JOURNAL ARTICLE

Data Assimilation Using the Constrained Ensemble Kalman Filter

Hemant A. PhaleDean S. Oliver

Year: 2010 Journal:   SPE Journal Vol: 16 (02)Pages: 331-342   Publisher: Society of Petroleum Engineers

Abstract

Summary When the ensemble Kalman filter (EnKF) is used for history matching, the resulting updates to reservoir properties sometimes exceed physical bounds, especially when the problem is highly nonlinear. Problems of this type are often encountered during history matching compositional models using the EnKF. In this paper, we illustrate the problem using an example in which the updated molar density of CO2 in some regions is observed to take negative values while molar densities of the remaining components are increased. Standard truncation schemes avoid negative values of molar densities but do not address the problem of increased molar densities of other components. The results can include a spurious increase in reservoir pressure with a subsequent inability to maintain injection. In this paper, we present a method for constrained EnKF (CEnKF), which takes into account the physical constraints on the plausible values of state variables during data assimilation. In the proposed method, inequality constraints are converted to a small number of equality constraints, which are used as virtual observations for calibrating the model parameters within plausible ranges. The CEnKF method is tested on a 2D compositional model and on a highly heterogeneous three-phase-flow reservoir model. The effect of the constraints on mass conservation is illustrated using a 1D Buckley-Leverett flow example. Results show that the CEnKF technique is able to enforce the nonnegativity constraints on molar densities and the bound constraints on saturations (all phase saturations must be between 0 and 1) and achieve a better estimation of reservoir properties than is obtained using only truncation with the EnKF.

Keywords:
Ensemble Kalman filter Spurious relationship Data assimilation Kalman filter Nonlinear system Conservation of mass Molar mass Computer science Compositional data Applied mathematics Mathematics Algorithm Mathematical optimization Extended Kalman filter Statistics Chemistry Meteorology Mechanics

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34
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Citation History

Topics

Reservoir Engineering and Simulation Methods
Physical Sciences →  Engineering →  Ocean Engineering
Hydrocarbon exploration and reservoir analysis
Physical Sciences →  Engineering →  Mechanics of Materials
Hydraulic Fracturing and Reservoir Analysis
Physical Sciences →  Engineering →  Mechanical Engineering

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