Spatial and temporal variations in ambient SO2 and PM2.5 levels influenced by Kīlauea Volcano, Hawai'i, 2007 - 2018

crossref(2020)

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摘要
<p>The 2018 eruption of K&#299;lauea volcano, Hawai'i, resulted in enormous gas emissions from the Lower East Rift Zone (LERZ) of the volcano. This led to important changes to air quality in downwind communities. We analyse and present measurements of atmospheric sulfur dioxide (SO<sub>2</sub>) and aerosol particulate matter < 2.5 &#181;m (PM<sub>2.5</sub>) collected by the Hawai'i Department of Health (HDOH) and National Park Service (NPS) operational air quality monitoring networks between 2007 and 2018; and a community-operated network of low-cost PM<sub>2.5</sub> sensors on the Island of Hawai'i. During this period, the two largest observed increases in K&#299;lauea's volcanic emissions were: the summit eruption that began in 2008 (K&#299;lauea emissions averaged 5 &#8211; 6 kt/day SO<sub>2</sub> over the course of the eruption) and the LERZ eruption in May-August 2018 when SO<sub>2</sub> emission rates likely reached 200 kt/day in June. Here we focus on characterising the airborne pollutants arising from the 2018 LERZ eruption and the spatial distribution and severity of air pollution events across the Island of Hawai'i. The LERZ eruption caused the most frequent and severe exceedances of Environmental Protection Agency 24-hour-mean PM<sub>2.5</sub> air quality thresholds in Hawai'i since 2010. In Kona, for example, there were eight exceedances during the 2018 LERZ eruption, where there had been no exceedances in the previous eight years as measured by the HDOH and NPS networks. SO<sub>2</sub> air pollution during the LERZ eruption was most severe in communities in the south and west of the island, with maximum 24-hour-mean mass concentrations of 728 &#181;g/m<sup>3</sup> recorded in Ocean View (100 km west of the LERZ emission source) in May 2018. Data from the low-cost sensor network correlated well with data from the HDOH PM<sub>2.5</sub> instruments (Kona station, R<sup>2</sup> = 0.89), demonstrating that these low-cost sensors provide a viable means to rapidly augment reference-grade instrument networks during crises.</p>
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