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Non-parametric Bayesian networks for parameter estimation in reservoir simulation: a graphical take on the ensemble Kalman filter (part I)

机译:非参数贝叶斯网络用于油藏模拟中的参数估计:集合卡尔曼滤波器的图形化表现(第一部分)

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Reservoir simulation models are used both in the development of new fields and in developed fields where production forecasts are needed for investment decisions. When simulating a reservoir, one must account for the physical and chemical processes taking place in the subsurface. Rock and fluid properties are crucial when describing the flow in porous media. In this paper, the authors are concerned with estimating the permeability field of a reservoir. The problem of estimating model parameters such as permeability is often referred to as a history-matching problem in reservoir engineering. Currently, one of the most widely used methodologies which address the history-matching problem is the ensemble Kalman filter (EnKF). EnKF is a Monte Carlo implementation of the Bayesian update problem. Nevertheless, the EnKF methodology has certain limitations that encourage the search for an alternative method.For this reason, a new approach based on graphical models is proposed and studied. In particular, the graphical model chosen for this purpose is a dynamic non-parametric Bayesian network (NPBN). This is the first attempt to approach a history-matching problem in reservoir simulation using a NPBN-based method. A two-phase, two-dimensional flow model was implemented for a synthetic reservoir simulation exercise, and initial results are shown. The methods’ performances are evaluated and compared. This paper features a completely novel approach to history matching and constitutes only the first part (part I) of a more detailed investigation. For these reasons (novelty and incompleteness), many questions are left open and a number of recommendations are formulated, to be investigated in part II of the same paper.
机译:在新油田的开发和需要产量预测以进行投资决策的发达油田,都使用储层模拟模型。模拟储层时,必须考虑地下发生的物理和化学过程。在描述多孔介质中的流动时,岩石和流体属性至关重要。在本文中,作者关注估计储层的渗透率场。估计模型参数(例如渗透率)的问题在储层工程中通常被称为历史匹配问题。当前,用于解决历史匹配问题的最广泛使用的方法之一是集成卡尔曼滤波器(EnKF)。 EnKF是贝叶斯更新问题的蒙特卡罗实现。尽管如此,EnKF方法仍有一定的局限性,鼓励人们寻找替代方法。因此,提出并研究了一种基于图形模型的新方法。特别地,为此目的选择的图形模型是动态非参数贝叶斯网络(NPBN)。这是使用基于NPBN的方法解决油藏模拟中历史匹配问题的首次尝试。为合成油藏模拟练习实现了两阶段二维流动模型,并显示了初步结果。评估并比较了这些方法的性能。本文采用了一种全新的历史匹配方法,并且仅构成更详细调查的第一部分(第一部分)。由于这些原因(新颖性和不完整性),许多问题尚待解决,并提出了许多建议,将在同一篇论文的第二部分中进行研究。

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