C. B. A.
Mampage
a,
K. M.
Emmerson
*b,
E. R.
Lampugnani
cdef,
R.
Schofield
g and
E. A.
Stone
*abh
aDepartment of Chemistry, University of Iowa, Iowa 52242, USA. E-mail: betsy-stone@uiowa.edu
bCSIRO Environment, Aspendale, VIC 3195, Australia. E-mail: kathryn.emmerson@csiro.au
cAirHealth Pty Ltd, Brunswick, VIC 3056, Australia
dSchool of Health Sciences, University of Melbourne, Parkville, VIC 3010, Australia
eDepartment of Medicine (RMH), Melbourne Medical School, University of Melbourne, Parkville, VIC 3010, Australia
fMenzies Institute for Medical Research, College of Health and Medicine, University of Tasmania, Hobart, TAS 7000, Australia
gSchool of Geography, Earth and Atmospheric Sciences, University of Melbourne, Parkville, VIC 3010, Australia
hSchool of BioSciences, University of Melbourne, Parkville, VIC 3010, Australia
First published on 29th August 2025
A Wideband Integrated Bioaerosol Sensor (WIBS) was used in conjunction with chemical tracer analysis for the first time during the 2022–2023 grass pollen season in Melbourne, Australia. WIBS detected continuous levels of bioaerosol throughout the campaign. From 18th November to 7th December 2022, fluorescent particles accounted for an average of 10% of total particles in number, corresponding to an estimated 0.18 μg m−3 PM2.5 (14%) and 0.49 μg m−3 PM10 (25%). Using mannitol as a chemical tracer, fungal spores were estimated to contribute to an average of 2% of PM2.5 and 9% of PM10 mass. Analysis of fructose in PM2.5 as a marker for sub-pollen particles (SPPs) showed elevated concentrations during periods of hot and dry weather. There was negligible fructose observed with rain, suggesting that SPP production is not limited to water absorption processes or high relative humidity in Melbourne. Estimates of SPP mass via fructose corresponded to the equivalent of 1.1 m−3 intact pollen grains on average, 2% of the total pollen concentration, 7% of PM2.5 fluorescent particle mass, and 1% of PM2.5 mass. New hourly measured grass pollen data confirmed the timing and magnitude of grass pollen emissions in the Victorian Grass Pollen Emission Model (VGPEM) and captured the strong diurnal variation. Five grass pollen rupturing mechanisms using different meteorological drivers were tested against the WIBS and fructose measurements. Whilst the WIBS and model were not well correlated, likely due to the complex mixture of bioaerosols and low relative abundance of SPPs, the mechanical wind speed rupturing mechanism represented the fructose time series well. Conceptually, this suggests that mechanical rupturing describes SPP formation during hot and dry conditions in Melbourne. Long-term measurements in Melbourne will improve SPP formation process forecasting.
Environmental significanceAirborne pollen, fungal spores, and their fragments can impact human health as allergens, toxins, and pathogens. Measurements in Melbourne, Australia demonstrate that pollen and chemical tracers of pollen fragments were elevated on hot and dry days during the spring and summer of 2022–2023. Concurrent atmospheric modeling indicates that mechanical rupturing is the most likely mechanism for forming pollen fragments on these days. Ambient concentrations of fungal spores regularly exceed threshold levels that are expected to have negative health impacts. Long-term measurements in the region are necessary for assessment of airborne bioaerosol exposures and their impacts on health and the environment. |
The rupturing of grass pollen was the suspected cause of a thunderstorm asthma (TA) event in November 2016 in Melbourne, Australia,13 a coastal city of ∼5 million people and is the state capital of Victoria. Preceding the event, hot and dry weather conditions facilitated the dispersal of grass pollen and dust particles from agricultural areas towards the city. A dry thunderstorm with a gust front moved through the city, followed by minimal rainfall that failed to clear the allergenic particles from the air. Over 10000 people sought emergency help for respiratory issues, overwhelming local healthcare systems and resulting in 10 fatalities.14 Air samples collected with a Burkard volumetric spore trap showed empty pollen shells before and after the storm, suggestive of pollen rupture that was not limited to the time of the TA event.15,16 No measure of SPP was available at the time of this TA event.
