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Aqueous Corrosion Testing and Neural Network Modeling to Simulate Corrosion of Supercritical CO2 Pipelines in the Carbon Capture and Storage Cycle

journal contribution
posted on 2024-11-02, 03:05 authored by Samson Sim, M. Cavanaugh, Penny Corrigan, Ivan ColeIvan Cole, Nick Birbilis
A database was constructed from tests in aqueous electrolytes simulating the damage that may occur to ferrous transport pipelines in the carbon capture and storage (CCS) process. Temperature and concentrations of carbonic acid (H2CO3), sulfuric acid (H2SO4), hydrochloric acid (HCl), nitric acid (HNO3), sodium nitrate (NaNO3), sodium sulfate (Na2SO4), and sodium chloride (NaCl) were varied; the potentiodynamic polarization response, along with physical damage from exposure, was measured. Sensitivity analysis was conducted via generation of fuzzy curves, and a neural network model also was developed. A correlation between corrosion current (icorr) and exposure tests (measured in the form of weight and thickness loss) was observed; however, the key outcome of the work is the presentation of a model that captures corrosion rate as a function of environments relevant to (CCS) pipeline, revealing the extent of the threat and the variables of interest. © 2013, NACE International.

History

Journal

Corrosion

Volume

69

Issue

5

Start page

477

End page

486

Total pages

10

Publisher

N A C E International

Place published

United States

Language

English

Copyright

© 2013, NACE International.

Former Identifier

2006070760

Esploro creation date

2020-06-22

Fedora creation date

2017-06-01

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