首页> 外文期刊>Geophysical Prospecting >Integrating facies-based Bayesian inversion and supervised machine learning for petro-facies characterization in the Snadd Formation of the Goliat Field, south-western Barents Sea
【24h】

Integrating facies-based Bayesian inversion and supervised machine learning for petro-facies characterization in the Snadd Formation of the Goliat Field, south-western Barents Sea

机译:在西南巴伦支海的Goliat油田的Snadd组中,将基于相的贝叶斯反演和有监督的机器学习相结合来表征相。

获取原文
获取原文并翻译 | 示例
       

摘要

Seismic petro-facies characterization in low net-to-gross reservoirs with poor reservoir properties such as the Snadd Formation in the Goliat field requires a multidisciplinary approach. This is especially important when the elastic properties of the desired petro-facies significantly overlap. Pore fluid corrected endmember sand and shale depth trends have been used to generate stochastic forward models for different lithology and fluid combinations in order to assess the degree of separation of different petro-facies. Subsequently, a spectral decomposition and blending of selected frequency volumes reveal some seismic fluvial geomorphological features. We then jointly inverted for impedance and facies within a Bayesian framework using facies-dependent rock physics depth trends as input. The results from the inversion are then integrated into a supervised machine learning neural network for effective porosity discrimination. Probability density functions derived from stochastic forward modelling of endmember depth trends show a decreasing seismic fluid discrimination with depth. Spectral decomposition and blending of selected frequencies reveal a dominant NNE trend compared to the regional SE-NW pro-gradational trend, and a local E-W trend potentially related to fault activity at branches of the Troms-Finnmark Fault Complex. The facies-based inversion captures the main reservoir facies within the limits of the seismic bandwidth. Meanwhile the effective porosity predictions from the multilayer feed forward neural network are consistent with the inverted facies model, and can be used to qualitatively highlight the cleanest regions within the inverted facies model. A combination of facies-based inversion and neural network improves the seismic reservoir delineation of the Snadd Formation in the Goliat Field.
机译:在具有低储层性质的低净高毛储量的地震岩相特征中,如戈利亚特油田的Snadd组,需要采取多学科的方法。当所需石油相的弹性性质明显重叠时,这一点尤其重要。为了评估不同岩相的分离程度,已使用孔隙流体校正的端构件砂岩和页岩深度趋势来生成针对不同岩性和流体组合的随机正向模型。随后,频谱分解和选定频率量的融合揭示了一些地震河流地貌特征。然后,我们使用依赖于相的岩石物理深度趋势作为输入,在贝叶斯框架内共同反演阻抗和相。然后将反演的结果集成到有监督的机器学习神经网络中,以进行有效的孔隙度判别。从端构件深度趋势的随机正演模型推导的概率密度函数显示,随着深度的增加,地震流体的判别力逐渐减小。频谱分解和选定频率的混合显示出与区域SE-NW渐进趋势相比,主要的NNE趋势,以及与Troms-Finnmark断层复杂分支的断层活动潜在相关的局部E-W趋势。基于相的反演捕获了地震带宽范围内的主要储层相。同时,多层前馈神经网络的有效孔隙度预测值与反演相模型一致,可用于定性地突出反演相模型中最干净的区域。基于相的反演和神经网络的结合改善了Goliat油田Snadd组的地震储层描述。

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