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Urban open-air chemical sensing using a mobile quantum cascade laser dual-comb spectrometer

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APL PHOTONICS
卷 8, 期 12, 页码 -

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AIP Publishing
DOI: 10.1063/5.0163308

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This article presents a mobile mid-infrared quantum cascade laser dual-comb spectrometer for the detection of chemical releases, which has high temporal and spatial resolution and can cover large areas. Field tests in downtown Boston demonstrate its effectiveness in identifying and quantifying chemical plumes. This type of sensor will be a valuable complement to existing optical sensors for monitoring gas leaks, assessing air quality, and localizing clandestine chemical production.
Detection of airborne chemical releases in densely populated urban environments requires precise sensors with high temporal and spatial resolution capable of covering large areas. For this purpose, we present a mobile mid-infrared quantum cascade laser dual-comb spectrometer for identification and quantification of chemical plumes. Field tests with the remote sensor were conducted during daytime in the downtown Boston area over a five day period during which chemical releases were simulated by intermittently emitting non-toxic substances. Open-air sensing was performed with retroreflectors positioned at up to 230 m distance and with sensitivities in the ppm m range for one second of averaging time. The field campaign demonstrates a step toward a semiconductor dual-comb spectroscopic sensor in the mid-infrared fingerprint region, suitable for long-term deployments. These types of sensors will be valuable complements to existing optical sensors for urban hazardous gas leak monitoring, air quality assessments, and localization of clandestine chemical production.(c) 2023 Author(s). All article content, except where otherwise noted, is licensed under a Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/)

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