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Automatic Identification of Formation lithology from Well Log Data: A Machine Learning Approach

机译:从测井数据自动识别地层岩性:一种机器学习方法

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摘要

Determination of the hydrocarbon content and also the successful drilling of petroleum wells are highly contingent upon the lithology of the underground formation. Conventional lithology identification methods are either uneconomical or of high uncertainties.The main aim of this study is to develop an intelligent model based on Least Squares Support Vector Machine (LSSVM) and Coupled Simulated Annealing (CSA) algorithm simply called CSA-LSSVM for predicting the lithology in one of the Iranian oilfields. To this end, photoelectric index (PEF) values were simulated by CSA-LSSVM algorithm based on valid well logging data generally known as lithology indicators. Model predictions were compared to the real data obtained from well logging operation and the overall Correlation Coefficient (R2) of 0.993 and Average Absolute Relative Deviation (AARD) of 1.6% were obtained for the total dataset (3243 data points) which shows the robustness of the CSA-LSSVM algorithm in predicting accurate PEF values. In order to check the validity of the employed well log data,value statistical method was implemented in this study for detecting the possible outliers. However, diagnosing only one single data point as the suspected data or probable outlier reveals the validity of recorded data points and shows high applicability domain of the proposed model.
机译:烃含量的确定以及石油井的成功钻探在很大程度上取决于地下地层的岩性。常规的岩性识别方法要么不经济,要么不确定性高。本研究的主要目的是基于最小二乘支持向量机(LSSVM)和耦合模拟退火(CSA)算法(简称为CSA-LSSVM)开发智能模型,以预测模型。伊朗油田之一的岩性。为此,基于有效的测井数据(通常称为岩性指标),通过CSA-LSSVM算法模拟了光电指数(PEF)值。将模型预测与从测井操作中获得的真实数据进行了比较,总数据集(3243个数据点)的总体相关系数(R2)为0.993,平均绝对相对偏差(AARD)为1.6%,显示了预测的鲁棒性CSA-LSSVM算法来预测准确的PEF值。为了检查所用测井数据的有效性,本研究采用了数值统计方法来检测可能的离群值。但是,仅将单个数据点诊断为可疑数据或可能的异常值可以揭示记录的数据点的有效性,并显示出所提出模型的高适用性域。

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