After the Melbourne TA event, research focused on the development of a forecast system for Victoria, incorporating the prediction of airborne grass pollen.17 The Victorian Grass Pollen Emission Model (VGPEM) was built first to predict hourly changes in ambient grass pollen concentrations across the whole state (227 km2). The VGPEM used a statistical function to represent the grass pollen season, combining aspects of satellite enhanced vegetation index data to estimate the magnitude and timing of the grass pollen peak.18 SPP production was explored using eight mechanisms to rupture grass pollen under different meteorological conditions. Emmerson et al.15 found that a rupturing mechanism based on a humidity threshold could not explain the event, and a mechanism based on mechanical rupturing by strong winds was more effective.
Hughes et al.19 were the first to measure SPPs in the ambient atmosphere using single-particle fluorescence spectroscopy as a proxy for bioaerosols with measurement of pollen markers such as fructose. Single particle fluorescence spectroscopy using a Wideband Integrated Bioaerosol Sensor (WIBS) provides high time resolution measurements of individual aerosol particles, including their optical diameter from 0.5 to 20 μm and fluorescence in three excitation-emission channels.20 The WIBS responds to many bioaerosol types, including bacteria, fungal spores, pollen, and some non-biological materials like soot (black carbon) and brown carbon.21,22 While prior laboratory classification studies show that some bioaerosol types have characteristic fluorescence signatures and optical diameters, these measures are typically insufficient for definitive identification of bioaerosol type in ambient air when mixtures of bioaerosol types and species are present. To gain specificity in the type of bioaerosols present, WIBS measurements are complemented by chemical tracers measured as a function of particle size. Fructose and sucrose account for a significant fraction of pollen mass, and in the absence of other major sources like biomass burning, they can serve as tracers of pollen in coarse particles (PM10–2.5) and SPP in fine particles (PM2.5).23–25 Mannitol is a chemical tracer of fungal spores and is typically observed in particles of 1–10 μm size,26–28 consistent with their intact diameters being greater than 1 μm.29 This combination of measurements by Hughes et al.19 demonstrated that peak SPP concentrations in the Midwestern United States during the springtime occurred during convective thunderstorms with high wind speeds, high rates of rainfall, and numerous lightning strikes.
The objectives of this study are to:
• Confirm whether SPPs are always present in air during spring 2022 in Melbourne.
• Determine ambient concentrations of fluorescent particles and chemical tracers of pollen and fungal spores during November to December 2022.
• Observe the meteorological conditions that increase SPP concentrations.
• Assess which of the modelled pollen rupturing mechanisms fit the observed trends best.
• Estimate the number and mass concentration of fungal spores and evaluate their contributions to PM mass.
The measurements will provide the first constraint of SPP mass and number concentrations for the VGPEM. The measured SPP dataset will be used to evaluate the effectiveness of different pollen rupturing mechanisms. Additionally, measurements provide new insights to absolute and relative abundances of fungal spores and SPPs in Melbourne.
The Burkard trap operates by drawing ambient air through a small orifice at a constant rate of 10 liters per minute. Atmospheric particles are deposited onto a rotating drum covered with adhesive tape, allowing for continuous sampling. The drum rotates at a constant speed, completing one revolution every seven days, providing a time-resolved record of airborne pollen. To obtain daily samples, the adhesive tape was removed from the drum at the end of the seven day sampling period and cut into 24 hour segments corresponding to each day's rotation. These segments were mounted on microscope slides, stained with Calberla's solution to enhance visibility, and examined under a light microscope. Pollen grains were manually identified to the genus level by trained analysts. Samples were considered representative of the average pollen concentrations over the preceding 24 hours (9:00 AM to 9:00 AM AEDT), as daily analysis commenced at 9:00 AM. This method provided 24 hour averaged pollen counts of total pollen and grass pollen.
In addition to the manual method, an automated SwisensPoleno Mars sensor was deployed for real-time pollen monitoring. The SwisensPoleno Mars uses holographic particle analysis to identify and quantify pollen grains in ambient air. Airborne particles are optically analyzed using a high-speed camera, and machine-learning algorithms classify pollen grains based on their shape and size. For this study, the SwisensPoleno Mars was configured with the MCH model 2022 classifier and a high-confidence threshold of 99.9%, ensuring accurate identification of grass pollen grains. To minimize interference from environmental factors, the “rain suppressor” feature was enabled, which filtered out signals caused by raindrops or other large particles that could skew the measurements. The system provides high temporal resolution, with hourly grass pollen concentration data.
