Anadebe Valentine Chikaodili, Onukwuli Okechukwu Dominic, Abeng Fidelis Ebunta, Okafor Nkechinyere Amaka, Ezeugo Joseph Okechukwu, Okoye Chukwunonso Chukwuzuloke
Department of Chemical Engineering, Federal University Ndufu Alike, Ebonyi state, Nigeria.
Department of Chemical Engineering, Nnamdi Azikwe University, Anambra state, Nigeria.
J Taiwan Inst Chem Eng. 2020 Oct;115:251-265. doi: 10.1016/j.jtice.2020.10.004. Epub 2020 Oct 21.
In this research, the effect of Dexamethasone drug (DM) on mild steel corrosion in 2 M HCl was analyzed using weight loss, potentiodynamic polarization, electrochemical impedance spectroscopy (EIS) and MD-simulation. In addition, Fourier transform infrared spectra (FTIR), scanning electron microscopy (SEM), Energy dispersive x-ray spectroscopy (EDX), and atomic force microscopy (AFM) were employed to inspect the mild steel surface in the blank and inhibited medium. For the optimization tool, adaptive neuro-fuzzy inference system (ANFIS) model was developed to predict the inhibition efficiency. The experimental data was categorized into two different sections for training and testing the ANFIS model. The developed model aimed to evaluate the fitness between the experimental and predicted values. From the results generated, optimum value (IE%) of DM was recorded as 80%, 81% and 83% at concentration of 0.4 g/L for weight loss, EIS and PDP respectively. Potentiodynamic polarization results reveal that Dexamethasone functions as a mixed-type inhibitor, whereas studies of EIS show that the inhibition mechanism is by the transfer of charges. Mild steel surface examination confirmed the presence of a protective adsorbed film on the mild steel surface. Thermodynamic parameters obtained imply that Dexamethasone is adsorbed on the steel surface by a physiochemical process and obeys Langmuir adsorption isotherm. Also the MD-simulation results evidenced that DM forms a metallic surface adsorbed film on the steel surface. From the ANFIS model, the sensitivity analysis shows that time and inhibitor concentration were the most important input variable while other input variables could not be neglected. ANFIS model coefficient of determination ( 0.993) was found between the observed and predicted values. ANFIS model gave optimum prediction (80%) with high degree accuracy and robustness. The outcomes of this investigation provide more information, simulation, and prediction about inhibition of metal corrosion.
在本研究中,采用失重法、动电位极化法、电化学阻抗谱(EIS)和分子动力学模拟,分析了地塞米松药物(DM)对2M盐酸中低碳钢腐蚀的影响。此外,还利用傅里叶变换红外光谱(FTIR)、扫描电子显微镜(SEM)、能量色散X射线光谱(EDX)和原子力显微镜(AFM)对空白和缓蚀介质中的低碳钢表面进行了检测。为了进行优化工具,开发了自适应神经模糊推理系统(ANFIS)模型来预测缓蚀效率。将实验数据分为两个不同的部分,用于训练和测试ANFIS模型。所开发的模型旨在评估实验值和预测值之间的拟合度。从所得结果来看,在浓度为0.4g/L时,失重法、EIS和动电位极化法测得的DM最佳缓蚀效率(IE%)分别为80%、81%和83%。动电位极化结果表明,地塞米松作为混合型缓蚀剂起作用,而EIS研究表明,缓蚀机理是通过电荷转移。低碳钢表面检测证实了低碳钢表面存在保护性吸附膜。获得的热力学参数表明,地塞米松通过物理化学过程吸附在钢表面,符合朗缪尔吸附等温线。分子动力学模拟结果也证明,DM在钢表面形成了金属表面吸附膜。从ANFIS模型的灵敏度分析可知,时间和缓蚀剂浓度是最重要的输入变量,而其他输入变量也不可忽视。发现ANFIS模型的测定系数(R²)为0.993。ANFIS模型给出了最佳预测(80%),具有高精度和鲁棒性。本研究结果为金属腐蚀抑制提供了更多信息、模拟和预测。