基于机器学习的致密岩石破裂压力加速推断方法

Zeeshan Tariq, B. Yan, Shuyu Sun, Manojkumar Gudala, M. Mahmoud
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引用次数: 0

摘要

非常规油藏通常根据极低的孔隙度和渗透率进行分类。从这类油藏中开采碳氢化合物最经济的方法是制造人工裂缝。为了设计水力压裂作业,需要确定岩石破裂压力的真实值。在实验室进行水力压裂实验是一个非常昂贵和耗时的过程。因此,在本研究中,有效地利用了不同的机器学习模型来预测致密岩石的破裂压力。在研究的第一部分中,对各种岩石试样进行了全面的水力压裂实验研究,测量了破裂压力。在页岩、砂岩、致密碳酸盐和合成水泥样品等不同岩石类型上共进行了130次实验。在进行水力压裂试验之前,测量了岩石的力学特性,如杨氏模量E、泊松比、无侧限抗压强度(UCS)和间接抗拉强度sigma_t。使用机器学习模型将岩石的破裂压力与压裂实验条件和岩石特性相关联。在机器学习模型中,我们考虑了包括注入速率、覆盖层压力、压裂液粘度在内的实验条件,以及包括杨氏模量、泊松比、无侧限抗压强度(UCS)、间接抗拉强度、孔隙度、渗透率和体积密度在内的岩石特性。机器学习模型包括随机森林(RF)、决策树(DT)和k近邻(KNN)。在机器学习模型的训练过程中,采用网格搜索优化方法对模型超参数进行优化。通过ML模型的优化设置,非常规地层的破裂压力预测精度达到95%。所提出的非常规岩石破裂压力预测方法可以最大限度地降低测量裂缝参数的实验室实验成本,并可作为非常规致密岩开发前景评价的快速评价工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Based Accelerated Approach to Infer the Breakdown Pressure of the Tight Rocks
Unconventional oil reservoirs are usually classified by extremely low porosity and permeability values. The most economical way to produce hydrocarbons from such reservoirs is by creating artificially induced fractures. To design the hydraulic fracturing jobs, true values of rock breakdown pressure is required. Conducting hydraulic fracturing experiments in the laboratory is a very expensive and time consuming process. Therefore, in this study, different machine learning models were efficiently utilized to predict the breakdown pressure of the tight rocks. In the first part of the study, a comprehensive hydraulic fracturing experimental study was conducted on various rock specimens, to measure the breakdown pressure. A total of 130 experiments were conducted on different rock types such as shales, sandstone, tight carbonates, and synthetic cement samples. Rock mechanical properties such as Young's Modulus E, Poisson's ratio, Unconfined Compressive strength (UCS), and indirect tensile strength sigma_t were measured before conducting hydraulic fracturing tests. Machine learning models were used to correlate the breakdown pressure of the rock as a function of fracturing experimental conditions and rock properties. In the machine learning model, we considered experimental conditions including injection rate, overburden pressures, and fracturing fluid viscosity, and rock properties including Young's Modulus, Poisson's ratio, Unconfined Compressive strength (UCS), and indirect tensile strength, porosity, permeability, and bulk density. Machine learning models include Random Forest (RF), Decision Trees (DT), and K-Nearest Neighbor (KNN). During training of ML models, the model hyper-parameters were optimized by grid search optimization approach. With the optimal setting of the ML models, the breakdown pressure of the unconventional formation were predicted with an accuracy of 95%. The proposed methodology to predict the breakdown pressure of unconventional rocks can minimize the laboratory experimental cost of measuring fracture parameters and can be used as a quick assessment tool to evaluate the development prospect of unconventional tight rocks.
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