Subscriber access provided by UNIV OF LOUISIANA
Characterization of Natural and Affected Environments
The contribution of wildland-fire smoke to US PM and its influence on recent trends 2.5
Katelyn O'Dell, Bonne Ford, Emily V. Fischer, and Jeffrey R. Pierce Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.8b05430 • Publication Date (Web): 25 Jan 2019 Downloaded from http://pubs.acs.org on January 27, 2019
Just Accepted “Just Accepted” manuscripts have been peer-reviewed and accepted for publication. They are posted online prior to technical editing, formatting for publication and author proofing. The American Chemical Society provides “Just Accepted” as a service to the research community to expedite the dissemination of scientific material as soon as possible after acceptance. “Just Accepted” manuscripts appear in full in PDF format accompanied by an HTML abstract. “Just Accepted” manuscripts have been fully peer reviewed, but should not be considered the official version of record. They are citable by the Digital Object Identifier (DOI®). “Just Accepted” is an optional service offered to authors. Therefore, the “Just Accepted” Web site may not include all articles that will be published in the journal. After a manuscript is technically edited and formatted, it will be removed from the “Just Accepted” Web site and published as an ASAP article. Note that technical editing may introduce minor changes to the manuscript text and/or graphics which could affect content, and all legal disclaimers and ethical guidelines that apply to the journal pertain. ACS cannot be held responsible for errors or consequences arising from the use of information contained in these “Just Accepted” manuscripts.
is published by the American Chemical Society. 1155 Sixteenth Street N.W., Washington, DC 20036 Published by American Chemical Society. Copyright © American Chemical Society. However, no copyright claim is made to original U.S. Government works, or works produced by employees of any Commonwealth realm Crown government in the course of their duties.
Page 1 of 28
Environmental Science & Technology
1
The contribution of wildland-fire smoke to US PM2.5
2
and its influence on recent trends.
3
Katelyn O’Dell*, Bonne Ford, Emily V. Fischer, and Jeffrey R. Pierce
4
Department of Atmospheric Science, Colorado State University, 200 West Lake Street, 1371
5
Campus Delivery, Fort Collins, Colorado 80523, United States
6
7
Abstract
8
Seasonal-mean concentrations of particulate matter with diameters smaller than 2.5 µm (PM2.5)
9
have been decreasing across the United States (US) for several decades, with large reductions in
10
spring and summer in the eastern US. In contrast, summertime-mean PM2.5 in the western US has
11
not significantly decreased. Wildfires, a large source of summertime PM2.5 in the western US,
12
have been increasing in frequency and burned area in recent decades. Increases in extreme PM2.5
13
events attributable to wildland fires have been observed in wildfire-prone regions, but it is
14
unclear how these increases impact trends in seasonal-mean PM2.5. Using two distinct methods,
15
(1) interpolated surface observations combined with satellite-based smoke plume estimates and
16
(2) the GEOS-Chem chemical transport model (CTM), we identify recent trends (2006-2016) in
17
summer smoke, non-smoke, and total PM2.5 across the US. We observe significant decreases in
18
non-smoke influenced PM2.5 in the western US and find increases in summer-mean smoke PM2.5
ACS Paragon Plus Environment
1
Environmental Science & Technology
19
in fire-prone regions, although these are not statistically significant due to large interannual
20
variability in the abundance of smoke. These results indicate that without the influence of
21
wildland fires, we would expect to have observed improvements in summer fine particle
22
pollution in the western US but likely weaker improvements than those observed in the eastern
23
US.
24
Introduction and Background
25
Wildland fires are a major source of particulate matter with diameters smaller than 2.5 µm
26
(PM2.5) in the United States (US). According to the Environmental Protection Agency (EPA)
27
2011 National Emissions Inventory (NEI), wildland fires emit 25% of primary PM2.5 in the US1.
28
In the southeastern US, wildland fire burn area is dominated by human-ignited prescribed burns
29
or agricultural burns, while in the western US ~70% of wildland fire burned area is from
30
lightning-ignited fires2. In both regions, burned area is heavily tied to environmental conditions
31
and could be similarly impacted by changes in climate2. In the western US, most wildland fire
32
burned area and emissions occur in the summer, and the occurrence of wildland fires varies
33
greatly from year to year. Annual area burned by wildland fires in the US can differ by a factor
34
of 3 or more from year to year3. In the western US, the interannual variability in wildland fire
35
occurrence drives interannual variability in summer aerosol concentrations4,5. Despite their
36
episodic nature and high interannual variability, wildland fires can have significant negative
37
impacts on air quality and public health in the western US, especially in high fire years6,7.
38 39
Over the past several decades, aerosol concentrations have been decreasing across the eastern
40
US8–11. Using the Interagency Monitoring of Protected Visual Environments (IMPROVE)
41
monitor network, statistically significant decreases in average fine particle mass and elemental
ACS Paragon Plus Environment
2
Page 2 of 28
Page 3 of 28
Environmental Science & Technology
42
carbon concentrations have been observed since the late 1980s at many US monitoring sites,
43
predominantly in the eastern US8,9. These decreases, including largely unexpected reductions in
44
organic aerosol, have been linked to large reductions in anthropogenic combustion emissions
45
using both observations and models9,1012,13. In contrast to the eastern US, changes to western US
46
PM2.5 concentrations have been small and largely insignificant8,9. Hand et al. (2011) found a
47
significant decline in summer PM2.5 at a few western US sites, however at most western US sites
48
there was an insignificant change in summer PM2.5 over the period 1989 to 2008. There were
49
positive trends observed at a few sites in several western US states over this time period8,9.
50
Previous work has proposed these positive trends in summer-mean PM2.5 in the western US may
51
be due to the influence of wildland fires. Extreme PM2.5 events (the 98th quantile of daily PM2.5
52
concentrations) attributable to wildland fires have been increasing over the early 21st century in
53
wildfire-prone regions of the western US14.
54 55
On decadal timescales, large wildfires in the western US have been increasing in frequency and
56
burned area since the mid-1980s15,16. These increases are largely the result of changing climatic
57
factors, in part driven by anthropogenic climate change, including earlier spring snowmelt,
58
warmer temperatures, and reduced winter precipitation17–20. Increases in human-ignited fires and
59
a build-up of fuels from fire suppression have also had a significant contribution17,21,22 . Climate,
60
ignition changes, and fuel build-up have hence led to approximately 20 additional large wildfires
61
(a 140% increase) per decade and an additional 123,000 ha in burned area (a 390% increase) per
62
decade since the 1973-1982 decade17.. Climate-related increases in wildfire burned area and the
63
number of large fires are projected to continue to increase23–25. Spracklen et al. (2009) project a
64
~50% increase in burned area across the western US between 2009 and 2050.
