Application of Machine Learning Algorithms Using Seismic Data and Well Logs to Predict Reservoir Properties

I. Priezzhev, E. Stanislav
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引用次数: 5

Abstract

This paper provides for a comparison of the classic seismic inversion technique with several multivariate predictive techniques based on machine learning algorithms (linear regression, ACE regression, Random Forest, Neural Network) using seismic data and well logs to estimate rock physical properties. Currently, the estimation of reservoir properties is commonly based on comparative analysis of the distribution of the properties in wells and the elastic properties according to the results of the seismic inversion. Most of the commercial seismic inversion technologies are based on the classical one-dimensional models of seismic exploration involving plane-parallel medium that is described by the linear convolution equation. However, presumably, in some complex cases the linear operators of convolution type cannot properly describe the seismic field distribution. It is assumed that there is a nonlinear absorption of energy of seismic waves in some geological environments, such as in fractured, fluid - rich layers. Such nonlinearity can be shown by vertical and horizontal changes in the seismic wavelet. This paper aims to demonstrate that in certain nonlinear cases using a nonlinear predictive operator based on machine learning algorithms allows to estimate rock physical properties more accurately.
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利用地震数据和测井数据的机器学习算法预测储层性质
本文将经典地震反演技术与几种基于机器学习算法(线性回归、ACE回归、随机森林、神经网络)的多元预测技术进行了比较,这些预测技术利用地震数据和测井资料估计岩石物理性质。目前,储层物性估计一般是根据地震反演结果对井内物性分布和弹性物性进行对比分析。大多数商业地震反演技术都是基于平面平行介质的经典一维地震勘探模型,该模型由线性卷积方程描述。然而,在某些复杂情况下,可能卷积型的线性算子不能很好地描述地震场的分布。假设在某些地质环境中,例如在裂缝性、富流体地层中,地震波的能量存在非线性吸收。这种非线性可以通过地震小波的垂直和水平变化来表现出来。本文旨在证明,在某些非线性情况下,使用基于机器学习算法的非线性预测算子可以更准确地估计岩石的物理性质。
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