LSTM神经网络工具在巴西砂岩储层地层固结推断中的现场应用

Fabio Rodrigues Gonçalves da Silva, Victor Hugo Ribeiro Carriço, Alexandre Zacarias Ignácio Pereira, André Leibsohn Martins
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摘要

这项工作的目的是提出一种基于钻井参数分析的方法来推断储层是否胶结良好,作为防砂策略选择的支持。这项工作提出了一个统计分类模型,并使用了一个基于记忆的神经网络,称为LSTM(长短期记忆)网络。该模型探索了问题的时间序列特征,并使用交叉策略进行了验证。训练性能使用F1-score进行评估,这是一个平衡精度(真阳性与假阳性的百分比)和召回率(真阳性与假阴性的百分比)的指标,因为数据集是不平衡的,一个类的样本多于另一个类。该数据集由预先标记的井组成,每口井至少有9小时的钻井数据。考虑了来自不同钻井的48个案例,对模型进行了训练,学习如何在两种模式之间进行标记。该模型分析了23个不同的钻井变量,得出结论。对模型进行训练后进行测试,结果显示识别效率很高,准确率在90%左右。通过这种方式,钻井过程中的机械数据分析发挥了非常重要的作用,补充了这些信息,并通过采用全尺寸和实时划痕测试来更好地了解地层行为。将收集到的数据与有测井信息的井的数据相匹配,提供地质力学校准,并允许一致的岩石剖面。它不仅有助于确定是否需要防砂,还有助于根据所分析地层的固结状态确定应用哪种技术。这些信息对完成过程的影响是表达性的。该特性在巴西以砂岩为储层的盐后井中非常有用。此外,由于该工具是为钻井数字孪生体设计的,因此在钻井阶段,一旦达到总深度,它就可以自动下入,从而快速预测完井设计。这是文献中第一次将这种方法用于特定的目标:根据钻井过程中收集的信息,确定是否需要安装砾石充填或任何类型的防砂措施。其出色的结果使该工具进入了部署阶段。这项工作还旨在说明该应用在实时决策中的第一个结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Field Deployment of a LSTM Neural Network Tool for the Rock Formation Consolidation Inference of Brazilian Sandstone Reservoirs
The objective of this work is to present a methodology based on the analysis of drilling parameters to infer if a reservoir formation is well consolidated or not, as a support to the selection of sand control strategies. This work proposes a statistical classification model and the usage of a memory based neural network, known as LSTM (long short-term memory) network. This model explores time series characteristics of the problem and it is validated using a cross strategy. Training performance is evaluated using F1-score, which is a metric that balances precision (percentage of true positives compared to false positives) and recall (percentage of true positives compared to false negatives), chosen because the dataset is unbalanced, there are more samples of one class than the other. The dataset consists of pre-tagged wells, each of them with at least nine hours of drilling data. Considering 48 cases from different drilled wells, the model was trained to learn how to tag between both patterns. The model analyzes 23 different drilling variables to reach a conclusion. After training the model, tests were performed and the results showed a high identification efficiency: around 90% of accuracy. That way, mechanical data analysis from the drilling process plays a very important role, supplementing that information and allowing a better understanding of formation behavior by employing what can be considered full-size and a real-time scratch test. Match the collected data with those from wells in which there is logging information, provides geomechanics calibration, and allows consistent rock profiling. It helps to define not only if there is a need for sand control but also the kind of technique to be applied to the analyzed formation accordingly to its consolidation state. The impact of that information is expressive to the completion process. This feature will be very useful in Brazilian post-salt wells that present sandstone as its reservoir rock formation. Also, as this tool was designed to run in a drilling digital twin, it can be automatically run as soon as the total depth is reached in the drilling phase, providing a fast insight to anticipate completion design. It is the first time in literature that this approach is used for this specific objective: define if a gravel pack or even any kind of sand control is indeed necessary to be installed based on information gathered while drilling the well. Its great results led this tool to the deployment phase. This work also aims to illustrate the first outcomes of that application in real-time decision-making.
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