ACS Paragon Plus Environment
3
Environmental Science & Technology
65
As wildfires in the western US increase in frequency and burned area over the next century,
66
emissions of PM2.5 from fires are also expected to increase26–28. Liu et al. (2016) project ~60%
67
and ~30% increases in the frequency and intensity, respectively, of smoke events (≥ 2
68
consecutive days of smoke-elevated PM2.5) in the western US by the mid-21st century27. Ford et
69
al. (2018) estimated that by the end of the century, fire-related PM2.5 will increase by ~50%26,
70
and several studies have estimated that smoke will dominate the summertime PM2.5 and OA
71
concentrations in the West24,26,28,29. Yue et al. (2013) estimate a ~50-70% increase in
72
summertime organic carbon and ~20-30% increase in summertime black carbon in the US West
73
by the mid-21st century due to increased wildfire emissions24.
74 75
The most rapid increases in wildfire frequency and burned area over the past two decades have
76
been observed in Pacific Northwest (PNW) forests17. In this region, fire is already a significant
77
source of PM2.5, contributing approximately 1/3 of the annual average PM2.5 in 200026. Across
78
the coming century, the rapid increase of wildland fires is expected to continue in this region
79
with an expected ~80% increase in burned area in the PNW alone23. These increases in fire, in
80
conjunction with decreases with anthropogenic PM2.5, are expected to cause fire PM2.5 to
81
dominate PM2.5 in the region by the end of the 21st century26.
82 83
While there have been previous studies that have examined how aerosol concentrations have
84
changed from the mid-1980s up to 2012 and these studies have noted increases in wildland fire-
85
linked extreme PM2.5 events, the specific impact from fires on trends in seasonal-mean PM2.5 has
86
not yet been quantified. There is growing interest in how changes in fire emissions might impact
87
future air quality and offset projected decreases in anthropogenic emissions (e.g., Ford et al.,
88
2018; Liu et al., 2016; Yue et al., 2013)24,26,27. In this study, we are able to determine how these
ACS Paragon Plus Environment
4
Page 4 of 28
Page 5 of 28
Environmental Science & Technology
89
competing drivers are already impacting observed trends in PM2.5. Knowledge of how these
90
sources are changing in the present day is needed to understand future air pollution and its
91
impacts, which can inform decision making.
92
93
In this study, we provide updated estimates of trends in seasonal-mean PM2.5 at US monitoring
94
sites over the most recent decade (2006-2016), and we provide the first estimates of trends in
95
wildland-fire specific PM2.5. Focusing specifically on the PNW, we assess the contribution of
96
smoke PM2.5 to summer-mean PM2.5 and how this impacts trends in regional summer PM2.5. We
97
estimate these trends using two distinct methods: 1) surface monitor observations combined with
98
satellite estimates of smoke influence, and 2) GEOS-Chem simulations using Global Fire
99
Emissions Database version 4 (GFED4) biomass burning emissions.
100 101
Methods
102
Time Period and Domain
103
We investigate changes in continuous US seasonal-mean PM2.5 over an 11-year period (2006-
104
2016). This time period is constrained on both ends by data availability, discussed in the
105
following sections. For calculations of seasonal-mean values, we define seasons as follows;
106
winter: January, February, March (JFM); spring: April, May, June (AMJ); summer: July, August,
107
September (JAS); and fall: October, November, December (OND). This choice of months groups
108
the three most active wildfire months in the northwestern US (July, August, September) together.
109
The number of fires and the frequency of smoke in the atmospheric column peak between July
110
and September in this region30.
ACS Paragon Plus Environment
5
Environmental Science & Technology
111
Surface Observations
112
We use in situ 24-hour average PM2.5 observations from the EPAs Air Quality System (AQS)
113
monitoring network (https://aqs.epa.gov/aqsweb/airdata.html). The AQS network contains air
114
pollution data collected by air quality monitors across the US maintained by the EPA, state,
115
local, and tribal agencies. The EPA AQS database contains observations from both urban and
116
rural monitoring sites. These data are collected from sites using both gravimetric and beta-
117
attenuation techniques and both 24-hr and 1-hr sample durations. We use PM2.5 data from two
118
sets of PM2.5 monitors that exist in the AQS database: 1) federal reference method (FRM) sites
119
(EPA parameter code 88101) and 2) acceptable non-FRM sites, which reasonably match the
120
FRM (EPA parameter code 88502). In order for the data from a given monitor to be included in
121
our trend analysis at monitoring sites, data must be available for that monitor for every season
122
between 2006 and 2016 and the monitor must have 80% data availability for the season each
123
year. In total, trends in PM2.5 are calculated for 306 unique PM2.5 monitors across the US. At
124
each monitoring site, we evaluate the trend in PM2.5 using a linear least-squares regression
125
(results in main text Figures 1 and 2) as well as Theil-Sen estimator31 (results in supplementary
126
Figures S1 and S2). These two methods qualitatively agree, and the choice of method does not
127
affect the conclusions of this work. The significance of the resulting best-fit lines is evaluated
128
using a two-sided t-test with a null hypothesis that the slope is zero at a 95% confidence level.
129 130
Interpolation of Surface Observations
131
To estimate trends between surface monitor locations, we calculate a gridded surface of daily
132
observed PM2.5 values by interpolating the surface observations. Ordinary kriging, an
133
interpolation method recently applied to air quality studies32–34, is used to interpolate the PM2.5
ACS Paragon Plus Environment
6
Page 6 of 28
Page 7 of 28
Environmental Science & Technology
134
concentration between monitors to a gridded surface. The kriging parameters (sill = 2.6, range =
135
8.5, nugget = 0.1) are determined using a k-fold evaluation with 10 folds, discussed further in the
136
SI. We focus the kriging analysis on the summer season and include all surface sites with data
137
available on a given day for each summer season between 2006 and 2016 in the interpolation.
138
This allows us to retain the maximum number of possible sites for the interpolation on each day.
139
Daily average PM2.5 values measured at these sites are kriged to a 15 x 15 km grid over the
140
contiguous US. We calculate summer area average PM2.5 values over the US PNW and over the
141
contiguous US using the gridded PM2.5 estimates. The gridded estimates, rather than point
142
measurements, are used to calculate the area average seasonal PM2.5 to reduce bias towards
143
urban locations where a larger proportion of the monitors are concentrated.
144 145
Satellite Observations of Smoke Plumes
146
Smoke-specific PM2.5 is estimated using in situ PM2.5 observations concurrently with areal
147
polygons of smoke extent from the Hazard Mapping System (HMS)30,35,36. A detailed description
148
of the HMS fire location and smoke polygon dataset is given in Rolph et al. (2009). HMS is an
149
interactive tool that relies on imagery from several satellites and trained satellite analysts to
150
identify fire locations and smoke plumes across North America. The HMS smoke plume
151
polygons are largely derived from visible satellite imagery from the Geostationary Operational
152
Environmental Satellite (GOES) satellites with an approximate spatial resolution of several
153
kilometers35. The smoke plume polygons indicate locations where there is likely smoke
154
somewhere in the atmospheric column during daylight hours. The HMS smoke plume and fire
155
detection dataset has been operational since 2005. We begin our study period in 2006 because
156
this is the first full year where HMS smoke plumes are available. In general, the number and
ACS Paragon Plus Environment
7
Environmental Science & Technology
157
extent of HMS smoke plumes are conservative estimates of smoke occurrence in the atmospheric
158
column30.
