Wang Mingen, Yuan Panliang, Hu Pengfei, Yang Zhengrong, Ke Shuai, Huang Longliang, Zhang Pai
Laboratory for Robot Mobility Localization and Scene Deep Learning Technology, Guizhou Equipment Manufacturing Polytechnic, Guiyang 550025, China.
State Key Laboratory of Public Big Data, Guizhou University, Guiyang 550025, China.
Biomimetics (Basel). 2025 Jan 6;10(1):31. doi: 10.3390/biomimetics10010031.
In recent years, unmanned aerial vehicle (UAV) technology has advanced significantly, enabling its widespread use in critical applications such as surveillance, search and rescue, and environmental monitoring. However, planning reliable, safe, and economical paths for UAVs in real-world environments remains a significant challenge. In this paper, we propose a multi-strategy improved red-tailed hawk (IRTH) algorithm for UAV path planning in real environments. First, we enhance the quality of the initial population in the algorithm by using a stochastic reverse learning strategy based on Bernoulli mapping. Then, the quality of the initial population is further improved through a dynamic position update optimization strategy based on stochastic mean fusion, which enhances the exploration capabilities of the algorithm and helps it explore promising solution spaces more effectively. Additionally, we proposed an optimization method for frontier position updates based on a trust domain, which better balances exploration and exploitation. To evaluate the effectiveness of the proposed algorithm, we compare it with 11 other algorithms using the IEEE CEC2017 test set and perform statistical analysis to assess differences. The experimental results demonstrate that the IRTH algorithm yields competitive performance. Finally, to validate its applicability in real-world scenarios, we apply the IRTH algorithm to the UAV path-planning problem in practical environments, achieving improved results and successfully performing path planning for UAVs.
近年来,无人机(UAV)技术取得了显著进展,使其能够广泛应用于监视、搜索救援和环境监测等关键应用中。然而,在现实环境中为无人机规划可靠、安全且经济的路径仍然是一项重大挑战。在本文中,我们提出了一种用于实际环境中无人机路径规划的多策略改进红尾鹰(IRTH)算法。首先,我们通过基于伯努利映射的随机反向学习策略来提高算法中初始种群的质量。然后,通过基于随机均值融合的动态位置更新优化策略进一步提高初始种群的质量,这增强了算法的探索能力,并帮助其更有效地探索有前景的解空间。此外,我们提出了一种基于信任域的前沿位置更新优化方法,该方法能更好地平衡探索和利用。为了评估所提算法的有效性,我们使用IEEE CEC2017测试集将其与其他11种算法进行比较,并进行统计分析以评估差异。实验结果表明,IRTH算法具有竞争力。最后,为了验证其在实际场景中的适用性,我们将IRTH算法应用于实际环境中的无人机路径规划问题,取得了改进结果,并成功为无人机执行了路径规划。