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A NEW ALGORITHM BASED ON IMMUNE ALGORITHM AND HOPFIELD NEURAL NETWORK FOR MULTIMODAL FUNCTION OPTIMIZATION

机译:一种基于免疫算法和Hopfield神经网络的多模式函数优化的新算法

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This paper analyzes immune theory and Hopfield Neural Network (HNN), and then proposes a new algorithm for multimodal function. This new algorithm uses the advantages of both HNN and immune algorithm, and it appears excellent characteristic in optimal problems of multimodal function. In detail, we obtain a group of solutions with variety by immune algorithm (IA) first; and then the solutions are partitioned into some clusters. Finally we take cluster centroids returned by clustering algorithm as the initial value of each HNN, and run the Hopfield neural networks to obtain all minima.
机译:本文分析了免疫理论和HOPFIELD神经网络(HNN),然后提出了一种新的多模函数算法。这种新算法使用HNN和免疫算法的优点,并且在多式联运功能的最佳问题中看起来出色。详细地,我们首先通过免疫算法(IA)获得一组具有多样性的解决方案;然后解决方案被划分为一些簇。最后,我们将群集算法返回的集群质心作为每个HNN的初始值,并运行Hopfield神经网络以获得所有最小值。

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