...
首页> 外文期刊>Journal of Petroleum Exploration and Production Technology >Thermal maturity and TOC prediction using machine learning techniques case study from the Cretaceous–Paleocene source rock, Taranaki Basin, New Zealand
【24h】

Thermal maturity and TOC prediction using machine learning techniques case study from the Cretaceous–Paleocene source rock, Taranaki Basin, New Zealand

机译:使用机器学习技术进行热成熟度和TOC预测的案例研究,来自新西兰塔拉纳基盆地白垩纪-古新世烃源岩

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Thermal maturity, organic richness and kerogen typing are very important parameters to be evaluated for source rock characterization. Due to the difficulties of high cost geochemical analyses and the unavailability of rock samples, it was necessary to examine and test many different method and techniques to help in the prediction of TOC values as well as other maturity indicators in case of missing or absence of geochemical data. Integrated study of machine learning techniques and well-log data has been applied on Cretaceous–Paleocene formations in the Taranaki Basin, New Zealand. A novel approach of maturity prediction using Tmax and vitrinite reflectance (VR%) is the first and preliminary objective of this research. Moreover, the organic richness or the total organic carbon (TOC) content has been predicted as well. Geochemical and well-log data collected from the Cretaceous Rakopi and North Cape formations and Paleocene Mangahewa Formation have been processed and prepared to apply the machine learning techniques. Five machine learning techniques, namely Bayesian regularization for feed-forward neural networks (BRNNs), random forest (RF), support vector machine (SVM) for regression, linear regression (LR) and Gaussian process regression (GPR), were employed for prediction of TOC, Tmax and VR, and their results have been compared. For TOC prediction, the best model achieved the coefficient of determination (R2) value of 0.964 using RF model. For Tmax prediction, BRNN with one hidden layer achieved the R2 value of 0.828. BRNN with two hidden layers produced the best model for VR prediction achieving R2?=?0.636. A comparison of five ML techniques showed that all of these techniques performed exceedingly well for TOC prediction with a value of R2?>?0.96. In contrast, BRNN with one hidden layer was the only ML technique able to achieve R2?>?0.8 for Tmax and BRNN with two hidden layers was the only ML technique able to achieve R2?>?0.6 for VR prediction. Therefore, this research provides a strong empirical evidence that ML techniques can capture the nonlinear relationship between the well-log data and TOC as well as the maturity indicators which may not be fully understood by existing linear models.
机译:热成熟度,有机质丰富度和干酪根类型是非常重要的参数,需要评估以鉴定烃源岩。由于昂贵的地球化学分析的困难和岩石样品的缺乏,有必要检查和测试许多不同的方法和技术,以帮助预测或丢失地球化学物质时的TOC值以及其他成熟度指标数据。机器学习技术和测井资料的综合研究已应用于新西兰塔拉纳基盆地的白垩纪-古新世地层。利用Tmax和镜质体反射率(VR%)进行成熟度预测的新方法是这项研究的首要目标。此外,还已经预测了有机物富集度或总有机碳(TOC)含量。已经处理并准备了从白垩纪拉科皮和北开普组以及古新世Mangahewa组收集的地球化学和测井数据,以应用机器学习技术。五种机器学习技术,即前馈神经网络的贝叶斯正则化(BRNN),随机森林(RF),支持向量机(SVM)进行回归,线性回归(LR)和高斯过程回归(GPR)被用于预测TOC,Tmax和VR的结果进行了比较。对于TOC预测,最佳模型使用RF模型获得的确定系数(R2)值为0.964。对于Tmax预测,具有一层隐藏层的BRNN的R2值为0.828。具有两个隐藏层的BRNN为VR预测提供了最佳模型,达到R2≥0.636。对五种机器学习技术的比较表明,所有这些技术在TOC预测中的表现都非常好,R2≥0.96。相比之下,具有一个隐藏层的BRNN是唯一能够使Tmax达到R2≥0.8的ML技术,而具有两个隐藏层的BRNN是唯一能够使VR预测达到R2≥0.6的ML技术。因此,这项研究提供了有力的经验证据,即机器学习技术可以捕获测井数据与总有机碳之间的非线性关系,以及现有线性模型可能无法完全理解的成熟度指标。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号