Glucose, sucrose, fructose, and mannitol were analyzed in the size-resolved PM samples, as described by Mampage et al.34 Briefly, substrate-deposited PM samples were extracted into 4.00 mL ultrapure water (>18 MΩ cm, Barnstead EasyPure II, 7401) with rotary shaking for 10 minutes (125 rpm), sonication for 30 minutes (60 Hz, Branson 5510), and rotary shaking for another 10 minutes. In the case of Teflon substrates, filters were pre-wetted with acetone to improve the extraction efficiency. Extracts were then filtered with polypropylene syringe filters (0.45 μm, Whatman, GE Healthcare Life Sciences). Extracts were injected into a high performance anion exchange chromatograph equipped with a pulsed amperometric detector (HPAEC-PAD, Dionex ICS 5000, Thermo Fisher) following the conditions described by Rathnayake et al.25 Concentrations of the target analytes were determined against linear calibration curves (r2 > 0.998) ranging from 10 to 5000 μg L−1.
For every ten PM samples, one field blank, one lab blank, and one spike recovery sample were also analyzed. Fructose, sucrose, and glucose were infrequently detected in field blanks at levels below these detection limits. For Teflon filters, fructose was detected in 1 of 20 field blanks at 2.5 μg L−1, while mannitol, glucose, and sucrose were not detected. For quartz fibre filters, fructose was detected in 1 of 5 field blanks at 1.3 μg L−1, while mannitol and sucrose were not detected. Glucose was detected in 2 of 5 QFF field blanks (at 6 and 9 μg L−1), which exceeded the instrument detection limit and all but one QFF sample, such that glucose was below the reporting level for all QFF samples. Spike recovery percentages ranged 90–113%, averaging 106 ± 5% for mannitol, 104 ± 5% for glucose, 104 ± 5% for sucrose, and 102 ± 7% for glucose. The limit of detection (LOD) was 0.5 μg L−1 for mannitol, 4 μg L−1 for glucose and fructose, and 2 μg L−1 for sucrose. Field blank corrected concentrations were converted to ambient mass concentrations by multiplying with the extraction volume and dividing by the volume of air sampled. Analytical errors associated with carbohydrate measurements were propagated from method detection limits and 10% of the measurement value.
Ambient mass concentrations of carbohydrates were used to estimate the mass concentrations of SPPs and fungal spores using chemical profiles drawn from the literature. A chemical profile for perennial rye (Lolium perenne) from Mueller et al.35 with a fructose mass fraction of 13% (and relative standard deviation [RSD] of 14%) was selected to represent pollen, due to its prevalence in Victoria, Australia, and the predominance of grass pollen observed in this study. For fungal spores, conversion factors of 1.7 pg mannitol per spore (RSD: 26%) and 33 pg total mass per spore (RSD: 46%) were used.28,36 The errors in the estimated mass concentrations of SPPs and fungal spores were propagated from analytical uncertainties in the measured carbohydrates and the RSD in the literature profiles. Following estimation of SPP mass, the determination of the equivalent number of pollen grains utilized the experimentally determined Lolium perenne mass of 1.5 × 10−8 g per grain37 (with an assumed RSD of 15%). Because concentration data are not normally distributed, Spearman's rank correlations were used.
Although chemical tracers and intact pollen were measured at different heights (AirLab at 48.4 m and the McCoy Building at 20.9 m above the ground level, respectively), their relative concentrations are expected to be similar. Bioaerosols are expected to have consistent vertical concentrations in well-mixed air masses near the surface. In a prior study in Greece, surface-level concentrations of Poaceae pollen were 2.6 times higher than those observed by the aircraft at 2000 m,38 such that the difference in the sampling height of 27.5 m is expected to introduce an error less than 3.5%. Vertical measurements of SPPs are not available, but as they are lighter than whole pollen a weaker vertical gradient is expected.
National Aeronautics and Space Administration (NASA)'’s Fire Information for Resource Management System (FIRMS) using MODIS (Aqua & Terra) satellite and OMPS aerosol index (https://www.firms.modaps.eosdis.nasa.gov) data were examined for the study period to investigate the contribution from active fires in the area.
![]() | (1) |
![]() | (2) |
Nrupt = Fruptnspgχ | (3) |
fRH = fbaseline + (1 − fbaseline) × fl(RH;αRH,cRH) | (4) |
The rate (α) and location (c) parameters will give fl = 0.95 at 50% RH and 0.05 at 80%. fbaseline here represents the fraction of pollen emitted at very low RH (=0.33).
