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AdvisorHussein, Ibnelwaleed
AdvisorKhaled, Mazen
AuthorRIYAZ, NAJAMUS SAHAR
Available date2025-07-17T05:00:04Z
Publication Date2025-06
URIhttp://hdl.handle.net/10576/66438
AbstractCorrosion inhibitors remain one of the most widely used and effective strategies for mitigating corrosion in the oil and gas industry. This study employed a machine learning (ML)-driven approach to develop green corrosion inhibitors, utilizing a Graph Convolutional Network (GCN) to predict inhibition efficiencies. The model was trained on a dataset of over 100 inhibitors and predicted an inhibition efficiency of 84% for 200 ppm chitosan-grafted polyacrylamide (CsAM). Experimental validation was conducted using electrochemical techniques on CsAM, synthesized with four different polyacrylamide-tochitosan ratios. Characterization of the inhibitors was performed using Scanning Electron Microscopy (SEM), Fourier Transform Infrared Spectroscopy (FTIR), Contact Angle measurements, and Thermogravimetric Analysis (TGA). Electrochemical results showed a maximum inhibition efficiency of 98% for 1:30 CsAM at 200 ppm. Corrosion kinetic analysis revealed that the inhibitor acts as a mixed-type inhibitor, with corrosion prevention primarily governed by physisorption.
Languageen
SubjectGreen Corrosion Inhibitors
Machine Learning Prediction
Graph Convolutional Network (GCN)
Chitosan-Grafted Polyacrylamide (CsAM)
Electrochemical Corrosion Analysis
TitleMACHINE LEARNING DRIVEN DEVELOPMENT OF CORROSION INHIBITORS IN OIL AND GAS INDUSTRY APPLICATIONS
TypeMaster Thesis
DepartmentEnvironmental Engineering
dc.accessType Full Text


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