Wang Xue, Zhou Shiyuan, Wang Zijia, Xia Xiaoyun, Duan Yaolong
School of Artificial Intelligence, Zhejiang Sci-Tech University, Hangzhou 310018, China.
School of Artificial Intelligence, Jiaxing University, Jiaxing 314001, China.
Biomimetics (Basel). 2025 Jan 3;10(1):23. doi: 10.3390/biomimetics10010023.
To address the challenges of slow convergence speed, poor convergence precision, and getting stuck in local optima for unmanned aerial vehicle (UAV) three-dimensional path planning, this paper proposes a path planning method based on an Improved Human Evolution Optimization Algorithm (IHEOA). First, a mathematical model is used to construct a three-dimensional terrain environment, and a multi-constraint path cost model is established, framing path planning as a multidimensional function optimization problem. Second, recognizing the sensitivity of population diversity to Logistic Chaotic Mapping in a traditional Human Evolution Optimization Algorithm (HEOA), an opposition-based learning strategy is employed to uniformly initialize the population distribution, thereby enhancing the algorithm's global optimization capability. Additionally, a guidance factor strategy is introduced into the leader role during the development stage, providing clear directionality for the search process, which increases the probability of selecting optimal paths and accelerates the convergence speed. Furthermore, in the loser update strategy, an adaptive -distribution perturbation strategy is utilized for its small mutation amplitude, which enhances the local search capability and robustness of the algorithm. Evaluations using 12 standard test functions demonstrate that these improvement strategies effectively enhance convergence precision and algorithm stability, with the IHEOA, which integrates multiple strategies, performing particularly well. Experimental comparative research on three different terrain environments and five traditional algorithms shows that the IHEOA not only exhibits excellent performance in terms of convergence speed and precision but also generates superior paths while demonstrating exceptional global optimization capability and robustness in complex environments. These results validate the significant advantages of the proposed improved algorithm in effectively addressing UAV path planning challenges.
为解决无人机三维路径规划中收敛速度慢、收敛精度差以及陷入局部最优等问题,本文提出一种基于改进人类进化优化算法(IHEOA)的路径规划方法。首先,利用数学模型构建三维地形环境,建立多约束路径代价模型,将路径规划问题转化为多维函数优化问题。其次,鉴于传统人类进化优化算法(HEOA)中种群多样性对逻辑斯谛混沌映射的敏感性,采用基于对立学习的策略对种群分布进行均匀初始化,从而增强算法的全局优化能力。此外,在进化阶段将引导因子策略引入到领导者角色中,为搜索过程提供明确的方向性,提高选择最优路径的概率并加快收敛速度。再者,在失败者更新策略中,采用自适应分布扰动策略,因其变异幅度小,增强了算法的局部搜索能力和鲁棒性。使用12个标准测试函数进行评估表明,这些改进策略有效提高了收敛精度和算法稳定性,集成多种策略的IHEOA表现尤为出色。在三种不同地形环境下与五种传统算法进行的实验对比研究表明,IHEOA不仅在收敛速度和精度方面表现优异,还能生成更优路径,在复杂环境中展现出卓越的全局优化能力和鲁棒性。这些结果验证了所提改进算法在有效解决无人机路径规划挑战方面的显著优势。