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A Call for an Aloft Air Quality Monitoring Network: Need, Feasibility, and Potential Value Rohit Mathur, Christian Hogrefe, Amir Hakami, Shunliu Zhao, James Szykman, and Gayle Hagler Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.8b02496 • Publication Date (Web): 04 Sep 2018 Downloaded from http://pubs.acs.org on September 6, 2018
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A Call for an Aloft Air Quality Monitoring Network: Need, Feasibility, and Potential Value
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Rohit Mathur1*, Christian Hogrefe1, Amir Hakami2, Shunliu Zhao2, James Szykman1, Gayle Hagler1
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National Exposure Research Laboratory, Office of Research and Development, U.S. Environmental Protection Agency, RTP, NC, USA 2 Department of Civil and Environmental Engineering, Carleton University, Ottawa, Canada
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*
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Abstract: Changing precursor emission patterns in conjunction with stringent health protective
10
air quality standards, necessitate accurate quantification of non-local contributions to ozone
11
pollution at a location due to atmospheric transport, that by nature predominantly occurs aloft
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nocturnally. Concerted efforts to characterize ozone aloft on a continuous basis to quantify its
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contribution to ground-level concentrations however are lacking. Applying our classical
14
understanding of air pollution dynamics to analyze variations in widespread surface-level ozone
15
measurements, in conjunction with process-based interpretation from a comprehensive air
16
pollution modeling system and detailed backward-sensitivity calculations that quantitatively link
17
surface-level and aloft pollution, we show that accurate quantification of the amount of ozone in
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the air entrained from aloft every morning as the atmospheric boundary layer grows is the key
19
missing component for characterizing background pollution at a location, and propose a cost-
20
effective continuous aloft ozone measurement strategy to address critical scientific gaps in
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current air quality management. Continuous aloft air pollution measurements can cost-effectively
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be achieved through leveraging advances in sensor technology and proliferation of tall
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telecommunications masts. Resultant improvements in ozone distribution characterization at
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400-500m altitude are estimated to be 3-4 times more effective in characterizing the surface-
25
level daily maximum 8-hour average ozone (DM8O3) than improvements from surface
26
measurements since they directly quantify the amount of pollution imported to a location, and
27
furnish key-missing information on processes and sources regulating background ozone and its
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modulation of ground-level concentrations. Since >80% of the DM8O3 sensitivity to
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tropospheric ozone is potentially captured through measurements between 200-1200m altitude (a
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possible design goal for future remote sensing instrumentation), their assimilation will
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dramatically improve air quality forecast and health advisories.
Correspondence to: Rohit Mathur (
[email protected])
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Introduction
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Information on the state of the atmosphere inferred from ground-based air quality monitoring
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networks has played a central role in characterizing and improving air quality in many parts of
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the world. For instance, the Air Quality System (AQS) (1) which contains ambient concentration
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measurements of criteria air pollutants, collected by EPA, state, local, and tribal air quality
38
agencies, has helped to identify areas where current air quality is unacceptable as well as to
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prevent deterioration in areas where air is relatively free of contamination. Trends in ground-
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level ozone (O3) design values (i.e., the three-year average of the annual 4th highest daily
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maximum 8-hour average O3 mixing ratio) show significant reductions resulting from
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implementation of control measures and technological advances that have reduced emissions of
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NOx and volatile organic compounds (VOCs) precursor species across the U.S. (2). However, as
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air quality standards have tightened from a 1-hour averaged concentration to an 8-hour averaged
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concentration with a lower threshold value, more rural and suburban regions have fallen into
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non-attainment (3), emphasizing the need to quantify the contributions of long-range air
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pollutant transport to local air quality.
