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A new population seeding technique for permutation-coded Genetic Algorithm: Service transfer approach

机译:置换编码遗传算法的一种新的种群播种技术:服务转移方法

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Genetic Algorithm (GA) is a popular heuristic method for dealing complex problems with very large search space. Among various phases of GA, the initial phase of population seeding plays an important role in deciding the span of GA to achieve the best fit w.r.t. the time. In other words, the quality of individual solutions generated in the initial population phase plays a critical role in determining the quality of final optimal solution. The traditional GA with random population seeding technique is quite simple and of course efficient to some extent; however, the population may contain poor quality individuals which take long time to converge with optimal solution. On the other hand, the hybrid population seeding techniques which have the benefit of good quality individuals and fast convergence lacks in terms of randomness, individual diversity and ability to converge with global optimal solution. This motivates to design a population seeding technique with multifaceted features of randomness, individual diversity and good quality. In this paper, an efficient Ordered Distance Vector (ODV) based population seeding technique has been proposed for permutation-coded GA using an elitist service transfer approach. One of the famous combinatorial hard problems of Traveling Salesman Problem (TSP) is being chosen as the testbed and the experiments are performed on different sized benchmark TSP instances obtained from standard TSPLIB [54]. The experimental results advocate that the proposed technique outperforms the existing popular initialization methods in terms of convergence rate, error rate and convergence time.
机译:遗传算法(GA)是一种流行的启发式方法,用于处理非常大的搜索空间中的复杂问题。在遗传算法的各个阶段中,种群播种的初始阶段在决定遗传算法的跨度以实现最佳拟合方面起着重要作用。时间。换句话说,在初始总体阶段生成的单个解决方案的质量在确定最终最佳解决方案的质量中起着至关重要的作用。具有随机种群播种技术的传统遗传算法非常简单,当然在一定程度上有效。但是,总体中可能包含质量较差的个人,需要很长时间才能找到最佳解决方案。另一方面,具有高质量个体和快速收敛性的混合种群播种技术在随机性,个体多样性和与全局最优解收敛的能力方面缺乏。这激发了设计一种具有随机性,个体多样性和高质量的多方面特征的种群播种技术。在本文中,已经提出了一种有效的基于有序距离矢量(ODV)的种群播种技术,该技术使用精英服务转移方法对置换编码的遗传算法进行了筛选。测试中选择了著名的旅行推销员问题(TSP)组合难题之一,并在从标准TSPLIB获得的不同大小的基准TSP实例上进行了实验[54]。实验结果表明,所提出的技术在收敛速度,错误率和收敛时间方面都优于现有的流行初始化方法。

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