Insights into corrosion inhibition development through QSAR and machine learning: Application to benzimidazole derivatives

被引:1
|
作者
El-Idrissi, H. [1 ,2 ]
Diane, A. [1 ]
Driouch, M. [2 ]
Lahyaoui, M. [1 ]
Saffaj, N. [3 ]
Mamouni, R. [3 ]
Ihssane, B. [1 ,4 ]
Saffaj, T. [1 ]
Haoudi, A.
Mazzah, A. [5 ]
Sfaira, M. [2 ]
Zarrouk, A. [6 ]
机构
[1] Sidi Mohamed Ben Abdellah Univ USMBA, Fac Sci & Technol, Lab Appl Organ Chem, Route Imouzzer POB 2626, Fes, Morocco
[2] Univ Sidi Mohamed Ben Abdellah USMBA, Fac Sci, Lab Engn Modeling & Syst Anal LIMAS, POB 1796-30000, Fes, Morocco
[3] Ibn Zohr Univ, Fac Sci, Lab Mat & Biotechnol & Environm LBME, Agadir, Morocco
[4] Mohammed V Univ, Ecole Normale Super, Mat Sci Ctr MSC, Physiochem Lab Inorgan & Organ Mat LPCMIO, Rabat, Morocco
[5] Univ Lille, CNRS, USR 3290, MSAP,Miniaturizat Synth Anal & Prote, Lille, France
[6] Mohammed V Univ Rabat, Fac Sci, Lab Mat Nanotechnol & Environm, Av Ibn Battuta POB 1014, Rabat, Morocco
关键词
QSAR modeling; corrosion inhibition; meta-heuristic optimization; machine learning; deep learning; SUPPORT VECTOR MACHINE; MILD-STEEL CORROSION; CARBON-STEEL; ACID; ADSORPTION; MODEL; QUINOXALINE; ENVIRONMENT; THIADIAZOLE; VALIDATION;
D O I
10.17675/2305-6894-2023-12-4-36
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
As corrosion inhibitors for mild steel in 1 M hydrochloric acid, benzimidazole derivatives were studied by applying the quantitative structure-activity relationships (QSAR). A total of nine models were built based on selected variables, and a further nine models were built using 2D descriptors derived by Molecular Operating Environment (MOE) software. The models Multiple linear regression (MLR), Support Vector Machine Regression (SVR), Back Propagation Artificial Neural Networks (BPANN), Partial Least Square (PLS), and others were created to forecast the inhibitory effectiveness of the new benzimidazole compounds. In addition, the predictive model's calibration and test results' coefficients of determination (R2) and root mean squared (RMSE) were evaluated. Despite most models showing adequate performance, the SVR model was chosen as the best model due to its successful calibration and test results represented in higher coefficient of determination of calibration and test, which are 97.83% and 94.54%, respectively, and the lower RMSE of calibration and test which are 2.45 and 2.96. Furthermore, plotting the anticipated inhibition efficiency versus the experimental value revealed a good degree of dependability for the predictions made by the SVR model for the novel inhibitors. The selection of the descriptors and their effects on the effectiveness of inhibition were essential factors in creating and developing new benzimidazole derivatives as corrosion inhibitors. The SVR model allows for precise prediction of the inhibitory efficacy new benzimidazole derivatives. This QSAR model offers helpful insights into developing and optimizing novel benzimidazole derivatives as corrosion inhibitors, emphasizing the significance of descriptor selection and the impact of each descriptor on the efficacy inhibition. Therefore, this study demonstrates how using Deep Learning and Machine Learning techniques in QSAR analysis can improve the accuracy and reliability of the outcomes.
引用
收藏
页码:2101 / 2128
页数:28
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