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    基于机器学习的腐蚀图像特征参数表征方法

    Characterization Method for Feature Parameters of Corrosion Images Based on Machine Learning

    • 摘要: 通过浸泡试验获得X80钢在交流干扰和阴极保护共同作用下的腐蚀图像,基于机器学习和计算函数graycomatrix()提出了腐蚀图像特征参数提取及分析方法,并通过电化学试验验证了该方法的准确性。结果表明:在交流干扰(50 A/m2、60 Hz)和阴极保护(-1.0 V、相对于SCE)共同作用下,X80钢的腐蚀图像分为3个变化阶段。第一阶段(0~20 h)为蚀坑萌生和孕育阶段,蚀坑数量迅速增加;第二阶段(20~40 h)为加速腐蚀阶段,蚀坑数量迅速降低;第三阶段(40~60 h)为稳定腐蚀阶段,蚀坑数量缓慢降低,腐蚀达到稳定状态。随着腐蚀时间的延长,腐蚀图像二阶矩与蚀坑数量的变化规律相同,而角二阶矩与腐蚀面积比例呈现相反的变化趋势。电化学试验结果验证了二阶矩和角二阶矩能够较好地描述腐蚀规律,证明了该方法的可行性。

       

      Abstract: Corrosion images of X80 steel under combined AC interference and cathodic protection were obtained through immersion tests. A machine learning-based method incorporating the graycomatrix () computational function was proposed for corrosion image feature extraction and analysis. The accuracy of this method was further validated by electrochemical measurements. The results show that under the combined action of AC interference (50 A/m2, 60 Hz) and cathodic protection (-1.0 V, vs. SCE), the corrosion images of X80 steel could be divided into three stages: the first stage (0-20 h) was the stage of crater initiation and incubation, in which the number of pits increased rapidly; the second stage (20-40 h) was the accelerated corrosion stage, in which the number of pits decreased rapidly; and the third stage (40-60 h) was a stable corrosion stage, in which the number of pits slowly decreased and corrosion reached a stable state. As corrosion duration increased, the second moment of image exhibited similar variation trends to pit density, while the angular second moment of image showed an opposite trend to corrosion area ratio. Electrochmical testing results confirmed that both second moment of and angular second moment of image effectively characterize corrosion evolution, demonstrating the validity of the proposed methodology.

       

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