![]() | (5) |
Syndromic surveillance of emergency department visits due to asthma by the Victoria Department of Health indicated that no TA epidemics occurred during this study period.43 Thus, the results described herein do not provide insight to the atmospheric conditions associated with TA.
The 24 hour averaged Burkard grass pollen measurements were compared to the model (Fig. 1a). Originally, the troughs in the modelled time series were approximately 10–15 grains per m3 too high when compared to the observations, suggesting the off-peak emissions were too strong. Grass pollen emissions were therefore set to zero when the wind speed was less than 2 m s−1 or the temperature was less than 15 °C. These improvements helped the model to achieve a very high Pearson's correlation with the Burkard observations (r = 0.83; p < 0.001), with a low mean bias of 2 grains per m3 (Fig. 1a). The model predictions of 24 h averaged pollen ranged from 0 to 238 grains per m3, with the peak occurring on 5th December. The model (without requiring baseline reductions) previously performed well in Melbourne against Burkard data from the 2017 grass pollen season (r = 0.69)18 and the week of the 2016 TA event (r = 0.59).15
The addition of hourly grass pollen observations from the Poleno Mars sampler enables diurnal model evaluation (Fig. 1b). Hourly grass pollen ranged from 0 to 1080 grains per m3, with the unusually high peak occurring on 31st December at 18:00 AEDT. The hourly modelled grass pollen concentrations ranged from 0 to 496 grains per m3 with the peak occurring on 4th December at 21:00 AEDT. Whilst the high observed peak was not captured by the model, the general shape of the Poleno Mars time series is well represented. The Pearson's correlation coefficient is 0.66 (p < 0.001) with a mean bias of 3.3 grains per m3.
The hourly Poleno Mars data also allow comparison of the modelled to observed diurnal cycle in grass pollen for the first time in Melbourne (Fig. 2). The Poleno Mars grass pollen data have a 03:00 AEDT minimum of 16 grains per m3, and elevated concentrations occurring from 09:00 to 20:00 AEDT. There are two maximums of 70 and 92 grains per m3 occurring at 12:00 and 18:00 AEDT, respectively. The post-noon dip in observed grass pollen is consistent across the campaign and visible in the standard deviations. The pollen traps are not co-located with wind measurements on the McCoy building roof; however, observations from Olympic Park show a similar post-noon dip in the wind speed (Fig. S1), albeit less than 1 m s−1. The change in wind speed could be more pronounced on the roof. The timing and magnitude of the modelled elevated concentrations are well constrained, but a singular maximum of ∼95 grains per m3 persists between 15:00 and 18:00 AEDT. Pearson's correlation coefficient is excellent at 0.95 (p < 0.001). The excellent agreement suggests that the timing and strength of the grass pollen emission in the model are well constrained and that atmospheric processes such as boundary layer dynamics are captured correctly.
![]() | ||
Fig. 2 Diurnal profile in grass pollen concentrations, comparing hourly measurements from the Poleno Mars instrument to the model. Shaded regions show ± 1 standard deviation. |
Concentration | Units | PM2.5 | PM10 | Measurement or derived value (dv) | ||
---|---|---|---|---|---|---|
Range | Mean | Range | Mean | |||
a BDL – below the detection limit. | ||||||
Fluorescent particle number | (cm−3) | 0.12–0.38 | 0.21 | 0.13–0.39 | 0.23 | WIBS |
Particle number | (cm−3) | 1.03–7.74 | 2.85 | 1.06–7.88 | 2.90 | WIBS |
Fluorescent particle number fraction | (%) | 0.02–0.21 | 10 | 0.02–0.21 | 10 | WIBS |
Fluorescent particle mass | (μg m−3) | 0.09–0.28 | 0.18 | 0.19–0.94 | 0.49 | dv-WIBS |
Particle mass | (μg m−3) | 0.7–5.1 | 1.7 | 1.1–6.4 | 2.4 | dv-WIBS |
Fluorescent particle mass fraction | (%) | 3–34 | 14 | 5–56 | 25 | dv-WIBS |
Fructose | (ng m−3) | BDLa–7.6 | 2.0 | 0.7–16.1 | 6.1 | HPAEC-PAD |
Sucrose | (ng m−3) | BDL–5.0 | 1.6 | 1.1–12.1 | 5.0 | HPAEC-PAD |
Mannitol | (ng m−3) | 0.1–7.4 | 1.5 | 1.5–19.5 | 6.4 | HPAEC-PAD |
Glucose | (ng m−3) | BDL–11.3 | 4.4 | 4.6–31.0 | 14.7 | HPAEC-PAD |
Fungal spore number | (m−3) | 71–4360 | 880 | 882–11400 | 3800 | dv-mannitol |
Fungal spore mass | (μg m−3) | 0.002–0.14 | 0.029 | 0.03–0.38 | 0.12 | dv-mannitol |
