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3D seismic geometry quality control and corrections by applying machine learning

机译:应用机器学习的3D地震几何质量控制和校正

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摘要

Seismic geometry quality control (QC) and corrections are crucial but labor-intensive steps in seismic data preprocessing. Current methods to estimate the correct positions of sources and receivers are usually based on the first-break traveltimes, which may contain large errors, thereby affecting the accuracy of the results. We have applied a deep convolutional neural network to identify shots and receivers that have position error, and we searched for the correct position. Once an error in position is identified by scanning data, a grid search for the correct location is conducted and the result is evaluated by the system until an optimal position is found. The network is trained on 3200 training sets from real data that have been corrected by the traditional method. Through cross validation on 800 sets, the classifier achieves a precision of 99.5% and a recall rate of 1. The final errors between the true positions and corrected positions are less than 10% of the shot spacing. An uncorrected real data experiment reveals that the proposed machine-learning method for geometry QC and correction provides similar results to the conventional manual correction approach but without human interference. Because the wavefield pattern of the training data for this purpose is global, there is no need to train the system again when applying the method to correct receiver position or process another data set. This claim is verified with different real data.
机译:地震几何质量控制(QC)和矫正是地震数据预处理中的关键而是劳动密集型步骤。估计源和接收器的正确位置的当前方法通常基于第一中断行进时间,这可能包含大误差,从而影响结果的精度。我们已经应用了一个深度卷积神经网络来识别具有位置错误的镜头和接收器,我们搜索正确的位置。一旦通过扫描数据识别出误差,就会进行对正确位置的网格搜索,并且通过系统评估结果,直到找到最佳位置。从传统方法校正的真实数据训练网络培训3200训练集。通过800套的交叉验证,分类器实现了99.5%的精度,召回率为1.真实位置和校正位置之间的最终误差小于镜头间距的10%。未经校正的实际数据实验表明,所提出的几何质量QC和校正的机器学习方法提供了与传统的手动校正方法相似的结果,但没有人为干扰。因为用于此目的的训练数据的波场模式是全局的,所以在应用方法以校正接收器位置或处理另一数据集时,不需要再次训练系统。此索赔由不同的实际数据验证。

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