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一种用于无人机协同三维路径规划的新型改进蜣螂优化算法

A Novel Improved Dung Beetle Optimization Algorithm for Collaborative 3D Path Planning of UAVs.

作者信息

Zheng Xiaojun, Liu Rundong, Li Siyang

机构信息

School of Mechanical Engineering, Dalian Jiaotong University, Dalian 116028, China.

出版信息

Biomimetics (Basel). 2025 Jun 29;10(7):420. doi: 10.3390/biomimetics10070420.

Abstract

In this study, we propose a novel improved Dung Beetle Optimizer called Environment-aware Chaotic Force-field Dung Beetle Optimizer (ECFDBO). To address DBO's existing tendency toward premature convergence and insufficient precision in high-dimensional, complex search spaces, ECFDBO integrates three key improvements: a chaotic perturbation-based nonlinear contraction strategy, an intelligent boundary-handling mechanism, and a dynamic attraction-repulsion force-field mutation. These improvements reinforce both the algorithm's global exploration capability and its local exploitation accuracy. We conducted 30 independent runs of ECFDBO on the CEC2017 benchmark suite. Compared with seven classical and novel metaheuristic algorithms, ECFDBO achieved statistically significant improvements in multiple performance metrics. Moreover, by varying problem dimensionality, we demonstrated its robust global optimization capability for increasingly challenging tasks. We further conducted the Wilcoxon and Friedman tests to assess the significance of performance differences of the algorithms and to establish an overall ranking. Finally, ECFDBO was applied to a 3D path planning simulation in UAVs for safe path planning in complex environments. Against both the Dung Beetle Optimizer and a multi-strategy DBO (GODBO) algorithm, ECFDBO met the global optimality requirements for cooperative UAV planning and showed strong potential for high-dimensional global optimization applications.

摘要

在本研究中,我们提出了一种名为环境感知混沌力场蜣螂优化器(ECFDBO)的新型改进蜣螂优化器。为了解决DBO在高维复杂搜索空间中存在的早熟收敛趋势和精度不足问题,ECFDBO集成了三项关键改进:基于混沌扰动的非线性收缩策略、智能边界处理机制和动态吸引-排斥力场变异。这些改进增强了算法的全局探索能力和局部开发精度。我们在CEC2017基准测试套件上对ECFDBO进行了30次独立运行。与七种经典和新型元启发式算法相比,ECFDBO在多个性能指标上取得了具有统计学意义的改进。此外,通过改变问题维度,我们展示了其在处理日益具有挑战性的任务时强大的全局优化能力。我们进一步进行了Wilcoxon和Friedman检验,以评估算法性能差异的显著性并建立总体排名。最后,将ECFDBO应用于无人机的三维路径规划模拟,以在复杂环境中进行安全路径规划。与蜣螂优化器和多策略DBO(GODBO)算法相比,ECFDBO满足了无人机协同规划的全局最优性要求,并在高维全局优化应用中显示出强大的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0047/12292718/6b0fd54a548f/biomimetics-10-00420-g0A1a.jpg

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