4.4 Article

Flow state monitoring of gas-water two-phase flow using multi-Gaussian mixture model based on canonical variate analysis

期刊

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.flowmeasinst.2021.101904

关键词

Gas-water two-phase flow; Flow state monitoring; Multi-sensors; Canonical variate analysis; Multi-Gaussian mixture model

资金

  1. National Natural Science Foundation of China [51976137, 61903272]
  2. Natural Science Foundation of Tianjin [19JCZDJC38900]

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Gas-water two-phase flow is a complex and time-varying process commonly encountered in industries. Accurate identification and monitoring of flow states is beneficial for further studying two-phase flow and improving the stable operation and economic efficiency of industrial processes. A strategy combining canonical variate analysis (CVA) and Gaussian mixture model (GMM), called multi-CVA-GMM, is proposed for flow state monitoring in gas-water two-phase flow, which effectively improves the efficiency of the monitoring process.
As a highly complex and time-varying process, gas-water two-phase flow is commonly encountered in industries. It has a variety of typical flow states and transition flow states. Accurate identification and monitoring of flow states is not only beneficial to further study of two-phase flow but also helpful for stable operation and economic efficiency of process industry. Combining canonical variate analysis (CVA) and Gaussian mixture model (GMM), a strategy called multi-CVA-GMM is proposed for flow state monitoring in gas-water two-phase flow. CVA is used to extract flow state features from the perspective of correlation between historical data and future data, which solves the cross correlation and temporal correlation of multi-sensor measurement data. GMM calculates the possibility that the current flow state belongs to each typical flow pattern and judges the current flow state by probability indicators. It is conducive to follow-up use of Bayesian inference probability and Mahalanobis distance-based (BID) indicator for flow state monitoring, which avoids repeated traversal of multiple CVA-GMM models and improves the efficiency of the monitoring process. The probability indicators can also be used to analyze transition flow states. The method combining the probabilistic idea of GMM with the deterministic idea of multimodal modeling can accurately identify the current flow state and effectively monitor the evolution of flow state. The multi-CVA-GMM method is validated by using the measured data of the horizontal flow loop of gas-water two-phase flow experimental facility, and its effectiveness is proved.

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