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Skill-testing chemical transport models across contrasting atmospheric mixing states using radon-222

dc.contributor.authorChambers, SDen_AU
dc.contributor.authorGuérette, EAen_AU
dc.contributor.authorMonk, Ken_AU
dc.contributor.authorGriffiths, ADen_AU
dc.contributor.authorZhang, Yen_AU
dc.contributor.authorDuc, Hen_AU
dc.contributor.authorCope, Men_AU
dc.contributor.authorEmmerson, KMen_AU
dc.contributor.authorChang, LTen_AU
dc.contributor.authorSilver, JDen_AU
dc.contributor.authorUtembe, Sen_AU
dc.contributor.authorCrawford, Jen_AU
dc.contributor.authorWilliams, AGen_AU
dc.contributor.authorKeywood, MDen_AU
dc.date.accessioned2026-05-07T05:41:22Zen_AU
dc.date.issued2019-01-11en_AU
dc.date.statistics2025-06-04en_AU
dc.description.abstractWe propose a new technique to prepare statistically-robust benchmarking data for evaluating chemical transport model meteorology and air quality parameters within the urban boundary layer. The approach employs atmospheric class-typing, using nocturnal radon measurements to assign atmospheric mixing classes, and can be applied temporally (across the diurnal cycle), or spatially (to create angular distributions of pollutants as a top-down constraint on emissions inventories). In this study only a short (<1-month) campaign is used, but grouping of the relative mixing classes based on nocturnal mean radon concentrations can be adjusted according to dataset length (i.e., number of days per category), or desired range of within-class variability. Calculating hourly distributions of observed and simulated values across diurnal composites of each class-type helps to: (i) bridge the gap between scales of simulation and observation, (ii) represent the variability associated with spatial and temporal heterogeneity of sources and meteorology without being confused by it, and (iii) provide an objective way to group results over whole diurnal cycles that separates ‘natural complicating factors’ (synoptic non-stationarity, rainfall, mesoscale motions, extreme stability, etc.) from problems related to parameterizations, or between-model differences. We demonstrate the utility of this technique using output from a suite of seven contemporary regional forecast and chemical transport models. Meteorological model skill varied across the diurnal cycle for all models, with an additional dependence on the atmospheric mixing class that varied between models. From an air quality perspective, model skill regarding the duration and magnitude of morning and evening “rush hour” pollution events varied strongly as a function of mixing class. Model skill was typically the lowest when public exposure would have been the highest, which has important implications for assessing potential health risks in new and rapidly evolving urban regions, and also for prioritizing the areas of model improvement for future applications. © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.en_AU
dc.identifier.articlenumber25en_AU
dc.identifier.citationChambers, S. D., Guérette, E.-A., Monk, K., Griffiths, A. D., Zhang, Y., Duc, H., Cope, M., Emmerson, K. M., Chang, L. T., Silver, J. D., Utembe, S., Crawford, J., Williams, A. G., & Keywood, M. (2019). Skill-testing chemical transport models across contrasting atmospheric mixing states using radon-222. Atmosphere, 10(1), 25. doi:10.3390/atmos10010025en_AU
dc.identifier.issn0004-6973en_AU
dc.identifier.issn2073-4433en_AU
dc.identifier.issue1en_AU
dc.identifier.journaltitleAtmosphereen_AU
dc.identifier.urihttps://doi.org/10.3390/atmos10010025en_AU
dc.identifier.urihttps://apo.ansto.gov.au/handle/10238/17208en_AU
dc.identifier.volume10en_AU
dc.languageEnglishen_AU
dc.language.isoenen_AU
dc.publisherMDPIen_AU
dc.subjectAtmosphericsen_AU
dc.subjectRadonen_AU
dc.subjectChemistryen_AU
dc.subjectAir qualityen_AU
dc.subjectUrban populationsen_AU
dc.subjectMeteorologyen_AU
dc.subjectTestingen_AU
dc.subjectRainen_AU
dc.subjectRadon 222en_AU
dc.subjectDataen_AU
dc.subjectPopulation densityen_AU
dc.subjectParticlesen_AU
dc.titleSkill-testing chemical transport models across contrasting atmospheric mixing states using radon-222en_AU
dc.typeJournal Articleen_AU

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