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A new meta-heuristic optimization algorithm using star graph

机译:一种新的星图元启发式优化算法

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In cognitive science, it is illustrated how the collective opinions of a group of individuals answers to questions involving quantity estimation. One example of this approach is introduced in this article as Star Graph (SG) algorithm. This graph describes the details of communication among individuals to share their information and make a new decision. A new labyrinthine network of neighbors is defined in the decision-making process of the algorithm. In order to prevent getting trapped in local optima, the neighboring networks are regenerated in each iteration of the algorithm. In this algorithm, the normal distribution is utilized for a group of agents with the best results (guidance group) to replace the existing infeasible solutions. Here, some new functions are introduced to provide a high convergence for the method. These functions not only increase the local and global search capabilities but also require less computational effort. Various benchmark functions and engineering problems are examined and the results are compared with those of some other algorithms to show the capability and performance of the presented method.
机译:在认知科学中,它说明了一群人的集体意见如何回答涉及数量估计的问题。本文介绍了这种方法的一个示例,即星形图(SG)算法。该图描述了个人之间交流信息的细节,以共享他们的信息并做出新的决定。在算法的决策过程中定义了一个新的邻居迷宫网络。为了防止陷入局部最优,在算法的每次迭代中都会重新生成相邻网络。在此算法中,正态分布用于效果最佳的一组代理(指导组),以替换现有的不可行解决方案。在这里,引入了一些新功能以提供该方法的高度收敛性。这些功能不仅增加了本地和全局搜索功能,而且所需的计算量也更少。检查了各种基准功能和工程问题,并将结果与​​其他一些算法的结果进行比较,以显示所提出方法的功能和性能。

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