Pre-stack amplitude variation with offset (AVO) elastic parameter inversion technology, combined with genetic algorithm, provides a relatively effective ide'/> Research of pre-stack AVO elastic parameter inversion problem based on hybrid genetic algorithm
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Research of pre-stack AVO elastic parameter inversion problem based on hybrid genetic algorithm

机译:基于混合遗传算法的堆叠前堆积抗弹性参数反演问题研究

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AbstractPre-stack amplitude variation with offset (AVO) elastic parameter inversion technology, combined with genetic algorithm, provides a relatively effective identifying method to oil-gas exploration. However, many problems, such as, fast convergence in algorithm and being easy to fall into local optimization, are brought in traditional genetic algorithm, which leads to an unsatisfied inversion performance. Therefore, this essay proposes a hybrid genetic algorithm which is better in solving pre-stack AVO elastic parameter inversion problem. Taguchi thought is also introduced into this algorithm, which helps to produce better descents and to avoid falling into local optimization, and makes results more robustness. Additionally, as genetic algorithm is poor in local search and inversion of p-wave, s-wave and density, neighborhood search is adopted to optimize density inversion. Inversion accuracy is greatly improved.
机译:<标题>抽象 <帕拉ID =“PAR4”>与偏移(AVO)弹性参数反转技术的堆叠幅度变化,与遗传算法相结合,提供了对油气勘探的相对有效的识别方法。 然而,许多问题,例如算法的快速收敛性并易于进入局部优化,以传统的遗传算法引入,导致不满意的反演性能。 因此,本文提出了一种混合遗传算法,其在求解堆叠前的避平AVO弹性参数反转问题方面更好。 Taguchi思想也被引入了这种算法,有助于产生更好的降水并避免落入局部优化,并使结果更加鲁棒性。 另外,由于遗传算法在P波,S波和密度的局部搜索和反演中,采用邻域搜索来优化密度反转。 反转精度大大提高。

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