In this paper, we describe a robust multi-drone planning framework for high-speed trajectories in large scenes. It uses a free-space-oriented map to free the optimization from cumbersome environment data. A capsule-like safety constraint is designed to avoid reciprocal collisions when vehicles deviate from their nominal flight progress under disturbance. We further show the minimum-singularity differential flatness of our drone dynamics with nonlinear drag effects involved. Leveraging the flatness map, trajectory optimization is efficiently conducted on the flat outputs while still subject to physical limits considering drag forces at high speeds. The robustness and effectiveness of our framework are both validated in large-scale simulations. It can compute collision-free trajectories satisfying high-fidelity vehicle constraints for hundreds of drones in a few minutes.
翻译:在本文中,我们描述了大型场景高速轨迹的强有力的多轨道规划框架。它使用自由空间导向的地图来消除繁琐的环境数据带来的优化。一个类似胶囊的安全限制旨在避免在车辆在干扰下偏离其名义飞行进度时发生对等碰撞。我们进一步展示了无人驾驶飞机动态与非线性拖动效应之间的最小星际差异性。利用平面图,轨迹优化在平面产出上有效进行,同时考虑到高速拖动力,仍然受到物理限制。我们框架的坚固性和有效性在大规模模拟中都得到验证。它可以在几分钟内计算出达到数百架无人驾驶飞机高度纤维化限制的无碰撞轨迹。