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Chaos-Genetic Algorithm Based on The Cat Map and Its Application on Seismic Wavelet Estimation

机译:基于CAT地图的混沌 - 遗传算法及其对地震小波估计的应用

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This paper proposes the chaos-genetic algorithm (CGA) based on the cat map in order to optimize a multidimensional and multimodal non-linear cost function for the seismic wavelet. The algorithm uses the initial sensitivity of the cat map to expand the scope of the search, and uses the ergodicity of the cat map to search the chaotic variables. Thus, reduces the data redundancy, maintains the diversity of population, and solves the problem of local optimum effectively. The performance of CGA is firstly verified by four test functions, and then applied to the seismic wavelet estimation. Theoretical analysis and numerical simulation demonstrate that CGA has better convergence speed and convergence performance.
机译:本文提出了基于CAT图的混沌 - 遗传算法(CGA),以优化地震小波的多维和多模式非线性成本函数。该算法使用CAT映射的初始灵敏度来扩展搜索范围,并使用CAT MAP的遍历性来搜索混沌变量。因此,降低数据冗余,维持人口的分集,并有效地解决了局部最佳的问题。首先通过四个测试功能验证CGA的性能,然后应用于地震小波估计。理论分析和数值模拟表明CGA具有更好的收敛速度和收敛性能。

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