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Multi-modal Function Optimization Based on Artificial Immune Network and Chaos

机译:基于人工免疫网络和混沌的多模态功能优化

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After the immune network algorithms of multi-modal function optimization have developed, their performance can be improved by stochastic chaos map. In chaos attractor equations the variables are steadily approached stable points. A novel algorithm of immune network combined chaos is presented. The solutions searched and optimized can be accelerated using this method. According to opt-aiNet improved, parameters sensitivity can be bated. At last, some functions are tested. Through multi-peak illustrated and results optimized, the approach is verified with high generalized, efficiency and precision.
机译:在多模态函数优化的免疫网络算法开发之后,随机混沌地图可以提高它们的性能。在混沌吸引子方程中,变量稳定地接近稳定点。提出了一种小型免疫网络合并混沌算法。搜索和优化的解决方案可以使用此方法加速。根据Opt-Ainet改进,可以划分参数灵敏度。最后,测试了一些功能。通过多峰值所示和结果优化,该方法具有高广义,效率和精度的验证。

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