...
首页> 外文期刊>Geophysics: Journal of the Society of Exploration Geophysicists >A sequential dynamic Bayesian network for pore-pressure estimation with uncertainty quantification
【24h】

A sequential dynamic Bayesian network for pore-pressure estimation with uncertainty quantification

机译:具有不确定性量化的孔隙压力估计顺序动态贝叶斯网络

获取原文
获取原文并翻译 | 示例

摘要

Pore-pressure estimation is an important part of oil-well drilling because drilling into unexpected highly pressured fluids can be costly and dangerous. However, standard estimation methods rarely account for the many sources of uncertainty, or for the multivariate nature of the system. We have developed the porepressure sequential dynamic Bayesian network (PP SDBN) as an appropriate solution to both these issues. The PP SDBN models the relationships between quantities in the pore-pressure system, such as pressures, porosity, lithology, and wireline-log data, using conditional probability distributions based on geophysical relationships to capture our uncertainty about these variables and the relationships between them. When wireline log data are given to the PP SDBN, the probability distributions are updated, providing an estimate of pore pressure along with a probabilistic measure of uncertainty that reflects the data acquired and our understanding of the system. This is the advantage of a Bayesian approach. Our model provides a coherent statistical framework for modeling the pore-pressure system. The specific geophysical relationships used can be changed to better suit a particular setting, or reflect geoscientists' knowledge. We determine the PP SDBN on an offshore well from West Africa. We also perform a sensitivity analysis, demonstrating how this can be used to better understand the working of the model and which parameters are the most influential. The dynamic nature of the model makes it suitable for real-time estimation during logging while drilling. The PP SDBN models the shale pore pressure in shale-rich formations with mechanical compaction as the overriding source of overpressure. The PP SDBN improves on existing methods because it produces a probabilistic estimate that reflects the many sources of uncertainty present.
机译:孔隙压力估计是油井钻井的重要组成部分,因为钻入意想不到的高压流体可能是昂贵和危险的。然而,标准估计方法很少考虑到许多不确定性来源,或系统的多变量性质。我们已经开发了Precressure序列动态贝叶斯网络(PP SDBN)作为这些问题的适当解决方案。 PP SDBN模拟了孔隙压力系统中数量之间的关系,例如基于地球物理关系的条件概率分布,诸如压力,孔隙度,岩性和有线 - 日志数据之间的关系,以捕获我们对这些变量的不确定性和它们之间的关系。当给予PP SDBN的电缆日志数据时,更新概率分布,提供对孔隙压力的估计,以及反映所获取的数据和我们对系统的理解的不确定性的概率测量。这是贝叶斯方法的优势。我们的模型提供了一种用于建模孔隙压力系统的连贯统计框架。所使用的特定地球物理关系可以改变为更好地适应特定的环境,或反映地球科学家的知识。我们在西非的离岸野外确定PP SDBN。我们还执行敏感性分析,展示如何用于更好地理解模型的工作以及哪些参数是最有影响力的。模型的动态性质使其适用于钻井时测井期间的实时估计。 PP SDBN在具有机械压实的富含页岩的地层中模拟页岩孔隙压力,作为过压的覆盖源。 PP SDBN提高了现有方法,因为它产生了概率估计,反映了存在的许多不确定性来源。

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