International Journal of Biometeorology

, Volume 55, Issue 4, pp 613–622 | Cite as

On the causes of variability in amounts of airborne grass pollen in Melbourne, Australia

  • Julian de Morton
  • John Bye
  • Alexandre PezzaEmail author
  • Edward Newbigin
Original Paper


In Melbourne, Australia, airborne grass pollen is the predominant cause of hay fever (seasonal rhinitis) during late spring and early summer, with levels of airborne grass pollen also influencing hospital admissions for asthma. In order to improve predictions of conditions that are potentially hazardous to susceptible individuals, we have sought to better understand the causes of diurnal, intra-seasonal and inter-seasonal variability of atmospheric grass pollen concentrations (APC) by analysing grass pollen count data for Melbourne for 16 grass pollen seasons from 1991 to 2008 (except 1994 and 1995). Some of notable features identified in this analysis were that on days when either extreme (>100 pollen grains m−3) or high (50–100 pollen grains m−3) levels of grass pollen were recorded the winds were of continental origin. In contrast, on days with a low (<20 pollen grains m-3) concentration of grass pollen, winds were of maritime origin. On extreme and high grass pollen days, a peak in APC occurred on average around 1730 hours, probably due to a reduction in surface boundary layer turbulence. The sum of daily APC for each grass pollen season was highly correlated (r = 0.79) with spring rainfall in Melbourne for that year, with about 60% of a declining linear trend across the study period being attributable to a reduction of meat cattle and sheep (and hence grazing land) in rural areas around Melbourne. Finally, all of the ten extreme pollen events (3 days or more with APC > 100 pollen grains m−3) during the study period were characterised by an average downward vertical wind anomaly in the surface boundary layer over Melbourne. Together these findings form a basis for a fine resolution atmospheric general circulation model for grass pollen in Melbourne’s air that can be used to predict daily (and hourly) APC. This information will be useful to those sectors of Melbourne’s population that suffer from allergic problems.


Pollen Allergies Asthma Rainfall Anticyclone Hayfever 



We thank the Australian Bureau of Meteorology for providing meteorological data, the late Professor Bruce Knox (School of Botany, University of Melbourne) for the pollen counts from 1991–1996 and Dr. Eng Kok Benjamin Ong for the diurnal pollen counts from 1991 and 1992.


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Copyright information

© ISB 2010

Authors and Affiliations

  • Julian de Morton
    • 1
  • John Bye
    • 1
  • Alexandre Pezza
    • 1
    Email author
  • Edward Newbigin
    • 2
  1. 1.School of Earth SciencesUniversity of MelbourneMelbourneAustralia
  2. 2.School of BotanyUniversity of MelbourneMelbourneAustralia

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