基于泥岩声波时差分解校正的多属性概率神经网络储层预测

Feng Guo, Xudong Yang, Ling Guo, Shenghua Lai
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引用次数: 0

摘要

为了准确预测砂岩与围岩物性相似的储层,以鄂尔多斯盆地东南部石炭—二叠系为例,提出了一种基于声波时差压实校正的多属性概率神经网络预测方法。首先,采用时频分析方法对原始声波时差曲线进行频率分割,基于标准井的低频分量对所有井进行低频长趋势校正;然后,将其与原始高频分量进行分频融合,形成新的声波时差数据,并完成声波时差的长期趋势分解校正,从而减小储层与围岩声波时差的重叠面积。多属性概率神经网络是一种基于采样点的算法,在进行储层预测前,必须对反演参数进行优化,以节省计算时间,减小预测误差。在声速反演剖面上,纵向速度与岩性变化趋势具有较高的相关性。各种反演结果对比表明,多属性概率神经网络速度曲线与测井声波速度曲线的符合率最高,分辨率也较高。算例表明,该方法对储层厚度的预测精度较高,尤其适用于储层与围岩物性差异较小的地层。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-attribute Probabilistic Neural Network Reservoir Prediction Based on Mudstone Acoustic Time Difference Decompaction Correction
In order to accurately predict reservoirs with similar physical properties between sandstone and surrounding rocks, this study takes Carboniferous-Permian system in southeastern Ordos Basin as an example, and puts forward a multi-attribute probabilistic neural network prediction method based on acoustic time difference compaction correction. Firstly, the time-frequency analysis method is used to divide the frequency of the original acoustic time difference curve, and the low-frequency long-trend correction of all wells is carried out based on the low-frequency components of standard wells. Then, it is frequency-divided and fused with the original high-frequency components to form new acoustic time difference data, and the long-term trend decompaction correction of acoustic time difference is completed, so that the overlapping area of acoustic time difference between reservoir and surrounding rock is reduced. Multi-attribute probabilistic neural network is an algorithm based on sampling points, before reservoir prediction, inversion parameters must be optimized to save calculation time and reduce prediction error. There is a high correlation between longitudinal velocity and lithologic change trend on the inversion profile of sound velocity. The comparison results of various inversions show that the velocity profile of multi-attribute probabilistic neural network has the highest coincidence rate and high resolution with the velocity curve of logging acoustic wave. The example shows that this method has high accuracy in predicting reservoir thickness, especially for the strata with little difference in physical properties between reservoir and surrounding rock.
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