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The capability of recurrent neural networks to predict turbulence flow via spatiotemporal features

The capability of recurrent neural networks to predict turbulence flow via spatiotemporal features


Titill: The capability of recurrent neural networks to predict turbulence flow via spatiotemporal features
Höfundur: Hassanian, Reza   orcid.org/0000-0001-5706-314X
Bouhlali, Lahcen
Riedel, Morris   orcid.org/0000-0003-1810-9330
Útgáfa: 2022-07-06
Tungumál: Enska
Umfang: 55
Háskóli/Stofnun: Háskóli Íslands
University of Iceland
Svið: Verkfræði- og náttúruvísindasvið (HÍ)
School of Engineering and Natural Sciences (UI)
Deild: Iðnaðarverkfræði-, vélaverkfræði- og tölvunarfræðideild (HÍ)
Faculty of Industrial Eng., Mechanical Eng. and Computer Science (UI)
ISBN: 978-1-6654-8176-2
Efnisorð: Deep learning; Parallel computing; Turbulent flow
URI: https://hdl.handle.net/20.500.11815/3524

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Tilvitnun:

R. Hassanian, M. Riedel and B. Lahcen, "The capability of recurrent neural networks to predict turbulence flow via spatiotemporal features," in IEEE 10th Jubilee International Conference on Computational Cybernetics and Cyber-Medical Systems (ICCC 2022), Reykjavik, Iceland, 2022.

Útdráttur:

This study presents a deep learning (DL) neural network hybrid data-driven method that is able to predict turbulence flow velocity field. Recently many studies have reported the application of recurrent neural network (RNN) methods, particularly the Long short-term memory (LSTM) for sequential data. The airflow around the objects and wind speed are the most presented with different hybrid architecture. In some of them, the data series is used with the known equation, and the data is firstly generated. Data series extracted from Computational Fluid Dynamics (CFD) have been used in many cases. This work aimed to determine a method with raw data that could be measured with devices in the airflow, wind tunnel, water flow in the river, wind speed and industry application to process in the DL model and predict the next time steps. This method suggests spatialtemporal data in time series, which matches the Lagrangian framework in fluid dynamics. Gated Recurrent Unit (GRU), the next generation of LSTM, has been employed to create a DL model and forecasting. Time series data source is from turbulence flow has been generated in a laboratory and extracted via 2D Lagrangian Particle Tracking (LPT). This data has been used for the training model and to validate the prediction in the suggested approach. The achievement via this method dictates a significant result and could be developed.

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