A Thorough Review of Machine Learning Applications in Oil and Gas Industry

C. Temizel, C. H. Canbaz, Yildiray Palabiyik, Hakki Aydin, M. Tran, M. H. Ozyurtkan, M. Yurukcu, Paul Johnson
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引用次数: 1

Abstract

Reservoir engineering constitutes a major part of the studies regarding oil and gas exploration and production. Reservoir engineering has various duties, including conducting experiments, constructing appropriate models, characterization, and forecasting reservoir dynamics. However, traditional engineering approaches started to face challenges as the number of raw field data increases. It pushed the researchers to use more powerful tools for data classification, cleaning and preparing data to be used in models, which enhances a better data evaluation, thus making proper decisions. In addition, simultaneous simulations are sometimes performed, aiming to have optimization and sensitivity analysis during the history matching process. Multi-functional works are required to meet all these deficiencies. Upgrading conventional reservoir engineering approaches with CPUs, or more powerful computers are insufficient since it increases computational cost and is time-consuming. Machine learning techniques have been proposed as the best solution for strong learning capability and computational efficiency. Recently developed algorithms make it possible to handle a very large number of data with high accuracy. The most widely used machine learning approaches are: Artificial Neural Network (ANN), Support Vector Machines and Adaptive Neuro-Fuzzy Inference Systems. In this study, these approaches are introduced by providing their capability and limitations. After that, the study focuses on using machine learning techniques in unconventional reservoir engineering calculations: Reservoir characterization, PVT calculations and optimization of well completion. These processes are repeated until all the values reach to the output layer. Normally, one hidden layer is good enough for most problems and additional hidden layers usually does not improve the model performance, instead, it may create the risk for converging to a local minimum and make the model more complex. The most typical neural network is the forward feed network, often used for data classification. MLP has a learning function that minimizes a global error function, the least square method. It uses back propagation algorithm to update the weights, searching for local minima by performing a gradient descent (Figure 1). The learning rate is usually selected as less than one.
机器学习在油气工业中的应用综述
储层工程是油气勘探开发研究的重要组成部分。油藏工程有多种职责,包括进行实验、构建适当的模型、表征和预测油藏动态。然而,随着原始现场数据数量的增加,传统的工程方法开始面临挑战。它促使研究人员使用更强大的工具进行数据分类、清理和准备数据,以便在模型中使用,从而增强了更好的数据评估,从而做出正确的决策。此外,有时还会进行同步仿真,目的是在历史匹配过程中进行优化和灵敏度分析。需要多功能工程来满足所有这些不足。使用cpu或更强大的计算机来升级传统的油藏工程方法是不够的,因为这会增加计算成本,而且耗时。机器学习技术被认为是具有强大学习能力和计算效率的最佳解决方案。最近开发的算法使高精度地处理大量数据成为可能。最广泛使用的机器学习方法是:人工神经网络(ANN),支持向量机和自适应神经模糊推理系统。在本研究中,介绍了这些方法的能力和局限性。在此之后,研究重点是将机器学习技术应用于非常规油藏工程计算:油藏表征、PVT计算和完井优化。这些过程重复进行,直到所有的值都到达输出层。通常,一个隐藏层对于大多数问题来说就足够了,而额外的隐藏层通常不会提高模型的性能,相反,它可能会产生收敛到局部最小值的风险,并使模型更加复杂。最典型的神经网络是前馈网络,常用于数据分类。MLP有一个最小化全局误差函数的学习函数,即最小二乘法。它使用反向传播算法更新权重,通过执行梯度下降来搜索局部最小值(图1)。通常选择学习率小于1。
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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