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Identifying ammonia hotspots in China using a national observation network Yuepeng Pan, Shili Tian, Yuanhong Zhao, Lin Zhang, Xiaying Zhu, Jian Gao, Wei Huang, Yanbo Zhou, Yu Song, Qiang Zhang, and Yuesi Wang Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.7b05235 • Publication Date (Web): 02 Mar 2018 Downloaded from http://pubs.acs.org on March 3, 2018
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Identifying ammonia hotspots in China using a national observation network
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Yuepeng Pan*†, Shili Tian†, Yuanhong Zhao‡, Lin Zhang‡, Xiaying Zhu§, Jian Gaoǁ,
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Wei Huang†, Yanbo Zhou†, Yu Song⊥, Qiang Zhang #, Yuesi Wang†
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† State Key Laboratory of Atmospheric Boundary Layer Physics and Atmospheric Chemistry
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(LAPC), Institute of Atmospheric Physics, Chinese Academy of Sciences, Beijing 100029,
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China
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‡ Department of Atmospheric and Oceanic Sciences, School of Physics, Peking University,
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Beijing, 100871, China
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§ National Climate Center, China Meteorological Administration, Beijing 100081, China
12
ǁ
13
Academy of Environmental Sciences, Beijing 100012, China
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⊥ Department of Environmental Science, Peking University, Beijing 100871, China
15
# Ministry of Education Key Laboratory for Earth System Modeling, Center for Earth System
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Science, Tsinghua University, Beijing 100084, China
State Key Laboratory of Environmental Criteria and Risk Assessment, Chinese Research
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Contact author: Yuepeng Pan (
[email protected])
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TOC/Abstract art
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National observation of ammonia in China ACS Paragon Plus Environment
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ABSTRACT
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The limited availability of ammonia (NH3) measurements is currently a barrier to
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understanding the vital role of NH3 in secondary aerosol formation during haze
24
pollution events and prevents a full assessment of the atmospheric deposition of
25
reactive nitrogen. The observational gaps motivated us to design this study to
26
investigate the spatial distributions and seasonal variations in atmospheric NH3 on a
27
national scale in China. Based on a 1-year round observation campaign at 53 sites
28
with uniform protocols, we confirm that abundant concentrations of NH3 [1 to 23.9 µg
29
m−3] were spotted in typical agricultural regions, especially in the North China Plain
30
(NCP). The spatial pattern of the NH3 surface concentration was generally similar to
31
those of the IASI column concentrations as well as a bottom-up agriculture NH3
32
emission inventory. However, observed NH3 concentrations at urban and desert sites
33
were comparable with those from agricultural sites and 2-3 times those of
34
mountainous/forest/grassland/waterbody sites. We also found that NH3 deposition
35
fluxes at urban sites account for only half of the emissions in the NCP, suggesting the
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transport of urban NH3 emissions to downwind areas. This finding provides policy
37
makers with insights into the potential mitigation of non-agricultural NH3 sources in
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developed regions.
39 40
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1. INTRODUCTION
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The intensive human activities of the past decades have significantly affected the
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global nitrogen cycle by fixing N2, both deliberately for fertilizer production and
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inadvertently during fossil fuel combustion 1. Rapid increases in reactive nitrogen
45
emissions to the atmosphere have resulted in serious reactive nitrogen pollution in the
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air and excessive nitrogen deposition in natural ecosystems worldwide 2. To reduce
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these adverse impacts, previous efforts have been made to reduce oxidized nitrogen,
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such as NOx emissions, whereas a reduction in reduced nitrogen, especially in
49
ammonia (NH3) emissions, has not been fully implemented
50
2013, NH3 levels over agricultural regions experienced significant increasing trends
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across the U.S. (2.6% yr−1), the European Union (1.8% yr−1), and China (2.3% yr−1),
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as observed from satellite 5. It is demonstrated that the deposition of reactive nitrogen
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in the U.S. has recently shifted from nitrate-dominated to ammonium-dominated
54
conditions 6, while in China reduced nitrogen plays a key role in atmospheric nitrogen
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deposition, contributing from 71% to 88% of the total depositions in hotspot regions
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such as the North China Plain (NCP) 7.
57
3, 4
. Between 2002 and
In addition, there is increasing evidence indicating the critical role of NH3 in the 3, 8
58
formation of secondary aerosols
59
and related sulfate and nitrate contribute 10% and 35% of the particulate masses
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during haze events 9. The profound role of NH3 on the haze pollution was also
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highlighted by recent studies that argued its capability to neutralize aerosol pH, which
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can strongly enhance the formation of sulfate through the heterogeneous oxidation of
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SO2 by NO2 10. All evidence leads to increasing concerns that future progress toward
64
reducing the nitrogen-related impacts on aerosol pollution and nitrogen deposition
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will be increasingly difficult without a well-resolved spatiotemporal picture of NH3.
