丙烯酸改性吲达帕胺基聚合物作为一种有效的抑制剂,可防止碳钢在 H2S 含量可变的 CO2 饱和氯化钠中腐蚀:电化学、失重和机器学习研究

IF 5.7 2区 材料科学 Q2 CHEMISTRY, PHYSICAL
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引用次数: 0

摘要

在这项工作中,研究了丙烯酸-吲达帕胺基聚合物聚(AAI)作为缓蚀剂在模拟油田酸甜腐蚀环境的 3.5 % 氯化钠饱和 CO2 溶液(存在不同浓度的 H2S)中缓和 C1018 碳钢腐蚀的性能。在 SEM、EDS 和 AFM 表面技术的支持下,使用失重和电化学技术对抑制剂的效果进行了评估。浓度为 80 ppm 时,聚合物的抑制效果超过 94%。此外,还研究了 H2S 浓度对抑制剂效果的影响。该抑制剂在所有测试条件下均有效。聚(AAI)的吸附与 Langmuir 吸附模型一致,并且聚(AAI)主要起阴极型抑制剂的作用。对钢表面形貌的 EIS、SEM/EDS 和 AFM 研究表明,聚 AAI 在钢表面形成了一层保护层。保护层成功地阻止了腐蚀性元素进入钢表面。此外,还使用四种不同的机器学习模型:决策树回归(DTR)、人工神经网络(ANN)、线性回归(LR)和高斯过程回归器(GPR)来预测聚 AAI 的 %IE 值。除了平均绝对误差、平均平方误差、均方根误差、平均绝对百分比误差和确定系数程序外,还使用了 10 k 倍交叉验证来评估模型的性能准确性。总体而言,LR 在性能等级稳健性方面表现最佳,其次是 GPR、ANN 和 =DTR。因此,LR 模型被认为是估算 poly(AAI) %IE 的更可靠选择,可为实际应用提供更准确的材料性能信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Acrylic acid modified indapamide-based polymer as an effective inhibitor against carbon steel corrosion in CO2-saturated NaCl with variable H2S levels: An electrochemical, weight loss and machine learning study

Acrylic acid modified indapamide-based polymer as an effective inhibitor against carbon steel corrosion in CO2-saturated NaCl with variable H2S levels: An electrochemical, weight loss and machine learning study

In this work, the performance of an acrylic acid-indapamide based polymer, poly(AAI), was investigated as a corrosion inhibitor in mitigating C1018 carbon steel in a 3.5 % NaCl solution saturated with CO2 in the presence of different H2S concentrations simulating an oilfield sweet and sour corrosive environment. The effectiveness of the inhibitor was evaluated using weight loss and electrochemical techniques supported by SEM, EDS, and AFM surface techniques. At a concentration of 80 ppm, the polymer showed an inhibition effect of over 94 %. The effect of H2S concentration on the inhibitor's effectiveness was also investigated. The inhibitor was effective under all conditions tested. The adsorption of poly(AAI) was consistent with the Langmuir adsorption model and poly(AAI) acted mainly as a cathodic-type inhibitor. EIS, SEM/EDS, and AFM studies of the steel surface morphology showed that poly(AAI) forms a protective layer on the steel surface. The corrosive elements were successfully prevented from accessing the steel surface by the protective layer. Machine learning was also performed to predict the %IE of poly(AAI) using four distinct machine learning models: decision tree regression (DTR), artificial neural networks (ANN), linear regression (LR), and Gaussian process regressor (GPR). A 10 k-fold cross-validation in addition to the mean absolute error, mean squared error, root mean square error, mean absolute percentage error, and determination coefficient procedure was used to assess the models' performance accuracy. Overall, the LR performs the best in terms of performance hierarchy robustness, followed by GPR, ANN, and =DTR. Consequently, the LR model was found to be a more reliable choice for estimating the %IE of poly(AAI), providing potentially more accurate information about material performance in practical applications.

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来源期刊
Surfaces and Interfaces
Surfaces and Interfaces Chemistry-General Chemistry
CiteScore
8.50
自引率
6.50%
发文量
753
审稿时长
35 days
期刊介绍: The aim of the journal is to provide a respectful outlet for ''sound science'' papers in all research areas on surfaces and interfaces. We define sound science papers as papers that describe new and well-executed research, but that do not necessarily provide brand new insights or are merely a description of research results. Surfaces and Interfaces publishes research papers in all fields of surface science which may not always find the right home on first submission to our Elsevier sister journals (Applied Surface, Surface and Coatings Technology, Thin Solid Films)
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