基于多策略梦想优化算法的无人机三维路径规划。

IF 3.9 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY
Xingyu Yang, Shiwei Zhao, Wei Gao, Peifeng Li, Zhe Feng, Lijing Li, Tongyao Jia, Xuejun Wang
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引用次数: 0

摘要

针对无人机三维路径规划智能优化算法搜索能力不足、收敛速度慢、易受局部最优影响等问题,提出了多策略优化梦想优化算法(MSDOA),旨在提高无人机三维环境下路径规划算法的全局搜索效率和精度。首先,利用伯努利混沌映射进行种群初始化,扩大个体搜索范围,增强种群多样性;随后,在探索阶段引入自适应摄动机制和透镜成像反向学习策略来更新种群,从而提高了探索能力,加速了收敛,同时减少了过早收敛。最后,提出了一种自适应个体层次混合策略(AIMS),使搜索过程更加灵活,增强了算法的全局搜索能力。通过仿真实验,利用CEC2017基准测试函数对算法的性能进行了评估。结果表明,与其他群体智能算法相比,该算法具有更好的优化精度、更快的收敛速度和更强的鲁棒性。具体来说,在CEC2017测试套件的29项基准功能中,MSDOA在28项上排名第一,显示了其出色的全局搜索能力和收敛性能。此外,跨多个场景模型的无人机路径规划仿真实验表明,MSDOA对复杂的三维环境具有更强的适应性。在最具挑战性的情况下,与标准DOA相比,MSDOA将最佳成本函数适应度降低了9%,将平均成本函数适应度降低了12%,从而生成了更高效、更平稳、更高质量的飞行路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Three-Dimensional Path Planning for UAV Based on Multi-Strategy Dream Optimization Algorithm.

The multi-strategy optimized dream optimization algorithm (MSDOA) is proposed to address the challenges of inadequate search capability, slow convergence, and susceptibility to local optima in intelligent optimization algorithms applied to UAV three-dimensional path planning, aiming to enhance the global search efficiency and accuracy of UAV path planning algorithms in 3D environments. First, the algorithm utilizes Bernoulli chaotic mapping for population initialization to widen individual search ranges and enhance population diversity. Subsequently, an adaptive perturbation mechanism is incorporated during the exploration phase along with a lens imaging reverse learning strategy to update the population, thereby improving the exploration ability and accelerating convergence while mitigating premature convergence. Lastly, an Adaptive Individual-level Mixed Strategy (AIMS) is developed to conduct a more flexible search process and enhance the algorithm's global search capability. The performance of the algorithm is evaluated through simulation experiments using the CEC2017 benchmark test functions. The results indicate that the proposed algorithm achieves superior optimization accuracy, faster convergence speed, and enhanced robustness compared to other swarm intelligence algorithms. Specifically, MSDOA ranks first on 28 out of 29 benchmark functions in the CEC2017 test suite, demonstrating its outstanding global search capability and conver-gence performance. Furthermore, UAV path planning simulation experiments conducted across multiple scenario models show that MSDOA exhibits stronger adaptability to complex three-dimensional environments. In the most challenging scenario, compared to the standard DOA, MSDOA reduces the best cost function fitness by 9% and decreases the average cost function fitness by 12%, thereby generating more efficient, smoother, and higher-quality flight paths.

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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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