Xie Cankun, Li Shaobo, Qin Xinqi, Fu Shengwei, Zhang Xingxing
State Key Laboratory of Public Big Data, Guizhou University, Guiyang, 550025, Guizhou, China.
Key Laboratory of Advanced Manufacturing Technology, Ministry of Education, Guizhou University, Guiyang, 550025, Guizhou, China.
Sci Rep. 2024 Sep 17;14(1):21734. doi: 10.1038/s41598-024-72279-1.
With the wave of artificial intelligence sweeping the world in recent years, UAVs is widely used in various fields. UAV path planning has attracted much attention from scientists as an essential part of UAV work. In order to design an efficient and reasonable 3D UAV path planning program, recent researchers have invented and improved many algorithms. This paper proposes an elite RIME algorithm for 3D UAV path planning. First, we propose an elite reverse learning population selection strategy based on piecewise mapping to enhance the population diversity of the algorithm for better exploration. Second, this paper proposes a stochastic factor-controlled elite pool exploration strategy so that the algorithm is difficult to enter the local optimum and can better explore the global optimum. Then, this paper proposes a hard frost puncture exploitation strategy based on the sine-cosine function so that the algorithm can find the global optimum faster during the exploitation process. Meanwhile, in order to test the performance of the algorithm proposed in this paper, we compare it with 13 other intelligent optimization algorithms that are classical and popular nowadays on 52 test functions in three test sets, CEC2017, CEC2020, and CEC2022, and obtain competitive results. Finally, we applied it to the 3D UAV path planning problem in three different terrain scenarios, and the ELRIME algorithm achieved good results in all of them. Especially in the 7-peak model, the ELRIME algorithm improves the performance of the RIME algorithm by a factor of two. In the 9-peak model, the average value aspect also reduce the cost by 91 compared to the RIME algorithm, and more importantly, it has the smallest fluctuation in 30 runs, which is among the most stable of all the compared algorithms. In the 12-peak model, its stability is also significantly enhanced, and in terms of worst-case cost, it improves the cost by 340 compared to RIME.
近年来,随着人工智能浪潮席卷全球,无人机在各个领域得到了广泛应用。无人机路径规划作为无人机工作的重要组成部分,备受科学家们关注。为了设计高效合理的三维无人机路径规划程序,近期研究人员发明并改进了许多算法。本文提出一种用于三维无人机路径规划的精英RIME算法。首先,我们提出一种基于分段映射的精英反向学习种群选择策略,以增强算法的种群多样性,实现更好的探索。其次,本文提出一种随机因子控制的精英池探索策略,使算法难以陷入局部最优,能更好地探索全局最优。然后,本文提出一种基于正弦余弦函数的硬霜穿刺开发策略,使算法在开发过程中能更快找到全局最优。同时,为测试本文提出算法的性能,我们将其与当前经典且流行的其他13种智能优化算法在CEC2017、CEC2020和CEC2022三个测试集的52个测试函数上进行比较,取得了具有竞争力的结果。最后,我们将其应用于三种不同地形场景下的三维无人机路径规划问题,ELRIME算法在所有场景中均取得了良好效果。特别是在七峰模型中,ELRIME算法将RIME算法的性能提高了两倍。在九峰模型中,与RIME算法相比,平均值方面成本也降低了91,更重要的是,它在30次运行中的波动最小,是所有比较算法中最稳定的之一。在十二峰模型中,其稳定性也显著增强,在最坏情况成本方面,与RIME算法相比成本提高了340。