4.7 Article

Identifying and tracking bubbles and drops in simulations: A toolbox for obtaining sizes, lineages, and breakup and coalescence statistics

期刊

JOURNAL OF COMPUTATIONAL PHYSICS
卷 432, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.jcp.2021.110156

关键词

Two-phase flow; Breakup; Coalescence; Algorithms; Structure identification; Structure tracking

资金

  1. Office of Naval Research [N00014-15-1-2726]
  2. Advanced Simulation and Computing program of the U.S. Department of Energy's National Nuclear Security Administration via the PSAAP-II Center at Stanford University [DE-NA0002373]
  3. National Science Scholarship from the Agency for Science, Technology and Research in Singapore

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Knowledge of bubble and drop size distributions in two-phase flows is crucial for understanding phenomena such as combustor ignition, sonar communication, and cloud formation. Accurate identification and tracking algorithms for the dispersed phase are necessary to measure the evolution and quantify the underlying mechanisms in interface-resolving flow simulations.
Knowledge of bubble and drop size distributions in two-phase flows is important for characterizing a wide range of phenomena, including combustor ignition, sonar communication, and cloud formation. The physical mechanisms driving the background flow also drive the time evolution of these distributions. Accurate and robust identification and tracking algorithms for the dispersed phase are necessary to reliably measure this evolution and thereby quantify the underlying mechanisms in interface-resolving flow simulations. The identification of individual bubbles and drops traditionally relies on an algorithm used to identify connected regions. This traditional algorithm can be sensitive to the presence of spurious structures. A cost-effective refinement is proposed to maximize volume accuracy while minimizing the identification of spurious bubbles and drops. An accurate identification scheme is crucial for distinguishing bubble and drop pairs with large size ratios. The identified bubbles and drops need to be tracked in time to obtain breakup and coalescence statistics that characterize the evolution of the size distribution, including breakup and coalescence frequencies, and the probability distributions of parent and child bubble and drop sizes. An algorithm based on mass conservation is proposed to construct bubble and drop lineages using simulation snapshots that are not necessarily from consecutive time steps. These lineages are then used to detect breakup and coalescence events, and obtain the desired statistics. Accurate identification of large-size-ratio bubble and drop pairs enables accurate detection of breakup and coalescence events over a large size range. Accurate detection of successive breakup and coalescence events requires that the snapshot interval be an order of magnitude smaller than the characteristic breakup and coalescence times to capture these successive events while minimizing the identification of repeated confounding events. Together, these algorithms serve as a toolbox for detailed analysis of two-phase simulations, and enable insights into the mechanisms behind bubble and drop formation and evolution in flows of practical importance. (C) 2021 Elsevier Inc. All rights reserved.

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