Fungal spore mass fraction | (%) | 0.1–16 | 2.4 | 1–22 | 6 | dv-mannitol |
Estimated SPP mass | (μg m−3) | BDL–0.06 | 0.02 | BDL–0.12 | 0.05 | dv-fructose |
Estimated SPP mass fraction | (%) | BDL–7 | 1 | 0 – 7 | 2 | dv-fructose |
SPP equivalent pollen grains | (m−3) | BDL–4 | 1.1 | — | — | dv-fructose |
Fructose and sucrose were detected in all daily PM10–2.5 samples and the majority of PM2.5 samples (61% and 66%, respectively). The frequent occurrence of pollen tracers in particles <2.5 μm, which is an order of magnitude smaller than the diameter of most intact pollen grains, suggests the presence of SPPs on most sampling days. Any intact pollen grains entering the impactor would be collected on the upper stage (>2.5 μm), such that coarse particles are excluded from estimates of SPPs. Glucose was similarly detected in the majority of PM2.5 samples (94%) but was expected to have mixed bioaerosol sources because it exhibited significant positive Spearman's correlation coefficients with PM2.5 fructose (0.78) and PM10 mannitol (0.86); consequently, bioaerosol source attribution relied upon more specific tracers.
Following that fructose comprises 13% (±2%) of mass of perennial ryegrass (Lolium perenne) grass pollen;35 it is estimated that SPP mass in PM2.5 ranged from below the LOD to 59 (±11) ng m−3, averaging 15 ng m−3. With the conversion factor of 1.92 ng (±0.39 ng) of fructose per grain of perennial ryegrass pollen,24 it was estimated that the daily average concentration of fructose corresponded to the equivalent of 0–4.0 (±0.8) ruptured pollen grains per m3 (Fig. S2), averaging 1.1 m−3. Comparison of daily estimates of equivalent ruptured pollen grains to the Burkard measurements of total pollen grains indicated that less than 5% of pollen grains ruptured in 16 of 18 daily sampling periods. The highest PM2.5 concentrations of fructose and sucrose were observed during the 18th November to 4th December sampling periods, respectively, when the percentage of equivalent pollen grains that ruptured reached local maxima (11% and 16%, respectively). Both days were dry sampling periods with no precipitation (Fig. 3). Although two thunderstorms passed through Melbourne on November 19 and December 5, no significant increases in PM2.5 fructose or sucrose were observed, suggesting that these thunderstorms were not associated with pollen rupturing (Fig. 3). Overall, pollen tracer concentrations were not significantly higher on rainy days, suggesting rain was not a major source of pollen fragments. These data demonstrate the consistent occurrence of SPPs during the grass pollen season at relatively low concentrations of equivalent pollen grains, with peak concentrations occurring on hotter and dry days.
The peak in submicron pollen tracers on hot and dry days in Australia contrasts with prior observations in the Northern Hemisphere, where pollen allergens and tracers have been observed in fine particles during and after rain events.19,48,49 The magnitude of observed fructose and sucrose concentrations in Melbourne was close to, similar to or lower than prior measurements in Iowa City, Iowa;25,34 Shanghai, China;50 Brno, Czech Republic;51 and Thessaloniki, Greece.52 Together, these data suggest several processes by which SPPs are emitted into the atmosphere as well as regional differences.
The consistent detection of fructose and sucrose in fine PM in Melbourne during late spring and early summer suggests a consistent presence of SPPs. These results are similar to those of Schappi et al.,53 who reported grass pollen (group 5) allergens in particles <7.2 microns in Melbourne in the late spring to summer of 1996–97. In this study and that of Schappi et al.,53 indicators of SPPs correlated with grass pollen concentrations. As intact pollen concentrations in Melbourne have correlated with asthma exacerbations among children and adults,1,6 including in the absence of thunderstorm-associated asthma and when grass pollen concentrations were below 20 m−3,7 SPPs may also contribute to asthma exacerbations in Victoria. Compared to intact pollen grains, SPPs can penetrate more deeply into the respiratory tract due to their smaller size and may be associated with more severe asthmatic responses than intact pollen grains.
