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Markov transition probability-based network from time series for characterizing experimental two-phase flow
Authors:Gao Zhong-Ke  Hu Li-Dan  and Jin Ning-De
Affiliation:School of Electrical Engineering and Automation, Tianjin University, Tianjin 300072, China
Abstract:We generate a directed weighted complex network by a method based on Markov transition probability to represent an experimental two-phase flow. We first systematically carry out gas-liquid two-phase flow experiments for measuring the time series of flow signals. Then we construct directed weighted complex networks from various time series in terms of a network generation method based on Markov transition probability. We find that the generated network inherits the main features of the time series in the network structure. In particular, the networks from time series with different dynamics exhibit distinct topological properties. Finally, we construct two-phase flow directed weighted networks from experimental signals and associate the dynamic behavior of gas-liquid two-phase flow with the topological statistics of the generated networks. The results suggest that the topological statistics of two-phase flow networks allow quantitative characterization of the dynamic flow behavior in the transitions among different gas-liquid flow patterns.
Keywords:complex network  time series analysis  chaotic dynamics  two-phase flow pattern
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