Should We Care About the Background Gas Effect on Reservoir Properties Prediction Using Machine Learning and Advanced Mud Gas Data?

F. Anifowose, M. Mezghani, Saleh Badawood, Javid Ismail
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Abstract

Background gas is the baseline gas measurement due to the recycled gas dissolved in or expelled from the drilling mud additives. It occurs more in oil-based mud systems than in water-based. A cut-off is usually applied on the mud gas data to remove the background gas effect in traditional mud gas analyses. This imposes an overhead on modeling procedures. This study investigates the effect of applying the cut-off on the performance of machine learning algorithms. A case of porosity prediction using advanced mud gas data is considered in this study. Using data from six wells, we implemented two experiments to compare the performance of artificial neural networks (ANN) with and without the cut-off. The first experiment applies a cut-off of 100 ppm on the total normalized gas while the second uses the entire data without the cut-off. The comparative results are benchmarked with those of a multivariate linear regression (MLR). Each well dataset was split into training and validation subsets using a randomized sampling approach in the ratio of 70:30. The results compare each of the MLR and ANN models individually and over all the datasets without and with the cut-off applied. The ANN models show better or same performance on the datasets without the cut-off in four out of six cases (67%). This shows that the ANN models may be less affected by the presence of the background gases in the mud gas datasets. It could be preliminarily concluded, based on the data used in this study, that it might be unnecessary to apply cut-offs on the mud gas data for ML algorithms due to their capability to handle noisy data. This conclusion is, however, subject to more extensive studies while ensuring consistency. Avoiding the application of the cut-off will remove the unnecessary overhead and provide more data for effective ML model training. While the results of this preliminary study somewhat agree with the traditional practice of applying a cut-off on advanced mud gas data, more extensive experiments will be conducted in our future work to further validate the conclusion. The background gas is traditionally considered noisy. In ML modeling, it could provide more information to further explain the nonlinear relationship between the input features and the target variable, hence improving the predictive capability.
利用机器学习和先进的泥浆气数据进行储层物性预测时,我们应该关注背景气效应吗?
背景气体是由于钻井泥浆添加剂中溶解或排出的回收气体而产生的基准气体测量值。它在油基泥浆体系中比在水基泥浆体系中更常见。在传统的泥浆气分析中,通常对泥浆气数据进行截止处理,以消除背景气体的影响。这增加了建模过程的开销。本研究探讨了应用截止值对机器学习算法性能的影响。本研究考虑了利用先进的泥浆气数据进行孔隙度预测的一个案例。利用来自6口井的数据,我们进行了两次实验来比较人工神经网络(ANN)在有截止点和没有截止点时的性能。第一个实验对总规范化气体施加100 ppm的截止值,而第二个实验使用没有截止值的整个数据。比较结果以多元线性回归(MLR)的结果为基准。使用70:30的随机抽样方法,将每个井数据集分成训练和验证子集。结果分别比较了每个MLR和ANN模型,并对所有数据集进行了比较。在六分之四(67%)的情况下,人工神经网络模型在没有截止点的数据集上表现出更好或相同的性能。这表明人工神经网络模型受泥浆气数据集中背景气体存在的影响较小。根据本研究使用的数据,可以初步得出结论,由于ML算法具有处理噪声数据的能力,因此可能没有必要对泥气数据应用截止。然而,这一结论需要进行更广泛的研究,同时确保一致性。避免应用截止将消除不必要的开销,并为有效的ML模型训练提供更多的数据。虽然这项初步研究的结果在一定程度上与对高级泥浆气数据应用截止值的传统做法相一致,但我们将在未来的工作中进行更广泛的实验,以进一步验证结论。传统上认为背景气体是嘈杂的。在ML建模中,它可以提供更多的信息来进一步解释输入特征与目标变量之间的非线性关系,从而提高预测能力。
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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