The majority of the fluorescent particle mass was observed in the coarse mode (PM10–2.5, 64% of total) and was comprised of ABC (39.6%), B (21.2%), AB (16.7%), BC (13.5%), with <5% from A, C, and AC fluorescent particle types (Fig. S4). These particle types suggest a mixture of bioaerosol types in coarse particles, including fungal spores, intact pollen, and bacteria. These findings are based upon prior field and laboratory studies that have generally shown that fungal spores are primarily supermicron particles that exhibit A, AB, and sometimes ABC fluorescence;21,22,58,59 intact pollen grains are typically supermicron particles that exhibit A, B, AB, BC, and ABC fluorescence,21,22,58 and can appear as micron to submicron-sized particles;22 pollen fragments have been identified as submicron (and up to 2.5 microns) ABC, BC, and B-type particles;19 and bacteria are typically micron to sub-micron A and AB types.22 Non-biological particle types, like soot and brown carbon, exhibit B-type fluorescence in the submicron and supermicron size ranges, and to a lesser extent A-type fluorescence. The observed coarse mode fluorescent particle types exhibit diurnal patterns in which local maxima occur at 06:00–07:00, 12:00–13:00, and 19:00–21:00 AEDT. Among these, PM10 AB particles had the strongest daily variation (up to a factor of 7). The fine mode fraction accounted for 36% of total fluorescent particle mass (36%) and was comprised of B (36.1%), A (14.4%), C (13.3%), ABC (12.6%), and BC (12.1%), with <1% AC. The relatively higher fraction of B type particles in PM2.5 compared to PM10 suggests some influence from combustion-derived, non-biological particles in PM2.5. Local maxima in PM2.5 fluorescent particles were similar to PM10–2.5, with peak concentrations occurring at 19:00–21:00 AEDT. These times correspond to the sunset (20:24 AEDT at the midpoint of the tracer measurements on 24th November) and commencement of the nocturnal boundary layer.
To assess the relative contributions known bioaerosol classes to WIBS signals, estimates of pollen and fungal spore contributions to PM mass were compared to mass concentrations of fluorescent and total particles that were estimated from WIBS number concentrations and assumptions of spherical shapes with unit density (Fig. S5). In PM2.5, SPPs were estimated to contribute 0–29% of fluorescent particle mass (0–7% PM2.5 mass), averaging 7% (with a standard deviation of 1%). Peak SPP contributions to PM2.5 fluorescent particle mass occurred on November 18 (23%), December 3 (21%), and December 4 (29%), which are discussed in further detail in the case studies (Section 3.3). Fungal spores were estimated to contribute 2–57% of PM2.5 fluorescent particle mass (0.1–16% PM2.5 mass), averaging 14% (with a standard deviation of 2%). In PM10, fungal spores were estimated to contribute 9–50% of fluorescent particle mass, averaging 25%, while pollen particles were estimated to contribute an average of 9%. Considering the total mass of PM10, it was estimated that on average fungal spores contributed 6% and pollen particles contributed 2%. All together, these data indicate that the mass of fungal spores significantly exceeds that of SPP and pollen in fine and coarse PM fractions and that on average fungal spores are the dominant bioaerosol contributor to fluorescent particle mass.
The modelled mass of SPPs from all five rupturing mechanisms was averaged to 24-hourly data to be comparable to the PM2.5 fructose concentrations. At this point, the focus is on whether the model captures the timing of the fructose increases. The ‘best’ model for time period is determined using Spearman's rank correlation, which compares data pairs ordered from low to high and is not focused on comparing magnitudes. The mass of SPPs predicted by the five rupturing mechanisms on average was 119 ng m−3 (Mech. B), 39 ng m−3 (Mech. A), 33 ng m−3 (Mech. E), 2.38 ng m−3 (Mech. D) and 0.14 ng m−3 (Mech C). However, for the first time in Melbourne, the mass concentration of fructose in ryegrass pollen (13%)35 can be used to constrain the mass of SPPs for this period between 0 and 59 ng m−3, with an average of 15 ng m−3 (Fig. 4). The values used to constrain each of the mechanisms are given in Fig. 4 legend. Each of the modelled SPP profiles agrees with the fructose observations to some extent, with Spearman's correlation coefficients ranging from 0.29 for mechanisms C (RH> 80%) and E (decoupled from grass pollen emission) to 0.47 (p < 0.05) using mechanism A (mechanical rupturing). These fructose measurements are therefore related to a process combining the wind speed function with the grass pollen emission rate, which itself relies on higher temperatures and low humidity/rainfall.
