Evaluating wildfire emissions projection methods in comparisons of simulated and observed air quality
Uma Shankar Donald McKenzie Jeffrey P. Prestemon Bok Haeng Baek Mohammed Omary Dongmei Yang Aijun Xiu Kevin Talgo William Vizuete
Abstract. Climate warming has been implicated as a major driver of recent catastrophic
wildfires worldwide but analyses of regional differences in US wildfires
show that socioeconomic factors also play a large role. We previously
leveraged statistical projections of annual areas burned (AAB) over the
fast-growing southeastern US that include both climate and socioeconomic
changes from 2011 to 2060 and developed wildfire emissions estimates over
the region at 12 km × 12 km resolution to enable air quality (AQ) impact
assessments for 2010 and selected future years. These estimates employed two
AAB datasets, one using statistical downscaling (“statistical d-s”) and
another using dynamical downscaling (“dynamical d-s”) of climate inputs
from the same climate realization. This paper evaluates these wildfire
emissions estimates against the U.S. National Emissions Inventory (NEI) as a
benchmark in contemporary (2010) simulations with the Community Multiscale
Air Quality (CMAQ) model and against network observations for ozone and
particulate matter below 2.5 µm in diameter (PM2.5). We
hypothesize that our emissions estimates will yield model results that meet
acceptable performance criteria and are comparable to those using the NEI.
The three simulations, which differ only in wildfire emissions, compare
closely, with differences in ozone and PM2.5 below 1 % and 8 %,
respectively, but have much larger maximum mean fractional biases (MFBs)
against observations (25 % and 51 %, respectively). The largest biases
for ozone are in the fire-free winter, indicating that modeling
uncertainties other than wildfire emissions are mainly responsible.
Statistical d-s, with the largest AAB domain-wide, is 7 % more positively
biased and 4 % less negatively biased in PM2.5 on average than the
other two cases, while dynamical d-s and the NEI differ only by 2 %–3 % partly because of their equally large summertime PM2.5
underpredictions. Primary species (elemental carbon and ammonium from
ammonia) have good-to-acceptable results, especially for the downscaling
cases, providing confidence in our emissions estimation methodology.
Compensating biases in sulfate (positive) and in organic carbon and dust
(negative) lead to acceptable PM2.5 performance to varying degrees
(MFB between −14 % and 51 %) in all simulations. As these species are
driven by secondary chemistry or non-wildfire sources, their production
pathways can be fruitful avenues for CMAQ improvements. Overall, the
downscaling methods match and sometimes exceed the NEI in simulating
current wildfire AQ impacts, while enabling such assessments much farther
into the future.