Prediction of Carbon Steel Corrosion Rate Based on an Alternating Conditional Expectation (Ace) Algorithm


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Resumo

Based on dynamic corrosion experiments, we propose a new model for predicting corrosion rate that is based on an alternating conditional expectation (ACE) algorithm. This model lets us more accurately predict the corrosion rate for a broad range of temperatures, pH, and concentrations of Ca2+, HCO3, Mg2+, Cl, SO42 − ions. Based on tests performed on a testing sample group, we have confirmed the reliability of the model and have also demonstrated its high accuracy. Sensitivity analysis based on a rank correlation coefficient revealed that the major factor influencing the corrosion rate of N80 steel is the pH value. We have also carried out a comparison analysis of the results obtained when using the ACE algorithm and the results obtained when using a backpropagation neural network (BPNN) and the support vector regression (SVR) method. As a result, we found that the model based on the ACE algorithm is more accurate than other currently used models.

Sobre autores

Xing-yi Chen

Oil and gas engineering Institute of Southwest Petroleum University

Autor responsável pela correspondência
Email: cxy55@163.com
República Popular da China, Chengdu, 610500

Zong-ming Yuan

Oil and gas engineering Institute of Southwest Petroleum University

Email: cxy55@163.com
República Popular da China, Chengdu, 610500

Yun-ping Zheng

Oil and gas engineering Institute of Southwest Petroleum University

Email: cxy55@163.com
República Popular da China, Chengdu, 610500

Wei Liu

School of Energy Resource of Chengdu University of Technology; Post-Doctoral Research Center of Tarim Oilfield

Email: cxy55@163.com
República Popular da China, Chengdu, 610059; Korla, 841000

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