Mechanical damage is recognized as a problem that reduces the performance of oil and gas pipelines and has been the subject of continuous research. The artificial neural network in the spotlight recently is expected to be another solution to solve the problems relating to the pipelines. The deep neural network, which is on the basis of artificial neural network algorithm and is a method amongst various machine learning methods, is applied in this study. The applicability of machine learning techniques such as deep neural network for the prediction of burst pressure has been investigated for dented API 5L X-grade pipelines. To this end, supervised learning is employed, and the deep neural network model has four layers with three hidden layer...
Bubble point pressure is one of the most important pressure–volume–temperature properties of crude o...
Most of the standards available for the assessment of the failure pressure of corroded pipelines are...
Conventional pipeline failure pressure assessment codes do not allow for failure pressure prediction...
Mechanical damage is recognized as a problem that reduces the performance of oil and gas pipelines a...
Accurate prediction of the burst pressure of a pipeline is critical for pipeline design and safe ope...
PhD ThesisDent in a pipelines have been of major concern to pipeline operators for years because its...
This paper discusses the capabilities of artificial neural networks (ANNs) when integrated with the ...
A corrosion defect is recognized as one of the most severe phenomena for high-pressure pipelines, es...
Acknowledgments The first author would like to thank the Ghana National Petroleum Corporation (GNPC)...
In the multiphase flow of oil and gas in pipeline-riser systems, reliable pressure measurements and ...
Water is a vital resource to society and complex interactions between nature and human infrastructur...
Gas pipeline leakages do not only represent loss of valuable non-renewable resources but also a pote...
Conventional pipeline corrosion assessment methods for failure pressure prediction do not account fo...
Chemical process industries have complex structures comprising of equipments & network of pipeli...
Leakages in pipelines affect the reliability of fluid transport systems causing environmental damage...
Bubble point pressure is one of the most important pressure–volume–temperature properties of crude o...
Most of the standards available for the assessment of the failure pressure of corroded pipelines are...
Conventional pipeline failure pressure assessment codes do not allow for failure pressure prediction...
Mechanical damage is recognized as a problem that reduces the performance of oil and gas pipelines a...
Accurate prediction of the burst pressure of a pipeline is critical for pipeline design and safe ope...
PhD ThesisDent in a pipelines have been of major concern to pipeline operators for years because its...
This paper discusses the capabilities of artificial neural networks (ANNs) when integrated with the ...
A corrosion defect is recognized as one of the most severe phenomena for high-pressure pipelines, es...
Acknowledgments The first author would like to thank the Ghana National Petroleum Corporation (GNPC)...
In the multiphase flow of oil and gas in pipeline-riser systems, reliable pressure measurements and ...
Water is a vital resource to society and complex interactions between nature and human infrastructur...
Gas pipeline leakages do not only represent loss of valuable non-renewable resources but also a pote...
Conventional pipeline corrosion assessment methods for failure pressure prediction do not account fo...
Chemical process industries have complex structures comprising of equipments & network of pipeli...
Leakages in pipelines affect the reliability of fluid transport systems causing environmental damage...
Bubble point pressure is one of the most important pressure–volume–temperature properties of crude o...
Most of the standards available for the assessment of the failure pressure of corroded pipelines are...
Conventional pipeline failure pressure assessment codes do not allow for failure pressure prediction...