Survey Design Towards Optimum Reflectivity and Velocity Estimates Directly from Blended and Irregularly-Sampled Data

S. Nakayama, G. Blacquière, T. Ishiyama
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Abstract

The application of blended acquisition along with irregular acquisition geometries contributes to the economic perspective of a seismic survey. The joint migration inversion scheme is capable of directly processing the data acquired in this way, i.e., without deblending or data reconstruction, and of subsequently estimating both reflectively and velocity models. The workflow proposed in this study aims to design the source blending operator as well as detector and source sampling operators. The approach iteratively computes these parameters in such a way that the quality of reflectivity and velocity models, which are directly estimated from blended and irregularly-sampled data, is adequate. The workflow integrates a genetic algorithm and a convolutional neural network to derive optimum parameters. Bio-inspired operators enable the simultaneous update of the blending and sampling operators. To relate the choice of survey parameters to the performance of a joint migration inversion, we utilize a convolutional neural network. The applied network architecture discards suboptimal solutions among newly generated ones. Conversely, it passes optimal ones to the subsequent step, which successfully enhances the efficiency of the proposed approach. The resultant acquisition scenario yields a notable enhancement in both reflectivity and velocity estimates attributed solely to the choice of survey parameters.
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直接从混合和不规则采样数据中获得最佳反射率和速度估计的调查设计
混合采集以及不规则采集几何图形的应用有助于提高地震勘探的经济前景。联合偏移反演方案能够直接处理以这种方式获得的数据,即不进行解混和数据重构,并随后估计反射模型和速度模型。本研究提出的工作流程旨在设计源混合算子以及检测器和源采样算子。该方法迭代计算这些参数,使得直接从混合和不规则采样数据中估计的反射率和速度模型的质量是足够的。该工作流集成了遗传算法和卷积神经网络来获得最优参数。仿生操作器可以同时更新混合和采样操作器。为了将测量参数的选择与联合迁移反演的性能联系起来,我们利用卷积神经网络。应用的网络架构在新生成的解中丢弃次优解。相反,它将最优解传递给后续步骤,从而成功地提高了该方法的效率。由此产生的采集方案在反射率和速度估计方面都有显著提高,这完全归功于测量参数的选择。
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