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The Nelder-Mead Simplex Method with Variables Partitioning for Solving Large Scale Optimization Problems

机译:具有变量分区的Nelder-Mead Simplex方法,用于解决大规模优化问题

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This paper presents a novel method to solve unconstrained continuous optimization problems. The proposed method is called SVP (simplex variables partitioning). The SVP method uses three main processes to solve large scale optimization problems. The first process is a variable partitioning process which helps our method to achieve high performance with large scale and high dimensional optimization problems. The second process is an exploration process which generates a trail solution around a current iterate solution by applying the Nelder-Mead method in a random selected partitions. The last process is an intensification process which applies a local search method in order to refine the the best solution so far. The SVP method starts with a random initial solution, then it is divided into partitions. In order to generate a trail solution, the simplex Nelder-Mead method is applied in each partition by exploring neighborhood regions around a current iterate solution. Finally the intensification process is used to accelerate the convergence in the final stage. The performance of the SVP method is tested by using 38 benchmark functions and is compared with 2 scatter search methods from the literature. The results show that the SVP method is promising and producing good solutions with low computational costs comparing to other competing methods.
机译:本文提出了一种解决不受约束的连续优化问题的新方法。所提出的方法称为SVP(Simplex变量分区)。 SVP方法使用三个主要过程来解决大规模优化问题。第一个过程是一种可变分区过程,有助于我们的方法以大规模和高维优化问题实现高性能。第二过程是通过在随机选择的分区中应用Nelder-Mead方法,在当前迭代解决方案周围产生跟踪解决方案的探索过程。最后一个过程是一个加强过程,它适用了本地搜索方法,以便到目前为止优化最佳解决方案。 SVP方法以随机初始解决方案开头,然后将其分为分区。为了产生跟踪解决方案,通过在当前迭代解决方案周围探索邻域区域来应用单程纳米麦片方法。最后,增强过程用于加速最终阶段的收敛。通过使用38个基准功能来测试SVP方法的性能,并与来自文献的2个分散搜索方法进行比较。结果表明,与其他竞争方法相比,SVP方法具有很有希望和生产具有低计算成本的良好解决方案。

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