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. Extensive observations reveal that ammonium
Compared with the increasing rich datasets of satellite observations of 5, 11, 12
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atmospheric NH3 concentration
68
geographical extent are still lacking
, surface network datasets covering large
13, 14
, especially in China
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15, 16
. To fill the
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observational data gaps, in this study, a year-round campaign was launched to
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measure monthly NH3 by using uniform protocols with a diffusive technique and
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other supporting data across China. The objectives of the present study are to (1)
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identify the hotspots of NH3 in China, (2) explore the variability of atmospheric NH3,
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and (3) present the implications for mitigating NH3 on a national scale. To our
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knowledge, this study represents the first national observations of NH3 in China,
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especially in background regions, setting a baseline against which concentration
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changes resulting from future emission control strategies can be assessed. The data
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collected here are unique and will advance our understanding of atmospheric
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chemistry and related processes. The results will also be valuable for scientists and
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policy makers to estimate excess nitrogen inputs into ecosystems, validate
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atmospheric chemistry and transport models including seasonal trends and regional
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variability.
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2. MATERIALS AND METHODS
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2.1 Ammonia sampling networks
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Accurately measuring NH3 concentrations in the air is not an easy task due to the
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interference of particle-borne ammonium 17. This problem can however be solved by
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utilizing the well-known fact that, when ambient air passes through a tube, gas
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molecules diffuse much more quickly than particles onto the tube wall 18. The main
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disadvantage of this manual sampling method (hereafter referred to as the diffusive
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sampling technique) is its low temporal-resolution when high frequency
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measurements (e.g., hourly) are needed. However, such a simple and cost effective
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technique can increase the spatial resolution of the measurement and to aid in
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screening studies to evaluate monitoring site locations
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measurements for trend analyses 13.
14
or in long-term
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For large-scale surveys of NH3 variability across China, starting in September
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2015, we implemented a passive NH3 monitoring network based on the diffusive
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technique with monthly integrated measurements at 53 sites. The current Ammonia
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Monitoring Network in China (AMoN-China) was established based on the Chinese
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Ecosystem Research Network (CERN, http://www.cern.ac.cn/0index/index.asp) and
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the Regional Atmospheric Deposition Observation Network in North China Plain
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(READ-NCP) 7. AMoN-China includes 13 mountain & forest sites, 5 water body sites,
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7 grassland, 4 desert, 11 farmland and 13 urban/suburban/industrial sites (Figure 1).
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All the sites are selected far away (> 1 km) from a known source of ammonia (e.g.,
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farmland and feedlot), considering that the ammonia concentrations decrease
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significantly away from the source (several hundred meters)
105
site selection and siting protocols can be found in Supporting Information (SI, text
106
and Table S1).
19
. More details on the
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Sites were assigned to regions to assess whether the seasonal variations and spatial
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distributions of NH3 concentrations show different patterns in different broad areas of
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China (Figure 2). The regions are defined as follows: the NCP (NC, 11 sites),
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northeast China (NE, 9 sites); northwest China (NW, 5 sites), southeast China (SE, 13
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sites), southwest China (SW, 9 sites), and Central China (Central, 6 sites). The regions
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were chosen based on the spatially different geographical, climate and availability
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characteristics of the sites.
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2.2 Chemical analysis and validation of ammonia samplers
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The year-round sampling campaign was carried out from September 2015 to
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August 2016. In total, 636 samples of NH3 were taken during this work by using
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diffusive samplers (Analysts®, CNR-Institute of Atmospheric Pollution, Roma, Italy).
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The
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phosphorous-acid-impregnated glass microfiber filter as an adsorption layer. The
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sampler is a robust and reliable tool for the measurement of atmospheric NH3 whose
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development, theory, laboratory validation, and field application have been fully
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described elsewhere 20.
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passive
sampler
is
made
of
polyethylene
and
employs
a
During sample collection, the passive samplers were exposed at a height of 2 m National observation of ammonia in China ACS Paragon Plus Environment
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with their open ends oriented downwards to exclude the dry deposition of particles. In
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addition, the sampler was protected from rain and direct sunlight by an inverted
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stainless-steel shield. After exposure, the passive samplers were returned to Beijing
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for analysis at the State Key Laboratory of Atmospheric Boundary Layer Physics and
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Atmospheric Chemistry, Institute of Atmospheric Physics, Chinese Academy of
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Sciences. There in the laboratory 5 ml of deionized water was used to extract the
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exposed samples, and the ammonium ion concentration in the extraction was
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determined via ion chromatography with a cation separator and conductivity detector
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(Dionex Corp., Sunnyvale, CA, USA).
