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Multilayer perceptron neural network-based QSAR models for the assessment and prediction of corrosion inhibition performances of ionic liquids

Title
Multilayer perceptron neural network-based QSAR models for the assessment and prediction of corrosion inhibition performances of ionic liquids
Author
하산 르가즈
Keywords
Corrosion inhibition; Ionic liquids; QSAR; MLR model; MLPNN model
Issue Date
2022-11
Publisher
ELSEVIER
Citation
COMPUTATIONAL MATERIALS SCIENCE, v. 214.0, article no. 111753, Page. 1-13
Abstract
The present study reports the quantum chemical studies and quantitative structure activity relationship (QSAR) modeling of thirty ionic liquids utilized as chemical additives to repress mild steel degradation in 1.0 M HCl. Five molecular descriptors obtained from standardization of calculated descriptors together with the inhibitor con-centration were employed in model building. Multiple linear regression (MLR) and multilayer perceptron neural network (MLPNN) modeling were utilized in model construction. The optimal MLPNN model was developed using a network architecture of 6-3-5-1 with Levenberg-Marquardt as the learning algorithm. The model yielded an MSE of 29.9242, RMSE of 5.4703, MAD of 4.9628, MAPE of 5.7809, rMBE of 0.1202 and CoV of 0.0052. The MLPNN model displayed better predictive performance than the MLR model. Furthermore, developed models were applied to forecast the inhibition efficiencies of five novel ionic liquids. The theoretical inhibitors were found to be effective inhibitors of steel corrosion, showing over 80% inhibition efficiency.
URI
https://www.sciencedirect.com/science/article/pii/S0927025622004670?via%3Dihubhttps://repository.hanyang.ac.kr/handle/20.500.11754/179163
ISSN
0927-0256;1879-0801
DOI
10.1016/j.commatsci.2022.111753
Appears in Collections:
OFFICE OF ACADEMIC AFFAIRS[E](교무처) > Center for Creative Convergence Education(창의융합교육원) > Articles
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