Quadri Taiwo W, Olasunkanmi Lukman O, Fayemi Omolola E, Lgaz Hassane, Dagdag Omar, Sherif El-Sayed M, Akpan Ekemini D, Lee Han-Seung, Ebenso Eno E
Department of Chemistry, School of Chemical and Physical Sciences and Material Science Innovation & Modelling (MaSIM) Research Focus Area, Faculty of Natural and Agricultural Sciences, North-West University, Private Bag X2046, Mmabatho, 2735, South Africa.
Department of Chemistry, Faculty of Science, Obafemi Awolowo University, Ile Ife, 220005, Nigeria.
J Mol Model. 2022 Aug 11;28(9):254. doi: 10.1007/s00894-022-05245-1.
Pyrimidine compounds have proven to be effective and efficient additives capable of protecting mild steel in acidic media. This class of organic compounds often functions as adsorption-type inhibitors of corrosion by forming a protective layer on the metallic substrate. The present study reports a computational study of forty pyrimidine compounds that have been investigated as sustainable inhibitors of mild steel corrosion in molar HCl solution. Quantitative structure property relationship was conducted using linear (multiple linear regression) and nonlinear (artificial neural network) models. Standardization method was employed in variable selection yielding five top chemical descriptors utilized for model development along with the inhibitor concentration. Multiple linear regression model yielded a fair predictive model. Artificial neural network model developed using k-fold cross-validation method provided a comprehensive insight into the corrosion protection mechanism of studied pyrimidine-based corrosion inhibitors. Using a multilayer perceptron with Levenberg-Marquardt algorithm, the study obtained the optimal model having a MSE of 8.479, RMSE of 2.912, MAD of 1.791, and MAPE of 2.648. The optimal neural network model was further utilized to forecast the protection capacities of nine non-synthesized pyrimidine derivatives. The predicted inhibition efficiencies ranged from 89 to 98%, revealing the significance of the considered chemical descriptors, the predictive capacity of the developed model, and the potency of the theoretical inhibitors.
嘧啶化合物已被证明是能够在酸性介质中保护低碳钢的有效且高效的添加剂。这类有机化合物通常通过在金属基体上形成保护层来发挥缓蚀吸附型抑制剂的作用。本研究报告了对四十种嘧啶化合物的计算研究,这些化合物已被研究作为在摩尔盐酸溶液中低碳钢腐蚀的可持续抑制剂。使用线性(多元线性回归)和非线性(人工神经网络)模型进行了定量结构-性质关系研究。在变量选择中采用了标准化方法,得到了五个用于模型开发的顶级化学描述符以及抑制剂浓度。多元线性回归模型产生了一个合理的预测模型。使用k折交叉验证方法开发的人工神经网络模型对所研究的嘧啶基缓蚀剂的腐蚀保护机制提供了全面的见解。通过使用带有Levenberg-Marquardt算法的多层感知器,该研究获得了最优模型,其均方误差为8.479,均方根误差为2.912,平均绝对偏差为1.791,平均绝对百分比误差为2.648。最优神经网络模型进一步用于预测九种未合成的嘧啶衍生物的保护能力。预测的缓蚀效率范围为89%至98%,揭示了所考虑的化学描述符的重要性、所开发模型的预测能力以及理论抑制剂的效力。