Application of Geostatistical Seismic AVA Inversion for Shale Reservoir Characterization and Brittleness Prediction with Machine Learning

M. Cyz, L. Azevedo, M. Malinowski
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引用次数: 2

Abstract

Summary In this study we present an application of geostatistical AVA seismic inversion method for characterization of a unconventional Lower Paleozoic shale reservoir in Northern Poland. The target formations are of a small thickness (up tp 25 meters) and deeply buried (ca. 3 km) what makes their delineation and characterization especially difficult. An application of the iterative geostatistical AVA inversion method allowed for obtaining the high-resolution density, P-wave and S-wave velocity models together with the assessment of the uncertainty on the predictions. The obtained elastic property models were compared with the results of the deterministic simultaneous Amplitude-versus-Offset inversion proving that the application of a such sophisticated (geostatistical) inversion technique is a must while dealing with the thin and highly variable layers. The inverted elastic models where further used to improve the prediction of a spatial distribution of the brittleness index with a machine learning (PSVM) algorithm by integrating well-log data and seismic rock property volumes.
地统计地震AVA反演在页岩储层表征及机器学习脆性预测中的应用
在这项研究中,我们提出了一种应用地球统计AVA地震反演方法来表征波兰北部一个非常规下古生界页岩储层的方法。目标地层厚度小(最多25米),埋藏深(约3公里),这使得它们的描绘和表征特别困难。应用迭代地统计AVA反演方法,可以获得高分辨率密度、纵波和横波速度模型,并对预测的不确定性进行评估。将得到的弹性性质模型与确定性同时振幅-偏移反演的结果进行了比较,证明了在处理薄且高度可变的层时,必须应用这种复杂的(地质统计)反演技术。通过整合测井数据和地震岩石属性体积,利用机器学习(PSVM)算法,利用反向弹性模型进一步改进脆性指数的空间分布预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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