计算机科学
水准点(测量)
人口
数学优化
初始化
局部最优
算法
运动规划
稳健性(进化)
早熟收敛
全局优化
人工智能
粒子群优化
数学
机器人
程序设计语言
生物化学
化学
人口学
大地测量学
社会学
基因
地理
作者
Xingyu Yang,Shiwei Zhao,Wei Gao,Peifeng Li,Yufeng Zhang,Lijing Li,Tongyao Jia,Xuejun Wang
出处
期刊:Biomimetics
[MDPI AG]
日期:2025-08-21
卷期号:10 (8): 551-551
被引量:2
标识
DOI:10.3390/biomimetics10080551
摘要
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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