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At most land-based locations, ground-level O3 exhibits a characteristic, well-recognized diurnal
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cycle (4) with a typical mid-afternoon maximum and a night-time minimum that arises from
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diurnal variations in activity patterns of precursor emission sources, the atmospheric boundary
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layer, and photo-chemistry in the atmosphere. Surface deposition, titration by NO emissions, and
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the lack of chemical production in a shallow inversion layer which decouples O3 at the ground
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from upper levels, lead to the night-time suppression of ground-level O3. The break-up of the
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nocturnal inversion, entrainment of O3-rich air from above and onset of O3 production via
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photochemical reactions involving NOx and VOC precursor species, result in increase in O3
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levels in the morning hours leading to afternoon peak values that then decline as the sun sets and
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chemical production declines.
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Influence of Aloft Air Pollution on Surface Concentrations
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The classical view of diurnal O3 variations can alternatively be examined as a rate of change (or
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tendency) in the ground-level O3, and comprehensive atmospheric chemistry-transport models 2
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can be instrumented to provide a quantitative view of the relative importance of the various
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atmospheric dynamical and chemical process in shaping this diurnal evolution of O3 mixing
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ratios. As an example, Figure 1 presents representative summer-time diurnal variations in median
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process tendencies regulating ground-level O3 for the contiguous U.S., simulated by the
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Community Multiscale Air Quality (CMAQ) modeling system (5). While O3 mixing ratios
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typically peak around mid-day to early afternoon, the rate of increase in ground-level O3 is
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highest in the morning hours and peaks around 9:00 am local time; similar variations are also
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seen in ground-level O3 measurements (Figure 1, inset A). Also shown in Figure 1 are the model
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estimates for rate of change of O3 due to the dominant atmospheric processes. Turbulent mixing
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and chemical production contribute to the accumulation of O3 at the surface, while dry
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deposition is the dominant sink. The net vertical O3 flux at the surface is dictated by the turbulent
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mixing responding to the evolution of the planetary boundary layer and dry deposition at the
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earth’s surface. This vertical flux is positive in the morning, and is the dominant contributor to
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the net increasing O3 tendency during the morning period, indicative of the prominent
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contribution of O3 trapped in the nocturnal residual layer aloft to daytime ground-level O3. The
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magnitude of the net O3 tendency during the morning period varies spatially and is smaller at
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locations influenced by fresh NO traffic emissions that titrate O3 as it is entrained from aloft
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(Figure 1, inset B).
81 82
In its simplest form, ground-level O3 mixing ratios at any given location can thus be considered
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to be comprised of an in-situ component determined from local source/sink balance, and a local
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background component representing non-local O3 that was transported to that location. Intrinsic
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to the concept of background concentrations is a space and time-scale so that it can be expected
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to vary both spatially and temporally (6). In actuality the background O3 at any location is
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comprised of O3 photo-chemically produced upwind as well as a natural component that
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originated in the stratosphere. If background concentration for a geographic region is defined as
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the concentration attributable to sources (natural or anthropogenic) outside of the region, then the
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hemispheric O3 background influences the regional background which in turn influences a local
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background. Thus, understanding the origin of ground-level O3 at a location, requires not only an
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accurate description of its local sources and sinks but also an accurate attribution of the
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background over the different space and time scales. Though air masses are advected to a 3
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location through the course of a day, the significantly larger contribution of O3 in the air
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entrained from above during the morning hours as the nocturnal inversion breaks up, can be
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considered to be the starting point (or background) on which the in-situ component builds to
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shape that day’s peak O3.
