基于人工神经网络和地球物理测井剖面的Delaware盆地钾肥区储层压力梯度趋势预测

Olabode Ajibola, J. Sheng, P. McElroy, Christopher Armistead, James Rutley, J. Smitherman
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Next, the geophysical log cross-sections were created in 2-Dimensional and 3-Dimensional profiles with the verified reservoir pressures using Petra, Matlab, IHS Kingdom, and R machine language. Three west to east cross-sections were created for the three portions of the area namely Back-reef, Reef, and Basin separately. The fourth cross-section was created from the North (Back-Reef) to the South (Basin) through the Reef. The cross sections are displayed showing formation strata, depths, and pressure trends.\n The information gained from this study will be used to optimize the economic recovery of oil and gas and potash resources from this area which is rewarding to the American Public. It will also promote the safety of underground mining and reduce surface environmental impacts to specific Drilling Islands within the designated development areas. 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引用次数: 0

摘要

从历史上看,在特拉华州盆地的秘书命令钾肥区(SOPA),石油和天然气公司与钾肥矿商之间一直存在争议。大多数情况下,这些争端是基于该地区与高压相关的操作失败。为了减少这些操作上的焦虑,计算储层压力,利用机器学习预测验证压力,并利用验证的压力利用地球物理测井截面建立压力趋势剖面是至关重要的。为了实现上述目标,该过程中使用的方法首先是利用钻井数据计算该地区的储层压力。然后利用人工神经网络(ANN)机器学习模型预测测井曲线和钻井参数,对计算出的压力进行验证。然后利用地球物理测井剖面,利用验证的油藏压力建立压力趋势剖面。建立人工神经网络时使用的参数包括深部、介质和浅层侧向电阻率测井、伽马测井、中子和密度孔隙度测井、计算覆盖层应力、电缆张力测井、井径测井、井径测井、井深测井、岩性测井、泥浆比重测井、光电截面测井、计算平均孔隙度、计算含水饱和度、校正容重测井和容重测井。碳酸钾是在新墨西哥州东南部的一个有限地区开采的。这个“钾肥地区”通过内政部通过当时的内政部长签署的几项命令获得了特殊地位。在这项工作中,这个“钾肥区”将被称为秘书命令钾肥区或SOPA。根据在SOPA内钻完的229口井的静水压力梯度计算了储层压力梯度。人工神经网络模型的构建分为三个步骤,包括数据处理、分析和部署。利用人工神经网络(ANN)对储层压力进行了高精度预测。训练、验证和检验的相关系数和R分别为0.978、0.985和0.976。经136次最优迭代后,均方误差(MSE)为2.9129。总体相关系数(R)大于0.979。这些结果表明,人工神经网络模型准确地预测了钾区实测储层压力。接下来,利用Petra、Matlab、IHS Kingdom和R机器语言,利用已验证的油藏压力,创建了二维和三维地球物理测井剖面。分别为该区域的三个部分,即后礁、礁和盆地,创建了三个从西到东的截面。第四个横截面从北(后礁)到南(盆地)穿过礁。横截面显示地层、深度和压力趋势。从这项研究中获得的信息将用于优化该地区油气和钾肥资源的经济开采,这对美国公众是有益的。它还将促进地下采矿的安全,减少对指定开发区内特定钻井岛的地表环境影响。这将带来两种资源的安全并发开发,如果没有本研究中应用的机器学习模型,这是无法实现的。
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Reservoir Pressure Gradient Trend Prediction for the Potash Area of Delaware Basin Using Artificial Neural Network and Geophysical Log Cross Sections
Historically, there has been controversies between the oil & gas companies and potash miners in the Secretarial Order Potash Area (SOPA) of Delaware basin. Mostly, these disputes are based on high pressure related operational failures in the area. To reduce these operational anxieties, it is vital to calculate the reservoir pressures, verify the pressures with machine learning predictions, and use the verified pressures to build pressure trend profiles using geophysical log cross-sections. To fulfil the above-mentioned objectives, the methodology used in the process starts with the calculation of reservoir pressures for the area using drilling data. The calculated pressures are then verified with Artificial Neural Network (ANN) machine learning model predictions utilizing well logs and drilling parameters. The verified reservoir pressures are then used to build pressure trend profiles using geophysical log cross-sections. Parameters used in building the ANN include deep, medium, & shallow laterolog resistivity logs, gamma ray log, neutron & density porosity logs, calculated overburden stress, cable tension log, well, caliper log, depth, lithology, mud weight, photoelectric cross-section log, calculated average porosity, calculated water saturation, corrected bulk density log, and bulk density log. Potash is mined in a limited area in the southeast portion of the state of New Mexico. This "potash area" has been afforded special status through the Department of the Interior through several Orders authored by the then Secretary of the Interior. In this work, this "potash area" will be known as the Secretarial Order Potash Area or SOPA. The reservoir pressure gradients were calculated according to the hydrostatic gradients of over 229 selected wells drilled and completed within the SOPA. The ANN model was built using 3 steps including data manipulation, analysis, and deployment. The reservoir pressures were predicted by the Artificial Neural Network (ANN) with high accuracy. The correlation coefficient, R for the training, validation, and testing are 0.978, 0.985, and 0.976, respectively. The Mean Square Error (MSE) was 2.9129 after 136 epochs optimum number of iterations. The overall correlation coefficient (R) is greater than 0.979. These results show that ANN models predicted the measured reservoir pressures accurately for the potash area. Next, the geophysical log cross-sections were created in 2-Dimensional and 3-Dimensional profiles with the verified reservoir pressures using Petra, Matlab, IHS Kingdom, and R machine language. Three west to east cross-sections were created for the three portions of the area namely Back-reef, Reef, and Basin separately. The fourth cross-section was created from the North (Back-Reef) to the South (Basin) through the Reef. The cross sections are displayed showing formation strata, depths, and pressure trends. The information gained from this study will be used to optimize the economic recovery of oil and gas and potash resources from this area which is rewarding to the American Public. It will also promote the safety of underground mining and reduce surface environmental impacts to specific Drilling Islands within the designated development areas. This will bring about safely concurrent development of both resources unachievable without the machine learning model applied in this study.
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