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The ambient NH3 concentrations (cNH3 , µg m−3) were calculated based on the
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amount of ammonium (mNH+4 , µg) collected on the exposed filter and the sample
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collection time (t, hour) and can be expressed using the following equation.
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cNH3 =9.06×102 ×
mNH+4 t
137 138
where 9.06×102 is the conversion factor from the manufacturer’s description,
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which is a function of the parameters of the passive sampler. This formula assumes
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that the average temperature (T) during sampling is 20 °C. In the case that temperature
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is different, the correction coefficient ( 273+T )
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temperature effects is negligible, with the corrected NH3 concentrations less than 5%
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at each 5 °C. Most of the sampling sites belong to the CERN, where the temperature
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was measured at each site using an automatic meteorological observation instrument
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(Milos520, Vaisala, Finland). In the case that temperature is not measured at the site,
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the nearest meteorological observation stations available on the China Meteorological
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Data Sharing Services System website (http://cdc.cma.gov.cn/) was used in this study.
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Before and during the study period, comparisons with automatic reference
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methods were performed during two campaigns. During 2013, the Analysts passive
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sampler samples were compared to the continuously active analyzers of MARGA (a
293
1.8
was applied to cNH3 . Such a
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model ADI 2080 online analyzer for the Monitoring of Aerosols and Gases, Applikon
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Analytical B.V. Corp., the Netherlands, aggregated to monthly data points), showing a
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linear regression slope of 1.10 ± 0.14 and R2 of 0.94 (Figure 3a). This strong linear
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relationship indicates that the Analyst passive sampler is reliable for such a study,
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assuming that the NH3 concentration values measured by the wet chemistry
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instruments are more accurate
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passive samplers to DELTA (DEnuder for Long-Term Atmospheric sampling, Centre
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for Ecology and Hydrology, UK) at a monthly resolution. This comparison shows a
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linear regression slope close to unity (1.04 ± 0.17) and an intercept of 2.06 ± 2.23 µg
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m−3 (Figure 3b), the bias appears to be systematic so that it does not impact the
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patterns of the spatial distributions or seasonal variations.
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2.3 Dry deposition velocity simulation
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The inferential technique 7, which combines the measured NH3 concentration and a
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modeled dry deposition velocity (Vd) by the Goddard Earth Observing System-Chem
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(GEOS-Chem; http://geos-chem.org) chemical transport model, was used to estimate
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the dry deposition fluxes of NH3. The GEOS-Chem simulation of nitrogen dry
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deposition has been described by Zhao et al.
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version of GEOS-FP assimilated meteorological fields from the NASA Global
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Modeling and Assimilation Office (GMAO), which has been applied to analyze
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particle pollution over North China
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resolution of 0.25° latitude × 0.3125° longitude over East Asia (70°E–140°E, 15°N–
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55°N) and a coarse resolution of 2° latitude × 2.5° longitude over other place of the
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world.
17
. During this study, we also compared the Analysts
21
Here the model is driven by the latest
22
. Our simulation used the native GEOC-FP
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Follow the standard big-leaf resistance-in-series model 23, Vd in GEOS-Chem was
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calculated by considering the aerodynamic resistance, the boundary layer resistance,
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and the surface resistance. Here we have not considered air–surface bi-directional
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exchange of NH3 24, and treat the NH3 fluxes as uncoupled emission and deposition
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processes. We run the model from 2014 to 2016 and applied the monthly dry National observation of ammonia in China ACS Paragon Plus Environment
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deposition velocities at reference height of 2m to observed NH3 concentrations to get
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monthly NH3 dry deposition. We find in the model that the NH3 monthly dry
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deposition fluxes as calculated by the monthly mean concentration and Vd are about 7%
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higher than the hourly integrated values, reflecting some small covariance between
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NH3 concentrations and Vd.
