3D Convolutional Selective Autoencoder For Instability Detection in Combustion Systems
Tryambak Gangopadhyay, Vikram Ramanan, Adedotun Akintayo, Paige K, Boor, Soumalya Sarkar, Satyanarayanan R Chakravarthy, Soumik Sarkar

TL;DR
This paper introduces a novel 3D convolutional autoencoder designed to detect early signs of combustion instability from high-speed videos, enabling safer and more efficient gas turbine operation.
Contribution
The paper presents a new deep learning architecture, 3D-CSAE, capable of analyzing spatiotemporal video data to predict combustion instability precursors.
Findings
Improved detection of instability precursors.
Effective hierarchical feature learning from video data.
Potential for real-time instability mitigation.
Abstract
While analytical solutions of critical (phase) transitions in physical systems are abundant for simple nonlinear systems, such analysis remains intractable for real-life dynamical systems. A key example of such a physical system is thermoacoustic instability in combustion, where prediction or early detection of an onset of instability is a hard technical challenge, which needs to be addressed to build safer and more energy-efficient gas turbine engines powering aerospace and energy industries. The instabilities arising in combustion chambers of engines are mathematically too complex to model. To address this issue in a data-driven manner instead, we propose a novel deep learning architecture called 3D convolutional selective autoencoder (3D-CSAE) to detect the evolution of self-excited oscillations using spatiotemporal data, i.e., hi-speed videos taken from a swirl-stabilized combustor…
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