College of Science and Technology Ningbo University, Ningbo, Zhejiang, China.
College of Architecture and Transportation Engineering, Ningbo University of Technology, Ningbo, Zhejiang, China.
Sci Rep. 2024 Sep 3;14(1):20445. doi: 10.1038/s41598-024-71485-1.
With the rapid advancement of drone technology and the growing applications in the field of drone engineering, the demand for precise and efficient path planning in complex and dynamic environments has become increasingly important. Traditional algorithms struggle with complex terrain, obstacles, and weather changes, often falling into local optima. This study introduces an Improved Crown Porcupine Optimizer (ICPO) for drone path planning, which enables drones to better avoid obstacles, optimize flight paths, and reduce energy consumption. Inspired by porcupines' defense mechanisms, a visuo-auditory synergy perspective is adopted, improving early convergence by balancing visual and auditory defenses. The study also employs a good point set population initialization strategy to enhance diversity and eliminates the traditional population reduction mechanism. To avoid local optima in later stages, a novel periodic retreat strategy inspired by porcupines' precise defenses is introduced for better position updates. Analysis on the IEEE CEC2022 test set shows that ICPO almost reaches the optimal value, demonstrating robustness and stability. In complex mountainous terrain, ICPO achieved optimal values of 778.1775 and 954.0118; in urban terrain, 366.2789 and 910.1682 and ranked first among the compared algorithms, proving its effectiveness and reliability in drone delivery path planning. Looking ahead, the ICPO will provide greater efficiency and safety for drone path planning in navigating complex environments.
随着无人机技术的快速发展和在无人机工程领域应用的不断增加,在复杂和动态环境中进行精确和高效的路径规划变得越来越重要。传统的算法在复杂的地形、障碍物和天气变化面前显得力不从心,往往陷入局部最优解。本研究提出了一种用于无人机路径规划的改进皇冠刺猬优化器(ICPO),使无人机能够更好地避开障碍物、优化飞行路径并降低能耗。受刺猬防御机制的启发,采用了一种视听协同的视角,通过平衡视觉和听觉防御来实现早期收敛。该研究还采用了一种良好的点集种群初始化策略来增强多样性,并消除了传统的种群减少机制。为了避免后期陷入局部最优解,引入了一种受刺猬精确防御启发的新型周期性撤退策略,以更好地更新位置。在 IEEE CEC2022 测试集上的分析表明,ICPO 几乎达到了最优值,表现出了强大的鲁棒性和稳定性。在复杂的山区地形中,ICPO 实现了 778.1775 和 954.0118 的最优值;在城市地形中,实现了 366.2789 和 910.1682 的最优值,并在比较算法中排名第一,证明了其在无人机送货路径规划中的有效性和可靠性。展望未来,ICPO 将为无人机在复杂环境中的路径规划提供更高的效率和安全性。