Probabilistic learning approach for the liquid holdup analysis of high-viscosity intermittent flows
J. E. V. Guzmán,
J. A. González-Treviño,
L. Torres
et al.
Abstract:A Gaussian mixture model (GMM) was implemented to investigate the relationship between the liquid holdup (in various parts of the flow) and the pressure for different experimental realizations of high-viscosity gas–liquid flows. We considered a Newtonian fluid with a constant viscosity of 6 Pa s (600 cP) under a laboratory-controlled temperature. Because the pressure and the holdup do not exhibit a clear-cut relationship in the time domain, a supervised classification algorithm and a “deep” neural network (DNN… Show more
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