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Forecasting through deep learning and modal decomposition in two-phase concentric jets (2212.12731v3)

Published 24 Dec 2022 in cs.LG and physics.flu-dyn

Abstract: This work aims to improve fuel chamber injectors' performance in turbofan engines, thus implying improved performance and reduction of pollutants. This requires the development of models that allow real-time prediction and improvement of the fuel/air mixture. However, the work carried out to date involves using experimental data (complicated to measure) or the numerical resolution of the complete problem (computationally prohibitive). The latter involves the resolution of a system of partial differential equations (PDE). These problems make difficult to develop a real-time prediction tool. Therefore, in this work, we propose using machine learning in conjunction with (complementarily cheaper) single-phase flow numerical simulations in the presence of tangential discontinuities to estimate the mixing process in two-phase flows. In this meaning we study the application of two proposed neural network (NN) models as PDE surrogate models. Where the future dynamics is predicted by the NN, given some preliminary information. We show the low computational cost required by these models, both in their training and inference phases. We also show how NN training can be improved by reducing data complexity through a modal decomposition technique called higher order dynamic mode decomposition (HODMD), which identifies the main structures inside flow dynamics and reconstructs the original flow using only these main structures. This reconstruction has the same number of samples and spatial dimension as the original flow, but with a less complex dynamics and preserving its main features. The core idea of this work is to test the limits of applicability of deep learning models to data forecasting in complex fluid dynamics problems. Generalization capabilities of the models are demonstrated by using the same NN architectures to forecast the future dynamics of four different two-phase flows.

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References (37)
  1. A predictive hybrid reduced order model based on proper orthogonal decomposition combined with deep learning architectures. Expert Systems With Applications 187, 115910.
  2. Mixture Formation in Internal Combustion Engine. Springer.
  3. The development of a bubble rising in a viscous liquid. J. Fluid Mech. 387, 61–96.
  4. Atomization of liquid jets from injection element in liquid rocket combustion chamber. Technical Report. Second Quarterly Report to NASA.
  5. Inductive bias of deep convolutional networks through pooling geometry. http://arxiv.org/abs/1605.0674 .
  6. Theory of multicomponent fluids. Applied Mathematical Sciences, 135. Springer.
  7. Super-resolution reconstruction of turbulent flows with machine learning. Journal of Fluid Mechanics 870, 106–120. doi:10.1017/jfm.2019.238.
  8. Convolutional neural networks for steady flow approximation. Proceedings of the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining , 481–490URL: https://doi.org/10.1145/2939672.2939738, doi:10.1145/2939672.2939738.
  9. Towards multi-spatiotemporal-scale generalized pde modeling URL: https://arxiv.org/abs/2209.15616, doi:10.48550/ARXIV.2209.15616.
  10. A note on the mechanism of the instability at the interface between two shearing. J. Fluid Mech. 144, 463–465.
  11. Volume of fluid (vof) method for the dynamics of free boundaries. J. Comput. Phys 39, 201–225.
  12. Waves on water jets. J. Fluid Mech. 83, 119–127.
  13. Fall detection system based on simple threshold method and long short-term memory: Comparison with hidden markov model and extraction of optimal parameters. Applied Sciences 12. URL: https://www.mdpi.com/2076-3417/12/21/11031, doi:10.3390/app122111031.
  14. Adam: A method for stochastic optimization. Dec. 2015, Accessed: Sep. 21, 2020. [Online]. Available: https://arxiv.org/abs/1412.6980v9 .
  15. Liquid jet instability and atomization in a coaxial gas stream. Annu. Rev. Fluid Mech. 32, 275–308.
  16. Experimental and numerical comparisons of the break-up of a large bubble. Experiments in Fluids 26, 524–534.
  17. A reduced order model to predict transient flows around straight bladed vertical axis wind turbines. Energies 11, 566.
  18. An alternative method to study cross-flow instabilities based on high order dynamic mode decomposition. Phys. Fluids 31, 094101.
  19. Coherent structures in the turbulent channel flow of an elastoviscoplastic fluid. J. Fluid Mech. 888, A5.
  20. Higher Order Dynamic Mode Decomposition and Its Applications. Academic Press.
  21. Higher order dynamic mode decomposition. SIAM J. Appl. Dyn. Sys. 16, 882–925.
  22. Higher order dynamic mode decomposition of noisy experimental data: the flow structure of a zero-net-mass-flux jet. Exp. Therm. Fluid Sci. 88, 336–353.
  23. Atomization and Sprays. Hemisphere.
  24. Numerical study of flows of two immiscible liquids at low reynolds number. SIAM Review 42, 417–439.
  25. A two-phase mixing layer between parallel gas and liquid streams: multiphase turbulence statistics and influence of interfacial instability. Journal of Fluid Mechanics 859, 268–307.
  26. Model-free short-term fluid dynamics estimator with a deep 3d-convolutional neural network. Expert Systems with Applications. 177.
  27. Modeling double concentric jets using linear and non-linear approaches. International Workshop on Soft Computing Models in Industrial and Environmental Applications 1268, 451.
  28. The spatial inductive bias of deep learning. Johns Hopkins University .
  29. Designing a sustainable bioethanol supply chain network: A combination of machine learning and meta-heuristic algorithms. Industrial Crops and Products 189, 115848. URL: https://www.sciencedirect.com/science/article/pii/S0926669022013310, doi:https://doi.org/10.1016/j.indcrop.2022.115848.
  30. Deep convolutional neural networks for image classification: A comprehensive review. Neural Computation 29(9), 2352–2449.
  31. Dynamic mode decomposition of numerical and experimental data. J. Fluid Mech. 656, 5–28.
  32. An overview of rayleigh–taylor instabilit. Physica D. 12, 3–18.
  33. Experimental study on bluff-body stabilized premixed flame with a central air/fuel jet. Energies 10, 2011.
  34. Openfoam. www.openfoam.org (Accessed: 06 June 2023).
  35. Viscous modes in two-phase mixing layers. Phys. Fluids 14, 4115–4122.
  36. Instability due to viscosity stratification. J. Fluid Mech. 27, 337–352.
  37. A review of recurrent neural networks: Lstm cells and network architectures. Neural Comput. 31(7), 1235––1270.
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