Computer-assisted horizon interpretation on 3D seismic data has been commercially available for almost 15 years. The process is generally referred to as 3D horizon autotracking and is a powerful method when interpreting seismic horizons. The desire of a new autonomous horizon tracker is growing in the market. This thesis is combining the fields of seismic interpretation and data science in order to perform the early testing on a software aiming to fill this gap in the market. The goal is to find out if the new algorithm based on machine learning is a good replacement for the 3D horizon autotracker regarding a more effective and time-saving workflow. The technology supports radial basis functions (RBF) that enables the IntelliTracker to sto...
Netherlands F3 Interpretation Dataset Machine learning and, more specifically, deep learning algori...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
We have seen in the past years the flourishing of machine and deep learning algorithms in several ap...
As petroleum geosciences enter the era of big data, this field of study encompass difficult optimiza...
Open access to curated datasets positively impacts on scientific research of machine learning and de...
Introduction Interpretation of reflection seismic data has come a long way, from structural travel ...
The main activity carried out by the geophysicist when interpreting seismic data, in terms of both i...
We introduce a new algorithm for tracking 3D seismic horizons. The algorithm combines an inversion-b...
The exploration of oil and gas is a vital part of today's increasing power demands to meet the energ...
Since the first seismic trace was computer-rendered, automatic interpretation has been the promised ...
The sedimentary layers of the Earth are a complex amorphous material formed from chaotic, turbulent,...
Hydraulic fracturing has evolved dramatically over the past decades. A number of new techniques have...
Machine Learning (ML) has been capable for three decades, to infer lithology, sedimentary facies, po...
Technology is widely used these days throughout various industries worldwide. One of the modern tec...
Seismic studies are a key stage in the search for large scale underground features such as water res...
Netherlands F3 Interpretation Dataset Machine learning and, more specifically, deep learning algori...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
We have seen in the past years the flourishing of machine and deep learning algorithms in several ap...
As petroleum geosciences enter the era of big data, this field of study encompass difficult optimiza...
Open access to curated datasets positively impacts on scientific research of machine learning and de...
Introduction Interpretation of reflection seismic data has come a long way, from structural travel ...
The main activity carried out by the geophysicist when interpreting seismic data, in terms of both i...
We introduce a new algorithm for tracking 3D seismic horizons. The algorithm combines an inversion-b...
The exploration of oil and gas is a vital part of today's increasing power demands to meet the energ...
Since the first seismic trace was computer-rendered, automatic interpretation has been the promised ...
The sedimentary layers of the Earth are a complex amorphous material formed from chaotic, turbulent,...
Hydraulic fracturing has evolved dramatically over the past decades. A number of new techniques have...
Machine Learning (ML) has been capable for three decades, to infer lithology, sedimentary facies, po...
Technology is widely used these days throughout various industries worldwide. One of the modern tec...
Seismic studies are a key stage in the search for large scale underground features such as water res...
Netherlands F3 Interpretation Dataset Machine learning and, more specifically, deep learning algori...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
We have seen in the past years the flourishing of machine and deep learning algorithms in several ap...