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Cooperative and Geometric Learning Algorithm (CGLA) for path planning of UAVs with limited information

机译:协同和几何学习算法(CGLA),用于信息有限的无人机的路径规划

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摘要

In this paper, we propose a new learning algorithm, named as the Cooperative and Geometric Learning Algorithm (CGLA), to solve problems of maneuverability, collision avoidance and information sharing in path planning for Unmanned Aerial Vehicles (UAVs). The contributions of CGLA are three folds: (1) CGLA is designed for path planning based on cooperation of multiple UAVs. Technically, CGLA exploits a new defined individual cost matrix, which leads to an efficient path planning algorithm for multiple UAVs. (2) The convergence of the proposed algorithm for calculating the cost matrix is proven theoretically, and the optimal path in terms of path length and risk measure from a starting point to a target point can be calculated in polynomial time. (3) In CGLA, the proposed individual weight matrix can be efficiently calculated and adaptively updated based on the geometric distance and risk information shared among UAVs. Finally, risk evaluation is introduced first time in this paper for UAV navigation and extensive computer simulation results validate the effectiveness and feasibility of CGLA for safe navigation of multiple UAVs.
机译:在本文中,我们提出了一种新的学习算法,称为协作和几何学习算法(CGLA),以解决无人飞行器(UAV)路径规划中的可操纵性,避免碰撞和信息共享的问题。 CGLA的贡献包括三个方面:(1)CGLA是基于多架无人机合作进行路径规划而设计的。从技术上讲,CGLA利用新定义的个人成本矩阵,从而为多种无人机提供了有效的路径规划算法。 (2)理论上证明了所提出的成本矩阵计算算法的收敛性,并且可以在多项式时间内计算出从起点到目标点的路径长度和风险度量的最优路径。 (3)在CGLA中,基于无人机之间共享的几何距离和风险信息,可以有效地计算和自适应地更新建议的单个权重矩阵。最后,本文首次引入了用于无人机导航的风险评估,大量的计算机仿真结果验证了CGLA在多种无人机导航中的有效性和可行性。

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