Using the mass, density and volume of 1 modelled SPP (considering 600 nm particles and 700 SPP per pollen grain), the average PM2.5 fructose mass concentration was converted to an SPP number of 1.30 × 105 m−3 on average. Using nspg yields 186 whole pollen grains per m3 ruptured. However, this results in ∼46 times the 4 grains per m3 ruptured, as calculated in Section 3.2.1 using the assumption of Mueller et al..35 Working backwards to achieve 4 grass pollen grains per m3 ruptured yields an SPP size of 2.26 μm, each with a mass of 6 × 10−12 g and an average SPP number of 2.50 × 103 m−3. This suggests that the initial modelled assumptions about the size and mass of SPPs are approximately 4 times too small and 53 times too light, respectively. Additionally, the number of SPPs estimated to rupture from a single pollen grain (700) may be underestimated.
The relationship between modelled SPP mass and number is linear, as each SPP has a fixed particle size at 600 nm. The hourly constrained SPP mass from each rupturing mechanism test was used to re-calculate the SPP number, using the new SPP mass of 6 × 10−12 g from above. These constrained modelled SPP mass and number concentrations were compared to the fluorescent particle mass and number concentrations <2.5 μm from the WIBS (Fig. 5). As these WIBS data are not normally distributed, Spearman's correlations were calculated (Fig. 5a). In terms of particle mass (Fig. 5a), SPPs produced by mechanism A (mechanical wind, r = 0.30) and mechanism E (decoupled from grass pollen emission, r = 0.28) correlated most strongly to the WIBS particle mass. The same mechanisms also produced the highest correlation coefficients of 0.27 (mechanism E) and 0.25 (mechanism A) when compared with the WIBS fluorescent particle number observations (Fig. 5b). These results suggest that the majority of the fluorescent particle signals measured by the WIBS were not dominated by grass pollen but related to some function of the wind speed, as used by both mechanisms A and E. Mechanisms D (high rainfall and humidity) and C (80% humidity) produced the lowest correlation coefficients of the five rupturing mechanisms when compared with both the WIBS fluorescent particle mass and number timeseries. Model fit to experimental data is further discussed through three case studies.
On 19th November at 16:40, fluorescent particles reached a local maximum during dry conditions, with minute average number concentrations reaching 0.36 cm−3. For 20 minutes, fluorescent particle number concentrations persisted above 0.25 cm−3, with fluorescent particle fraction number fractions of 30–38%. These bioaerosol levels were elevated relative to the background level of 0.1 cm−3 and fluorescent particle number fraction of 15%. During this time, fluorescent particle mass was dominated by particles 5–8 μm in optical diameter with AB-fluorescence, suggestive of fungal spores.
The first convective storm system on 19th November passed over the UoM site at 19:40. Over 2000 lightning strikes were detected within two degrees latitude and longitude of the sampling site. Fluorescent particle number concentrations rapidly increased from approximately 0.2 cm−3 to above 0.6 cm−3 (Fig. 6d), when rainfall was detected at the Olympic Park and Melbourne Airport (Fig. 6b). The number fraction of total particles that fluoresced in the size range measured by the WIBS increased from approximately 20% to 30%. Fluorescent particle types observed at the peak of this storm included six of the seven possible fluorescent particle types (ABC, AB, BC, A, B, and C), suggesting a mixture of bioaerosol types. On a mass basis, ABC was the dominant fluorescent particle type at the peak of the storm, followed by BC. The marked increase in the number of submicron-sized fluorescent particles and fluorescent fraction was greatest in the first of the four storm systems, followed by the second storm at 22:30. The two subsequent storm systems caused no discernible increase in fluorescent particle concentrations and actually decreased the fluorescent particle fraction. These observations suggest a temporal dependence on bioaerosol emission by precipitation that depends upon their atmospheric and/or surface concentrations.
