Case Study: Neural Network Implementation in Ensemble Machine Learning for Well Log Estimation, Case Applied in Campos Basin

E. Lira, R. M. Mendes
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Abstract

Summary Several activities in geosciences are supported by hard data, which are represented by trustworthy information. However, not all wells offer basic logs such as sonic and density. This kind of information is significant for characterization in reservoir geophysics. This case study proposes a combination of Multilayer Perceptron (MLP) tools that constitute a type of Artificial Neural Network (ANN) and the Ensemble Machine Learning (EML) technique, in the prediction of missing or imputation log data based on the dataset of the Campos Basin. Such machine learning tools are considered robust, fast, and low cost, widely used in several areas. The study explores the combination of MLP and EML in the development of the learning algorithm. The use of MLP was “tuned” with optimal hyperparameters through GridSearch and the EML built through the Voting Estimator technique in a weighted way through the Scikit-learn library. It’s selected well logs like sonic, density, porosity, among other information for training. The velocity profile was selected as the prediction target. The best calculation parameters and errors of ensemble machine learners were generated, and thus, to analyze the generalizability of the algorithms. And finally, the EML Results were compared with the test samples.
案例研究:神经网络在集成机器学习测井估计中的实现,案例应用于Campos盆地
地球科学中的一些活动是由可靠的信息所代表的硬数据支持的。然而,并非所有井都能提供声波和密度等基本测井数据。这类信息对储层地球物理表征具有重要意义。本案例研究提出了一种多层感知器(MLP)工具的组合,该工具构成了一种人工神经网络(ANN)和集成机器学习(EML)技术,用于预测基于Campos盆地数据集的缺失或输入日志数据。这种机器学习工具被认为是鲁棒、快速、低成本的,广泛应用于多个领域。本研究探索了MLP和EML在学习算法开发中的结合。通过GridSearch使用最优超参数“调整”MLP的使用,并通过投票估计器技术通过Scikit-learn库以加权方式构建EML。它可以选择声波、密度、孔隙度等测井信息进行训练。选择速度剖面作为预测目标。生成了集成机器学习器的最佳计算参数和误差,从而分析了算法的可泛化性。最后,将EML结果与试验样品进行了比较。
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