98 99
It can thus be argued that accurate characterization of this nocturnal aloft O3 is key for
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quantifying the impacts of regional to continental scale transport of O3 on ground-level O3
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mixing ratios. The recognition of such a relationship between ozone storage in the residual layer
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overnight and evolution of near-surface O3 on the following day is not new. Neu et al. (7) using
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a model based on transilient turbulence theory and initialized using vertical profiles from
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tethered balloon soundings, estimated that 50-70% of the maximum near-surface O3 levels were
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mixed down from the previous night’s residual layer. Using a simple one-dimensional model,
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Zhang and Rao (8) showed that entrainment of O3 rich air from aloft contributed to ground-level
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O3 buildup. Through complementary analysis of continuous vertical measurements at a tall tower
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and results from a comprehensive atmospheric model, Aneja et al. (9) illustrated strong
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correlations between nocturnal O3 in the residual layer aloft and ground-level maximum O3 the
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following afternoon. In spite of this well-acknowledged vertical coupling of ground-level
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daytime O3 with its nocturnal component in the aloft residual layer, and the need to quantify it on
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a routine basis for areas not attaining the National Ambient Air Quality Standard (NAAQS),
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little coordinated effort to date has been devoted towards measuring and characterizing regional
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nocturnal O3 distributions aloft (10).
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Changing emission patterns across the globe (11) are now necessitating an improved
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characterization of long-range air pollution transport, which by nature occurs aloft. Based on
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Figure 1, if we assume that the rate of change of ground-level O3 during the morning hours
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(8:00-9:00 am) is indicative of the influence of the aloft O3 reservoir on ground-level O3, then
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long-term trends in this morning-time O3 tendency could be suggestive of changes in this
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reservoir influenced in turn by changes in local, regional, and hemispheric scale O3 distributions.
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Figure 2 presents this inferred change in seasonal aloft-O3 entrainment rates over the 1990-2010
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period using hourly measurements at monitors from the Clean Air Status Trends Network
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(CASTNET; https://www.epa.gov/castnet). The directionality of these observed trends (Figures 4
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2a and b) is generally consistent with previous analysis of trends of surface-level O3 distributions
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(11-13), with decreases at most locations in the eastern U.S. indicative of reductions in
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tropospheric O3 from emission reductions, but a contrasting increasing trend at many monitoring
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sites in the western U.S. attributed to increasing O3 in air masses entering the western boundaries
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of the U.S. Figure 2 also suggests that the spatial distribution of the O3 reservoir in the residual
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layer has changed and will continue to change in response to changes in local and global
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emissions and any climate-driven changes in stratosphere-troposphere exchange. Also shown in
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Figures 2c and 2d are the corresponding changes in seasonal aloft O3 entrainment rates inferred
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from multi-decadal simulations with the CMAQ model (14). Comparison of model and observed
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trends in these entrainment rates show discrepancies both in magnitude and direction at several
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locations especially in the western U.S. Availability of continuous aloft O3 measurements would
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help better assess the ability of current models in representing the aloft O3 reservoir and
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constrain modeled entrainment rates, thereby improving confidence in model estimates of spatial
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and temporal variations in background O3 pollution.
139 140
As local precursor emissions (and consequently the in-situ chemical O3 production) change, the
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relative importance of the local background to NAAQS attainment increases. Consequently,
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measurements that can help assess changes in this component and enable robust evaluation of the
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abilities of regional and global scale model in representing it are needed to build confidence in
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the resulting inferences on source attribution. Satellite measurements from instruments such as
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the Tropospheric Emission Spectrometer (TES) are now providing new perspectives on large
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scale tropospheric O3 distributions (15) but the relatively coarse vertical resolution (~6-7 km) is
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inadequate to quantify O3 in the nocturnal residual layer. Aircraft (16) and balloon based
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measurements (17) have provided useful information on the vertical O3 structure from the
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surface to the stratosphere but are resource intensive and impractical for establishing a long-term
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record of O3 in the residual layer over regional scales. Ground based ozone lidars can provide
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high temporal resolution of the vertical structure of O3 in the troposphere (18), but are expensive
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to deploy continuously to cover a region such as the contiguous U.S.
