首页> 外文期刊>Geoscientific Model Development Discussions >Constraining stochastic 3-D structural geological models with topology information using approximate Bayesian computation in GemPy 2.1
【24h】

Constraining stochastic 3-D structural geological models with topology information using approximate Bayesian computation in GemPy 2.1

机译:在Gempy 2.1中使用近似贝叶斯计算的拓扑信息约束随机3-D结构地质模型

获取原文
           

摘要

Structural geomodeling is a key technology for the visualization and quantification of subsurface systems. Given the limited data and the resulting necessity for geological interpretation to construct these geomodels, uncertainty is pervasive and traditionally unquantified. Probabilistic geomodeling allows for the simulation of uncertainties by automatically constructing geomodel ensembles from perturbed input data sampled from probability distributions. But random sampling of input parameters can lead to construction of geomodels that are unrealistic, either due to modeling artifacts or by not matching known information about the regional geology of the modeled system. We present a method to incorporate geological information in the form of known geomodel topology into stochastic simulations to constrain resulting probabilistic geomodel ensembles using the open-source geomodeling software GemPy. Simulated geomodel realizations are checked against topology information using an approximate Bayesian computation approach to avoid the specification of a likelihood function. We demonstrate how we can infer the posterior distributions of the model parameters using topology information in two experiments: (1)?a synthetic geomodel using a rejection sampling scheme (ABC-REJ) to demonstrate the approach and (2)?a geomodel of a subset of the Gullfaks field in the North Sea comparing both rejection sampling and a sequential Monte Carlo sampler (ABC-SMC). Possible improvements to processing speed of up to 10.1?times are discussed, focusing on the use of more advanced sampling techniques to avoid the simulation of unfeasible geomodels in the first place. Results demonstrate the feasibility of using topology graphs as a summary statistic to restrict the generation of geomodel ensembles with known geological information and to obtain improved ensembles of probable geomodels which respect the known topology information and exhibit reduced uncertainty using stochastic simulation methods.
机译:结构性地理位置是用于地下系统的可视化和量化的关键技术。鉴于数据有限,由此产生了地质解释来构建这些地理典礼的必要性,不确定性是普遍存在的,传统上不受平化。概率性地理位置允许通过自动构造从概率分布采样的扰动输入数据的地理典集乐曲来模拟不确定性。但是输入参数的随机采样可以导致构建不现实的土工典型,这是由于建模工件或不匹配有关所建模系统的区域地质的已知信息。我们介绍一种以已知的地理典型拓扑形式的地质信息纳入随机模拟,以利用开源地理模区软件迈曲约束产生的概率性地理典集。使用近似贝叶斯计算方法检查模拟地理汇总实现,以避免似然函数的规范。我们展示了如何使用两个实验中的拓扑信息推断模型参数的后部分布:(1)?使用抑制采样方案(ABC-REJ)进行综合性Geomodel来展示方法和(2)?a的几形北海的Gullfaks字段的子集比较抑制采样和序列蒙特卡罗采样器(ABC-SMC)。对处理速度的可能改善最高10.1的时间,讨论了时间,专注于使用更先进的采样技术,以避免首先模拟不可行的地理典。结果展示了使用拓扑图形作为概述统计的可行性,以限制具有已知地质信息的Geomodel集合的产生,并获得尊重已知拓扑信息的可能地理典的改进的集合,并使用随机仿真方法表现出降低的不确定性。

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