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Local pursuit strategy-inspired cooperative trajectory planning algorithm for a class of nonlinear constrained dynamical systems

机译:一类非线性约束动力系统的局部跟踪策略启发式协同轨迹规划算法

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Cooperative trajectory planning is crucial for networked vehicles to respond rapidly in cluttered environments and has a significant impact on many applications such as air traffic or border security monitoring and assessment. One of the challenges in cooperative planning is to find a computationally efficient algorithm that can accommodate both the complexity of the environment and real hardware and configuration constraints of vehicles in the formation. Inspired by a local pursuit strategy observed in foraging ants, feasible and optimal trajectory planning algorithms are proposed in this paper for a class of nonlinear constrained cooperative vehicles in environments with densely populated obstacles. In an iterative hierarchical approach, the local behaviours, such as the formation stability, obstacle avoidance, and individual vehicle's constraints, are considered in each vehicle's (i.e. follower's) decentralised optimisation. The cooperative-level behaviours, such as the inter-vehicle collision avoidance, are considered in the virtual leader's centralised optimisation. Early termination conditions are derived to reduce the computational cost by not wasting time in the local-level optimisation if the virtual leader trajectory does not satisfy those conditions. The expected advantages of the proposed algorithms are (1) the formation can be globally asymptotically maintained in a decentralised manner; (2) each vehicle decides its local trajectory using only the virtual leader and its own information; (3) the formation convergence speed is controlled by one single parameter, which makes it attractive for many practical applications; (4) nonlinear dynamics and many realistic constraints, such as the speed limitation and obstacle avoidance, can be easily considered; (5) inter-vehicle collision avoidance can be guaranteed in both the formation transient stage and the formation steady stage; and (6) the computational cost in finding both the feasible and optimal solutions is low. In particular, the feasible solution can be computed in a very quick fashion. The minimum energy trajectory planning for a group of robots in an obstacle-laden environment is simulated to showcase the advantages of the proposed algorithms.
机译:协作轨迹规划对于联网车辆在混乱环境中快速响应至关重要,并且对空中交通或边境安全监控和评估等许多应用具有重大影响。协作计划中的挑战之一是找到一种计算效率高的算法,既可以适应环境的复杂性,又可以适应地层中车辆的实际硬件和配置约束。基于在觅食蚂蚁中观察到的局部追踪策略的启发,针对一类在人群密集的环境中的非线性约束合作车辆,提出了可行且最优的轨迹规划算法。在迭代分层方法中,在每个车辆(即从动车)的分散式优化中都考虑了局部行为,例如编队稳定性,避障和单个车辆的约束。虚拟领导者的集中优化考虑了协作级别的行为,例如避免车辆之间的碰撞。如果虚拟领导者轨迹不满足这些条件,则可以通过尽早地终止条件来减少浪费的时间,从而减少计算成本。所提出算法的预期优点是:(1)可以以分散的方式全局渐近地保持地层; (2)每辆车仅使用虚拟领导者和自己的信息来决定其局部轨迹; (3)地层收敛速度受一个单一参数控制,对许多实际应用具有吸引力。 (4)可以很容易地考虑非线性动力学和许多现实的约束,例如速度限制和避障。 (5)在编队过渡阶段和编队稳定阶段都可以确保避免车辆间碰撞; (6)寻找可行解和最优解的计算成本较低。特别地,可以以非常快的方式来计算可行解。仿真了在满载障碍物的环境中一组机器人的最小能量轨迹规划,以展示所提出算法的优势。

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