Data-driven methods have been revolutionizing the way physicists and engineers handle complex and challenging problems even when the physics is not fully understood. However, these models very often lack interpretability. Physics-aware machine learning (ML) techniques have been used to endow proxy models with features closely related to the ones encountered in nature; examples span from material balance to conservation laws. In this study, we proposed a hybrid-based approach that incorporates physical constraints (physics-based) and yet is driven by input/output data (data-driven), leading to fast, reliable, and interpretable reservoir simulation models. To this end, we built on a recently developed deep learning–based reduced-order modelin...
Numerical reservoir simulation has been recognized as one of the most frequently used aids in reserv...
In petroleum domain, optimizing hydrocarbon production is essential because it does not only ensure ...
This dissertation comprises two topics. The first topic introduces an innovative multiphase, multico...
We present deep-learning-based surrogate models for CCUS developed with four different algorithms an...
Surrogate models, or proxies, provide computationally inexpensive alternatives for approximating res...
In order to improve the design of advanced wells, the performance of such wells needs to be carefull...
Scientific progress over the last decade has been significantly facilitated by the evolution of a ne...
A successful Geologic Carbon Dioxide (CO2) Storage (GCS) operation requires the ability to make quic...
Reservoir simulation models are the major tools for studying fluid flow behavior in hydrocarbon rese...
Generally, optimal well controls to maximize net present value (NPV) are obtained by coupling of num...
Abstract We present a novel workflow for forecasting production in unconventional reservoirs using r...
Numerical models are the primary tools to look into the fluid flow behavior in the complex and uncer...
Machine learning has been used in the petroleum industry for a long time, but its usage was limited ...
In reservoir engineering, data-driven methodologies have been applied successfully to infer interwel...
Reservoir simulation is the industry standard for prediction and characterization of processes in th...
Numerical reservoir simulation has been recognized as one of the most frequently used aids in reserv...
In petroleum domain, optimizing hydrocarbon production is essential because it does not only ensure ...
This dissertation comprises two topics. The first topic introduces an innovative multiphase, multico...
We present deep-learning-based surrogate models for CCUS developed with four different algorithms an...
Surrogate models, or proxies, provide computationally inexpensive alternatives for approximating res...
In order to improve the design of advanced wells, the performance of such wells needs to be carefull...
Scientific progress over the last decade has been significantly facilitated by the evolution of a ne...
A successful Geologic Carbon Dioxide (CO2) Storage (GCS) operation requires the ability to make quic...
Reservoir simulation models are the major tools for studying fluid flow behavior in hydrocarbon rese...
Generally, optimal well controls to maximize net present value (NPV) are obtained by coupling of num...
Abstract We present a novel workflow for forecasting production in unconventional reservoirs using r...
Numerical models are the primary tools to look into the fluid flow behavior in the complex and uncer...
Machine learning has been used in the petroleum industry for a long time, but its usage was limited ...
In reservoir engineering, data-driven methodologies have been applied successfully to infer interwel...
Reservoir simulation is the industry standard for prediction and characterization of processes in th...
Numerical reservoir simulation has been recognized as one of the most frequently used aids in reserv...
In petroleum domain, optimizing hydrocarbon production is essential because it does not only ensure ...
This dissertation comprises two topics. The first topic introduces an innovative multiphase, multico...