Decentralized MPC-Based Trajectory Generation for Multiple Quadrotors in Cluttered Environments

Xinyi Wang, Lele Xi, Yizhou Chen, Shupeng Lai, F. Lin, Ben M. Chen
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引用次数: 7

Abstract

Challenges in motion planning for multiple quadrotors in complex environments lie in overall flight efficiency and the avoidance of obstacles, deadlock, and collisions among themselves. In this paper, we present a gradient-free trajectory generation method for multiple quadrotors in dynamic obstacle-dense environments with the consideration of time consumption. A model predictive control (MPC)-based approach for each quadrotor is proposed to achieve distributed and asynchronous cooperative motion planning. First, the motion primitives of each quadrotor are formulated as the boundary state constrained primitives (BSCPs) which are constructed with jerk limited trajectory (JLT) generation method, a boundary value problem (BVP) solver, to obtain time-optimal trajectories. They are then approximated with a neural network (NN), pre-trained using this solver to reduce the computational burden. The NN is used for fast evaluation with the guidance of a navigation function during optimization to guarantee flight safety without deadlock. Finally, the reference trajectories are generated using the same BVP solver. Our simulation and experimental results demonstrate the superior performance of the proposed method.
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混沌环境下基于分散mpc的多旋翼飞行器轨迹生成
复杂环境下多旋翼飞行器运动规划的挑战在于整体飞行效率和避免障碍物、死锁和相互碰撞。本文提出了一种考虑时间消耗的动态障碍物密集环境下多四旋翼飞行器无梯度轨迹生成方法。提出了一种基于模型预测控制(MPC)的四旋翼飞行器分布式异步协同运动规划方法。首先,将每个四旋翼的运动原语表述为边界状态约束原语(BSCPs),并利用边值问题求解器JLT生成方法构建边界状态约束原语(BSCPs),以获得时间最优轨迹;然后用神经网络(NN)进行近似,使用该求解器进行预训练以减少计算负担。在优化过程中,利用神经网络在导航函数的指导下进行快速评估,保证飞行安全无死锁。最后,使用相同的BVP求解器生成参考轨迹。仿真和实验结果表明了该方法的优越性。
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