主车辆导航路径跟踪

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摘要

This paper addresses the problem of path following for mobile robots with particular emphasis on integrating the global path planning, path following and a collision avoidance scheme in a unified framework. Whereas the traditional path following algorithms aim at minimizing an error function with respect to a given path and kinematic and/or dynamic model of the robot, the problem of collision avoidance is often neglected or simply cast to the replanning phase of the global planner which issues the given path. Such approaches that do not check explicitly for collision for the given state of the ego-robot and the environment can easily lead to hazardous situations, in particular if latencies are present in the global path planning phase. In order to address obstacle avoidance directly, a navigation framework is presented here that combines a path following control scheme to attain a global objective with a collision checking scheme that incrementally builds collision-free trajectories, thus ensuring ego-robot safety at all times, with respect to the partially known static environment obstacles and kinodynamic limitations of the ego-robot itself. Two novel path following schemes are presented, namely the Traversability-anchored Dynamic Path Following (TADPF) and a combined TADPF-Sliding Mode Path Following (SMPF), based on a previously developed SMPF technique. The two path following schemes have been verified both in simulation and experimentally on a test Ackermann-like vehicle.
机译:本文针对移动机器人的路径跟踪问题,特别强调将全局路径规划,路径跟踪和碰撞避免方案集成在一个统一的框架中。传统的路径遵循算法旨在针对给定路径以及机器人的运动学和/或动态模型最小化误差函数,而避免碰撞的问题通常被忽略或简单地归结为全局规划器的重新规划阶段。给定的路径。对于给定的自我机器人状态和环境,未明确检查是否存在碰撞的此类方法很容易导致危险情况,尤其是在全局路径规划阶段存在延迟的情况下。为了直接解决避障问题,在此提出了一个导航框架,该框架结合了为实现全局目标而遵循的路径跟踪控制方案和逐步建立无碰撞轨迹的碰撞检查方案,从而始终确保自我机器人安全,尊重自我机器人自身部分已知的静态环境障碍和运动动力学限制。提出了两种新颖的路径跟踪方案,即基于先前开发的SMPF技术的可穿越性锚定动态路径跟踪(TADPF)和组合的TADPF-滑模路径跟踪(SMPF)。这两种路径跟踪方案已经在模拟和实验的类似阿克曼试验车上得到了验证。

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