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3. RESULTS AND DISCUSSION
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3.1 Spatial distribution of ammonia in China
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Large spatial differences in NH3 concentrations were found at the 53 sites in the
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sampling network, with annual mean NH3 concentrations during the 1-yr period
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ranging from 1 to 23.9 µg m−3, as illustrated in Table 1 and Figure 1. The upper range
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is higher than concentrations observed in China around 2012 (0.3−13.1 µg m−3) 16 and
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Asia around 2000 (< 0.7~ 13.9 µg m−3)
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this study reached 7.0 ± 5.4 µg m−3, which is much higher than the values observed in
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the US AMoN network using a similar diffusive sampling technique 13, although the
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AMoN sites are mainly located outside the intensive source areas of the US. At the
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Colorado near-agricultural sites, the NH3 concentrations reach 42.7 µg m−3 25.
14
. The overall mean NH3 concentrations in
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The sites were assigned to six regions to assess the regional variations among
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them. The highest regional averaged ambient NH3 concentrations were found at the
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NCP (13.4 µg m−3), followed by those at NW (10.0 µg m−3), Central (5.4 µg m−3), SE
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(5.1 µg m−3), NE (4.4 µg m−3), and SW (3.8 µg m−3). The spatial distributions of the
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surface NH3 concentrations were consistent with the top-down IASI satellite NH3
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columns
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inventory from agriculture sources in China, as included in Figure 4. NCP is then
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confirmed to be the largest region with high surface concentrations and highest
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emissions. This region as a whole accounts for 43% of the NH3 emitted from
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fertilization in China 26.
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12
, as shown in Figure 1, and similar to the bottom-up NH3 emissions
In addition, several smaller hotspots were observed in China, e.g., in Dzungaria
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and surrounding the Tarim basin (NW), Chengdu Plain (SW), and Guanzhong Plain
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(Central). These hotspots coincided with intensive agricultural activities, suggesting
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the major contribution of volatilized fertilizer and livestock waste to atmospheric NH3
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the Inner Mongolia, NH3 levels were low and can be treated as the background values.
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In addition to the limited NH3 sources in these background regions, cold weather or
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acidic soil is unfavorable for NH3 emissions. Heavy rainfall may also contribute to the
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scavenging of atmospheric NH3 21, resulting in the lower concentrations observed in
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south China.
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3.2 Differences among land use types
. In vast regions surrounding these hotspots, e.g., the Tibetan plain, south China, and
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From the aspect of land use types, the highest values were observed at
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urban/suburban/industrial sites (10.8 µg m−3), followed by those at farmland (10.2 µg
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m−3), desert (7.8 µg m−3), mountain & forest (3.6 µg m−3), water body (3.6 µg m−3)
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and grassland (3.4 µg m−3) sites. Given the influences of volatilized fertilizer, the
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mean NH3 concentrations at the agricultural sites WNA, HCA, FQA, LCA and YCA
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reached 12.4, 15.1, 16.8, 19.3 and 22.3 µg m−3, respectively (Table 1, where
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abbreviations of site names are defined, the same below). These values are much
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higher than the results from the other farmland sites, i.e., AKA, SYA, LZA, LSA,
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YTA, and ASA observed in this study. The difference is likely attributed to the
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different fertilizer inputs, climate zones and soil pH values in these regions.
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As shown in Table 1, the results also demonstrated relatively high NH3 values at
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urban sites in the NCP, e.g., TGI (10.2 µg m−3), TJU (11.3 µg m−3), BJU (13.7 µg m−3),
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BDI (15.3 µg m−3) and CZS (23.9 µg m−3). Although agricultural activities are
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intensive in this region, non-agricultural emissions are found to be an important
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contributor to atmospheric NH3 in the region, as evidenced by the isotopic signatures
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27
.
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In addition, relatively high concentrations of NH3 were also observed at urban
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sites in south China, e.g., at NJU (10.8 µg m−3), MMU (9.8 µg m−3), CDU (8.4 µg National observation of ammonia in China ACS Paragon Plus Environment
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m−3), THL (6.3 µg m−3), GZU (5.8 µg m−3). These values were higher than or
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comparable to those of nearby farmlands. For example, the average NH3
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concentration measured at the urban site CDU was twice that of the agricultural site
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YTA (4.4 µg m−3). Such high values observed in urban areas are one of the distinct
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features in this study. Non-agricultural sources are therefore suggested to be important
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contributors to atmospheric NH3 in developed regions across China. An improved
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global NH3 emission inventory for combustion and industrial sources provided
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distinct evidence that the emissions density of NH3 in urban areas is an order of
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magnitude higher than in rural areas 8.
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Another important finding is the higher NH3 concentrations observed at the desert
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sites of SPT, NMD, CLD and FKD, which have values of 5.1, 5.3, 6.1 and 14.4 µg
245
m−3, respectively. These values are higher than those observed in background regions,
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including mountain & forest, water body and grassland sites, averaging 3.5 µg m−3.
