Sun Qingbin, Na Xitai, Feng Zhihui, Hai Shiji, Shi Jinshuo
School of Electronic Information Engineering, Inner Mongolia University, Hohhot 010010, China.
Biomimetics (Basel). 2025 Mar 25;10(4):201. doi: 10.3390/biomimetics10040201.
Three-dimensional UAV path planning is crucial in practical applications. However, existing metaheuristic algorithms often suffer from slow convergence and susceptibility to becoming trapped in local optima. To address these limitations, this paper proposes a multi-strategy integrated artificial protozoa optimization (IAPO) algorithm for UAV 3D path planning. First, the tent map and refractive opposition-based learning (ROBL) are employed to enhance the diversity and quality of the initial population. Second, in the algorithm's autotrophic foraging stage, we design a dynamic optimal leadership mechanism, which accelerates the convergence speed while ensuring robust exploration capability. Additionally, during the reproduction phase of the algorithm, we update positions using a Cauchy mutation strategy. Thanks to the heavy-tailed nature of the Cauchy distribution, the algorithm is less likely to become trapped in local optima during exploration, thereby increasing the probability of finding the global optimum. Finally, we incorporate the simulated annealing algorithm into the heterotrophic foraging and reproduction stages, effectively preventing the algorithm from getting trapped in local optima and reducing the impact of inferior solutions on the convergence efficiency. The proposed algorithm is validated through comparative experiments using 12 benchmark functions from the 2022 IEEE Congress on Evolutionary Computation (CEC), outperforming nine common algorithms in terms of convergence speed and optimization accuracy. The experimental results also demonstrate IAPO's superior performance in generating collision-free and energy-efficient UAV paths across diverse 3D environments.
三维无人机路径规划在实际应用中至关重要。然而,现有的元启发式算法往往收敛速度慢且容易陷入局部最优。为了解决这些局限性,本文提出了一种用于无人机三维路径规划的多策略集成人工原生动物优化(IAPO)算法。首先,采用帐篷映射和基于折射反对学习(ROBL)来增强初始种群的多样性和质量。其次,在算法的自养觅食阶段,我们设计了一种动态最优领导机制,在确保强大探索能力的同时加快收敛速度。此外,在算法的繁殖阶段,我们使用柯西变异策略更新位置。由于柯西分布的重尾性质,该算法在探索过程中不太可能陷入局部最优,从而增加找到全局最优的概率。最后,我们将模拟退火算法纳入异养觅食和繁殖阶段,有效防止算法陷入局部最优并减少劣质解对收敛效率的影响。通过使用2022年IEEE进化计算大会(CEC)的12个基准函数进行对比实验,验证了所提出的算法,该算法在收敛速度和优化精度方面优于九种常见算法。实验结果还表明,IAPO在生成跨越各种三维环境的无碰撞且节能的无人机路径方面具有卓越性能。