Monitoring of integrity of plugged and abandoned (P&A'ed) wells is of interest for the oil and gas industry and for CO2 storage. The purpose of this study is to develop artificial intelligence (AI)-based approaches to detect anomalies or defects when monitoring permanently plugged wells. The studied solution is based on the analysis of electromagnetic (EM) data. We consider an offshore setting where the EM signal is generated in presence of a P&A'ed well and the resulting electric field is recorded at the seafloor. Numerical simulations are used to train an AI algorithm to classify the modelled EM features into predefined well integrity classes. We consider four scenarios: (1) no well, (2) well with three 20 meters thick cement barriers of ...
Drilling a high-pressure, high-temperature (HPHT) well involves many difficulties and challenges. On...
This paper presents a simple machine learning based framework for diagnosing the inline inspection d...
This paper presents a simple machine learning based framework for diagnosing the inline inspection d...
Monitoring of integrity of plugged and abandoned (P&A'ed) wells is of interest for the oil and gas i...
Monitoring of integrity of plugged and abandoned (P&A'ed) wells is of interest for the oil and gas i...
Wellbore integrity management for oil and gas wells plays a vital role throughout the typical lifesp...
The drilling of an oil or gas well is an expensive undertaking. Hence, it is not surprising that mis...
Abstract: The aim of this thesis is to detect vertical features in the the casing cement of oil and ...
The integrity failure in gas lift wells had been proven to be more severe than other artificial lift...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
Drilling a high-pressure, high-temperature (HPHT) well involves many difficulties and challenges. On...
This paper presents a simple machine learning based framework for diagnosing the inline inspection d...
This paper presents a simple machine learning based framework for diagnosing the inline inspection d...
Monitoring of integrity of plugged and abandoned (P&A'ed) wells is of interest for the oil and gas i...
Monitoring of integrity of plugged and abandoned (P&A'ed) wells is of interest for the oil and gas i...
Wellbore integrity management for oil and gas wells plays a vital role throughout the typical lifesp...
The drilling of an oil or gas well is an expensive undertaking. Hence, it is not surprising that mis...
Abstract: The aim of this thesis is to detect vertical features in the the casing cement of oil and ...
The integrity failure in gas lift wells had been proven to be more severe than other artificial lift...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
Drilling a high-pressure, high-temperature (HPHT) well involves many difficulties and challenges. On...
This paper presents a simple machine learning based framework for diagnosing the inline inspection d...
This paper presents a simple machine learning based framework for diagnosing the inline inspection d...