A Deep Learning-Based Approach for Two-Phase Flow Pattern Classification Using Void Fraction Time Series Analysis

  • Jefferson Dos Santos Ambrosio
  • , Marco Da Silva
  • , Andre Eugenio Lazzaretti*
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Flow regime classification is essential for analyzing and modeling two-phase flows, as it demarcates the flow behavior and influences the selection of appropriate predictive models. Machine learning-based approaches have gained relevance in flow regime classification research in the last few years.
However, they are still solidly based on the construction and careful definition of hand-crafted features. Deep learning approaches, on the other hand, can provide more robust and end-to-end solutions. However, they are underexplored and have not evaluated the generalization of the models to other data or acquisition systems. Hence, this work proposes using end-to end state-of-the-art (SOTA) time-series classification methods (ResNet, LSTM-FCN, and TSTPlus) for two-phase flow patterns (churn, bubbly, and slug).We also present the generalization analysis of the models with cross-dataset experiments, training the model with one dataset and testing it with another dataset collected in another system for two datasets: HZDR (from the Helmholtz-Zentrum Dresden-Rossendorf research laboratory) and TUD (from Technische Universität Dresden). The results demonstrate that the approach chosen here presents superior classification metrics in all cases evaluated, particularly in cross-dataset experiments. With our proposed SOTA methods, all the evaluated metrics (accuracy and F1-Score) consistently surpass 85% in all cases, while the baseline method can decrease the performance under 75%. This demonstrates the relevance of the analysis proposed here for
flow regime classification literature and opens up a new set of possibilities for research in this area, aiming at robust solutions that are viable for practical use. Codes are available at https://github.com/ambrosioj/twophase-time-series-deep-learning.
Original languageEnglish
Pages (from-to)11778 - 11791
Number of pages14
JournalIEEE Access
Volume13
DOIs
Publication statusPublished - 14 Jan 2025

Fields of science

  • 202016 Electrical engineering
  • 202012 Electrical measurement technology
  • 202027 Mechatronics
  • 202037 Signal processing
  • 202036 Sensor systems
  • 202022 Information technology
  • 203016 Measurement engineering

JKU Focus areas

  • Digital Transformation

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