Memon Azhar M, Imran Imil Hamda, Alhems Luai M
Applied Research Center for Metrology, Standards, and Testing, Research Institute, King Fahd University of Petroleum and Minerals, Dhahran, 31261, Saudi Arabia.
Sci Rep. 2023 Aug 11;13(1):13088. doi: 10.1038/s41598-023-40083-y.
Stainless steel (SS) is widely employed in industrial applications that demand superior corrosion resistance. Modeling its corrosion behavior in common structural and various operational scenarios is beneficial to provide wall-thickness (WT) information, thus leading to a predictive asset integrity regime. In this spirit, an approach to model the corrosion behavior of SS 316L using artificial neural networks (ANNs) is developed, whereby saline water at different concentrations is flown through an elbow structure at different flow rates and salt concentrations. Voltage, current, and temperature data are recorded hourly using electric field mapping (EFM) pins installed on the elbow surface, which serve as training data for the ANNs. The performance of corrosion modeling is verified by comparing the predicted WT with actual measurements obtained from experimental tests. The results show the exceptional performance of the proposed single ANN model to predict WT. The error is calculated by comparing the estimated WT and actual measurement recorded, where the maximum error for each setting is range from 0.5363 to [Formula: see text]. RMSE and MAE values of each pin in every setting are also computed such that the maximum values of RMSE and MAE are 0.0271 and 0.0266, respectively. Moreover, a concise account of the observed scale formation is also reported. This comprehensive study contributes to a better understanding of SS 316L corrosion and offers valuable insights for developing efficient strategies to prevent corrosion in industrial environments. By accurately predicting WT loss using ANNs, this approach enables proactive maintenance planning, minimizing the risk of structural failures and ensuring the extended sustainability of industrial assets.
不锈钢(SS)广泛应用于需要卓越耐腐蚀性的工业领域。对其在常见结构和各种运行场景下的腐蚀行为进行建模,有助于提供壁厚(WT)信息,从而形成一种预测性的资产完整性管理体系。本着这种精神,开发了一种使用人工神经网络(ANN)对SS 316L腐蚀行为进行建模的方法,即让不同浓度的盐水以不同流速流经一个弯头结构。使用安装在弯头表面的电场映射(EFM)引脚每小时记录电压、电流和温度数据,这些数据用作ANN的训练数据。通过将预测的WT与从实验测试中获得的实际测量值进行比较,验证了腐蚀建模的性能。结果显示了所提出的单ANN模型在预测WT方面的卓越性能。通过比较估计的WT和记录的实际测量值来计算误差,每种设置的最大误差范围为0.5363至[公式:见原文]。还计算了每种设置下每个引脚的RMSE和MAE值,使得RMSE和MAE的最大值分别为0.0271和0.0266。此外,还报告了观察到的垢层形成的简要情况。这项全面的研究有助于更好地理解SS 316L的腐蚀情况,并为制定有效的工业环境防腐蚀策略提供有价值的见解。通过使用ANN准确预测WT损失,这种方法能够进行主动维护规划,将结构故障风险降至最低,并确保工业资产的长期可持续性。