A Machine Learning-Driven Framework for Corrosion Risk Assessment in Long-Distance Pipelines
作者
单位
1Shaanxi Key Laboratory of Shaanxi Province for Gas & Oil Logging Technology、Xi’an、Shaanxi 710065、China 2Xi’an Shiyou University、Xi’an、Shaanxi 710065、China 3Beijing Ankocorr Technology Co.、Ltd.、Beijing 102209、China
关键词
收录来源
International Corrosion Congress · 第22届国际腐蚀大会
摘要
The rapid advancement of Industrial Internet of Things (IIoT) and machine learning technologies has exposed limitations in traditional corrosion risk assessment methods, particularly in terms of accuracy and real -time performance. This study presents an innovative machine learning-based framework for corrosion risk assessment in long - distance pipeli nes. The framework integrates public environmental factors (e.g., meteorological and geological data) with private operation and maintenance data (e.g., intelligent pigging and cathodic protection monitoring data). For data management, customized preprocessing workflows have been designed for various data types, and information is organized in an N-dimensional vector format to ensure data quality and consistency. The modeling component employs an adaptive optimization algorithm based on historical data, inc orporating multiple pre-set machine learning models and their hyperparameter spaces. Through automatic adjustment and selection of optimal model configurations, the framework significantly improves the accuracy and generalization capability of risk assessm ent. Multiple specialized models are coupled using ensemble learning methods, forming an end -to-end risk assessment workflow. This study also explores strategies for model deployment and continuous optimization mechanisms, ensuring the framework's scalabil ity and maintainability in practical production environments. The proposed comprehensive framework aims to enhance the accuracy, efficiency, and adaptability of corrosion risk assessment for long - distance pipelines, thereby providing robust support for ope ration and maintenance decisions.