A Data Driven Machine Learning Model for Fault Detection in Industrial Pipelines
Namrata Vyas,
Pallavi Bagde
Abstract:Industry 4.0 has marked a paradigm shift in the way production and manufacturing operates. Process monitoring and fault diagnosis are important for the safety and reliability of industrial processes especially for smart manufacturing. As a data-driven process monitoring methodology, multivariate statistical analysis techniques, such machine learning based approaches have become extremely critical for automation. Pipelines carrying oil and gas are essential for a nation's economic sustainability. In order to ma… Show more
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