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首页> 外文期刊>Systems, Man, and Cybernetics: Systems, IEEE Transactions on >Realization of an Adaptive Memetic Algorithm Using Differential Evolution and Q-Learning: A Case Study in Multirobot Path Planning
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Realization of an Adaptive Memetic Algorithm Using Differential Evolution and Q-Learning: A Case Study in Multirobot Path Planning

机译:基于差分进化和Q学习的自适应模因算法的实现:以多机器人路径规划为例

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摘要

Memetic algorithms (MAs) are population-based meta-heuristic search algorithms that combine the composite benefits of natural and cultural evolutions. An adaptive MA (AMA) incorporates an adaptive selection of memes (units of cultural transmission) from a meme pool to improve the cultural characteristics of the individual member of a population-based search algorithm. This paper presents a novel approach to design an AMA by utilizing the composite benefits of differential evolution (DE) for global search and Q-learning for local refinement. Four variants of DE, including the currently best self-adaptive DE algorithm, have been used here to study the relative performance of the proposed AMA with respect to runtime, cost function evaluation, and accuracy (offset in cost function from the theoretical optimum after termination of the algorithm). Computer simulations performed on a well-known set of 25 benchmark functions reveal that incorporation of Q-learning in one popular and one outstanding variants of DE makes the corresponding algorithm more efficient in both runtime and accuracy. The performance of the proposed AMA has been studied on a real-time multirobot path-planning problem. Experimental results obtained for both simulation and real frameworks indicate that the proposed algorithm-based path-planning scheme outperforms the real-coded genetic algorithm, particle swarm optimization, and DE, particularly its currently best version with respect two standard metrics defined in the literature.
机译:模因算法(MA)是基于人口的元启发式搜索算法,结合了自然和文化进化的综合优势。自适应MA(AMA)结合了从模因库中自适应选择模因(文化传播单位)来改善基于人群的搜索算法中各个成员的文化特征。本文提出了一种新颖的方法,可以利用差分演化(DE)的综合优势进行全局搜索,并利用Q学习进行局部优化来设计AMA。 DE的四个变体,包括当前最佳的自适应DE算法,已在此处用于研究拟议AMA在运行时间,成本函数评估和准确性方面的相对性能(成本函数与终止后的理论最优值之间的偏差)算法)。在一组著名的25个基准函数上进行的计算机仿真表明,将Q学习集成到DE的一种流行和一种出色的变体中,可使相应的算法在运行时间和准确性上更加高效。已针对实时多机器人路径规划问题研究了提出的AMA的性能。从仿真和真实框架获得的实验结果表明,所提出的基于算法的路径规划方案优于真实编码的遗传算法,粒子群优化和DE,尤其是相对于文献中定义的两个标准指标而言,它目前是最佳版本。

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