Reservoir management is critical for optimal hydrocarbon reservoir performance. A key component of reservoir management is decision making utilizing numerical reservoir models. One downside of these models is the large computational footprint for development and deployment. Recent developments in machine learning provide technologies that can augment reservoir management workflows. In this work, machine learning algorithms are used to optimize selection of injector well location, perform fluid production prediction and optimize well controls. Selection of optimized water and gas injection well locations is a key challenge in secondary and tertiary recovery projects. Traditional approaches using numerical simulation require a high number of ...
Unconventional reservoirs are the productive zones in other words the rock quality and the mechanica...
This research proposes a framework for determining the optimum location of an injection well using a...
Artificial intelligence (AI) methods and applications have recently gained a great deal of attention...
Scientific progress over the last decade has been significantly facilitated by the evolution of a ne...
Scientific progress over the last decade has been significantly facilitated by the evolution of a ne...
Optimal injector selection is a key oilfield development endeavor that can be computationally costly...
Surrogate models, or proxies, provide computationally inexpensive alternatives for approximating res...
Secondary recovery methods such as waterflooding and gasflooding are often applied to depleted reser...
This research involves the application of supervised, unsupervised, and deep learning ML modeling ap...
In the oil and gas industries, predicting and classifying oil and gas production for hydrocarbon wel...
Application of Data Analytics and Machine Learning (ML) in petroleum reservoir management have recei...
Master's thesis in Petroleum EngineeringApplication of Data Analytics and Machine Learning (ML) in p...
Waterflooding is a widely used secondary oil recovery technique. The oil and gas industry uses a com...
Generally, optimum well controls to maximize net present value (NPV) in a waterflooding operation ar...
Reservoir simulation models are the major tools for studying fluid flow behavior in hydrocarbon rese...
Unconventional reservoirs are the productive zones in other words the rock quality and the mechanica...
This research proposes a framework for determining the optimum location of an injection well using a...
Artificial intelligence (AI) methods and applications have recently gained a great deal of attention...
Scientific progress over the last decade has been significantly facilitated by the evolution of a ne...
Scientific progress over the last decade has been significantly facilitated by the evolution of a ne...
Optimal injector selection is a key oilfield development endeavor that can be computationally costly...
Surrogate models, or proxies, provide computationally inexpensive alternatives for approximating res...
Secondary recovery methods such as waterflooding and gasflooding are often applied to depleted reser...
This research involves the application of supervised, unsupervised, and deep learning ML modeling ap...
In the oil and gas industries, predicting and classifying oil and gas production for hydrocarbon wel...
Application of Data Analytics and Machine Learning (ML) in petroleum reservoir management have recei...
Master's thesis in Petroleum EngineeringApplication of Data Analytics and Machine Learning (ML) in p...
Waterflooding is a widely used secondary oil recovery technique. The oil and gas industry uses a com...
Generally, optimum well controls to maximize net present value (NPV) in a waterflooding operation ar...
Reservoir simulation models are the major tools for studying fluid flow behavior in hydrocarbon rese...
Unconventional reservoirs are the productive zones in other words the rock quality and the mechanica...
This research proposes a framework for determining the optimum location of an injection well using a...
Artificial intelligence (AI) methods and applications have recently gained a great deal of attention...