摘要
针对我国不同地区的各类钢材,提出了一种基于机器学习算法的钢材大气腐蚀深度预测方法,并对不同算法的适用程度进行评估。首先,收集了我国10个大气暴露站的腐蚀检测数据、环境特征和材料特征,采用规范公式与6种机器学习算法预测钢材腐蚀深度,分析预测误差,对比环境腐蚀性等级评估的准确率,筛选适用于我国钢材大气腐蚀的预测模型。进一步分析材料与环境特征敏感性,揭示影响钢材大气腐蚀的主要材料与环境因素。结果表明,相比于规范公式,应用随机森林(RF)和长短期记忆循环神经网络(LSTM)算法的预测模型精度大幅提升;除了规范公式中的温湿度、硫酸盐和氯盐沉积率外,有关雨水酸碱性和雨水腐蚀性离子浓度的特征对钢材腐蚀行为有较大影响,应予以考虑。
Atmospheric corrosion of steels is a universal problem.Improving the prediction accuracy of atmospheric corrosion rate of steels in China is of great significance for setting corrosion margin,preventing corrosion failure and reducing the corrosion induced economic loss.For different type of steels in different regions of China,a prediction method of corrosion depth for steels based on machine learning algorithm was proposed,including data acquisition and processing,model training and testing,model evaluation and screening,feature ranking and other steps.The applicability of different algorithms was evaluated and the optimal algorithm of the corrosion prediction for steels was selected.Firstly,the corrosion data,environmental-and materials-features of 10 atmospheric exposure stations in China were collected.The corrosion depth of steels was predicted by using standard formulas and 6 machine learning algorithms.The grades of environmental corrosivity of atmospheric exposure stations were evaluated.Then,the prediction errors were analyzed,the accuracy of environmental corrosivity grade assessment was compared,and the prediction model suitable for steel corrosion was screened.Moreover,the sensitivity of materials-and environmental-features were analyzed,revealing the main factors of environments and materials affecting the atmospheric corrosion of steels.The results show that compared with the standard formula,the accuracy of the prediction models is greatly improved by RF and LSTM algorithms.In addition to the terms such as temperature,humidity,sulfate-and chloride-deposition rates mentioned in standard formulas,the acidity,alkalinity and rainwater corrosive ion concentration of rainwaters have a great impact on the corrosion of steels,which should be considered.
作者
沈坚
吴柯娴
何晓宇
方兴龙
SHEN Jian;WU Kexian;HE Xiaoyu;FANG Xinglong(Zhejiang Institute of Communications Co.,Ltd.,Hangzhou 310006,China;Key Laboratory of Integrated Transportation Theory and Transportation Industry,Hangzhou 310006,China;Institute of Structural Engineering,Zhejiang University,Hangzhou 310058,China;Zhejiang Seaport River Port Development Co.,Ltd.,Hangzhou 310005,China)
出处
《中国腐蚀与防护学报》
CAS
CSCD
北大核心
2024年第4期939-948,共10页
Journal of Chinese Society For Corrosion and Protection
基金
浙江省交通运输厅科技计划项目(2020003和2023007)
交通运输行业重点科技项目(2020-GT-010)。
关键词
钢材
大气暴露站
机器学习
特征敏感性
环境腐蚀性等级
steel
atmospheric exposure stations
machine learning
feature sensitivity
environmental corrosive grade