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An efficient improved artificial potential field based regression search method for robot path planning

机译:一种有效的改进的基于人工势场的基于回归搜索的机器人路径规划方法

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Path planning field for autonomous mobile robot is an optimization problem that involves computing a collision-free path between initial location and goal location. In this paper, we present an improved artificial potential field based regression search (Improved APF-based RS) method which can obtain a global sub-optimal/optimal path efficiently without local minima and oscillations in complete known environment information. We redefine potential functions to eliminate non-reachable and local minima problems, and utilize virtual local target for robot to escape oscillations. Due to the planned path by improved APF is not the shortest/approximate shortest trajectory, we develop a regression search (RS) method to optimize the planned path. The optimization path is calculated by connecting the sequential points which produced by improved APF. Amount of simulations demonstrate that the improved APF method very easily escape from local minima and oscillatory movements. Moreover, the simulation results confirm that our proposed path planning approach could always calculate a more global optimalear-optimal, collision-free and safety path to its destination compare with general APF. That proves our improved APF-based RS method very feasibility and efficiency to solve path planning which is a NP-hard problem for autonomous mobile robot.
机译:自主移动机器人的路径规划领域是一个优化问题,涉及计算初始位置和目标位置之间的无碰撞路径。在本文中,我们提出了一种改进的基于人工势场的回归搜索(基于APF的改进RS)方法,该方法可以高效地获取全局次优/最优路径,而不会在完整的已知环境信息中产生局部最小值和振荡。我们重新定义了潜在的功能,以消除不可触及的局部极小问题,并利用虚拟局部目标使机器人逃脱了振荡。由于改进的APF计划的路径不是最短/近似的最短轨迹,因此我们开发了一种回归搜索(RS)方法来优化计划的路径。通过连接改进的APF产生的顺序点来计算优化路径。大量的仿真表明,改进的APF方法非常容易摆脱局部最小值和振荡运动的影响。此外,仿真结果证实,与通用APF相比,我们提出的路径规划方法始终可以计算出一条更全局的最优/近乎最优,无碰撞且安全的到达目的地的路径。这证明了我们改进的基于APF的RS方法在解决路径规划方面具有很高的可行性和效率,而路径规划是自主移动机器人的NP难题。

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