Application of Data Analytics and Machine Learning (ML) in petroleum reservoir management have received a lot of attention in recent years, mainly due to the availability of sheer computational resources and recorded big data set. Taking advantage of ML in subsurface modeling for efficient and computationally inexpensive forecast and as well as incorporating ML in the context of decision analysis, this thesis aims to cover the following objectives: Objective 1: Building a Proxy Model The thesis aims to utilize the ML models and past data to build the proxy model (less rich model compared to complex, full-physics based model) in order to make decision in a timely manner during the decision making in field development process (decision nodes...
As petroleum geosciences enter the era of big data, this field of study encompass difficult optimiza...
Optimal injector selection is a key oilfield development endeavor that can be computationally costly...
The objective of this research is to forecast petrophysical trends at the Teapot Dome field, Wyoming...
Master's thesis in Petroleum EngineeringApplication of Data Analytics and Machine Learning (ML) in p...
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...
This research involves the application of supervised, unsupervised, and deep learning ML modeling ap...
Reservoir management is critical for optimal hydrocarbon reservoir performance. A key component of r...
Surrogate models, or proxies, provide computationally inexpensive alternatives for approximating res...
Abstract Machine learning techniques have fundamentally altered how oil and gas industry practitione...
Funding Information: Author contributions UO: data curation (lead), formal analysis (lead), funding ...
A newly discovered reservoir needs to undergo a development study phase. Many development scenarios ...
Finite difference based reservoir simulation is commonly used to predict well rates in these reservo...
Drilling performance is directly related to fundamental aspects such as drilling variables that can ...
Reservoir Management (RM) is defined as the utilization of available technology, financial assets, a...
As petroleum geosciences enter the era of big data, this field of study encompass difficult optimiza...
Optimal injector selection is a key oilfield development endeavor that can be computationally costly...
The objective of this research is to forecast petrophysical trends at the Teapot Dome field, Wyoming...
Master's thesis in Petroleum EngineeringApplication of Data Analytics and Machine Learning (ML) in p...
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...
This research involves the application of supervised, unsupervised, and deep learning ML modeling ap...
Reservoir management is critical for optimal hydrocarbon reservoir performance. A key component of r...
Surrogate models, or proxies, provide computationally inexpensive alternatives for approximating res...
Abstract Machine learning techniques have fundamentally altered how oil and gas industry practitione...
Funding Information: Author contributions UO: data curation (lead), formal analysis (lead), funding ...
A newly discovered reservoir needs to undergo a development study phase. Many development scenarios ...
Finite difference based reservoir simulation is commonly used to predict well rates in these reservo...
Drilling performance is directly related to fundamental aspects such as drilling variables that can ...
Reservoir Management (RM) is defined as the utilization of available technology, financial assets, a...
As petroleum geosciences enter the era of big data, this field of study encompass difficult optimiza...
Optimal injector selection is a key oilfield development endeavor that can be computationally costly...
The objective of this research is to forecast petrophysical trends at the Teapot Dome field, Wyoming...