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A hybrid algorithm using a genetic algorithm and multiagent reinforcement learning heuristic to solve the traveling salesman problem

机译:一种使用遗传算法的混合算法和多元素增强学习启发式解决旅行推销员问题

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摘要

In recent years, hybrid genetic algorithms (GAs) have received significant interest and are widely being used to solve real-world problems. The hybridization of heuristic methods aims at incorporating benefits of stand-alone heuristics in order to achieve better results for the optimization problem. In this paper, we propose a hybridization of GAs and Multiagent Reinforcement Learning (MARL) heuristic for solving Traveling Salesman Problem (TSP). The hybridization process is implemented by producing the initial population of GA, using MARL heuristic. In this way, GA with a novel crossover operator, which we have called Smart Multi-point crossover, acts as tour improvement heuristic and MARL acts as construction heuristic. Numerical results based on several TSP datasets taken from the TSPLIB demonstrate that proposed method found optimum solution of many TSP datasets and near optimum of the others and enable to compete with nine state-of-the-art algorithms, in terms of solution quality and CPU time.
机译:近年来,杂交遗传算法(天然气)受到了重大兴趣,并且广泛用于解决现实世界问题。启发式方法的杂交旨在纳入独立启发式的益处,以实现优化问题的更好结果。在本文中,我们提出了对解决旅行推销员问题的气体和多层钢筋学习(Marl)启发式的杂交(TSP)。通过使用Marl启发式制备GA的初始群体来实施杂交过程。通过这种方式,与新的交叉运营商一起被称为智能多点交叉,充当旅游改善启发式和Marl充当建筑启发式的交叉运算符。基于来自TSPLIB的几个TSP数据集的数值结果证明了所提出的方法发现许多TSP数据集的最佳解决方案以及其他TSP数据集的最佳解决方案,并在解决方案质量和CPU方面使其能够与九个最先进的算法竞争时间。

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