Day 1 Mon, May 04, 2020 2020
DOI: 10.4043/30684-ms
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Physics Based Machine Learning for Annular Blowout Preventer Health Monitoring

Abstract: Physics-based models are efficient solutions capable of predicting the dynamic performance of engineering systems. Owing to the rapid data growth in sensor technologies, enormous datasets are readily available creating a unique opportunity to seamlessly fuse analytical physics based models with system data. This integration has produced a physics-based machine learning (PBML) knowledge base that overcomes the costly limitations of deep learning solutions and associated false discoveries of machine learning (ML… Show more

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