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M-TraCE: a new tool for high-resolution computation and statistical elaboration of backward trajectories on the Italian domain

TitoloM-TraCE: a new tool for high-resolution computation and statistical elaboration of backward trajectories on the Italian domain
Tipo di pubblicazioneArticolo su Rivista peer-reviewed
Anno di Pubblicazione2017
AutoriVitali, Lina, Righini Gaia, Piersanti Antonio, Cremona Giuseppe, Pace Giandomenico, and Ciancarella Luisella
RivistaMeteorology and Atmospheric Physics
Data di pubblicazioneJan-12-2017

Air backward trajectory calculations are commonly used in a variety of atmospheric analyses, in particular for source attribution evaluation. The accuracy of backward trajectory analysis is mainly determined by the quality and the spatial and temporal resolution of the underlying meteorological data set, especially in the cases of complex terrain. This work describes a new tool for the calculation and the statistical elaboration of backward trajectories. To take advantage of the high-resolution meteorological database of the Italian national air quality model MINNI, a dedicated set of procedures was implemented under the name of M-TraCE (MINNI module for Trajectories Calculation and statistical Elaboration) to calculate and process the backward trajectories of air masses reaching a site of interest. Some outcomes from the application of the developed methodology to the Italian Network of Special Purpose Monitoring Stations are shown to assess its strengths for the meteorological characterization of air quality monitoring stations. M-TraCE has demonstrated its capabilities to provide a detailed statistical assessment of transport patterns and region of influence of the site under investigation, which is fundamental for correctly interpreting pollutants measurements and ascertaining the official classification of the monitoring site based on meta-data information. Moreover, M-TraCE has shown its usefulness in supporting other assessments, i.e., spatial representativeness of a monitoring site, focussing specifically on the analysis of the effects due to meteorological variables. © 2016 Springer-Verlag Wien


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Titolo breveMeteorol Atmos Phys
Citation KeyVitali20161