247
This is the first observational evidence showing high NH3 values over NW dry lands,
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in addition to over farmlands. This finding indicated an important regional source of
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NH3 from dried saline soils nearby
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non-sea-salt crustal sulfate has been observed from deserts and Gobi region in the
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north China 29. The unexpected high values at desert sites of FKD (60 km to the NE of
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the Urumqi city) may be explained by the transport of nearby industrial and/or urban
253
sources.
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3.3 Seasonal variations in ammonia concentration in China
28
; considering that a certain amount of
255
When the data were aggregated at seasonal levels, the seasonal maximum NH3
256
concentrations were observed in the summer, whereas the minimum values occurred
257
in the winter at most sites (Figure 2). Note that pulse peaks were also observed during
258
August at GGM, in May at ERG, in Dec at ASA and in July at HJK. At the
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mountainous/forest/grassland sites, the NH3 concentrations have weaker seasonal
260
variations during the observational periods, with nearly constant values of less than
261
3.5 µg m−3, reflecting the remoteness of the monitoring site, and can serve as the National observation of ammonia in China ACS Paragon Plus Environment
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background value in China.
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In contrast, the seasonal variations in NH3 at agricultural sites are evident, with
264
low values in the winter time, elevated values in the late spring, peaks in the summer,
265
and decreased values in the autumn. The relatively high values of the warmer seasons
266
correspond with peak emissions from agricultural activities and high temperatures. A
267
similar seasonal pattern can be also found at urban sites, e.g., BDI and NJU, although
268
the agricultural activities in urban regions are less evident.
269
Although the volatilization of NH3 in agricultural regions was sufficient to justify
270
high NH3 that observed in developed regions during the warm season, the
271
contribution of non-agricultural sources of NH3 can not be neglected in urban areas 30.
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In a case study, the NH3 emissions from vehicles in urban Beijing may have
273
contributed to the observed summer maximum 31. However, such sources tend not to
274
have obvious seasonal changes. The recycling of predeposited NHx offers an
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alternative explanation for these seasonal changes, which has been touched on by a
276
recent study 32. This speculation was partially supported by a good correlation of NH3
277
concentrations and ambient temperature at urban sites (e.g., BJU; SI, Fig. S1). Note
278
that changes in emissions don’t necessarily relate to changes in concentrations, and
279
vice-versa. Low NH3 concentrations in winter may also be attributable to
280
gas-to-particle conversion under cold weather conditions. So, non-agricultural
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emissions in urban areas may still be quite high in winter, for example. To fill the gap,
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concurrent measurements of NH3 and NH4+ concentrations and fluxes covering
283
different seasons are needed.
284
3.4 Ammonia dry deposition vs. emissions in China
285
We estimated the dry deposition flux of NH3 to assess the bulk input to
286
ecosystems by combining the monthly observed concentrations with a modeled Vd.
287
The mean monthly Vd values of NH3 modeled at most of sites during this study period
288
ranged from 0.20 to 0.55 cm s−1, with the exception of one coastal site (MMA,
289
1.02−1.42 cm s−1) and an island site (YXI, 0.74−1.73 cm s−1). These ranges agree well National observation of ammonia in China ACS Paragon Plus Environment
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with the previous estimations in the target region
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variations in Vd (data not shown) were weaker than seasonal variations of the
292
concentrations, implying that the ambient concentration plays a more important role
293
in determining the dry deposition flux of NH3. As a consequence, the spatial pattern of
294
the NH3 dry deposition (Figure 4) was similar to that of the concentrations in China
295
(Figure 1), as mentioned in Sect. 3.1.
. We find that the seasonal
296
The annual dry deposition of NH3 estimated in this study falls within the range of
297
0.8-30.3 kg N ha−1 yr−1, with a national mean of 7.3 ± 6.1 kg N ha−1 yr−1, which is
298
slightly lower than the estimation (8.2 kg N ha−1 yr−1) produced a few years ago
299
Due to the relatively high ambient concentrations, the dry depositions of more than 10
300
kg N ha−1 yr−1 of NH3 were mostly estimated at those sites located in agricultural
301
areas (e.g., YCA, LCA, FQA, HCA and WNA) and in or near developed regions (e.g.,
302
CZS, BDI, BJU, NJU, TJU and FKD). Note that the highest deposition was estimated
303
for MMU due to both the high local concentrations and Vd.
16
.
