体积不确定性分析中测井和地震资料的联合贝叶斯随机反演

Q4 Earth and Planetary Sciences International Journal of Mining and Geo-Engineering Pub Date : 2015-06-01 DOI:10.22059/IJMGE.2015.54636
M. Moradi, O. Asghari, G. Norouzi, M. Riahi, R. Sokooti
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引用次数: 0

摘要

本文介绍了一种新的地震反演算法在伊朗某油田的应用。随机(地统计)地震反演作为确定性反演的补充方法,被认为是地统计与地震反演算法的结合。该方法将不同尺度的不同数据源的信息作为贝叶斯统计中的先验信息进行整合。数据集成产生一个概率密度函数(称为后验概率),可以产生地下模型。采用马尔可夫链蒙特卡罗(MCMC)方法对后验概率分布进行采样,通过分析一组样本提取地下模型特征。本研究描述了贝叶斯框架下的随机地震反演理论,并将其应用于p -阻抗和孔隙度模型的推导。随机地震反演与基于确定性模型的地震反演的对比表明,随机地震反演可以提供更详细的地下特征信息。由于该方法提取了多种实现,因此对孔隙体积的估计和估计中的不确定性进行了分析。
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Joint Bayesian Stochastic Inversion of Well Logs and Seismic Data for Volumetric Uncertainty Analysis
Here in, an application of a new seismic inversion algorithm in one of Iran’s oilfields is described. Stochastic (geostatistical) seismic inversion, as a complementary method to deterministic inversion, is perceived as contribution combination of geostatistics and seismic inversion algorithm. This method integrates information from different data sources with different scales, as prior information in Bayesian statistics. Data integration leads to a probability density function (named as a posteriori probability) that can yield a model of subsurface. The Markov Chain Monte Carlo (MCMC) method is used to sample the posterior probability distribution, and the subsurface model characteristics can be extracted by analyzing a set of the samples. In this study, the theory of stochastic seismic inversion in a Bayesian framework was described and applied to infer P-impedance and porosity models. The comparison between the stochastic seismic inversion and the deterministic model based seismic inversion indicates that the stochastic seismic inversion can provide more detailed information of subsurface character. Since multiple realizations are extracted by this method, an estimation of pore volume and uncertainty in the estimation were analyzed.
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来源期刊
International Journal of Mining and Geo-Engineering
International Journal of Mining and Geo-Engineering Earth and Planetary Sciences-Geotechnical Engineering and Engineering Geology
CiteScore
0.80
自引率
0.00%
发文量
0
审稿时长
12 weeks
期刊最新文献
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