During the pre-rain period (18th November 12:00 AEDT to 19th November 19:00 AEDT) rupturing mechanism E (decoupled from grass pollen emissions and based on particle resuspension) fitted the WIBS measurements best, with r = 0.69 for ABC particles and r = 0.44 for BC particles. Note that no significant PM2.5 fructose was measured with the storm, implying that pollen rupture is not responsible for the increase in fluorescent particles at this time. Post-rain (19th November 20:00 AEDT –21st November 00:00 AEDT), mechanism D (high rainfall and humidity) was better correlated, with r = 0.61 for ABC particles and r = 0.62 for BC particles. In the series of rain events, the model predicts SPPs only for the first rain event, which washes intact pollen from the atmosphere.
Whole grass pollen was 24 grains per m3 on average, except for a short burst of ∼200 grains per m3 between 18:00 and 20:00 AEDT on 29th November. Modelled whole grass pollen peaked each afternoon with an average of 20 grains per m3 over the two days. Case study 2 featured only coarse mode fructose measurements greater than 2.5 μm. The model predicted SPP mass concentrations <10 ng m−3 in all 5 mechanisms. The best (albeit negative) correlations used mechanism A (r = −0.23 for ABC particles, r = −0.11 for BC particles), based on mechanical rupturing processes.
The VGPEM is a good predictor of whole grass pollen levels in Melbourne with a high degree of accuracy. Hourly grass pollen measurements were available for the first time, and the modelled diurnal cycle showed the model had the correct timing of grass pollen emission and concentration decline in the evening.
The current use of 600 nm as a fixed size for SPPs generated by grass pollen limits the accuracy of SPP number and mass concentration predictions. As such, the modelled SPPs and WIBS data are not directly comparable, but the correlations between them are meaningful and help explain what meteorological processes may be causing the gradients to change in both datasets. Of the modelled rupturing mechanisms tested, mechanisms A and E (similarly based on the function of wind speed, but mechanism E was decoupled from the grass pollen emission) provided the most consistent representation of processes occurring during the whole 62 day measurement period. Mechanism A also provided the best explanation of the Melbourne thunderstorm asthma event in November 2016.15
Model representation of SPPs could be improved by more rigorous and thorough testing of SPP properties under controlled conditions. Future characterization of SPPs should include the number and size distribution of SPPs per pollen grain, the number fraction of pollen grains that rupture, and the dependence of these properties on environmental conditions (i.e. temperature, humidity, and pressure). Furthermore, it is important to understand how SPP properties vary by pollen type, which is expected to contribute to regional and seasonal variability in SPPs. Additionally, higher time resolution models (with sub-hourly time steps) may be needed to more accurately represent the short-term meteorological processes responsible for SPP formation.
The chemical tracer measurements in combination with the WIBS data provided the first constraint of modelled SPP number and mass. This suggested that the size of each modelled SPP might be increased to 2.26 μm, with a mass of 6 × 10−12 g. These constraints can be refined in subsequent grass pollen seasons through ambient measurements and chemical profiling of regional pollen types. Long term measurements can also improve not just the temporal variation in the modelled SPPs but help constrain the number of SPPs per whole grass pollen and the size distribution of SPPs. The study also recommends ongoing monitoring of SPPs and other bioaerosols in the Melbourne atmosphere, to gain a better understanding of the conditions leading to pollen rupturing and TA.
Automated pollen counters, such as the SwisensPoleno Mars, played a critical role in this study by providing continuous, high-temporal resolution data, which enabled the identification of short-term fluctuations in pollen concentrations. Such data are invaluable for improving the accuracy of pollen forecasting models, understanding the diurnal patterns, and responding to public health needs during high pollen events. Similarly, the WIBS provided high-resolution data on fluorescent particles, which allowed for the detailed characterization of bioaerosols, including fungal spores and SPPs. These technologies underscore the importance of advancing automated and real-time bioaerosol monitoring systems to complement traditional manual methods and enhance our understanding of atmospheric processes.
Supplementary information is available. It contains five figures and one table, including average diurnal plots of wind direction and speed, estimated number concentrations of equivalent intact pollen grains, estimated fungal spore concentrations, average diurnal plots of grass pollen and WIBS fluorescent particles, estimated mass concentrations of fungal spores and sub pollen particles, and correlation coefficients for WIBS measurements and modelling. See DOI: https://doi.org/10.1039/d5ea00024f.
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