地质断层尺寸分布:模型选择与参数估计

H. Borgos, H. Omre, C. Townsend
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引用次数: 3

摘要

地质断层影响储层流体流动,在储层表征中具有重要意义。故障数量或故障强度和故障大小都很重要。断层的大小通常用最大位移来表示,这可以从地震数据中解释。由于地震分辨率的限制,只能观测到相对较大的断层,而且观测结果是有偏差的。为了对断层总体进行推断,必须选择合适的断层大小分布模型。地球物理文献中常用分形(帕累托)分布,但也有人提出指数分布。在这项工作中,我们在统计上比较了这两种模型。定义了两种竞争模型下断层大小分布的贝叶斯模型,其中先验分布分别为Pareto和指数pdf,似然函数描述了地震断层观测的抽样误差。使用贝叶斯因子作为模型选择的准则,并使用MCMC抽样进行估计。采用伪先验构造MCMC算法,对两个模型进行联合采样。将统计过程应用于北海Gullfaks油田的断层大小数据集。对于该数据集,我们发现故障大小最好用指数分布来描述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Size distribution of geological faults: Model choice and parameter estimation
Geological faults are important in reservoir characterization, since they influence fluid flow in the reservoir. Both the number of faults, or the fault intensity, and the fault sizes are of importance. Fault sizes are often represented by maximum displacements, which can be interpreted from seismic data. Owing to limitations in seismic resolution only faults of relatively large size can be observed, and the observations are biased. In order to make inference about the overall fault population, a proper model must be chosen for the fault size distribution. A fractal (Pareto) distribution is commonly used in geophysics literature, but the exponential distribution has also been suggested. In this work we compare the two models statistically. A Bayesian model is defined for the fault size distributions under the two competing models, where the prior distributions are given as the Pareto and the exponential pdfs, respectively, and the likelihood function describes the sampling errors associated with seismic fault observations. The Bayes factor is used as criterion for the model choice, and is estimated using MCMC sampling. The MCMC algorithm is constructed using pseudopriors to sample jointly the two models. The statistical procedure is applied to a fault size data set from the Gullfaks Field in the North Sea. For this data set we find that the fault sizes are best described by the exponential distribution.
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