159 160
Estimation of Smoke PM2.5 with Satellite and Surface Observations
161
To estimate the smoke contribution to local PM2.5 concentrations, we first use HMS smoke
162
plumes re-gridded to the 15 x 15 km kriging grid to flag potentially smoke-influenced days in the
163
atmospheric column (referred to as smoke days). We then subset the data from each surface
164
monitor into 1) days with no overlapping HMS smoke plume, and 2) days with an overlapping
165
HMS smoke plume (smoke days). The first subset of data for a given monitor is used to estimate
166
the seasonal-median PM2.5 concentrations on non-smoke-influenced days. We acknowledge that
167
there are limitations to this method identifying the magnitude of smoke-influence on PM2.5. 1)
168
Dilute smoke not identified by HMS may still influence the PM2.5 on days that do not overlap
169
HMS plumes. 2) Smoke plumes identified by HMS could be located above the surface and have
170
little or no impact on surface PM2.5. 3) HMS smoke plumes are identified from observations
171
during daylight hours, while 24-hour PM2.5 observations include overnight observations when
172
smoke plumes can shift and go unnoticed by HMS.
173 174
We calculate the expected PM2.5 concentration from non-smoke sources at each monitor as the
175
seasonal median of days with no overlapping HMS smoke plume. We use the seasonal median
176
value rather than the mean as it is less sensitive to the effect of smoke-influenced days with
177
higher PM2.5 concentrations that were missed by the HMS smoke plumes. On average, the
178
seasonal mean non-smoke PM2.5 is 0.6 µg m-3 higher than the seasonal median non-smoke PM2.5
179
with the difference between the two methods (mean – median) ranging from -1.8 to 4.4 µg m-3
ACS Paragon Plus Environment
8
Page 8 of 28
Page 9 of 28
Environmental Science & Technology
180
across locations. We interpolate these non-smoke influenced seasonal PM2.5 concentrations using
181
ordinary kriging to obtain a continuous non-smoke influenced PM2.5 estimate across the domain.
182
A daily smoke PM2.5 (PM2.5 from wildland fires) concentration is then estimated as the
183
difference between the daily-mean PM2.5 concentration and the seasonal non-smoke influenced
184
PM2.5 concentration for locations included in HMS smoke polygons (we set smoke PM2.5
185
concentrations to zero at locations outside of HMS smoke polygons). Smoke PM2.5
186
concentrations are calculated at each interpolated grid cell on each day during the time period.
187
We calculate the seasonal mean of the total PM2.5 concentration and smoke PM2.5 concentration
188
for each summer season over the 11-year period. We will refer to this method of estimating
189
smoke PM2.5 and trends as the “monitor-HMS method”.
190 191
Chemical Transport Model Simulations
192
We also use the GEOS-Chem CTM (geos-chem.org) version 11-01 to estimate the impact of
193
wildland-fire smoke on US trends in PM2.5. The model is driven by assimilated reanalysis
194
meteorology from the Modern Era Retrospective Analysis for Research and Applications,
195
Version 2 (MERRA2) produced by the NASA Global Modeling Assimilation Office (GMAO)37.
196
Globally, we use the Emissions Database for Global Atmospheric Research (EDGAR) v4.2
197
anthropogenic
198
(http://edgar.jrc.ec.europa.eu/). In the US, we follow the convention in GEOS-Chem version 12-
199
01 where the EDGAR emissions are overwritten by the EPA NEI 2011 scaled for each year from
200
2006-2016 (https://www.epa.gov/chief). We use biomass burning emissions of aerosol and gas-
201
phase species from GFED4 at a 0.25° x 0.25° resolution39,40.
emissions
inventory
globally
202
ACS Paragon Plus Environment
9
with
regional
overwrites38
Environmental Science & Technology
Page 10 of 28
203
We run global GEOS-Chem simulations from 2006-2016 with 1-month spin up at 2° x 2.5°
204
resolution with 47 vertical layers between the surface and 0.01 hPa. The model includes tracers
205
for hydrophobic and hydrophilic black carbon (BCPO, BCPI), hydrophobic and hydrophilic
206
organic carbon (OCPO, OCPI), dust (DST), sea-salt aerosol (SALA), inorganic sulfur nitrates
207
(NIT), ammonium (NH4), and sulfate (SO4). Monthly mean PM2.5 concentrations were
208
calculated according to,
209 210 211
PM2.5 = 1.33 × (NH4 + NIT + SO4) + BCPI + BCPO + 2.1 × (OCPO + 1.16 × OCPI)
(1)
+ DST1 + 0.38 × DST2 + 1.86 × SALA,
212 213
where DST1 and DST2 are dust aerosol with an effective radius of 0.7 µm and 1.4 µm,
214
respectively40. Scaling factors for NH4, NIT, SO4, OCPI, and SALA account for aerosol water
215
under the assumption of 35% relative humidity. The DST2 bin contains particle sizes both
216
smaller and larger than PM2.5; 38% of the mass in the bin is assumed to be from PM2.5. The 2.1
217
scaling factor for OCPO and OCPI is derived from the recommended OM/OC ratio from the
218
GEOS-Chem Aerosol Working Group. To determine the impact of fires on PM2.5, we use a pair
219
of simulations. One simulation includes all emissions and the second simulation includes all
220
emissions except the biomass burning emissions from GFED4. Smoke PM2.5 was identified as
221
the difference between monthly PM2.5 simulated with biomass burning emissions on and off.
222 223
In general, the GEOS-Chem model has shown to correlate well with surface observations of
224
PM2.542–44. However, we acknowledge that there are limitations to our modeling approach that
225
could impact estimates of smoke PM2.5. The version of the model we use does not account for
226
plume rise and emits all biomass burning emission at the surface which could lead to artificially
ACS Paragon Plus Environment
10
Page 11 of 28
Environmental Science & Technology
227
high surface PM2.5 concentrations and impact transport45. By using GFED4 for biomass burning
228
emissions, as opposed to GFED4s, we are likely underestimating emissions from small fires46.
