Features of the Extreme Fire Season of 2021 in Yakutia (Eastern Siberia) and Heavy Air Pollution Caused by Biomass Burning
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data
2.2.1. MODIS Active Fire Product
2.2.2. MODIS Aerosol Products
2.2.3. AERONET Aerosol Optical Depth
2.2.4. OMPS-NM Aerosol Index Product
2.2.5. CALIOP Aerosol Profile Product
2.2.6. AIRS Carbon Monoxide Product
2.2.7. Meteorological Data
2.2.8. HYSPLIT Forward Trajectories
3. Results
3.1. Features of the 2021 Fire Season
3.2. Weather Conditions during the 2021 Fire Season
3.2.1. Daily and Monthly Variations of HS, Air Temperature, and Precipitation
3.2.2. Synoptic-Scale Weather Conditions during the Main Active Fire Period
3.3. Spatio-Temporal Variations of Aerosol Parameters
3.3.1. Daily and Monthly AOD
3.3.2. Seasonality of Aerosol Types over the Study Region
3.3.3. Vertical Distribution by Aerosol Types
3.3.4. Long-Range Transport of Air Pollution
4. Discussion
5. Conclusions
- (1)
- The 2021 fire season in Yakutia was unprecedented in nearly four decades of satellite observations of wildfires in the region. The total number of hotspots in 2021 amounted to ~150,000, which is almost twice as much as the previous record year (2020). One of the main features of the 2021 fire season is the period of extensive growth of the number of HS, which occurred from 24 July to 12 August. During this 20-day period, the total number of HS in the study region almost tripled from 49,000 to 140,000.
- (2)
- High fire danger during the 2021 fire season was promoted by positive anomalies in monthly air temperature (August) and negative anomalies in monthly precipitation (May–July). August of 2021 in central Yakutia was the second most hot August (14.9 °C) during a 43-year NCEP-DOE Reanalysis record (1979–2021), second only to August of 2017 (15.0 °C) and followed by August 2002 (14.8 °C).
- (3)
- Intensification of wildfires during the second fire period in August 2021 in Yakutia was associated with persistent high-pressure systems characterized by high Z500 and SLP anomalies, promoting dry weather conditions in the region by blocking the transport of moist air masses from the western part of Russia. Low wind speeds, observed in the center of a high-pressure system, led to the accumulation of wildfire emissions in the atmosphere, which resulted in heavy air pollution by smoke particles in the region.
- (4)
- Monthly mean AOD values during July 2021 were 0.66 (DTDB), 0.82 (MAIAC), and 1.37 (AERONET) which were 7.8, 14.9, and 18.7 times higher than the respective values from 2007. August AOD was slightly lower primarily due to rainfalls in the middle of the month: 0.47 (DTDB), 0.64 (MAIAC), and 0.9 (AERONET), which exceed 2007 values by a factor of 6.3, 11.9, and 9.9, respectively.
- (5)
- According to CALIOP observations, the seasonal pattern of aerosol OF over the study region during 2021 has two distinctive peaks—in winter and summer, contrary to 2007, where only the winter peak is clearly visible in all aerosol types. In August 2021, CALIOP observations revealed an increased abundance of smoke aerosols in the troposphere over the study region including several high-altitude layers with heights of up to 11 km.
- (6)
- Smoke plumes originated from the study area during the second fire period and characterized by high AI and CO values were transported over long distances reaching the Ural Mountains in the west, Mongolia in the south, the North Pole in the north, and Alaska in the east, traveling the distances of ~2000–7000 km. Maximum spatial extent of the smoke plumes reached ~10–12 mln. km2.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Tomshin, O.; Solovyev, V. Features of the Extreme Fire Season of 2021 in Yakutia (Eastern Siberia) and Heavy Air Pollution Caused by Biomass Burning. Remote Sens. 2022, 14, 4980. https://doi.org/10.3390/rs14194980
Tomshin O, Solovyev V. Features of the Extreme Fire Season of 2021 in Yakutia (Eastern Siberia) and Heavy Air Pollution Caused by Biomass Burning. Remote Sensing. 2022; 14(19):4980. https://doi.org/10.3390/rs14194980
Chicago/Turabian StyleTomshin, Oleg, and Vladimir Solovyev. 2022. "Features of the Extreme Fire Season of 2021 in Yakutia (Eastern Siberia) and Heavy Air Pollution Caused by Biomass Burning" Remote Sensing 14, no. 19: 4980. https://doi.org/10.3390/rs14194980
APA StyleTomshin, O., & Solovyev, V. (2022). Features of the Extreme Fire Season of 2021 in Yakutia (Eastern Siberia) and Heavy Air Pollution Caused by Biomass Burning. Remote Sensing, 14(19), 4980. https://doi.org/10.3390/rs14194980