| 注册
首页|期刊导航|石油钻采工艺|小样本预测埋地管道外腐蚀速率

小样本预测埋地管道外腐蚀速率

赵阳

石油钻采工艺2024,Vol.46Issue(1):106-111,6.
石油钻采工艺2024,Vol.46Issue(1):106-111,6.DOI:10.13639/j.odpt.202310030

小样本预测埋地管道外腐蚀速率

Small sample prediction of external corrosion rates of buried pipelines

赵阳1

作者信息

  • 1. 中国石油辽河油田公司油气集输公司,辽宁盘锦 124010
  • 折叠

摘要

Abstract

To address the shortcomings of existing linear regression models,single-support vector machines and genetic algorithm-supported vector machines in predicting pipeline corrosion rate,the sparrow search slgorithm-supported vector machine(SSA-SVM)corrosion rate prediction model was developed by using sparrow search algorithm and selecting dominant factors including total salinity,oxidation-reduction potential,pH value,chloride ion concentration,nitrate radical concentration,dissolved oxygen content and natural corrosion potential as input variations.SSA-SVM corrosion rate prediction model has a coefficient of determination R2 of 0.9919,which is higher than that of the linear regression model(0.7189),single-support vector machine(0.8442)and GA-SVM(0.9137).The root-mean-square error is 0.0686 mm/a,which is lower than 0.1166,1.7745 and 0.1183 mm/a,the values of the other three models.The average absolute error is 0.0902 mm/a,which is lower than 0.1474,1.7056 and 0.0977 mm/a,the values of the other three models..The average relative error is 3.94%,which is lower than 25.59%,32.29%and 6.42%,the percentage of the other three models.Using this model,8 sets of data were chosen at random to predict the external corrosion rate of buried pipeline B.Compared to real annual corrosion rate on site,the prediction accuracy was 0.9642,higher than 0.6690,the prediction accuracy of the genetic algorithm-supported vector machine,indicating that the model can be used to predict the external corrosion rate of underground pipelines in oil fields,offering data support for safe operation of the buried pipelines.

关键词

石油天然气/油气储运/集输管道/管道腐蚀/预测模型/影响因素/麻雀搜索算法/支持向量机

Key words

oil and natural gas/oil and gas storage and transportation/gathering and transportation pipelines/pipeline corrosion/prediction model/influencing factor/sparrow search algorithm/support vector machine

分类

能源科技

引用本文复制引用

赵阳..小样本预测埋地管道外腐蚀速率[J].石油钻采工艺,2024,46(1):106-111,6.

石油钻采工艺

OA北大核心CSTPCD

1000-7393

访问量0
|
下载量0
段落导航相关论文