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Investigation of Service Life Prediction Models for Metallic Organic Coatings Using Full-Range Frequency EIS Data

机译:使用全频频率EIS数据研究金属有机涂层的使用寿命预测模型

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Various service life prediction models of organic coatings were analyzed based on the acquirement of the measurement of Electrochemical Impedance Spectroscopy (EIS) from indoor accelerated tests. First, some theoretical formulas on corrosion lifetime predictions of coatings were introduced, followed by the comparative assessment of four practical prediction models in view of prediction accuracy in application. The prediction from impedance data at single low frequency | Z | 0.1 Hz , the classical degradation kinetics, and proposed improved degradation kinetics model, as well as a self-organized neural network prediction based on sample detection, were focused in this paper. The standard AF1410 plates employed as the metallic substrates were coated with sprayed zinc layer, epoxy-ester primer and polyurethane enamel layer. The accelerated experiments which mimicked coastal areas of China were carried out with the specimens after surface treatment. The assessment of results showed that the proposed improved degradation kinetics model and neural network classification model based on the full range of frequency data obviously have higher prediction accuracies than the traditional degradation kinetics model, and the prediction precision of the sample detection-based neural network classification was the highest among these models. The study gives some insights for coating degradation lifetime prediction which may be useful and supportive for practical applications.
机译:基于室内加速试验获得的电化学阻抗谱(EIS)的测量结果,分析了有机涂层的各种使用寿命预测模型。首先介绍了涂层腐蚀寿命预测的一些理论公式,然后根据应用中的预测精度对四种实用的预测模型进行了比较评估。单个低频阻抗数据的预测| Z |本文重点讨论了0.1 Hz的经典降解动力学,并提出了改进的降解动力学模型,以及基于样本检测的自组织神经网络预测。用作金属基材的标准AF1410板涂有喷涂锌层,环氧酯底漆和聚氨酯搪瓷层。表面处理后的样品进行了模仿中国沿海地区的加速实验。结果评估表明,提出的基于全频率数据的改进的退化动力学模型和神经网络分类模型的预测精度明显高于传统的退化动力学模型,并且基于样本检测的神经网络分类的预测精度较高。在这些模型中是最高的。该研究为涂层降解寿命的预测提供了一些见识,这些见解可能对实际应用很有帮助和支持。

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