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A Quality-Hierarchical Temperature Imaging Network for TDLAS Tomography

Jingjing Si, Gengchen Fu, Yinbo Cheng, Rui Zhang, Godwin Enemali, Chang Liu

2022IEEE Transactions on Instrumentation and Measurement26 citationsDOIOpen Access PDF

Abstract

Tunable diode laser absorption spectroscopy (TDLAS) tomography is a well-established combustion diagnostic technique for imaging 2-D cross-sectional distributions of critical flow-field parameters. As two key metrics in TDLAS tomography, reconstruction accuracy and efficiency are generally traded off to satisfy either the requirement of high-fidelity image retrieval or rapid tomographic data inversion. In this article, a novel quality-hierarchical temperature imaging network for TDLAS tomography is developed based on stacked long short-term memory (LSTM). From limited line-of-sight TDLAS measurements, this network outputs two reconstructed temperature images, i.e., a coarse-quality image and a fine-quality image, with different numbers of network layers and consequently different computational costs. The coarse-quality image provides more timely temperature reconstruction, which can satisfy real-time dynamic monitoring of turbulence–chemistry interactions with a temporal resolution of tens of kilo frames per second. In contrast, the fine-quality image, which can be stored and utilized for offline analysis and diagnosis, further details the temperature reconstruction with more accurate features. Both numerical stimulation and lab-scale experiment validated the accuracy-efficiency tradeoff achieved by the proposed quality-hierarchical temperature imaging network.

Topics & Concepts

Iterative reconstructionTomographyImage qualityImage resolutionTomographic reconstructionComputer scienceArtificial intelligenceComputer visionOpticsImage (mathematics)PhysicsPhotoacoustic and Ultrasonic ImagingSpectroscopy and Laser ApplicationsAtmospheric and Environmental Gas Dynamics
A Quality-Hierarchical Temperature Imaging Network for TDLAS Tomography | Litcius