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Evaluation of the Total Organic Carbon (TOC) Using Different Artificial Intelligence Techniques

机译:使用不同人工智能技术评估总有机碳(TOC)

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摘要

Total organic carbon (TOC) is an essential parameter used in unconventional shale resources evaluation. Current methods that are used for TOC estimation are based, either on conducting time-consuming laboratory experiments, or on using empirical correlations developed for specific formations. In this study, four artificial intelligence (AI) models were developed to estimate the TOC using conventional well logs of deep resistivity, gamma-ray, sonic transit time, and bulk density. These models were developed based on the Takagi-Sugeno-Kang fuzzy interference system (TSK-FIS), Mamdani fuzzy interference system (M-FIS), functional neural network (FNN), and support vector machine (SVM). Over 800 data points of the conventional well logs and core data collected from Barnett shale were used to train and test the AI models. The optimized AI models were validated using unseen data from Devonian shale. The developed AI models showed accurate predictability of TOC in both Barnett and Devonian shale. FNN model overperformed others in estimating TOC for the validation data with average absolute percentage error (AAPE) and correlation coefficient (R) of 12.02%, and 0.879, respectively, followed by M-FIS and SVM, while TSK-FIS model showed the lowest predictability of TOC, with AAPE of 15.62% and R of 0.832. All AI models overperformed Wang models, which have recently developed to evaluate the TOC for Devonian formation.
机译:总有机碳(TOC)是非常规页岩资源评价中使用的基本参数。被用于估计TOC当前方法是基于,或者在导电费时实验室实验,或使用特定的地层开发的经验关系。在这项研究中,四对人工智能(AI)模型被开发使用估计深电阻率,γ射线,声波时差,和容重的常规测井曲线的TOC。这些模型是基于高木 - 关野康模糊干扰系统(TSK-FIS),Mamdani型模糊干扰系统(M-FIS),功能性神经网络(FNN),并支持向量机(SVM)上开发的。从Barnett页岩收集的常规测井和核心数据的超过800个数据点被用于训练和测试AI模型。使用从泥盆纪页岩看不见的数据优化的AI模型进行了验证。所开发的AI模型显示在这两个Barnett和泥盆纪页岩TOC的准确预测。 FNN模型overperformed他人在用于与平均绝对误差百分比(AAPE)和12.02%的相关系数(R)的验证数据来估计TOC,和0.879,分别,随后M-FIS和SVM,而TSK-FIS模型显示出最低TOC的可预测性,以15.62%AAPE和0.832 R上。所有的AI模式overperformed王车型,最近已发展到评估泥盆系地层的TOC。

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