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A Cost-effective Aloft Air Pollution Monitoring Strategy for Now
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Past efforts at instrumenting tall towers with O3 monitors have yielded valuable insights on the
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diurnal variations in vertical O3 distributions. Resources associated with installation and
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maintenance of long sampling lines have most likely been a deterrent to the long-term operation
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of these limited efforts. Nevertheless, analysis of limited measurements from such platforms (9)
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have provided compelling indication of the dependence of maximum ground-level O3 on
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nocturnal residual layer amounts, and consequently the potential value of in-situ continuous aloft
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measurement of the residual layer O3. Additional observations from emerging remote sensing
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platforms, higher frequency ozonesonde launches, expansion of a ground-based lidar network,
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and commercial aircrafts will provide valuable information on the large-scale processes dictating
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baseline O3 (19) and in describing specific episodic cases, but may still not provide adequate
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constraints to accurately represent and forecast the day to day variability in ground-level O3.
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Continuous O3 measurements at an altitude of 400-500m above ground level will help directly
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link the variability in ground level O3 at a location with the transported (or local background)
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component since a direct measurement of the amount of O3 entrained to the surface will be
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available. An appropriately spaced network of such measurements could then provide the vital
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missing information on regional-scale nocturnal transport aloft that links surface measurements
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with the larger scale free-troposphere column information, as well as a key measurement to
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evaluate and improve the source attribution models.
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Advances in air pollution monitoring technologies have recently yielded compact and low-power
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instrumentation that accurately measure ambient ozone. Technological advances are also now
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making available powerful microprocessors with low power draw and high on-board memory
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storage, low power cellular modems, increased cellular communications coverage, and lower
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cost solar panels to power such an instrument package. Together, these technology shifts are
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already generating a significant change in the spatial and temporal availability of surface air
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monitoring data (20). Compact air monitoring systems, with self-contained power and wireless
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data communications, can allow for nearly autonomous monitoring in remote areas, such as tall
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towers, and circumvent the need to run long power cables or sampling lines that hindered
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previous efforts. Jiao et al. (21) demonstrated that a solar-powered UV absorbance-based
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compact ozone monitor was able to provide accurate readings, despite frequent power cycling
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and operation in an environment without controlled temperature or humidity. Similar 6
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instrumentation deployed on the top of tall building in Hong Kong was also shown to provide
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accurate data even after being subjected to frequent power cycling, subtropical conditions, and
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several major weather events (22), suggesting the feasibility of an instrument package that could
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provide reliable measurements over a long-term in an autonomous manner.
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The proliferation of tall telecommunication and broadcasting masts and towers across the world
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provide an existing set of platforms to possibly host such compact, autonomous, high accuracy
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O3 (and in future other species) sensors. Figure 3 presents the summer-average e-folding distance
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(23, 24) for night time O3 distributions (representative of spatial scales over which O3 mixing
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ratios are correlated) at the ground and an altitude of 400-500m based on O3 distributions
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simulated by CMAQ. Expectedly, the e-folding distances increase with altitude, with values of
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200 km or greater at altitude of 400-500m AGL. This implies that a potential monitoring network
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grid of 21 x 13 (east-west x north-south) with a separation of about 200 km could provide a
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complete view of the spatial distribution of nocturnal O3 in the residual layer aloft over the
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contiguous U.S. This possible continuous record of O3 measurements aloft would for the first
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time provide a comprehensive view of nocturnal O3 transport aloft and furnish key missing
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information to evolve our understanding of the processes and sources regulating background O3,
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it’s spatial and temporal variability, and most importantly it’s modulation of ground-level O3 and
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consequent impacts on human and ecological health.
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Potential Benefits of Improved Aloft Characterization for Managing Air Quality
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The expected impacts of accurately quantifying aloft O3 for improved surface-level daily
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maximum 8-hour average O3 (DM8O3) characterization is demonstrated through detailed
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calculations with the CMAQ-Adjoint model (25) (see supplementary material: CMAQ-Adjoint).
