论文标题
使用潜在高斯随机场进行建模和模拟沉积序列
Modeling and simulating depositional sequences using latent Gaussian random fields
论文作者
论文摘要
在井眼数据上有条件地模拟沉积(或地层)序列是水文地质学和石油地统计学中的一个长期问题。本文提出了一种基于规则的新方法,用于模拟岩体厚度数据有条件地表面的沉积序列。每一层的厚度由转换的潜在高斯随机场建模,得益于截断过程,允许无效厚度。按照区域地层序列,将层依次堆叠在彼此上方。通过充分选择这些随机场的变化函数,分隔两层的模拟表面可以是连续且光滑的。钻孔信息通常是不完整的,因为它没有提供有关某些观察到的厚度所属于的确切层的直接信息。本文提出的潜在高斯模型通过带有马尔可夫链蒙特卡洛(MCMC)算法的贝叶斯设置为该问题提供了自然解决方案,该算法可以探索与数据兼容的所有可能配置。该模型和相关的MCMC算法在合成数据上进行了验证,然后在威尼斯平原的底土中应用,并具有中等密集的核孔网络。
Simulating a depositional (or stratigraphic) sequence conditionally on borehole data is a long-standing problem in hydrogeology and in petroleum geostatistics. This paper presents a new rule-based approach for simulating depositional sequences of surfaces conditionally on lithofacies thickness data. The thickness of each layer is modeled by a transformed latent Gaussian random field allowing for null thickness thanks to a truncation process. Layers are sequentially stacked above each other following the regional stratigraphic sequence. By choosing adequately the variograms of these random fields, the simulated surfaces separating two layers can be continuous and smooth. Borehole information is often incomplete in the sense that it does not provide direct information as to the exact layer some observed thickness belongs to. The latent Gaussian model proposed in this paper offers a natural solution to this problem by means of a Bayesian setting with a Markov Chain Monte Carlo (MCMC) algorithm that can explore all possible configurations compatible with the data. The model and the associated MCMC algorithm are validated on synthetic data and then applied to a subsoil in the Venetian Plain with a moderately dense network of cored boreholes.