2023
DOI: 10.1088/1361-6501/acd40b
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Quantitative gas property measurements by filtered Rayleigh scattering: a review

Abstract: Filtered Rayleigh scattering (FRS) is a laser-based diagnostic technique used to nonintrusively quantify various thermodynamic properties of a light-scattering gas. The backbone of FRS is the molecular filtering of Rayleigh scattered light. This concept was initially introduced by the atmospheric LIDAR community before being adopted within the aerospace research field in the early 1990s. Since then, FRS has matured into a versatile quantitative diagnostic tool and has found use in a variety of flow regimes ran… Show more

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Cited by 6 publications
(1 citation statement)
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“…Looking back over the 2023 issues, review articles have remained prominent with articles covering smart optical coordinate and surface metrology [3], linear and nonlinear dimensionality reduction from fluid mechanics to machine learning [4], guided ultrasonic wave propagation imaging [5], mechanical ventilation based on machine learning [6], deep learning-based methods in structural reliability analysis [7], 3D optical measurement techniques [8], the application of Josephson voltage standards [9], combustion of metal particles [10], heterogeneous sensing for target tracking [11], quantitative gas property measurements by filtered Rayleigh scattering [12], optical fiber reflectometry detecting static and dynamic Rayleigh spectra [13], stimulated emission depletion microscopy [14], mechanical fault diagnosis based on deep transfer learning [15] and advanced combustion dynamics [16].…”
mentioning
confidence: 99%
“…Looking back over the 2023 issues, review articles have remained prominent with articles covering smart optical coordinate and surface metrology [3], linear and nonlinear dimensionality reduction from fluid mechanics to machine learning [4], guided ultrasonic wave propagation imaging [5], mechanical ventilation based on machine learning [6], deep learning-based methods in structural reliability analysis [7], 3D optical measurement techniques [8], the application of Josephson voltage standards [9], combustion of metal particles [10], heterogeneous sensing for target tracking [11], quantitative gas property measurements by filtered Rayleigh scattering [12], optical fiber reflectometry detecting static and dynamic Rayleigh spectra [13], stimulated emission depletion microscopy [14], mechanical fault diagnosis based on deep transfer learning [15] and advanced combustion dynamics [16].…”
mentioning
confidence: 99%