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Note that since the adjoint calculations are computationally intensive, for demonstration
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purposes we limit the domain size to the southeastern U.S. Figure 4 illustrates the backward
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(adjoint) sensitivity of surface DM8O3 > 70ppb (current O3 NAAQS) to a possible 1 ppb change
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in characterization of O3 at different altitudes. These simulations for the 1-14 July, 2011 period
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are representative of typical current summertime conditions over the southeastern U.S. As is
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evident from comparison of Figures 4a and 4b, DM8O3 is 3-4 times more sensitive (and over
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larger spatial regions) to O3 distributions at 400-500m than that at the surface, implying that
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measurements that help better characterize O3 aloft would yield far greater benefit than 7
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enhancements to the surface networks. Removal of O3 by dry deposition and titration by fresh
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NOx emissions (Figure 1) result in shorter O3 lifetime at the surface and thus the smaller
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sensitivity. As local NOx emissions decline, the O3 transported nocturnally in the residual layer
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to a region and entrained to the surface, becomes a more significant contributor to the DM8O3.
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Figure 4c presents the cumulative DM8O3 sensitivity over the study domain and period to O3 at
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different altitudes of the model troposphere and suggests that about 80% of the DM8O3
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sensitivity could be captured by improved characterization of O3 distributions between 200-
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1200m. Thus, future remote sensing instruments that have greatest sensitivity within this altitude
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range would yield maximum benefits in improving surface-level O3 (and possibly other criteria
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pollutants) air quality characterization. As compact, low power draw, and reliable NOx sensors
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become available additional DM8O3 improvements can also be realized through improvements
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in aloft NOx characterization (Figure S2).
229 230
The potential benefits of deploying an aloft air quality monitoring network based on the
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relatively simple idea outlined above can be tested immediately. A relatively good density of tall
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masts (height > 400m) used by broadcasting companies already exists in the U.S. (especially the
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eastern U.S., see Figure 3) and other parts of the world. With an estimated cost of ~$5,000-6,000
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in materials for a rugged monitoring system that includes a UV absorbance-based O3 instrument
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(~$3500), and supporting equipment (~$1500) including a microprocessor, solar panel and
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battery power, celluar modem for data communications, and weather-proof enclosure, the
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deployment of a few hundred monitoring systems on existing masts could be achieved with a
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relatively modest (and low compared to other conventional vertical profiling techniques) capital
239
investment. Public-private partnerships between Federal, State and private broadcasting
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organizations could be pursued to help with the deployment and maintenance of this aloft
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network. These continuous O3 measurements could be assimilated into comprehensive
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atmospheric models in real-time to develop reliable next-day air quality forecast to guide public
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health warning and promote restrictive actions (e.g., agricultural burn decisions). Data from the
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network could also guide episodic deployment of lidars in networks such as TOLNet
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(http://www-air.larc.nasa.gov/missions/TOLNet) to capture the detailed three-dimensional O3
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structure and transport over large regions. Aloft measurements of air pollution in conjunction
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with measurements of diurnal evolution of mixing heights (26) planned at several Photochemical 8
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Assessment Monitoring Stations (PAMS) would help constrain and improve model
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representation of vertical pollutant transport and consequently surface-level background
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pollution. These data can also be used to guide constrained observing system simulation
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experiments (OSSE) to further refine the aloft network configuration.
252 253
Compared to other factors influencing environmental quality (land, water, built environment,
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sociodemographic), human exposure to air pollution exhibits the strongest association with all-
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cause and cause-specific (heart disease, cancer) mortality (27). While significant improvements
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in air quality have occurred in the U.S., studies suggest that still more than half of the population
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is exposed to unhealthy levels of particle and ozone pollution (28), point to adverse health effects
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from to exposure to O3 and PM2.5 concentrations below current NAAQS (29), and recommend
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air quality standards lower than the current (30). Implementation of the current NAAQS and
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future revisions would greatly benefit from improvements in our understanding of background
261
pollution levels. Measurements of air pollution in the residual layer will provide key missing
262
information on regional air pollution transport that is prominent at night, regulates the local
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background pollution, influences subsequent day peak values, and helps connect the variability
264
in ground-level pollution with larger scale pollution features that descend from the free
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troposphere. Technological advances in air sensor development coupled with the availability of a
266
platform in the form of tall telecommunications and broadcasting masts, provide a timely and
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unique opportunity for deployment of a cost effective aloft air quality monitoring network whose
268
value can be immediately tested. Continuous measurements of air pollution aloft from such a
269
network hold potential to provide vital information for quantifying and accounting for
270
background air pollution when designing and implementing air quality standards.
