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Brittleness index prediction in shale gas reservoirs based on efficient network models

机译:基于有效网络模型的页岩气储层脆性指数预测

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Brittleness index is one of the critical geomechanical properties of unconventional reservoir rocks to screen effective hydraulic fracturing candidates. In petroleum engineering, brittleness index can be generally calculated from the mineralogical composition by X-ray diffraction (XRD) test or rock mechanical parameters by tri-axial experiments and well logs. However, mineral composition analysis or tri-axial experiments cannot produce continuous brittleness profile. Well log-based brittleness index prediction conventionally relies on Young's modulus and Poisson's ratio, but sometimes shear compressional velocity is not available to derive elastic inputs for the brittleness index calculation. This study proposes some data-driven practical brittleness prediction approaches based on back-propagation artificial neural network (BP-ANN), extreme learning machine (ELM) and linear regression using commonly available conventional logging data and lab mineralogical-derived brittleness. A dataset of 71 mineralogical-derived brittleness measurements from Silurian Longmaxi marine shale, Jiaoshiba Shale Gas Field, Sichuan Basin, China were established. The model comparisons and error analysis reveal that the application of artificial intelligence models can be more effectively applied to brittleness prediction compared with simple regression correlations. Both BP-ANN and ELM models are competent for brittleness prediction while BP-ANN model can produce slightly better brittleness prediction results with same inputs and ELM model require less running time. Thus, more choices can be made according to accuracy and computational speed demand. Moreover, an overall ranking of sensitivity degree is then provided to show the impacts of different well logs as inputs on the BP-ANN and ELM model, which is helpful to find optimal inputs in given case. Comparing to traditional well-log based brittleness approaches, data-based approaches show its wider applications because the integration of mineralogical composition and well log information can provide continuous brittleness profile in terms of high accuracy while acoustic full waveform velocities are no longer necessary inputs in brittleness evaluation. (C) 2016 Elsevier B.V. All rights reserved.
机译:脆性指数是非常规储层岩石筛选有效水力压裂候选物的关键地质力学性质之一。在石油工程中,脆性指数通常可以通过X射线衍射(XRD)测试从矿物学组成或通过三轴实验和测井曲线从岩石力学参数计算得出。但是,矿物成分分析或三轴实验不能产生连续的脆性曲线。通常,基于测井的脆性指数预测依赖于杨氏模量和泊松比,但有时无法使用剪切压缩速度来得出用于脆性指数计算的弹性输入。这项研究提出了一些数据驱动的实用脆性预测方法,该方法基于反向传播人工神经网络(BP-ANN),极限学习机(ELM)和线性回归,并使用常用的常规测井数据和实验室矿物学得出的脆性进行了预测。建立了中国四川盆地焦石坝页岩气田志留系龙马溪组海相页岩的71个矿物学脆性测量数据集。模型的比较和误差分析表明,与简单的回归相关性相比,人工智能模型的应用可以更有效地应用于脆性预测。 BP-ANN和ELM模型都可以用于脆性预测,而BP-ANN模型在相同输入下可以产生更好的脆性预测结果,而ELM模型需要更少的运行时间。因此,可以根据精度和计算速度要求做出更多选择。此外,然后提供敏感性程度的总体排名,以显示不同测井记录作为输入对BP-ANN和ELM模型的影响,这有助于在给定情况下找到最佳输入。与传统的基于测井仪的脆性方法相比,基于数据的方法显示了更广泛的应用,因为矿物成分和测井信息的集成可以提供连续的脆性分布,从而提高了精度,而声波全波速不再是脆性的必要输入。评价。 (C)2016 Elsevier B.V.保留所有权利。

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