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Detection of precursors of combustion instability using convolutional recurrent neural networks

Cellier, Antony and Lapeyre, Corentin J. and Oztarlik, Gorkem and Poinsot, Thierry and Schuller, Thierry and Selle, Laurent Detection of precursors of combustion instability using convolutional recurrent neural networks. (2021) Combustion and Flame, 233. 111558. ISSN 0010-2180

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Official URL: https://doi.org/10.1016/j.combustflame.2021.111558


Many combustors are prone to Thermoacoustic Instabilities (TAI). Being able to avoid TAI is mandatory to efficiently operate a system without sacrificing neither performance nor safety. Based on Deep Learning techniques, and more specifically Convolutional Recurrent Neural Networks (CRNN)1, this study presents a tool able to detect and translate precursors of TAI in a swirled combustor for different fuel injection strategies. The tool is trained to use only time-series recorded by a few sensors in stable conditions to predict the proximity of unstable operating points on a mass flow rate / equivalence ratio operating map, offering a real-time information on the margin of the system versus TAI. This allows to change operating conditions, and detect the directions to avoid in order to remain in the stable domain.

Item Type:Article
HAL Id:hal-03382640
Audience (journal):International peer-reviewed journal
Uncontrolled Keywords:
Institution:French research institutions > Centre National de la Recherche Scientifique - CNRS (FRANCE)
Université de Toulouse > Institut National Polytechnique de Toulouse - Toulouse INP (FRANCE)
Université de Toulouse > Université Toulouse III - Paul Sabatier - UT3 (FRANCE)
Other partners > Centre Européen de Recherche et Formation Avancées en Calcul Scientifique - CERFACS (FRANCE)
Laboratory name:
Deposited On:19 Jul 2021 09:09

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