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Disclaimer: The views expressed in this paper are those of the authors and do not necessarily represent the view or
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policies of the U.S. Environmental Protection Agency.
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Acknowledgements: We thank Thomas Pierce and Nealson Watkins for constructive comments and suggestions on
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initial versions of this manuscript. We gratefully acknowledge pioneering efforts by the North Carolina Department
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of Environmental Quality in instrumenting and making available data from a tall tower, analysis and use in
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modeling of which served as motivation for this contribution.
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Notes: The authors declare no competing financial interest.
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Petetin, H.; Thourer, V.; Athier, G.; Blot, R.; Boulanger, D.; Cousin, J.M.; Gaudel, A.; Nedelec, P.; Cooper, O.
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commercial aircraft. Elem Sci Anth. 2016, 4,129, doi: http://doi.org/10.12952/journal.elementa.000129.
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Kuang, S.; Newchurch, M.J.; Burris, J.; Wang, L.; Buckley, P. I.; Johnson, S.; Knupp, K.; Huang, G.; Phillips,
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Cooper, O.R.; Langford, A.O.; Parrish, D.D.; Fahey, D.W. Challenges of a lowered U.S. ozone standard. Science 2015, 348, 1096-1097, doi:10.1126/science.aaa5748.
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Figure 1: Diurnal variation of CMAQ estimated O3 process tendencies regulating variations in ground-level O3.
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Values shown are median values (of July 2010 monthly average diurnal variations) across all Continental U.S. land
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cells. CHEM represents the net rate of change due to atmospheric chemical production and loss, DDEP is the rate of
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change due to dry deposition to the earth’s surface, Mixing represents the rate of change due to turbulent mixing,
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and Net is the sum of tendencies from all modeled processes regulating O3. Note that the values for the Mixing and
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DDEP terms are shown on the y-axis on the right. Inset A: Comparison of model and observed average (for July
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2010 and across all AQS sites in the Continental U.S) diurnal surface O3 tendency. Inset B: Distribution of model
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O3 tendency across all land cell across the Continental U.S. The lower percentile curve represents locations
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influenced by fresh NOx emissions as is evident by the large negative tendency associated with the evening traffic
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rush hours. Traffic related NOx emissions in the morning rush hours result in titration of O3 entrained from aloft and
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the consequent smaller magnitude of O3 tendency at these locations.
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Figure 2: Inferred changes in seasonal entrainment rates of aloft O3 to the surface over the past two decades. Trends
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in observed average 8-9 am ground-level O3 tendency in units of ppb hr-1 yr-1 during 1990-2010 at CASTNET
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monitoring locations are shown for (a) Spring (March-May) and (b) Summer (June-August). (c and d) same as (a
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and b) but based on model simulations. The hourly tendency at each monitor is estimated as the difference in
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measured O3 at an hour and at the previous hour. Seasonal-averages of the estimated tendencies at 8:00am and 9:00
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am (times when the net O3 tendency peak) are computed for each year and the trends for the 21-year period are
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shown. Squares indicate high-elevation sites (altitude > 1000m ASL), while circles represent sites with altitude
400 m) based on the list of tallest structures between 400-500m height available at:
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https://en.wikipedia.org/wiki/ List_of_tallest_structures_%E2%80%93_400_to_500_metres.
