Unsupervised machine learning model for predicting anomalies in subsurface safety valves and application in offshore wells during oil production
Pedro Esteves Aranha,
Nara Angelica Policarpo,
Marcio Augusto Sampaio
Abstract:Predicting oil well behavior regarding the integrity of its equipment during production and anticipating behavioral changes and anomalies are among the main challenges in oil production. In this context, this study focuses on the development of predictive models for real-time monitoring of well behavior using sensor data from production wells. An unsupervised Novelty and Outlier Detection model has been introduced with a specific focus on predicting instances of unexpected subsurface safety valve closures in s… Show more
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