304
Figure 5 compares the dry depositions estimated at the site with the gridded
305
agriculture emission, showing that the sites in NW have depositions that are a factor
306
of 2 (or more) greater than their emissions. Since dry deposition was the major sink of
307
ammonia in this region, the unexpected high deposition in NW indicated the missing
308
sources in the current inventory. In contrast, the sites in SE have higher emissions
309
than depositions, highlighting the significant removal of NH3 via precipitation (wet
310
deposition) in south China
311
accounted for 25%-75% of the emissions of NH3. With wet/dry deposition ratio
312
considered 7, the total NHx depositions at sites YCA, LCA, YFS and CZU would be
313
much closer to those of emissions, whereas the NHx depositions at BDI, BJU, TJU
314
and FQA would be 50% of the emissions, suggesting the possible regional transport of
315
NH3 to the surrounding regions.
21
. At the NCP sites, estimated dry deposition fluxes
316
Uncertainties in both the emissions and depositions may also contribute to their
317
discrepancies. For example, emission uncertainty is associated with activity data and
318
emission factors (EFs)
319
and were subject to systemic errors rather than the regional inconsistencies. However,
26
. The activity data were obtained via statistical information
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the EFs that are parameterized by the ambient temperature, soil property, fertilizer
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types and other factors may vary regionally,
322
validated with future work. Uncertainties also exist in dry deposition estimations, in
323
particular, NH3 fluxes over vegetated land are bi-directional 34 and the net direction of
324
this flux is often uncertain. A so-called canopy compensation point was used in
325
previous studies to determine the direction of the NH3 flux 24. Since the principle of
326
bi-directional NH3 exchange was not employed in this study, the flux calculated here
327
represents a rather non-conservative deposition estimate (upper boundary). In this
328
study, NH3 deposition may be overestimated at vegetated sites with relatively high
329
canopy compensation points (e.g., up to 5 µgN m-3) due to fertilized croplands
330
vegetation
331
compensation point on NH3 deposition in agricultural sites due to the counterbalance
332
between deposition and emission.
333
ASSOCIATED CONTENT
334
Supporting Information
33
and thus, these speculations should be
7
or
35
. We recommend future research to evaluate the effects of the stomatal
335
Figure S1 illustrates ammonia concentration and temperature correlation, Table S1
336
summarizes site information, and text details the site selection and siting protocols,
337
with accompanying references. (PDF)
338
AUTHOR INFORMATION
339
Corresponding Author
340
*
341
[email protected].
342
Author Contributions
343
Y.P. and Y.W. conceived and designed the project, Y.P., Y. Z. and S.T. conducted the
344
field work, Y.Z. and L.Z. performed the dry deposition modeling experiments, J. G.
(Y.P.)
Phone:
+86
01062022285;
fax:
+86
National observation of ammonia in China ACS Paragon Plus Environment
01062362389;
e-mail:
Environmental Science & Technology
Page 14 of 26
Pan Page 14 345
performed the MARGA measurements, Y.S. and Q.Z. prepared the ammonia emission
346
inventory, Y.P., X.Z. and W. H. analyzed the data and drew figures, and Y.P. wrote the
347
paper with comments from the coauthors.
348
Notes
349
The authors declare no competing financial interest.
350
ACKNOWLEDGEMENTS
351
This work was supported by the National Key Research and Development Program of
352
China (Grant 2017YFC0210100) and the National Natural Science Foundation of
353
China (Grant 41405144). We are indebted to the staff who collected the samples at the
354
sites (listed in Table 1) during the study period.
355
Data availability
356
All data sets related to this paper can be requested by contacting the principal
357
investigator, Yuepeng Pan (
[email protected]).
358
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359
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488
Figure captions
489
Fig. 1 Spatial distribution of ammonia concentrations observed from surface network (site) versus IASI satellite column data (grid) in China. The detailed surface observation site information can be found in Table 1 and SI. Satellite NH3 total column distributions are derived from the Infrared Atmospheric Sounding Interferometer (IASI) aboard MetOp-A for the year 2015. We collect the observations from morning overpass time (9:30 LTC) and filter the columns with relative error above 100% following procedures presented in Van Damme et al 12. The filtered IASI satellite columns are then mapping to 0.25°×0.25° horizontal resolution by averaging available observations within each grid cell. The provincial boundary layer with a scale of 1:4,000,000 was obtained from the National Geomatics Center of China (http://ngcc.sbsm.gov.cn/). Maps were generated based upon a geospatial analysis using ESRI ArcGIS software (version 10.1: http://www.esri.com/software/arcgis/arcgis-for-desktop).
