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Optimizing large-scale problems by combining chaotic neural network and self-organizing feature map

机译:通过混沌神经网络和自组织特征映射来优化大规模问题

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摘要

A novel approach using transient chaotic neural network (TCNN) and self-organizing feature map (SOFM) process to solve large-scale combinatorial optimization problems has been proposed. With the clustering function of self-organizing feature map, the computational cost of a large-scale combinatorial optimization problem solved by TCNN is reduced. Numerical simulation of TSP shows that the proposed method is effective to solve large-scale optimization problems.
机译:提出了一种新颖的方法,采用瞬态混沌神经网络(TCNN)和自组织特征图(SOFM)过程来解决大规模组合优化问题。利用自组织特征图的聚类功能,减少了TCNN解决了大规模组合优化问题的计算成本。 TSP的数值模拟表明,所提出的方法有效地解决大规模优化问题。

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