229
However, most of the burn area in the western US during the summer wildfire season is the
230
result of large fires2. As well, there is considerable variability between various smoke emissions
231
inventories47, and we do not test these differences here. In the smoke PM2.5 estimates, we ignore
232
changes in smoke organic aerosol due to evaporation and secondary aerosol formation48. Finally,
233
the coarse resolution of the model used here may be unable to resolve narrow smoke plumes
234
(however, we attempt to mitigate the impact of this limitation by focusing on seasonal and
235
regional means in the analysis). The limitations of this model-based approach are generally
236
orthogonal to the limitations of the monitor-HMS approach described above, and hence these
237
two methods provide a means of testing which results are robust.
238 239
Results and Discussion
240
Seasonal Trends in PM2.5 Observed at Surface Sites
241
Observed trends in seasonal-mean PM2.5 at contiguous US sites are shown in Figure 1 for the
242
period 2006 to 2016. In line with several previous studies of aerosol surface
243
concentrations8,9,11,49, we find a predominantly negative trend in seasonal-mean PM2.5 in all
244
seasons. The largest reductions in absolute PM2.5 concentrations occurred in spring and summer
245
in the eastern US during this time period. In these regions over our 11-year study period, the rate
246
of decline in PM2.5 was as large as -1.66 µg m-3 yr-1, which occurred in McKeesport,
247
Pennsylvania in the summer season. Significant declines in PM2.5 are ubiquitous across the
248
eastern US in all seasons: the PM2.5 trends are significantly negative at 45%, 58%, 47%, and
249
56% of sites east of 100° W in winter, spring, summer, and fall, respectively.
ACS Paragon Plus Environment
11
Environmental Science & Technology
250
Figure 1. Slopes of linear fits on seasonal-mean PM2.5 at EPA AQS sites from 2006-2016. Sites
251
with slopes that are significantly different from 0 at the 95% confidence level are outlined in
252
black, and sites with insignificant slopes are outlined in gray. Dashed line drawn at 100° W is
253
used in the analysis to distinguish between the eastern and western US.
254 255
In contrast to the eastern US, fewer sites in the western US exhibit significant declines in total
256
PM2.5. The percent of sites in the western US (west of 100° W) that exhibit a significant decrease
257
in PM2.5 is 19%, 23%, and 37% over winter, spring, and fall. In winter (Figure 1a), we observe a
258
positive, but insignificant, trend at a few sites in the PNW (represented by the gray box in Figure
259
2), possibly due to residential fuel burning for heat. In summer (Figure 1c), 27 of the 48 sites
260
studied in the PNW report positive but insignificant trends in summer-mean PM2.5 and, only 3
261
sites (less than 5% of sites studied in the western US) exhibit a significant decline in PM2.5 over
262
this period. This is in agreement with prior work on summer PM2.5 trends observed at surface
ACS Paragon Plus Environment
12
Page 12 of 28
Page 13 of 28
Environmental Science & Technology
263
monitors and aerosol optical depth50 over previous years46,47. We investigate whether the positive
264
trends in summer total PM2.5 can be attributed to positive trends in smoke PM2.5.
265 266
Trends in Smoke and Non-smoke PM2.5
267
Figure 2 presents trends in total, non-smoke, and smoke-influenced PM2.5 using the monitor-
268
HMS method (panels a, b, and c) with 15 km resolution and GEOS-Chem with 2° x 2.5°
269
resolution (panels d, e, and f). total PM2.5
non-smoke PM2.5
smoke PM2.5
monitor-HMS
GEOS-Chem
270 271
Figure 2. Slopes of linear fits on summer-mean (JAS) total PM2.5, non-smoke PM2.5 (summer
272
median for monitor-HMS method), and smoke PM2.5 from 2006-2016 for the monitor-HMS
273
(panels a, b, and c) and the GEOS-Chem (panels d, e, and f) methods. Locations with slopes
274
significantly different from zero at the 95% confidence level are dotted. Grey boxes define the
275
Pacific Northwest region for both the 15 x 15 km kriging grid (panels a, b, and c) and the 2° x
276
2.5° GEOS-Chem grid (panels d, e, and f).
277
ACS Paragon Plus Environment
13
Environmental Science & Technology
278
By including CTM estimates in our analysis, we are able to identify discrepancies between
279
observed and simulated trends in PM2.5 over the past decade. In general, the model and monitor-
280
HMS approaches agree in the location and sign of trends in summer-mean total PM2.5. GEOS-
281
Chem predicts a larger spatial extent in significant negative trends in PM2.5 compared to the
282
monitor-HMS method. In the PNW and northern California, the two approaches disagree about
283
the location, sign, and magnitude of the trends in total PM2.5. The inconsistent patterns in PM2.5
284
trends in the PNW and northern California shown in both estimation methods are reflected in the
285
observations from monitoring sites in the region (see Figure 1c). There are PM2.5 data records
286
that have both increased and decreased at different monitoring sites in the PNW and northern
287
California over this time period.
288 289
Trends in non-smoke PM2.5 are shown in Figures 2b and 2e. In the absence of smoke influence,
290
the spatial extent of significant negative changes in PM2.5 expands for both the model and the
291
monitor-HMS method. The monitor-HMS method shows significant declines in PM2.5 across
292
Idaho, Colorado, and Utah while GEOS-Chem shows significant declines in PM2.5 across most
293
of the country. Both GEOS-Chem and the monitor-HMS method produce small negative, or
294
insignificant, changes in non-smoke PM2.5 across most of the PNW. Despite several differences
295
between the two methods of attributing smoke PM2.5, both estimation methods suggest that
296
decreases in summer PM2.5 would be expected over more of the western US in the absence of
297
wildland-fire smoke.
298 299
Figures 2c and 2f show trends in summer-mean smoke PM2.5. Both the monitor-HMS-based and
300
GEOS-Chem-based estimates produce an insignificant increase in smoke PM2.5 in Oregon and
ACS Paragon Plus Environment
14
Page 14 of 28
Page 15 of 28
Environmental Science & Technology
301
Washington over this period and an insignificant decrease over portions of Montana. Both
302
methods show small positive smoke PM2.5 trends over the northern Great Plains and New
303
England, but the two methods disagree on the sign of the changes in the Southeast. Simulated
304
surface PM2.5 concentrations in GEOS-Chem are likely more sensitive to changes in fire
305
emissions than reality because all biomass burning emissions in the version of the model we used
306
here are emitted at the surface. However, on average, a large fraction of the smoke from fires in
307
the PNW and Canada are emitted above the boundary layer30,45. A possible origin for the
308
disagreement between the monitor-HMS-based and GEOS-Chem-based estimates in the
309
Southeast is our inability to completely isolate smoke PM2.5 from total PM2.5 in the observations
310
due to the limitations of satellite-smoke plume estimates discussed in the methods.
311 312
Wildland-Fire Smoke Contributions to Summer-Mean PM2.5 in the PNW
313
In Figure 3, we focus on area-averaged summer-mean PM2.5 in the PNW (the grey boxes
314
outlined in Figure 2), where Figure 2 demonstrated most of the increases in summer-mean PM2.5.
