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Decentralized 4D Trajectory Generation for UAVs Based on Improved Intrinsic Tau Guidance Strategy

机译:基于改进内在TAU指导策略的无人机分散4D轨迹生成

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摘要

A decentralized four-dimensional (4D) trajectory generation method for unmanned aerial vehicles (UAVs), which uses the improved intrinsic tau gravity (tau-G) guidance strategy, is presented in this paper. Based on general tau theory, the current tau-G strategy can only generate the 4D trajectory with zero initial and final velocities, which is not appropriate for decentralized applications. By adding an initial velocity to the intrinsic movement of tau-G strategy, the improved tau-G strategy can synchronously guide the position and velocity to the desired values at the arrival time. In our decentralized 4D trajectory generation method, the improved tau-G strategy is used to plan the 4D trajectories for UAVs. To deal with environmental uncertainty and communication limitations, the receding horizon optimization driven by both sampling time and conflict events is utilized to renew trajectory parameters continually. The simulation results of challenging time-constrained tasks demonstrate that the proposed method can efficiently provide safer and lower-cost 4D trajectories.
机译:本文介绍了使用改进的内在TAU重力(TAU-G)指导策略的无人驾驶飞行器(无人机)的分散的四维(4D)轨迹生成方法。基于普通TAU理论,目前的TAU-G策略只能产生零初始速度的4D轨迹,这是不合适的分散应用。通过向Tau-G策略的内在运动增加初始速度,改进的TAU-G策略可以同步地将位置和速度同步地引导到到达时间的所需值。在我们的分散的4D轨迹生成方法中,改进的TAU-G策略用于规划无人机的4D轨迹。为了应对环境不确定性和沟通限制,利用采样时间和冲突事件驱动的后退地平线优化来不断地续签轨迹参数。挑战时间约束任务的仿真结果表明,所提出的方法可以有效地提供更安全和低成本的4D轨迹。

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