| Literature DB >> 35354840 |
Giulia Ulpiani1, Melissa Anne Hart2,3, Giovanni Di Virgilio1,4, Angela M Maharaj1,5, Mathew J Lipson1,6, Julia Potgieter5.
Abstract
High-quality, standardized urban canopy layer observations are a worldwide necessity for urban climate and air quality research and monitoring. The Schools Weather and Air Quality (SWAQ) network was developed and distributed across the Greater Sydney region with a view to establish a citizen-centred network for investigation of the intra-urban heterogeneity and inter-parameter dependency of all major urban climate and air quality metrics. The network comprises a matrix of eleven automatic weather stations, nested with a web of six automatic air quality stations, stretched across 2779 km2, with average spacing of 10.2 km. Six meteorological parameters and six air pollutants are recorded. The network has a focus on Sydney's western suburbs of rapid urbanization, but also extends to many eastern coastal sites where there are gaps in existing regulatory networks. Observations and metadata are available from September 2019 and undergo routine quality control, quality assurance and publication. Metadata, original datasets and quality-controlled datasets are open-source and available for extended academic and non-academic use.Entities:
Year: 2022 PMID: 35354840 PMCID: PMC8967924 DOI: 10.1038/s41597-022-01205-9
Source DB: PubMed Journal: Sci Data ISSN: 2052-4463 Impact factor: 6.444
Fig. 1The 6 Ws of SWAQ: research questions and methodological framework.
List of measurements and sensors’ specifications.
| Symbol | Parameter | Units | Range | Accuracy | Resolution |
|---|---|---|---|---|---|
| T | Temperature | °C | −52–60 | ± 0.3 | 0.1 |
| RH | Relative Humidity | % | 0–100 | ± 3 at 0–90% ± 5 at 90–100% | 0.1 |
| p | Air Pressure | hPa | 600–1100 | ± 0.5 at 0–30 °C ± 1 at −52–0, 30–60 °C | 0.1 |
| ws | Wind speed | m/s | 0–60 | ± 3% at 10 m/s | 0.1 |
| wd | Wind direction | ° | 0–360 | ± 3.0 at 10 m/s | 1 |
| Rain | Rainfall rate | mm/h | 0–200 | n.s. | 0.1 |
| SO2 | Sulphur dioxide (SO2) | ppm | 0–2 | ± 0.05 * | n.s. |
| CO | Carbon monoxide (CO) | ppm | 0–10 | ± 0.2 * | n.s. |
| NO2 | Nitrogen dioxide (NO2) | ppm | 0–2 | ± 0.025 * | n.s. |
| O3 | Ozone (O3) | ppm | 0–2 | ± 0.06 * | n.s. |
| PM10 | Particles less than 10 µm in diameter (PM10) | µg/m3 | 0–5000 | n.s. | 0.1 |
| PM25 | Particles less than 2.5 µm in diameter (PM2.5) | µg/m3 | 0–2000 | n.s. | 0.1 |
*90% confidence interval in comparing with reference instrument, includes T and RH dependence in typical field conditions and sensor drift during calibration interval.
Sensor maintenance schedule.
| Component | Activity | Typical Interval |
|---|---|---|
| AQT420 | Visual inspection & cleaning | 12–18 months |
| Replace Cells & Filter | 18–36 months* | |
| WXT536 | Visual inspection, cleaning & performance check | 12–24 months |
*Depending on the local pollution load and its impact on the Electrochemical Cells consumption/depletion rate.
Fig. 2Density heatmap of meteorological and air quality observations across the Greater Sydney region. SWAQ stations (met and met + aqt) are overlapped to DPIE’s and BOM’s networks. Shades are used to visualize the density of observation sites across the region. The dashed triangle identifies Sydney’s Central Business District (CBD), while the globe in the bottom right corner shows the locations of the Greater Sydney region in the south-east corner of Australia, for reference (US Dept of State Geographer © 2021 Google Image Landsat/Copernicus Data SIO, NOAA, U.S. Navy, NGA, GEBCO).
Monitoring stations: geographic coordinates, local climate zones (LCZs), and status.