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folding distance, for a given model altitude, we first calculate the correlation between the synoptic component of the
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0700 UTC O3 time series at a grid point with that at each of the other grid points. For each location we then examine
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the relationship between this correlation and the distance between the points (Note that the relationship between
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correlation and distance generally follows an exponential decline). The e-folding distance at a location is the
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distance at which correlations in O3 at this location with that at any remote location drops below 0.37. The e-folding
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distance is thus an indicator of spatial correlation in the O3 field. 16
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Figure 4: Adjoint sensitivity of surface-level daily maximum 8-hour average O3 >70ppb (DM8O3) across the
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southeastern U.S. during 1-14 July, 2011. Estimated potential change in simulated DM8O3 (in ppb) due to (a) a 1
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ppb change in representation of O3 at the surface (0-20m) and (b) a 1 ppb change in representation of O3 at 400-
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500m altitude. (c) Sensitivity of DM8O3 across the southeastern U.S. to O3 at different altitudes expressed as percent
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of total sensitivity integrated through the model depth (in blue). Also shown in red is the cumulative sensitivity of
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DM8O3 as function of height. Measurements characterizing O3 distribution at 200-1200 m altitude (shaded region)
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would yield greatest benefit in improving DM8O3 predictions via data assimilation.
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Supplementary Materials for
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3
A Call for an Aloft Air Quality Monitoring Network: Need and Feasibility
4 5
Rohit Mathur1, Christian Hogrefe1, Amir Hakami2, Shunliu Zhao2, James Szykman1, Gayle Hagler1
2
6 7 8
1
9
Correspondence to: Rohit Mathur (
[email protected])
National Exposure Research Laboratory, Office of Research and Development, U.S. Environmental Protection Agency, RTP, NC, USA 2 Department of Civil and Environmental Engineering, Carleton University, Ottawa, Canada
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Community Multiscale Air Quality (CMAQ) Model
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CMAQ is a comprehensive air pollution modeling system that simulates air quality on scales
12
ranging from urban to hemispheric. The model includes detailed representation of processes
13
(emissions, atmospheric chemistry, transport, removal) regulating the fate of airborne pollutants.
14
Information on the dynamical state of the atmosphere is typically derived from simulations of the
15
Weather Research and Forecast (WRF) meteorological model. The model code, documentation,
16
and extensive peer-reviewed literature on model processes, algorithms, applications, and
17
evaluation are publicly available at: https://www.epa.gov/cmaq. The modeling system is widely
18
used for air pollution research and regulatory applications across the world.
19 20
CMAQ-Adjoint
21
A comparative analysis of the influence of ozone concentrations at the surface and aloft on
22
DM8O3 is conducted using an adjoint version of the CMAQ model (23). An adjoint model solves
23
an auxiliary set of sensitivity equations that mimic and are linked to the model’s governing
24
equations. Unlike the base CMAQ model, the adjoint equations are integrated backward in time,
25
and in doing so they trace influences on a scalar concentration function (often referred to as the
26
adjoint cost or objective function) back to concentrations and sources at preceding model time
27
steps. Backward integration of adjoint equations follows a forward simulation of the CMAQ
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model during which the required concentrations and model variables at all time steps are saved
29
for use in the adjoint simulation. The advantage of the adjoint sensitivities calculated in this
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manner is in their ability to provide time- and location-specific measures of influence on the
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objective function.
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To quantify how surface or aloft concentrations of ozone affect surface DM8O3, the adjoint
34
objective function is defined as the cumulative DM8O3 over a region – depicted by the inner box
35
within the computational domain for these calculations (depicted in Figure S1), for days on
36
which the DM8O3 value exceeds a 70 ppb threshold. A 20-cell margin from the boundary (the
37
inner box in Figure S1) is considered as the target area for this analysis to avoid influences from
38
the lateral boundaries and to better characterize in-domain influences. The calculation of adjoint
39
sensitivities are initially forced at the times and locations where the objective function
40
materializes, in this case hours and cells that comprise MD8O3 exceedances over the target area.