(a)
(b)
315 316
Figure 3. Estimated smoke contribution to area-averaged summer (JAS) PM2.5 across the Pacific
317
Northwest, defined by the gray box in Figure 2, using the monitor-HMS method (panel a) and
ACS Paragon Plus Environment
15
Environmental Science & Technology
318
GEOS-Chem (panel b). The full height of each bar represents the summer mean of total PM2.5.
319
Estimated summer non-smoke PM2.5 is shown in blue, and the difference (the estimated smoke
320
contribution) is shown in orange.
321 322
We separate the summer-mean PM2.5 for this region into a non-smoke PM2.5 concentration (what
323
we would expect the summer PM2.5 to be in the absence of wildland-fire smoke), and the mean
324
smoke contribution to the summer-mean PM2.5. The smoke contribution, shown in orange, is the
325
difference between the total summer-mean PM2.5 (total height of each bar) and the estimated
326
non-smoke PM2.5 (blue section of each bar). During the 11-year study period, wildland-fire
327
smoke contributes between 2.2 and 5.8 µg m-3 (monitor-HMS, Figure 3a) or 1.2 and 9.2 µg m-3
328
(GEOS-Chem, Figure 3b) of the summer-mean PM2.5 in the PNW, depending on the year. The
329
year with the largest contribution in this region according to both methods is 2015 with smoke
330
contributing 64% of the summer-mean PM2.5 using the monitor-HMS-based approach and 76%
331
using the GEOS-Chem-based approach. There were many large fires in this region during 2015,
332
and smoke impacted wide swaths of the US51–53. Despite the fact that wildland fires are typically
333
sporadic and transient events, both methods indicate that wildland-fire smoke can greatly
334
increase the summer PM2.5, especially in years with many large fires.
335 336
In the absence of wildland-fire smoke, there is much less inter-annual variability in summer-
337
mean PM2.5 (Figure 3). Both of our approaches indicate that without the influence of smoke, we
338
would expect modest improvements in summer PM2.5 in the PNW in line with improvements
339
elsewhere in the US. Both approaches produce a ~ 1% decrease in summer PM2.5 per year across
340
this region in the absence of smoke PM2.5. A linear fit on the non-smoke mean PM2.5 from the
ACS Paragon Plus Environment
16
Page 16 of 28
Page 17 of 28
Environmental Science & Technology
341
GEOS-Chem approach yields a slope of -0.12 µg m-3 yr-1 (R2 = 0.85, p-value = 5.15 x 10-5); a
342
linear fit on the monitor-HMS estimates yields a similar slope of -0.10 µg m-3 yr-1 (R2 = 0.39, p-
343
value = 0.04). We do not find statistically significant increases in the area-average summer-mean
344
PM2.5 attributed to smoke over the 11-year study period using either the monitor-HMS (slope =
345
0.05 µg m-3 yr-1, R2 = 0.02, p-value = 0.65) or GEOS-Chem approaches (slope = 0.10 µg m-3 yr-1,
346
R2 = 0.02, p-value = 0.71). We note that linear trends are highly dependent on the start and end
347
years of the fit (here ending on an exceptionally low fire year), and there was a large interannual
348
variability in the contribution of smoke to PM2.5 during this period (e.g. Figure 3).
349 350
This work adds to the current literature on US trends in PM2.58,9 by attributing observed increases
351
(and lack of significant trends) in PNW summer-average PM2.5 to wildland-fire smoke. Our
352
updated record of US PM2.5 trends shows continuing improvements in air quality in the eastern
353
US. We show that without the impact of wildland-fire smoke, these improvements would also be
354
expected in the summer over much of the western US. We quantify the contribution of wildland-
355
fire smoke to summer-mean PM2.5 in the PNW, a region heavily impacted by wildland fires, over
356
the past 11 years. We show that wildland-fire smoke contributes more than 50% of the summer-
357
mean PM2.5 in large fire years, but the large interannual variability in this source of PM2.5 makes
358
detecting significant trends in annual mean PM2.5 over short time-spans challenging. We
359
hypothesize that smoke PM2.5 trends may be significant in the western US if our method (which
360
involves HMS that does not go back further than 2006) could be applied over a longer time
361
period. As wildland fires are expected to continue to increase in frequency and severity in the
362
western US, we also hypothesize that our methods may be used to determine significant changes
363
in smoke PM2.5 in the future if monitor and HMS data sources operate continuously.
ACS Paragon Plus Environment
17
Environmental Science & Technology
Page 18 of 28
364 365
Acknowledgements
366
This work was supported by NASA project number NNX15AG35G.
367 368
369
Supporting Information Available The following files are available free of charge via the Internet at
370
http://pubs.acs.org.
371
Supplemental Information (pdf): Alternative statistical approach to calculate
372
PM2.5 slopes presented in Figures 1 and 2, a description of the process used to
373
determine the kriging parameters, Figure 2 trends for all other seasons using
374
the observation-based approach, and a discussion of interannual variability in
375
two driving factors of smoke PM2.5 concentrations in the PNW: smoke
376
concentration intensity and smoke day frequency.
377
Corresponding Author
378
*
[email protected] 379
References
380
(1)
US
EPA,
O.
2011
National
Emissions
Inventory
(NEI)
Documentation
381
https://www.epa.gov/air-emissions-inventories/2011-national-emissions-inventory-nei-
382
documentation.
ACS Paragon Plus Environment
18
Page 19 of 28
383
Environmental Science & Technology
(2)
Brey, S. J.; Barnes, E. A.; Pierce, J. R.; Wiedinmyer, C.; Fischer, E. V. Environmental
384
Conditions, Ignition Type, and Air Quality Impacts of Wildfires in the Southeastern and Western
385
United States. Earths Future 2018, 6 (10), 1442–1456. https://doi.org/10.1029/2018EF000972.
386
(3)
National Interagency Fire Center https://www.nifc.gov/fireInfo/fireInfo_statistics.html.
387
(4)
Jaffe, D.; Hafner, W.; Chand, D.; Westerling, A.; Spracklen, D. Interannual Variations in
388
PM2.5 Due to Wildfires in the Western United States. Environ. Sci. Technol. 2008, 42 (8), 2812–
389
2818. https://doi.org/10.1021/es702755v.
390
(5)
Spracklen, D. V.; Logan, J. A.; Mickley, L. J.; Park, R. J.; Yevich, R.; Westerling, A. L.;
391
Jaffe, D. A. Wildfires Drive Interannual Variability of Organic Carbon Aerosol in the Western
392
U.S.
393
https://doi.org/10.1029/2007GL030037.
394
(6)
in
Summer.
Geophys.
Res.
Lett.
2007,
34,
L16816,
(16).
