Department of UAV Engineering, Shijiazhuang Campus, Army Engineering University, Hebei, Shijiazhuang 050051, China.
Comput Intell Neurosci. 2021 Dec 2;2021:4369201. doi: 10.1155/2021/4369201. eCollection 2021.
With the development of modern science and technology, the field of UAV has also entered the era of high-tech exploration. Among them, the task planning, allocation, path exploration, and algorithm optimization of heterogeneous multi UAV technology are our main concerns. Based on the above situation, this paper proposes a heterogeneous multi UAV task planning technology based on ant colony algorithm powered BP neural network. The planning, research, and design are mainly carried out according to the actual situation of the UAV flight test, and the mathematical programming model is established according to the UAV load degree and maximum flight distance as constraints. This paper focuses on the contribution of the ant colony optimization algorithm to benefit maximization and task minimization. The experimental results show that the BP neural network optimized by the ant colony algorithm can improve the number of iterations and training time. Compared with some comparative algorithms, its performance is better.
随着现代科学技术的发展,无人机领域也进入了高科技探索的时代。其中,异构多无人机技术的任务规划、分配、路径探索和算法优化是我们关注的重点。基于上述情况,本文提出了一种基于蚁群算法的 BP 神经网络的异构多无人机任务规划技术。主要根据无人机飞行试验的实际情况进行规划、研究和设计,并根据无人机负载程度和最大飞行距离的约束建立数学规划模型。本文重点研究了蚁群优化算法对利益最大化和任务最小化的贡献。实验结果表明,蚁群算法优化的 BP 神经网络可以提高迭代次数和训练时间。与一些对比算法相比,其性能更好。