蜂群环境下基于深度q学习的无人机间避碰

G. Raja, S. Anbalagan, Vikraman Sathiya Narayanan, Srinivas Jayaram, Aishwarya Ganapathisubramaniyan
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引用次数: 17

摘要

在过去的二十年中,无人驾驶飞行器(uav)已经证明了其支持军事和民用应用的能力。事实证明,在使用常规方法进行危险或成本过高的任务时,它是有用的。某些应用程序还包含可以通过使用多个协同工作的无人机来更快地处理任务,并执行可以进一步组合以获得预期结果的较小任务。然而,要实现这一目标,我们需要多无人机之间的自主协调。多架无人机作为一个群体飞行,在整个飞行过程中必须保持一个模式或形状。但在某些情况下,群体的模式或形状必须改变。在这种情况下,必须避免无人机之间的碰撞,因为它们要飞到新的位置,形成新的形状。我们提出了一种算法,可以帮助无人机找到最优的目标位置,并找到支持无碰撞运动到指定位置的轨迹。我们还确保单个无人机的总飞行距离最小。最优目标位置分配采用匈牙利算法。采用深度Q学习的方法,寻找无碰撞轨迹的最优飞行参数,使无人机达到目标。仿真结果表明,该算法能够在不到15秒的时间内计算出50架无人机的最优分配和飞行参数,具有较好的实用性。
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Inter-UAV Collision Avoidance using Deep-Q-Learning in Flocking Environment
In the past twenty years, Unmanned Aerial Vehicles (UAVs) have demonstrated their ability in supporting both military and civilian applications. It has proved itself useful in tasks which are dangerous or too costly with usual methods. Certain applications also contains tasks which can be processed faster by using multiple UAVs that work together and perform smaller tasks which can be further combined to get the intended result. However, to achieve this, we need autonomous coordination among the multi UAVs. Multiple UAVs flying as a swarm, incorporates a pattern or a shape that has to be maintained through out the flight. But there can be cases where the pattern or shape of swarm has to be changed. Under such circumstances, collision has to be avoided between the UAVs as they travel to their new position forming a new shape. We have proposed an algorithm which helps in finding optimal goal positions for the UAVs to flock and to find the trajectory which supports collision free movement to its assigned position. We also ensure that the total distance travelled by individual UAV is minimized. The optimal goal position assignment is done using Hungarian Algorithm. Deep Q Learning method is used to find the optimal flight parameters for a collision free trajectory for the UAVs to reach its goal. Results from simulation show that the algorithm is sufficiently fast for practical applications as optimal assignments and flight parameters were computed for 50 UAVs in less than 1s.
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