1. A Quality-Hierarchical Temperature Imaging Network for TDLAS Tomography.
- Author
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Si, Jingjing, Fu, Gengchen, Cheng, Yinbo, Zhang, Rui, Enemali, Godwin, and Liu, Chang
- Subjects
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CROSS-sectional imaging , *TOMOGRAPHY , *TUNABLE lasers , *SEMICONDUCTOR lasers , *LASER spectroscopy - 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. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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