Litcius/Paper detail

Semi-supervised learning framework for oil and gas pipeline failure detection

Mohammad H. Alobaidi, Mohamed A. Meguid, Tarek Zayed

2022Scientific Reports25 citationsDOIOpen Access PDF

Abstract

Quantifying failure events of oil and gas pipelines in real- or near-real-time facilitates a faster and more appropriate response plan. Developing a data-driven pipeline failure assessment model, however, faces a major challenge; failure history, in the form of incident reports, suffers from limited and missing information, making it difficult to incorporate a persistent input configuration to a supervised machine learning model. The literature falls short on the development of appropriate solutions to utilize incomplete databases and incident reports in the pipeline failure problem. This work proposes a semi-supervised machine learning framework which mines existing oil and gas pipeline failure databases. The proposed cluster-impute-classify (CIC) approach maps a relevant subset of the failure databases through which missing information in the incident report is reconstructed. A classifier is then trained on the fly to learn the functional relationship between the descriptors from a diverse feature set. The proposed approach, presented within an ensemble learning architecture, is easily scalable to various pipeline failure databases. The results show up to 91% detection accuracy and stable generalization ability against increased rate of missing information.

Topics & Concepts

Computer sciencePipeline (software)Classifier (UML)Machine learningPipeline transportScalabilityArtificial intelligenceData miningSupervised learningMissing dataArtificial neural networkDatabaseEngineeringEnvironmental engineeringProgramming languageWater Systems and OptimizationOil and Gas Production TechniquesStructural Integrity and Reliability Analysis