Gan, R. W.; Ford, B.; Lassman, W.; Pfister, G.; Vaidyanathan, A.; Fischer, E.; Volckens,
395
J.; Pierce, J. R.; Magzamen, S. Comparison of Wildfire Smoke Estimation Methods and
396
Associations with Cardiopulmonary-Related Hospital Admissions. GeoHealth 2017, 1 (3),
397
2017GH000073. https://doi.org/10.1002/2017GH000073.
398
(7)
Reid, C. E.; Brauer, M.; Johnston, F. H.; Jarrett, M.; Balmes, J. R.; Elliott, C. T. Critical
399
Review of Health Impacts of Wildfire Smoke Exposure. Environ. Health Perspect. 2016, 124
400
(9), 1334–1343. https://doi.org/DOI:10.1289/ehp.1409277.
401
(8)
Hand, J. L.; Copeland, S. A.; Day, D. E.; Dillner, A. M.; Indresand, H.; Malm, W. C.;
402
McDade, C. E.; Moore, C. T.; Pitchford, M. L.; Schichtel, B. A.; et al. Spatial and Seasonal
403
Patterns and Temporal Variability of Haze and its Constituents in the United States: Report V
ACS Paragon Plus Environment
19
Environmental Science & Technology
404
June
405
variability-of-haze-and-its-constituents-in-the-united-states-report-v-june-2011/.
406
(9)
2011
Page 20 of 28
http://vista.cira.colostate.edu/Improve/spatial-and-seasonal-patterns-and-temporal-
Murphy, D. M.; Chow, J. C.; Leibensperger, E. M.; Malm, W. C.; Pitchford, M.;
407
Schichtel, B. A.; Watson, J. G.; White, W. H. Decreases in Elemental Carbon and Fine Particle
408
Mass
409
https://doi.org/10.5194/acp-11-4679-2011.
in
the
United
States.
Atmos
Chem
Phys
2011,
11
(10),
4679–4686.
410
(10) Leibensperger, E. M.; Mickley, L. J.; Jacob, D. J.; Chen, W.-T.; Seinfeld, J. H.; Nenes,
411
A.; Adams, P. J.; Streets, D. G.; Kumar, N.; Rind, D. Climatic Effects of 1950–2050 Changes in
412
US Anthropogenic Aerosols – Part 1: Aerosol Trends and Radiative Forcing. Atmos Chem Phys
413
2012, 12 (7), 3333–3348. https://doi.org/10.5194/acp-12-3333-2012.
414
(11) Schichtel, B. A.; Husar, R. B.; Falke, S. R.; Wilson, W. E. Haze Trends over the United
415
States,
1980–1995.
Atmos.
Environ.
2001,
416
https://doi.org/https://doi.org/10.1016/S1352-2310(01)00317-X.
35
(30),
5205–5210.
417
(12) Ridley, D. A.; Heald, C. L.; Ridley, K. J.; Kroll, J. H. Causes and Consequences of
418
Decreasing Atmospheric Organic Aerosol in the United States. Proc. Natl. Acad. Sci. 2018, 115
419
(2), 290–295. https://doi.org/10.1073/pnas.1700387115.
420
(13) Malm, W. C.; Schichtel, B. A.; Hand, J. L.; Collett, J. L. Concurrent Temporal and
421
Spatial Trends in Sulfate and Organic Mass Concentrations Measured in the IMPROVE
422
Monitoring Program. J. Geophys. Res. Atmospheres 2017, 122 (19), 2017JD026865.
423
https://doi.org/10.1002/2017JD026865.
ACS Paragon Plus Environment
20
Page 21 of 28
424
Environmental Science & Technology
(14) McClure, C. D.; Jaffe, D. A. US Particulate Matter Air Quality Improves except in
425
Wildfire-Prone
Areas.
Proc.
Natl.
426
https://doi.org/10.1073/pnas.1804353115.
Acad.
Sci.
2018,
115
(31),
7901-7906.
427
(15) Westerling, A. L.; Hidalgo, H. G.; Cayan, D. R.; Swetnam, T. W. Warming and Earlier
428
Spring Increase Western U.S. Forest Wildfire Activity. Science 2006, 313 (5789), 940–943.
429
https://doi.org/10.1126/science.1128834.
430
(16) Dennison, P. E.; Brewer, S. C.; Arnold, J. D.; Moritz, M. A. Large Wildfire Trends in the
431
Western United States, 1984–2011. Geophys. Res. Lett. 2014, 41 (8), 2014GL059576.
432
https://doi.org/10.1002/2014GL059576.
433
(17) Westerling, A. L. Increasing Western US Forest Wildfire Activity: Sensitivity to Changes
434
in the Timing of Spring. Phil Trans R Soc B 2016, 371 (1696), 20150178.
435
https://doi.org/10.1098/rstb.2015.0178.
436
(18) Pechony, O.; Shindell, D. T. Driving Forces of Global Wildfires over the Past
437
Millennium and the Forthcoming Century. Proc. Natl. Acad. Sci. 2010, 107 (45), 19167–19170.
438
https://doi.org/10.1073/pnas.1003669107.
439
(19) Abatzoglou, J. T.; Williams, A. P. Impact of Anthropogenic Climate Change on Wildfire
440
across Western US Forests. Proc. Natl. Acad. Sci. 2016, 113 (42), 11770–11775.
441
https://doi.org/10.1073/pnas.1607171113.
442
(20) Barbero, R.; Abatzoglou, J. T.; Steel, E. A.; Larkin, N. K. Modeling Very Large-Fire
443
Occurrences over the Continental United States from Weather and Climate Forcing. Environ.
444
Res. Lett. 2014, 9 (12), 124009. https://doi.org/10.1088/1748-9326/9/12/124009.
ACS Paragon Plus Environment
21
Environmental Science & Technology
Page 22 of 28
445
(21) Balch, J. K.; Bradley, B. A.; Abatzoglou, J. T.; Nagy, R. C.; Fusco, E. J.; Mahood, A. L.
446
Human-Started Wildfires Expand the Fire Niche across the United States. Proc. Natl. Acad. Sci.
447
2017, 114 (11), 2946–2951. https://doi.org/10.1073/pnas.1617394114.
448
(22) Steel, Z. L.; Safford, H. D.; Viers, J. H. The Fire Frequency-Severity Relationship and
449
the Legacy of Fire Suppression in California Forests. Ecosphere 2015, 6 (1), art8.
450
https://doi.org/10.1890/ES14-00224.1.
451
(23) Spracklen, D. V.; Mickley, L. J.; Logan, J. A.; Hudman, R. C.; Yevich, R.; Flannigan, M.
452
D.; Westerling, A. L. Impacts of Climate Change from 2000 to 2050 on Wildfire Activity and
453
Carbonaceous Aerosol Concentrations in the Western United States. J. Geophys. Res.
454
Atmospheres 2009, 114 (D20), D20301. https://doi.org/10.1029/2008JD010966.
