基于机器学习的自动日志正则化和特征增强方法的准确伪日志预测

M. Jaya, Abdrahman Sharif, Ali Ahmed Reda Abdulkarim, Ghazali Ahmad Riza, Maleki Ali Hajian, Elsebakhi Emad
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引用次数: 0

摘要

在有限且稀疏的井资料下,基于ml的地震岩性预测效果往往不理想。为了解决这一限制,我们提出了一种新的自动测井正则化(ALR)方法,该方法采用特殊设计的特征增强策略来提高预测精度。ALR方法的有效性在马来盆地的现场数据中得到了证明,我们成功地预测了弹性测井曲线,准确度提高了30%,而只使用了28%的训练数据集。ALR工作流程(图1):(1)特征选择和增强;(2)训练与预测(3)预测优化。该工作流程首先使用标准ML工作流程(步骤1-2)预测任何在训练中可用但在盲井中不可用的日志类型。然后,使用特殊设计的特征增强策略(步骤3),将盲井中这些中间预测的测井曲线与地震衍生属性共同用作输入特征。最后,重复步骤1和2,使用这些增强的输入特征预测弹性测井曲线。将ALR方法应用于马来盆地的一个油气田数据,仅根据地震数据预测五口盲井的弹性测井(AI和SI),并与标准ML工作流程进行了比较。2口井被用作训练(占所有数据的28%)。标准ML工作流(图2a)的预测性能很差,只能捕获实际AI/SI日志的一般平均值。ALR工作流的结果(图2b)显示,与标准ML工作流相比,预测性能提高了30%。总的来说,该方法能够很好地捕获背景和高分辨率趋势,提高了整体预测性能。对于这一结果有两种可能的解释:a)仅使用地震数据就可以在ALR中正确地重建测井曲线的背景(低频)趋势。这主要在于增强特征能够更好地学习地震数据与弹性测井之间不确定的反射-接收关系,以及地震数据的时空变化特性;(b)在很少或没有监督的情况下,学习输入(特征)和输出(标签)变量之间有意义的非线性特征关系的能力似乎可以通过专门设计的特征增强来正常工作。ALR方法是一种基于机器学习的伪测井生成方法,使用特殊设计的特征增强策略从地震数据中生成。这种新颖的ALR实现减轻了对大量高质量标记数据用于训练的要求,因此可以应用于井数据信息有限的地区。事实证明,ALR方法在直接弹性测井预测中具有很高的精度,并有可能推广到从地震资料中估计岩石物性。
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Accurate Pseudo Log Prediction Using Machine Learning Based Automatic Log Regularization and Feature Augmentation Method
The performance of ML-based rock properties prediction from seismic with limited and sparse well data is very often inadequate. To address this limitation, we propose a novel automatic well log regularization (ALR) method with specially designed feature augmentation strategy to improve the prediction accuracy. The effectiveness of ALR method is showcased on field data in Malay basin where we successfully predict elastic logs with 30% higher accuracy, while using only 28% less training dataset. The ALR workflow (Figure 1): (1) feature selection and augmentation; (2) training and prediction and (3) prediction optimizations. The workflow starts with predicting any logs type which are available at training but not in blind wells using standard ML workflow for all blind wells (Step 1-2). Then, these intermediately predicted logs at blind well were jointly used as input features together with seismic-derived attributes using a specially designed feature augmentation strategy (Step 3). Finally, Step 1and 2 are then repeated to predict the elastic logs using these augmented input features. The ALR method was applied on an oil/gas field data in Malay basin to predict elastic logs (AI and SI) at five blind wells from seismic data only and compared to the standard ML workflow. Two wells were used as training (28% of all data). The prediction performance of standard ML workflow (Figure 2a) is poor and can only capture general mean values of the actual AI/SI logs. The results of ALR workflow (Figure 2b) shows 30% better prediction performance compared to the standard ML workflow. In general, the background and high-resolution trend are well captured, and the overall prediction performance is improved using the new proposed prediction method. There are conceivably two explanations for this result: a) the background (low frequency) trend of the well log is properly reconstructed in ALR using only using seismic data. This could mainly lie in the ability of augmented features in better learning the uncertain reflection-reception relationship between seismic data and elastic logs, as well as the spatial/time-varying property of seismic data; (b) The ability to learn meaningful nonlinear feature relationship between input (feature) and output (label) variables with little or no supervision seems to work properly using specially designed feature augmentation. The ALR method is an ML-based pseudo log generation from seismic data using specially designed feature augmentation strategy. The novel ALR implementation relaxes the requirement of having a massive amount of high-quality labeled data for training and can therefore be applied in areas with limited well data information. ALR method is proven to be highly accurate for direct elastic logs prediction and can potentially be extended to estimate petrophysical properties from seismic data.
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