Interactive software for processing and modeling oil well resistivity logs as part of a two-dimensional interpretation approach

O. O. Asanov, A. M. Petrov, O. Nechaev, K. Danilovskiy
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Abstract

Resistivity well logging is widely used to identify reservoir rocks and evaluate their oil potential. However, the integral nature of the rock response to the field excited by the logging tool leads to the fact that the tool signal opposite the target formation is influenced by a well filled with drilling fluid, overlying sediments, drilling fluid filtrate invasion into the formation, etc. Today's widespread methods of resistivity logs interpretation are based on excessive simplifications, which in complex conditions leads to errors in determining the oil saturation coefficient of the target reservoir, costs of testing water-saturated intervals and missing the potentially promising reservoirs. The paper presents the results of developing new interactive software for working with well logging data and geoelectric model of the environment, focused on a 2D approach to interpreting resistivity logs. The use of a 2D axisymmetric geoelectric model of the medium as a base allows one to correctly take into account the above factors when interpreting practical data. Original realization of user interaction with geoelectric model of near-wellbore space takes into account the features of 2D approach to resistivity logs interpretation and provides convenience of work with multilayer models. The computing server AlondraCore integrated with the software supports resistivity logs simulation using two types of forward problem solvers: high-precision finite-element and fast neural network-based ones. The finite-element algorithms provide high log simulation accuracy with the ability to adjust the tool parameters. On the other hand, the neural network-based algorithms provide fast solution of forward problems for common logging tools.
用于处理和模拟油井电阻率测井曲线的交互式软件,作为二维解释方法的一部分
电阻率测井被广泛用于识别储层岩石和评价其含油潜力。然而,由于岩石对测井工具激发的场响应的整体性,导致目标地层对面的工具信号受到充满钻井液、上覆沉积物、钻井液滤液侵入地层等因素的影响。目前普遍采用的电阻率测井解释方法是基于过度简化的,在复杂的条件下,这种方法会导致在确定目标储层的含油饱和度系数时出现错误,测试含水层段的成本较高,并且会错过潜在的有潜力的储层。本文介绍了开发用于处理测井数据和环境地电模型的新型交互式软件的结果,重点是用二维方法解释电阻率测井曲线。使用介质的二维轴对称地电模型作为基础,可以在解释实际数据时正确考虑上述因素。原始实现与近井空间地电模型的用户交互,考虑了二维电阻率测井解释方法的特点,为多层模型的工作提供了便利。集成了软件的计算服务器AlondraCore支持电阻率测井模拟,使用两种类型的正向问题求解器:高精度有限元和快速神经网络。有限元算法提供了高的测井模拟精度,并能够调整工具参数。另一方面,基于神经网络的算法为常用测井工具提供了快速求解正向问题的方法。
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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