455
(24) Yue, X.; Mickley, L. J.; Logan, J. A.; Kaplan, J. O. Ensemble Projections of Wildfire
456
Activity and Carbonaceous Aerosol Concentrations over the Western United States in the Mid-
457
21st
458
https://doi.org/10.1016/j.atmosenv.2013.06.003.
Century.
Atmos.
Environ.
2013,
77,
767–780.
459
(25) Barbero, R.; Abatzoglou, J. T.; Larkin, S.; Kolden, C. A.; Stocks, B. Climate Change
460
Presents Increased Potential for Very Large Fires in the Contiguous United States. Int. J.
461
Wildland Fire 2015, 24 (7), 892–899. https://doi.org/10.1071/WF15083.
462
(26) Ford, B.; Martin, M. V.; Zelasky, S. E.; Fischer, E. V.; Anenberg, S. C.; Heald, C. L.;
463
Pierce, J. R. Future Fire Impacts on Smoke Concentrations, Visibility, and Health in the
464
Contiguous United States. GeoHealth 2018, 2, 229-247. https://doi.org/10.1029/2018GH000144.
ACS Paragon Plus Environment
22
Page 23 of 28
Environmental Science & Technology
465
(27) Liu, J. C.; Mickley, L. J.; Sulprizio, M. P.; Dominici, F.; Yue, X.; Ebisu, K.; Anderson,
466
G. B.; Khan, R. F. A.; Bravo, M. A.; Bell, M. L. Particulate Air Pollution from Wildfires in the
467
Western
468
https://doi.org/10.1007/s10584-016-1762-6.
US
under
Climate
Change.
Clim.
Change
2016,
138
(3–4),
655–666.
469
(28) Val Martin, M.; Heald, C. L.; Lamarque, J. F.; Tilmes, S.; Emmons, L. K.; Schichtel, B.
470
A. How Emissions, Climate, and Land Use Change Will Impact Mid-Century Air Quality over
471
the United States: A Focus on Effects at National Parks. Atmospheric Chem. Phys. 2015, 15,
472
2805–2823.
473
(29) Hallar, A. G.; Molotch, N. P.; Hand, J. L.; Livneh, B.; McCubbin, I. B.; Petersen, R.;
474
Joseph Michalsky; Lowenthal, D.; Kunkel, K. E. Impacts of Increasing Aridity and Wildfires on
475
Aerosol Loading in the Intermountain Western US. Environ. Res. Lett. 2017, 12 (1), 014006.
476
https://doi.org/10.1088/1748-9326/aa510a.
477
(30) Brey, S. J.; Ruminski, M.; Atwood, S. A.; Fischer, E. V. Connecting Smoke Plumes to
478
Sources Using Hazard Mapping System (HMS) Smoke and Fire Location Data over North
479
America. Atmos Chem Phys 2018, 18 (3), 1745–1761. https://doi.org/10.5194/acp-18-1745-2018.
480
(31) Theil, H. A Rank-Invariant Method of Linear and Polynomial Regression Analysis. I.
481
Nederl Akad Wetensch Proc 1950, 53, 386–392.
482
(32) Lassman, W.; Ford, B.; Gan, R. W.; Pfister, G.; Magzamen, S.; Fischer, E. V.; Pierce, J.
483
R. Spatial and Temporal Estimates of Population Exposure to Wildfire Smoke during the
484
Washington State 2012 Wildfire Season Using Blended Model, Satellite, and In-Situ Data.
485
GeoHealth 2017, 1, 106-121. 2017GH000049. https://doi.org/10.1002/2017GH000049.
ACS Paragon Plus Environment
23
Environmental Science & Technology
Page 24 of 28
486
(33) Janssen, S.; Dumont, G.; Fierens, F.; Mensink, C. Spatial Interpolation of Air Pollution
487
Measurements Using CORINE Land Cover Data. Atmos. Environ. 2008, 42 (20), 4884–4903.
488
https://doi.org/10.1016/j.atmosenv.2008.02.043.
489
(34) Jerrett, M.; Burnett, R. T.; Ma, R.; Pope, C. A. I.; Krewski, D.; Newbold, K. B.;
490
Thurston, G.; Shi, Y.; Finkelstein, N.; Calle, E. E.; et al. Spatial Analysis of Air Pollution and
491
Mortality
492
https://doi.org/10.1097/01.ede.0000181630.15826.7d.
493 494
in
Los
Angeles.
Epidemiology
2005,
16
(6),
727.
(35) Ruminski, M.; Kondragunta, S.; Draxler, R. R.; Zeng, J. Recent Changes to the Hazard Mapping System, 2006.
495
(36) Rolph, G. D.; Draxler, R. R.; Stein, A. F.; Taylor, A.; Ruminski, M. G.; Kondragunta, S.;
496
Zeng, J.; Huang, H.-C.; Manikin, G.; McQueen, J. T.; et al. Description and Verification of the
497
NOAA Smoke Forecasting System: The 2007 Fire Season. Weather Forecast. 2009, 24 (2), 361–
498
378. https://doi.org/10.1175/2008WAF2222165.1.
499
(37) Gelaro, R.; McCarty, W.; Suárez, M. J.; Todling, R.; Molod, A.; Takacs, L.; Randles, C.
500
A.; Darmenov, A.; Bosilovich, M. G.; Reichle, R.; Wargan, K.; Coy, L.; Cullather, R.; Draper,
501
C.; Ankella, S.; Buchard, V.; Conaty, A.; da Silva, A.; Gu, W.; Kim, G.; Koster, R.; Lucchesi,
502
R.; Merkova, D.; Nielsen, J. E.; Partyka, G.; Pawson, S.; Putman, W.; Reineker, M.; Schubert, S.
503
D.; Sienkiewicz, M.; Zhao, B. The Modern-Era Retrospective Analysis for Research and
504
Applications,
505
https://doi.org/10.1175/JCLI-D-16-0758.1.
Version
2
(MERRA-2).
J.
Clim.
2017,
30
(14),
5419–5454.
506
(38) Olivier, J. G. J.; Bouwman, A. F.; Van der Maas, C. W. M.; Berdowski, J. J. M. Emission
507
Database for Global Atmospheric Research (EDGAR): Version 2.0. In Studies in Environmental
ACS Paragon Plus Environment
24
Page 25 of 28
Environmental Science & Technology
508
Science; Zwerver, S., van Rompaey, R. S. A. R., Kok, M. T. J., Berk, M. M., Eds.; Climate
509
Change Research; Elsevier, 1995; Vol. 65, pp 651–659. https://doi.org/10.1016/S0166-
510
1116(06)80262-1.
511
(39) van der Werf, G. R.; Randerson, J. T.; Giglio, L.; Collatz, G. J.; Mu, M.; Kasibhatla, P.