490 491 492 493 494 495 496 497 498 499 500 501 502
Fig. 2 Seasonal variations of ammonia concentrations observed from surface network (site) in China.
503 504 505 506
Fig. 3 Comparisons of passive diffusion sampler to the continuously active analyzers of MARGA and DELTA. Ammonia concentrations are aggregated to monthly data points.
507 508 509 510 511 512 513 514 515 516 517 518 519 520 521 522
Fig. 4 Spatial distribution of site-based dry deposition flux versus the gridded agriculture emission inventory of ammonia in China. The legend for gridded ammonia inventory was also shown in unit of kg N ha−1 yr−1 (red numbers in the left corner), in addition to t yr−1 per 0.25o by 0.25o. The NH3 inventory used in this study is from the Multi-Resolution Emission Inventory of China (MEIC, http://meicmodel.org) 36, and are originally developed and described by Huang et al. 26 The MEIC inventory is provided with monthly gridded emissions of NH3 at 0.25°×0.25° by five sectors, i.e., power generation, industry, residential, transportation, and agriculture. The agriculture sector is a dominant source of NH3 emissions on national scale, mainly contributed by fertilizer applications and manure managements. We choose the year of 2012 to conduct the spatial comparison because emissions after 2012 are not available at present. The provincial boundary layer with a scale of 1:4,000,000 was obtained from the National Geomatics Center of China (http://ngcc.sbsm.gov.cn/). Maps were generated based upon a geospatial analysis using ESRI ArcGIS software (version 10.1: http://www.esri.com/software/arcgis/arcgis-for-desktop).
523 524 525 526 527
Fig. 5 Comparison of site-based dry deposition flux versus the gridded agriculture emission inventory of ammonia in China (1o by 1o). The sites are colored by regions. The unit of emission data is converted to kg N ha−1 yr−1 for comparison with that of ammonia deposition. 1:1 line represents the same value of ammonia dry deposition to emissions.
528
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530
Tables
531
Table 1 Seasonal and annual concentrations of ammonia (µg m−3) observed at the 53
532
sites in China during this study period (SON=Sept-Oct-Nov, DJF=Dec-Jan-Feb,
533
MAM=Mar-Apr-May, JJA=Jun-Jul-Aug)
534 Code
Location
Lat
Lon
FQA
Fengqiu
35.0
114.6
LCA
Luancheng
37.9
YCA
Yucheng
TSM
Elv. (m)
Land use types
Region
SON
DJF
MAM
JJA
Mean
67
Farmland
NCP
19.2
14.3
12.8
21.1
16.8
114.7
57
Farmland
NCP
21.9
17.2
17.5
20.7
19.3
37.0
116.6
23
Farmland
NCP
21.3
12.8
10.0
45.2
22.3
Tainshan
36.3
117.1
1506
Mountain & Shrubbery
NCP
3.3
2.8
5.6
3.8
3.9
XLM
Xinglong
40.4
117.6
872
Mountain & Shrubbery
NCP
3.6
0.9
6.1
5.1
3.9
YFS
Yangfang
40.2
116.1
73
Suburban
NCP
6.0
4.1
6.0
11.9
7.0
CZS
Cangzhou
38.3
116.9
10
Suburban
NCP
22.0
22.2
25.6
26.0
23.9
TJU
Tianjin
39.1
117.2
6
Urban
NCP
12.3
7.2
11.0
14.5
11.3
BJU
Beijing
40.0
116.4
57
Urban
NCP
16.6
7.2
14.9
16.3
13.7
BDI
Baoding
38.9
115.5
21
Urban
NCP
12.7
10.5
12.4
25.7
15.3
TGI
Tanggu
39.0
117.7
0
Urban & Coastal
