首页> 外文期刊>Geophysics: Journal of the Society of Exploration Geophysicists >Generation of synthetic dielectric dispersion logs in organic-rich shale formations using neural-network models
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Generation of synthetic dielectric dispersion logs in organic-rich shale formations using neural-network models

机译:使用神经网络模型产生合成介电分散原木的有机型页岩形成

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摘要

Dielectric dispersion (DD) logs acquired in subsurface geologic formations generally are composed of conductivity (s) and relative permittivity (er) measurements at four discrete frequencies in the range of 10 MHz to 1 GHz. Acquisition of DD logs in subsurface formations is operationally challenging, and it requires a hard-to-deploy infrastructure. We developed three supervised neural-network-based predictive methods to process conventional, easy-to-acquire subsurface logs for generating the eight DD logs acquired at four frequencies. These predictive methods will improve reservoir characterization in the absence of a DD logging tool. The predictive methods are tested in three wells intersecting organic-rich shale formations of the Permian Basin and the Bakken Shale. The first method predicts the eight dispersion logs simultaneously using a single artificial neural network (ANN) model, whereas the second method simultaneously predicts the four conductivity dispersion logs using one ANN model, followed by simultaneous prediction of four permittivity dispersion logs using a second ANN model. The third method sequentially predicts the eight dispersion logs, one at a time using eight sequential ANN models, based on a predetermined ranking of the prediction accuracy for each of the eight DD logs when simultaneously generated. Considering that the conventional and DD logs are recorded more than 10,000 ft deep in the subsurface using logging tools that are run at different times in rugose boreholes for sensing the near-wellbore geologic formation, the data used in this predictive work is prone to noise and biases that tend to adversely affect the prediction performances of the proposed methods. In terms of normalized root-mean square error (Nrms error), the prediction performances of the second predictive method are 8.5% worse and 6.2% better for the conductivity and permittivity dispersion logs, respectively, as compared with those of the first predictive method. The thir
机译:在地下地质形成中获取的介电分散(DD)日志通常由电导率和相对介电常数(ER)测量以10MHz至1GHz的范围内的四个离散频率组成。收购次数地层中的DD日志正在运作挑战,并且需要一个难以部署的基础架构。我们开发了三种基于网络的基于神经网络的预测方法来处理常规,易于获取的地下日志,用于生成以四个频率获取的八个DD日志。这些预测方法将在没有DD测井工具的情况下提高储层表征。预测方法在三个井交叉的有机盆地和Bakken Sheale交叉的三个孔中进行了测试。第一方法使用单个人工神经网络(ANN)模型同时预测八个色散日志,而第二种方法同时使用一个ANN模型预测四个电导率色散日志,然后使用第二个ANN模型同时预测四个介电常数色散日志。第三种方法顺序地预测了八个色散日志,一次使用八个顺序ANN模型,基于同时生成时的八个DD日志中的每一个的预测准确性的预定排名。考虑到传统和DD日志在地下录制了超过10,000英尺的地下,使用在Rugose Boreheres中的不同时间运行的伐木工具,用于感测近井眼地质形成,在这种预测工作中使用的数据容易发生噪音和倾向于对所提出的方法的预测性能产生不利影响的偏差。在归一化的根均方误差(NRMS误差)方面,与第一预测方法的相比,第二预测方法的预测性能分别为8.5%,对于电导率和介电常数分散日志,比第一预测方法相比,更好的6.2%。 thir.

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