512
S.; Morton, D. C.; DeFries, R. S.; Jin, Y.; van Leeuwen, T. T. Global Fire Emissions and the
513
Contribution of Deforestation, Savanna, Forest, Agricultural, and Peat Fires (1997–2009). Atmos
514
Chem Phys 2010, 10 (23), 11707–11735. https://doi.org/10.5194/acp-10-11707-2010.
515
(40) Louis, G.; Randerson James T.; Werf Guido R. Analysis of Daily, Monthly, and Annual
516
Burned Area Using the Fourth‐generation Global Fire Emissions Database (GFED4). J.
517
Geophys. Res. Biogeosciences 2013, 118 (1), 317–328. https://doi.org/10.1002/jgrg.20042.
518
(41) David, L. M.; Ravishankara, A. R.; Kodros, J. K.; Pierce, J. R.; Venkataraman, C.;
519
Sadavarte, P. Premature Mortality Due to PM2.5 over India: Effect of Atmospheric Transport
520
and Anthropogenic Emissions. GeoHealth 0 (ja). https://doi.org/10.1029/2018GH000169.
521
(42) Ford, B.; Heald, C. L. Aerosol Loading in the Southeastern United States: Reconciling
522
Surface and Satellite Observations. Atmos Chem Phys 2013, 13 (18), 9269–9283.
523
https://doi.org/10.5194/acp-13-9269-2013.
524
(43) Pye, H. O. T.; Liao, H.; Wu, S.; Mickley, L. J.; Jacob, D. J.; Henze, D. K.; Seinfeld, J. H.
525
Effect of Changes in Climate and Emissions on Future Sulfate-Nitrate-Ammonium Aerosol
526
Levels
527
https://doi.org/10.1029/2008JD010701.
in
the
United
States.
J.
Geophys.
Res.
Atmospheres
ACS Paragon Plus Environment
25
2009,
114
(D1).
Environmental Science & Technology
Page 26 of 28
528
(44) Shah, V.; Jaeglé, L.; Thornton, J. A.; Lopez-Hilfiker, F. D.; Lee, B. H.; Schroder, J. C.;
529
Campuzano-Jost, P.; Jimenez, J. L.; Guo, H.; Sullivan, A. P.; et al. Chemical Feedbacks Weaken
530
the Wintertime Response of Particulate Sulfate and Nitrate to Emissions Reductions over the
531
Eastern
532
https://doi.org/10.1073/pnas.1803295115.
United
States.
Proc.
Natl.
Acad.
Sci.
2018,
115
(32),
8110–8115.
533
(45) Zhu, L.; Val Martin, M.; Gatti, L. V.; Kahn, R.; Hecobian, A.; Fischer, E. V.
534
Development and Implementation of a New Biomass Burning Emissions Injection Height
535
Scheme (BBEIH v1.0) for the GEOS-Chem Model (v9-01-01). Geosci. Model Dev. 2018, 11
536
(10), 4103–4116. https://doi.org/https://doi.org/10.5194/gmd-11-4103-2018.
537
(46) van der Werf, G. R.; Randerson, J. T.; Giglio, L.; van Leeuwen, T. T.; Chen, Y.; Rogers,
538
B. M.; Mu, M.; van Marle, M. J. E.; Morton, D. C.; Collatz, G. J.; et al. Global Fire Emissions
539
Estimates during 1997-2016. 2017, 9 (2), 697–720. https://doi.org/10.5194/essd-9-697-2017.
540
(47) Koplitz, S. N.; Nolte, C. G.; Pouliot, G. A.; Vukovich, J. M.; Beidler, J. Influence of
541
Uncertainties in Burned Area Estimates on Modeled Wildland Fire PM2.5 and Ozone Pollution
542
in
543
https://doi.org/10.1016/j.atmosenv.2018.08.020.
the
Contiguous
U.S.
Atmos.
Environ.
2018,
191,
328–339.
544
(48) Shrivastava, M.; Cappa, C. D.; Fan, J.; Goldstein, A. H.; Guenther, A. B.; Jimenez, J. L.;
545
Kuang, C.; Laskin, A.; Martin, S. T.; Ng, N. L.; et al. Recent Advances in Understanding
546
Secondary Organic Aerosol: Implications for Global Climate Forcing. Rev. Geophys. 2017, 55
547
(2), 509–559. https://doi.org/10.1002/2016RG000540.
548
(49) Blanchard, C. L.; Hidy, G. M.; Tanenbaum, S.; Edgerton, E. S.; Hartsell, B. E. The
549
Southeastern Aerosol Research and Characterization (SEARCH) Study: Temporal Trends in Gas
ACS Paragon Plus Environment
26
Page 27 of 28
Environmental Science & Technology
550
and PM Concentrations and Composition, 1999–2010. J. Air Waste Manag. Assoc. 2013, 63 (3),
551
247–259. https://doi.org/10.1080/10962247.2012.748523.
552
(50) Attwood, A. R.; Washenfelder, R. A.; Brock, C. A.; Hu, W.; Baumann, K.;
553
Campuzano‐Jost, P.; Day, D. A.; Edgerton, E. S.; Murphy, D. M.; Palm, B. B.; et al. Trends in
554
Sulfate and Organic Aerosol Mass in the Southeast U.S.: Impact on Aerosol Optical Depth and
555
Radiative
556
https://doi.org/10.1002/2014GL061669.
Forcing.
Geophys.
Res.
Lett.
2014,
41
(21),
7701–7709.
557
(51) Lindaas, J.; Farmer, D. K.; Pollack, I. B.; Abeleira, A.; Flocke, F.; Roscioli, R.; Herndon,
558
S.; Fischer, E. V. Changes in Ozone and Precursors during Two Aged Wildfire Smoke Events in
559
the Colorado Front Range in Summer 2015. Atmospheric Chem. Phys. 2017, 17 (17), 10691–
560
10707. https://doi.org/https://doi.org/10.5194/acp-17-10691-2017.
561
(52) Wettstein, Z. S.; Hoshiko, S.; Fahimi, J.; Harrison, R. J.; Cascio, W. E.; Rappold, A. G.
562
Cardiovascular and Cerebrovascular Emergency Department Visits Associated With Wildfire
563
Smoke Exposure in California in 2015. J. Am. Heart Assoc. 2018, 7 (8).
564
(53) Ford, B.; Burke, M.; Lassman, W.; Pfister, G.; Pierce, J. R. Status Update: Is Smoke on
565
Your Mind? Using Social Media to Assess Smoke Exposure. Atmos Chem Phys 2017, 17 (12),
566
7541–7554. https://doi.org/10.5194/acp-17-7541-2017.
567
568
Table of Contents Graphic
ACS Paragon Plus Environment
27
Environmental Science & Technology
Non-smoke PM2.5 Trend
569
Smoke PM2.5 Trend
Total PM2.5 Trend
Change in summer PM2.5 per year (2006 – 2016)
ACS Paragon Plus Environment
28
Page 28 of 28