41
The adjoint “forcing” at each location and time then corresponds to the instantaneous sensitivity
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of the objective function to ozone concentration at that location and time. This “forcing” can be
43
considered analogous to emissions for the forward model, since it acts as the “source” of
44
influences that drive the adjoint simulations. These influences are then integrated backward in
45
time through the adjoint system of equations to preceding times and for various modeled
46
processes (transport, chemistry, deposition, etc) at each time step.
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With this definition of the adjoint objective function, the values at each location in Figure 4
49
should be interpreted as the total DM8O3 contributions in ppb (for MD8O3 > 70 ppb) in the
50
target area for any ppb ozone at that location. As such, these values can be taken as a measure of
51
information that ozone observations at various altitudes and locations may carry with regards to
52
characterization of surface-level ozone. Note that calculated adjoint contributions to surface
53
MD8O3 concentrations extend beyond the inner box in Figure S1, as concentrations in these
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upwind locations influence surface concentrations over the target area. Similar adjoint analysis
55
performed to estimate the added value of potential aloft NOx measurements (Figure S2) also
56
suggest significantly larger contributions from aloft NOx levels to regulating DM8O3, than
57
surface values. These results suggest that aloft NOx, either transported from elevated sources, or
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recycled from reservoir species is also influential in regulating surface DM8O3 especially in
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regions away from major NOx emissions. The lower DM8O3 sensitivity to surface NOx
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concentrations arises form O3 destruction from reactions with NO in vicinity of the NOx
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emission sources.
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CMAQ-Adjoint was used to simulate air quality and the backward sensitivities described above,
64
over a domain covering the southeastern U.S. (depicted in Figures 4 and S1) discretized with a
65
horizontal grid of 12km resolution, for the July 1-14, 2011 period. The adjoint version of CMAQ
66
used here includes all gas-phase chemistry, transport, removal processes relevant for
67
representing
68
(https://www.epa.gov/cmaq/cmaq-models-0).
69
Carbon Bond 5 (CB05) chemical mechanism which includes 187 chemical reactions amongst 72
70
gaseous species (5). The vertical extent from the surface to 50hPa was discretized with 35 layers
71
of variable thickness. Meteorological fields were derived from simulations with the Weather
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Research and Forecast (WRF) model, while anthropogenic emissions of various species were
73
based on the 2011 National Emissions Inventory (NEI). 3-D chemical initial fields and boundary
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conditions were derived from previously conducted CMAQ simulations over a larger continental
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domain which have been extensively evaluated against a variety of surface and aloft
76
measurements (5). This CMAQ-adjoint model configuration, domain size and discretization, and
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simulation duration enable an appropriate attribution of the backward sensitivities of surface-
78
level DM8O3 to O3 and precursor levels at various altitudes
tropospheric
O3.
The
adjoint
is
based
on
CMAQv4.5
Gas-phase chemistry is represented using the
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Figure S1: The computational domain for the CMAQ-adjoint simulations. The inner box is the target area over
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which the adjoint objective function is defined.
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Figure S2: Adjoint sensitivity of surface-level daily maximum 8-hour average O3 >70ppb (DM8O3) to NO mixing
84
ratios at different altitudes across the southeastern U.S. during 1-14 July, 2011. Estimated change in simulated
85
DM8O3 (in ppb) due to (a) a 1 ppb change in representation of NO at the surface (0-20m) and (b) a 1 ppb change in
86
representation of NO at 400-500m altitude. Improvements in characterization of NOx mixing ratios aloft would also
87
yield improved predictive capabilities for DM8O3. NOx aloft, either transported from elevated sources or recycled
88
from reservoir species (such as organic nitrates) is also influential in regulating surface DM8O3 in regions away
89
from major surface-level NOx sources. Thus as measurement accuracy of compact, low-cost NOx sensor is
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improved, the proposed aloft network could be enhanced to also provide aloft NOx measurements to improve surface
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O3 predictions.
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