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基于多策略协同进化蜜獾算法驱动的农业机器人网格路径规划

Grid-Based Path Planning of Agricultural Robots Driven by Multi-Strategy Collaborative Evolution Honey Badger Algorithm.

作者信息

Hu Yunyu, Shao Peng

机构信息

School of Computer and Information Engineering, Jiangxi Agricultural University, Nanchang 330000, China.

出版信息

Biomimetics (Basel). 2025 Aug 14;10(8):535. doi: 10.3390/biomimetics10080535.

Abstract

To address the limitations of mobile robots in path planning within farmland-specific environments, this paper proposes a biomimetic model: Multi-strategy Collaborative Evolution Honey Badger Algorithm (MCEHBA), MCEHBA achieves improvements through the following strategies: firstly, integrating a sinusoidal function-based nonlinear convergence factor to dynamically balance global exploration and local exploitation; secondly, combining the differential evolution strategy to enhance population diversity, and utilizing gravity-centred opposition-based learning to improve solution space search efficiency; finally, constructing good point set initialization and decentralized boundary constraint handling strategy to further increase convergence accuracy and speed. This paper validates the effectiveness of the optimization strategy and the performance of MCEHBA through the CEC2017 benchmark function set, and assesses the statistical significance of the results using the Friedman test and Nemenyi test. The findings demonstrate that MCEHBA exhibits excellent optimization capabilities. Additionally, this study applied MCEHBA to solve three engineering application problems and compared its results with six other algorithms, showing that MCEHBA achieved the minimum objective function values in all three cases. Finally, simulation experiments were conducted in three farmland scenarios of varying scales, with comparative tests against three state-of-the-art algorithms. The results indicate that MCEHBA generates paths with minimized total costs, demonstrating superior global convergence and engineering applicability.

摘要

为解决移动机器人在农田特定环境下路径规划中的局限性,本文提出了一种仿生模型:多策略协同进化蜜獾算法(MCEHBA),MCEHBA通过以下策略实现改进:首先,集成基于正弦函数的非线性收敛因子,以动态平衡全局探索和局部开发;其次,结合差分进化策略增强种群多样性,并利用基于重心的反向学习提高解空间搜索效率;最后,构建好点集初始化和分散边界约束处理策略,进一步提高收敛精度和速度。本文通过CEC2017基准函数集验证了优化策略的有效性和MCEHBA的性能,并使用Friedman检验和Nemenyi检验评估结果的统计显著性。研究结果表明,MCEHBA具有出色的优化能力。此外,本研究将MCEHBA应用于解决三个工程应用问题,并将其结果与其他六种算法进行比较,结果表明MCEHBA在所有三种情况下均实现了最小目标函数值。最后,在三种不同规模的农田场景中进行了仿真实验,并与三种最先进的算法进行了对比测试。结果表明,MCEHBA生成的路径总成本最小,展现出卓越的全局收敛性和工程适用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2fa4/12383466/8857a04d2246/biomimetics-10-00535-g0A1a.jpg

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