NCP
8.4
8.0
11.9
12.7
10.2
CLD
Cele
37.0
80.7
1319
Desert
NW
7.3
3.1
5.1
9.1
6.1
FKD
Fukang
43.3
87.9
475
Desert & Suburban
NW
8.3
14.7
17.2
17.4
14.4
AKA
Akesu
40.6
80.8
1031
Farmland
NW
3.8
3.2
10.9
17.6
8.9
HCA
Huocheng
44.0
80.7
590
Farmland
NW
9.0
11.2
26.6
13.4
15.1
ALT
Altai Mountains
47.6
86.0
847
Mountain & Shrubbery
NW
2.4
/
9.3
6.2
5.5
SPT
Shapotou
37.5
105.0
1258
Desert
Central
4.2
2.3
5.1
9.0
5.1
ASA
Anshai
36.9
109.4
1207
Farmland
Central
1.6
3.8
5.4
6.7
4.3
LZA
Linze
39.4
100.1
1385
Farmland
Central
3.5
2.3
3.7
10.4
5.0
WNA
Weinan
34.7
109.3
411
Farmland
Central
8.3
7.7
13.1
20.3
12.4
WLG
Waliguan
36.3
100.9
3772
Grassland
Central
2.0
2.0
2.2
2.3
2.1
HBG
Haibei
37.6
101.3
3198
Grassland
Central
2.1
2.0
3.2
7.2
3.6
HTF
Huitong
26.9
109.6
524
Forest
SE
2.1
1.9
0.8
1.8
1.7
QYF
Qianyanzhou
26.4
115.0
74
Mountain & Forest
SE
2.5
1.9
2.4
3.2
2.5
DHM
Dinghushan
23.2
112.6
44
Mountain & Forest
SE
3.8
2.6
3.2
1.7
2.8
HJK
Huanjiang
24.7
108.3
293
Mountain & Karst
SE
2.5
1.0
3.6
10.1
4.3
XMU
Xiamen
24.7
118.1
2
Urban
SE
6.0
4.0
5.7
5.0
5.2
GZU
Guangzhou
23.1
113.3
14
Urban
SE
4.9
4.4
6.9
6.9
5.8
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Environmental Science & Technology
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Pan Page 22 THL
Taihu
31.6
120.3
7
Urban
SE
3.4
5.7
6.0
10.3
6.3
MMU
Maoming
21.6
110.7
16
Urban
SE
10.1
5.9
8.0
15.1
9.8
NJU
Nanjing
32.1
118.4
15
Urban
SE
11.6
7.5
9.5
14.6
10.8
YXI
Yongxing island
16.8
112.3
10
Waterbody & Island
SE
3.2
1.9
2.0
3.7
2.7
PYL
Poyang lake
29.4
116.1
24
Waterbody & Lake
SE
1.6
2.5
2.0
4.4
2.6
DTL
Dongting lake
29.5
112.8
28
Waterbody & Lake
SE
3.7
4.1
6.0
9.0
5.7
DHL
Donghu lake
30.5
114.4
20
Waterbody & Lake
SE
3.8
3.8
7.3
10.4
6.3
NMD
Naiman
42.9
120.7
362
Desert
NE
5.6
2.9
3.4
9.4
5.3
SYA
Shenyang
41.5
123.4
38
Farmland
NE
5.1
2.3
6.7
12.6
6.7
MHF
Mohe
52.9
122.8
467
Forest
NE
1.3
1.1
0.7
1.0
1.0
ERG
Ergun
50.2
119.4
525
Grassland
NE
1.5
0.3
8.9
1.3
3.0
ING
Inner Mongolia
43.6
116.7
1187
Grassland
NE
2.2
2.0
3.2
7.2
3.6
DAG
Daan
45.6
123.8
1299
Grassland
NE
2.7
1.6
5.1
9.9
4.8
CCU
Changchun
44.0
125.4
195
Grassland & Suburban
NE
2.9
0.7
3.4
6.4
3.4
CBM
Changbaishan
42.4
128.1
736
Mountain & Forest
NE
0.7
0.7
8.3
23.4
8.3
SJW
Sanjiang
47.6
133.5
55
Waterbody & Wetland
NE
3.2
1.2
3.2
4.9
3.1
YTA
Yanting
31.3
105.5
437
Farmland
SW
3.6
1.6
2.8
9.6
4.4
LSA
Lhasa
29.6
91.0
3640
Farmland
SW
6.0
2.9
4.4
6.1
4.8
BNF
Xishuangbanna
22.0
100.8
648
Forest
SW
4.9
5.5
6.4
4.2
5.3
ALD
Ali
33.4
79.7
4256
Grassland
SW
1.3
0.9
0.7
6.3
1.7
ALM
Ailaoshan
24.3
101.0
2483
Mountain & Forest
SW
1.1
1.1
0.6
2.8
1.4
GGM
Gonggashan
29.6
102.0
2977
Mountain & Forest
SW
0.7
0.9
0.5
5.0
1.8
MXF
Maoxian
31.7
103.9
1826
Mountain & Shrubbery
SW
2.3
1.4
3.9
2.9
2.6
GZA
Guizhou
26.3
105.9
1468
Urban
SW
3.4
2.3
4.7
5.3
3.9
CDU
Chengdu
30.6
104.0
490
Urban
SW
7.9
5.5
9.6
10.5
8.4
535 536 537
National observation of ammonia in China ACS Paragon Plus Environment
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Environmental Science & