计算机科学
人工蜂群算法
水准点(测量)
人工智能
运动规划
过程(计算)
启发式
算法
机器学习
路径(计算)
数学优化
数学
机器人
操作系统
地理
程序设计语言
大地测量学
作者
X Ni,Wei Hu,Qiaochu Fan,Yibing Cui,Chongkai Qi
标识
DOI:10.1016/j.eswa.2023.121303
摘要
Artificial bee colony (ABC) is a prominent algorithm that offers great exploration capabilities among various meta-heuristic algorithms. However, its monotonous and one-dimensional search strategy limits its searching performance in the solving process. Thus, to address this issue, a Q-learning based multi-strategy integrated ABC algorithm (QMABC) is proposed. In the QMABC, multiple search strategies are proposed to utilize different individual experiences and search approaches for solution updates. Then, Q-learning is employed for strategy selection. In comparison to previous studies, this paper introduces more effective state and action configurations within the framework of Q-learning. To evaluate the performance of the QMABC, CEC 2017 benchmark functions are adopted to compare it to different meta-heuristic algorithms including ABC based and non-ABC based algorithms. Moreover, applications in path planning are implemented to further verify the effectiveness of the QMABC. Overall, it should be highlighted that the proposed QMABC demonstrates superiority in both numerical and practical experiments.
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