论文标题
用于自动选择地下地层顶部的推荐系统
A recommender system for automatic picking of subsurface formation tops
论文作者
论文摘要
地球科学领域专家传统上使用地下表面上使用地球物理井原木(已知均为井g相关)将形成在地下上关联。基于单个井的日志解释和井井比较,这些相关性是在地层框架内沉积模型的背景下完成的。最近,许多研究人员使用各种测量良好相似性的扭曲算法以及无监督和监督的机器学习方法的各种翘曲算法专注于自动井log的相关性,这些算法基于许多其他井中的已知顶部分配分类标签。这些方法需要一套标准化的数字井原木套件(即每个井的伽玛射线日志)以及地层顶部的深度,在许多情况下可能无法使用。本文中,我们提出了一种不使用地球物理井日志进行相关性的方法,而是在多个井中使用已经挑选的顶部,向井中剩余的未挑选的顶部推荐深度。该推荐系统将两个不同盆地中两个不同数据集的所有井中的所有井顶计算到所有地层上的深度。茶壶圆顶数据集由岩石地层形成顶部组成,Mannville组数据集由序列 - 地层学(代表地层单元中的多个岩性组)组成。对于演示,四倍跨验证的平均绝对误差和根平方误差将推荐系统的预测与地面真相解释进行比较。推荐系统具有竞争力,并且通常超过最先进的样条插值方法的状态。最后,增加训练数据集的大小会降低预测误差,而误差的差异随着每个地层中选择的构造顶部的增加而降低,对于岩石地层学的顶部挑选良好。
Geoscience domain experts traditionally correlate formation tops in the subsurface using geophysical well logs (known as well-log correlation) by-hand. Based on individual well log interpretation and well-to-well comparisons, these correlations are done in the context of depositional models within a stratigraphic framework. Recently, many researchers have focused on automatic well-log correlation using a variety of warping algorithms that measure well similarity, and both unsupervised and supervised machine learning methods that assign categorical labels based on known tops in many other wells. These methods require a standardized suite of digital well logs (i.e. gamma ray logs for every well) along with the depth to the top of the formations, which might not be available in many cases. Herein, we propose a method that does not use geophysical well logs for correlation, but rather uses already picked tops in multiple wells to recommend the depth to the remaining unpicked tops in the wells. This recommender system calculates the depth to all formation tops in all the wells for two different datasets in two different basins. The Teapot Dome dataset is composed of lithostratigraphic formation tops, and the Mannville Group dataset is composed of sequence-stratigraphic (representing multiple lithologic groups within a stratigraphic unit) formation tops. For the demonstration, mean absolute error and root mean squared error of four-fold cross-validation compares the recommender system predictions to the ground truth human interpretations. The recommender system is competitive and often outperforms state of the art spline interpolation methods. Lastly, increasing the size of the training dataset decreases the prediction error, and that variance in error decreases with increasing formation tops picked in each formation and well for the lithostratigraphic top picks.