2023
DOI: 10.1002/asmb.2835
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Bayesian change point prediction for downhole drilling pressures with hidden Markov models

Ochuko Erivwo,
Viliam Makis,
Roy Kwon

Abstract: In the drilling of oil wells, the need to accurately detect downhole formation pressure transitions has long been established as critical for safety and economics. In this article, we examine the application of Hidden Markov Models (HMMs) to oilwell drilling processes with a focus on the real time evolution of downhole formation pressures in its partially observed state. The downhole drilling pressure system can be viewed as a nonlinear, non‐degrading stochastic process whose optimum performance is in a region… Show more

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