利用统计和多智能模型对伊朗西南部碳酸盐岩-硅质混合储层的岩石物理数据进行横波速度估算

Z. Hosseini, Sajjad Gharechelou, A. Mahboubi, R. Moussavi-Harami, A. Kadkhodaie-Ilkhchi, M. Zeinali
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引用次数: 0

摘要

结合两个或多个人工智能(AI)模型来设计单个模型,近年来在油气勘探中越来越受欢迎。在这项研究中,我们利用碳酸盐岩-硅屑混合非均质储层的岩石物理数据,通过统计模型和人工智能模型的整合,成功地预测了剪切波速(Vs),精度更高。在设计的多模型代码中,首先使用多元线性回归(MLR)从岩石物理数据中选择更相关的输入变量,并使用建议函数的权重系数。最具影响力的岩石物理数据(Vp, NPHI, RHOB)传递给蚁群优化(ACOR)进行训练,并建立反向传播(BP)算法的初始连接权值和偏差。然后应用BP训练算法进行最终权值和可接受的横波速度预测。通过对伊朗某油田碳酸盐岩-硅屑混合储层的案例研究,说明了这种新方法。结果表明,所提出的综合建模方法能够充分提高v估计的性能,是一种适用于复杂成岩叠层的混合非均质层段的方法。此外,该模型预测的v值与地层的岩性、相和成岩作用变化具有良好的相关性。同时,所建立的人工智能多模型可作为估计岩石弹性特性的有效方法。更准确地预测几口井的岩石弹性特性,可以减少勘探的不确定性,为石油工业节省大量的时间和成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shear wave velocity estimation utilizing statistical and multi-intelligent models from petrophysical data in a mixed carbonate-siliciclastic reservoir, SW Iran
The conjugation of two or more Artificial Intelligent (AI) models used to design a single model that has increased in popularity over the recent years for exploration of hydrocarbon reservoirs. In this research, we have successfully predicted shear wave velocity (Vs) with higher accuracy through the integration of statistical and AI models using petrophysical data in a mixed carbonate-siliciclastic heterogeneous reservoir. In the designed code for multi-model, first Multivariate Linear Regression (MLR) is used to select the more relevant input variables from petrophysical data using weight coefficients of a suggested function. The most influential petrophysical data (Vp, NPHI, RHOB) are passed to Ant colony optimization (ACOR) for training and establishing initial connection weights and biases of back propagation (BP) algorithm. Afterward, BP training algorithm is applied for final weights and acceptable prediction of shear wave velocity. This novel methodology is illustrated by using a case study from the mixed carbonate-siliciclastic reservoir from one of the Iranian oilfields. Results show that the proposed integrated modeling can sufficiently improve the performance of Vs estimation, and is a method applicable to mixed heterogeneous intervals with complicated diagenetic overprints. Furthermore, predicted Vs from this model is well correlated with lithology, facies and diagenesis variations in the formation. Meanwhile, the developed AI multi-model can serve as an effective approach for estimation of rock elastic properties. More accurate prediction of rock elastic properties in several wells could reduce uncertainty of exploration and save plenty of time and cost for oil industries.
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