论文标题
基于抽样的轨迹(RE)计划差异化系统:应用于3D龙门起重机
Sampling-Based Trajectory (re)planning for Differentially Flat Systems: Application to a 3D Gantry Crane
论文作者
论文摘要
在本文中,提出了一种基于静态障碍的环境中实验室尺度3D龙门起重机的基于抽样的轨迹计划算法,并呈现了龙门起重机系统速度和加速度的范围。重点是为差分平面系统开发快速运动计划算法,其中可以将中间结果存储和重复用于进一步的任务,例如重新植入。所提出的方法基于知情的最佳迅速探索随机树算法(知情的RRT*),该算法用于构建轨迹树,这些树在开始和/或目标状态变化时重新使用。与最先进的方法相反,拟议的运动计划算法包含了线性二次最低时间(LQTM)本地计划者。因此,在提出的算法中直接考虑了动态特性,例如时间最优性和轨迹的平滑度。此外,通过集成在轨迹树上执行修剪过程的分支和结合方法,提出的算法可以消除树中没有贡献更好的解决方案的点。这有助于抑制内存消耗并降低运动(RE)计划期间的计算复杂性。 3D龙门起重机的经过验证的数学模型的仿真结果显示了所提出的方法的可行性。
In this paper, a sampling-based trajectory planning algorithm for a laboratory-scale 3D gantry crane in an environment with static obstacles and subject to bounds on the velocity and acceleration of the gantry crane system is presented. The focus is on developing a fast motion planning algorithm for differentially flat systems, where intermediate results can be stored and reused for further tasks, such as replanning. The proposed approach is based on the informed optimal rapidly exploring random tree algorithm (informed RRT*), which is utilized to build trajectory trees that are reused for replanning when the start and/or target states change. In contrast to state-of-the-art approaches, the proposed motion planning algorithm incorporates a linear quadratic minimum time (LQTM) local planner. Thus, dynamic properties such as time optimality and the smoothness of the trajectory are directly considered in the proposed algorithm. Moreover, by integrating the branch-and-bound method to perform the pruning process on the trajectory tree, the proposed algorithm can eliminate points in the tree that do not contribute to finding better solutions. This helps to curb memory consumption and reduce the computational complexity during motion (re)planning. Simulation results for a validated mathematical model of a 3D gantry crane show the feasibility of the proposed approach.