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Continuous-Time Trajectory Optimization for Decentralized Multi-Robot Navigation

机译:分散多机器人导航的连续时间轨迹优化

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Multi-robot systems have begun to permeate into a variety of different fields, but collision-free navigation in a decentralized manner is still an arduous task. Typically, the navigation of high speed multi-robot systems demands replanning of trajectories to avoid collisions with one another. This paper presents an online replanning algorithm for trajectory optimization in labeled multi-robot scenarios. With reliable communication of states among robots, each robot predicts a smooth continuous-time trajectory for every other remaining robots. Based on the knowledge of these predicted trajectories, each robot then plans a collision-free trajectory for itself. The collision-free trajectory optimization problem is cast as a non linear program (NLP) by exploiting polynomial based trajectory generation. The algorithm was tested in simulations on Gazebo with aerial robots.
机译:多机器人系统已经开始渗透到各种不同的领域,而是以分散的方式无碰撞导航仍然是一个艰巨的任务。通常,高速多机器人系统的导航要求重新突出轨迹以避免彼此碰撞。本文介绍了标有多机器人场景中的轨迹优化的在线重新复制算法。通过机器人之间的状态可靠地通信,每个机器人都预测每个其他剩余机器人的平滑连续时间轨迹。基于这些预测轨迹的知识,每个机器人都计划自身的无碰撞轨迹。通过利用基于多项式的轨迹生成,可以将碰撞轨迹优化问题作为非线性程序(NLP)作为非线性程序(NLP)。该算法在凉亭与空中机器人的模拟中进行了测试。

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