There exist several methods for history matching of reservoir facies distribution. When using these methods, the facies mean size is usually supposed to be prior information known without uncertainty. However, in reality, it is often difficult to acquire an accurate estimation of the facies mean size due to limited measurement data. Thus, it is more reasonable to treat the facies mean size as an uncertain model parameter for updating. In this work, we propose a methodology to jointly update the mean size and spatial distribution of facies in reservoir history matching. In the parameterization step, we utilize a Gaussian random field and a level set algorithm to parameterize each facies. The range of the Gaussian field controls the facies me...
In the past years, many applications of historymatching methods in general and ensemble Kalman filte...
We present a methodology conducive to updating both facies and petrophysical properties of a reservo...
Modern reservoir management typically involves simulations of geological models to predict future re...
The reservoir rock usually consists of several distinct fades. And, due to the different formation e...
Traditional ensemble-based history matching method, such as the ensemble Kalman filter and iterative...
In this work, we develop a methodology to combine the Ensemble Kalman filter (EnKF) and the level se...
The history matching problem in reservoir engineering, which consists in matching the geostatistical...
AbstractIn this work we present a novel level set technique for shape reconstruction in history matc...
For channelized reservoirs with unknown channel distributions, identifying the continuous and sinuou...
Computer-assisted history matching is the act of systematicalty adjusting a ‘prior’ reservoir model ...
Increasingly computer assisted techniques are used for history matching reservoir models. Such metho...
In reservoir management, the ensemble-based history matching is applied to quantify and update uncer...
History matching is a challenging and time-consuming task related to reservoir simulation. Probabili...
An important key in reservoirs engineering is the development of reliable reservoir models with high...
Knowledge of the distribution of permeability and porosity in a reservoir is necessary for the predi...
In the past years, many applications of historymatching methods in general and ensemble Kalman filte...
We present a methodology conducive to updating both facies and petrophysical properties of a reservo...
Modern reservoir management typically involves simulations of geological models to predict future re...
The reservoir rock usually consists of several distinct fades. And, due to the different formation e...
Traditional ensemble-based history matching method, such as the ensemble Kalman filter and iterative...
In this work, we develop a methodology to combine the Ensemble Kalman filter (EnKF) and the level se...
The history matching problem in reservoir engineering, which consists in matching the geostatistical...
AbstractIn this work we present a novel level set technique for shape reconstruction in history matc...
For channelized reservoirs with unknown channel distributions, identifying the continuous and sinuou...
Computer-assisted history matching is the act of systematicalty adjusting a ‘prior’ reservoir model ...
Increasingly computer assisted techniques are used for history matching reservoir models. Such metho...
In reservoir management, the ensemble-based history matching is applied to quantify and update uncer...
History matching is a challenging and time-consuming task related to reservoir simulation. Probabili...
An important key in reservoirs engineering is the development of reliable reservoir models with high...
Knowledge of the distribution of permeability and porosity in a reservoir is necessary for the predi...
In the past years, many applications of historymatching methods in general and ensemble Kalman filte...
We present a methodology conducive to updating both facies and petrophysical properties of a reservo...
Modern reservoir management typically involves simulations of geological models to predict future re...