Robust hybrid machine learning algorithms for gas flow rates prediction through wellhead chokes in gas condensate fields

Fuel ◽  
2022 ◽  
Vol 308 ◽  
pp. 121872
Author(s):  
Abouzar Rajabi Behesht Abad ◽  
Hamzeh Ghorbani ◽  
Nima Mohamadian ◽  
Shadfar Davoodi ◽  
Mohammad Mehrad ◽  
...  
Author(s):  
Abouzar Rajabi Behesht Abad ◽  
Seyedmohammadvahid Mousavi ◽  
Nima Mohamadian ◽  
David A. Wood ◽  
Hamzeh Ghorbani ◽  
...  

2021 ◽  
Vol 295 ◽  
pp. 113086
Author(s):  
Mahfuzur Rahman ◽  
Ningsheng Chen ◽  
Ahmed Elbeltagi ◽  
Md Monirul Islam ◽  
Mehtab Alam ◽  
...  

2021 ◽  
Author(s):  
Celestine Udim Monday ◽  
Toyin Olabisi Odutola

Abstract Natural Gas production and transportation are at risk of Gas hydrate plugging especially when in offshore environments where temperature is low and pressure is high. These plugs can eventually block the pipeline, increase back pressure, stop production and ultimately rupture gas pipelines. This study seeks to develops machine learning models after a kinetic inhibitor to predict the gas hydrate formation and pressure changes within the natural gas flow line. Green hydrate inhibitor A, B and C were obtained as plant extracts and applied in low dosages (0.01 wt.% to 0.1 wt.%) on a 12meter skid-mounted hydrate closed flow loop. From the data generated, the optimal dosages of inhibitor A, B and C were observed to be 0.02 wt.%, 0.06 wt.% and 0.1 wt.% respectively. The data associated with these optimal dosages were fed to a set of supervised machine learning algorithms (Extreme gradient boost, Gradient boost regressor and Linear regressor) and a deep learning algorithm (Artificial Neural Network). The output results from the set of supervised learning algorithms and Deep Learning algorithms were compared in terms of their accuracies in predicting the hydrate formation and the pressure within the natural gas flow line. All models had accuracies greater than 90%. This result show that the application Machine learning to solving flow assurance problems is viable. The results show that it is viable to apply machine learning algorithms to solve flow assurance problems, analyzing data and getting reports which can improve accuracy and speed of on-site decision making process.


2020 ◽  
Vol 721 ◽  
pp. 137612 ◽  
Author(s):  
Duie Tien Bui ◽  
Khabat Khosravi ◽  
John Tiefenbacher ◽  
Hoang Nguyen ◽  
Nerantzis Kazakis

2021 ◽  
Vol 198 ◽  
pp. 108125
Author(s):  
Mohammad Sabah ◽  
Mohammad Mehrad ◽  
Seyed Babak Ashrafi ◽  
David A. Wood ◽  
Shadi Fathi

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