| # | Public School/Site Name | STAT code | Latitude (South) | Longitude (East) | Elevation [m] | LCZ* | Date of commission/ Status | |
|---|---|---|---|---|---|---|---|---|
| Chullora | OEHS | −33.8915 | 151.046 | 41 | Large low-rise | 01/09/2019/Active | ||
| Brookvale | BROO | −33.7611 | 151.2706 | 39 | Compact low-rise | 01/09/2019/Active | ||
| Glenorie | GLEN | −33.5995 | 151.0069 | 158 | Sparsely built | 01/09/2019/Active | ||
| Kurnell | KURN | −34.01 | 151.2046 | 2 | Compact low-rise | 01/09/2019/Active | ||
| Leppington | LEPP | −33.9593 | 150.8106 | 88 | Sparsely built | 01/09/2019/Active | ||
| Luddenham | LUDD | −33.8814 | 150.6918 | 98 | Open low-rise | 01/09/2019/Active | ||
| Dulwich Hill | DULW | −33.9055 | 151.1399 | 33 | Compact low-rise | 01/10/2019/Active | ||
| Kellyville | KELL | −33.7109 | 150.9579 | 72 | Open low-rise | 01/10/2019/Active | ||
| Narellan | NARE | −34.0424 | 150.734 | 90 | Open low-rise | 01/10/2019/Active | ||
| Taren Point | TARE | −34.0188 | 151.1231 | 4 | Compact mid-rise | 01/10/2019/Active | ||
| Newtown | NEWT | −33.8999 | 151.1792 | 22 | Compact low-rise | 01/10/2019/Active |
*Average in a 500 m radius. Data extracted from WUDAPT[43].
Land use and land cover attributes at each SWAQ site.
| # | Station | Roof height [m]* | Buildings [%]** | Road path [%]** | Other built areas [%]** | Trees [%]** | Grass [%]** | Other vegetation [%]** | Water bodies [%]** | Bare soil [%]** | |
|---|---|---|---|---|---|---|---|---|---|---|---|
| OEHS | 16.3 | 23.5 (0.1) | 13.2 (7.6) | 18.9 (4.7) | 13.9 (24.2) | 7.2 (14.8) | 10.6 (17.2) | 0.6 (0.0) | 11.9 (9.7) | ||
| BROO | 12.8 | 38.2 (11.7) | 10.6 (5.0) | 18.0 (5.4) | 20.4 (33.5) | 4.7 (4.8) | 6.1 (6.7) | 0.1 (0.0) | 1.5 (10.7) | ||
| GLEN | 7.3 | 7.8 (17.0) | 4.7 (7.7) | 5.0 (2.1) | 34.4 (41.8) | 27.5 (2.8) | 12.9 (0.6) | 0.6 (0.0) | 6.6 (5.6) | ||
| KURN | 6.6 | 17.6 (14.0) | 5.0 (11.9) | 10.8 (14.1) | 6.9 (15.0) | 15.0 (13.5) | 6.5 (8.3) | 29.6 (0.0) | 8.2 (1.5) | ||
| LEPP | 5.9 | 6.2 (7.2) | 7.7 (0.2) | 1.5 (3.4) | 5.9 (22.6) | 55.6 (13.1) | 6.7 (1.5) | 0.0 (0.0) | 16.3 (30.5) | ||
| LUDD | 6.2 | 8.2 (10.9) | 6.6 (6.3) | 3.2 (3.7) | 2.2 (0.5) | 60.2 (45.4) | 13.3 (7.7) | 2.3 (0.0) | 3.7 (2.9) | ||
| DULW | 9.1 | 43.8 (18.3) | 11.0 (17.9) | 17.3 (7.5) | 17.5 (20.0) | 3.0 (0.7) | 4.2 (3.5) | 0.4 (0.0) | 1.1 (4.9) | ||
| KELL | 7.1 | 35.6 (22.8) | 15.7 (9.8) | 10.5 (9.8) | 10.8 (9.4) | 16.8 (15.3) | 5.3 (2.5) | 0.0 (0.0) | 4.3 (7.9) | ||
| NARE | 8.6 | 23.5 (35.1) | 11.5 (7.9) | 11.7 (8.7) | 5.8 (3.1) | 28.9 (14.2) | 11.8 (7.8) | 2.2 (0.0) | 4.4 (1.5) | ||
| TARE | 9.6 | 27.3 (10.0) | 11.3 (14.1) | 19.9 (14.3) | 13.7 (24.4) | 12.5 (2.0) | 4.0 (9.8) | 4.0 (0.0) | 5.5 (2.9) | ||
| NEWT | 8.9 | 49.5 (22.8) | 4.2 (0.7) | 15.9 (12.9) | 23.6 (37.4) | 2.9 (2.6) | 2.0 (1.2) | 0.0 (0.0) | 1.4 (0.3) |
Data extracted from Geoscape surface cover and buildings datasets[44].
*Average in a 500 m radius.
**Average in a 500 m radius, followed by average in a 50 m radius in brackets.
Fig. 3QA/QC filtering and flagging systems. Standardized icons (“ ∧ “ cap, “ ∨ “ cup) are used to represent Boolean operators (AND, OR). P25, P75 and IQR stand for 25th percentile, 75th percentile and interquartile range respectively.
| Measurement(s) | temperature of air • relative humidity • pressure of air • atmospheric wind speed • atmospheric wind direction • rainfall rate • sulphur dioxide • carbon monoxide • nitrogen dioxide • tropospheric ozone • pm10 • pm2.5 |
| Technology Type(s) | weather station • air quality station |
| Sample Characteristic - Environment | urban weather and pollution |
| Sample Characteristic - Location | Sydney, Australia |