2016
DOI: 10.1016/j.ijhydene.2016.04.142
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Spatial distribution and source analysis of SO2 concentration in Urumqi

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Cited by 10 publications
(3 citation statements)
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“…Dandotiya et al ( 2020 ) and Chao et al ( 2021 ) also found an inverse correlation ( r = − 0.38 and r = − 0.34, respectively) between both parameters. Li and Xie ( 2016 ) explained that the inverse relationship between wind speeds and SO 2 concentrations is because lower wind speeds do not promote the diffusion of the pollutant, which results in higher monthly concentrations of SO 2 , while, in conditions with higher wind speeds, the diffusion of SO 2 is favored, so monthly concentration ​​are lower.…”
Section: Resultsmentioning
confidence: 99%
“…Dandotiya et al ( 2020 ) and Chao et al ( 2021 ) also found an inverse correlation ( r = − 0.38 and r = − 0.34, respectively) between both parameters. Li and Xie ( 2016 ) explained that the inverse relationship between wind speeds and SO 2 concentrations is because lower wind speeds do not promote the diffusion of the pollutant, which results in higher monthly concentrations of SO 2 , while, in conditions with higher wind speeds, the diffusion of SO 2 is favored, so monthly concentration ​​are lower.…”
Section: Resultsmentioning
confidence: 99%
“…Applying CALPUFF, a study on Muscat's (Oman) ISIs revealed winter NO x concentrations surpassing the guidelines set by the United States Environmental Protection Agency (U.S. EPA) [20]. Similarly, in the case of Baosteel Group, a typical steel enterprise in Urumqi, Xinjiang Province, China, CALPUFF identified the highest contribution to the Saybagh high concentration area (SO 2 at 37 µg/m 3 /a) [21]. While these scholars evaluated and ranked air pollutant contributions from ISIs, their assessments often omitted corresponding carbon emissions.…”
Section: Introductionmentioning
confidence: 99%
“…The model is a three-dimensional transient Lagrange dispersion model system [24][25][26], which can be applied to simulate the transient diffusion, transport, and transformation of gases, particles, and other pollutants (such as PM 2.5 , SO 2 , NO X , etc.) derived by various meteorological factors [27][28][29]. The CALPUFF atmospheric dispersion model system consists of the CALMET (a diagnostic 3-D meteorological model) meteorological module [30,31], the CALPUFF plume transport module, the CALPOST (California puff post-processing model) post-processing module [32,33], and modules for pre-processing conventional ground station meteorological data, geographic data, altitude data, and precipitation data.…”
Section: Model Introduction and Parametersmentioning
confidence: 99%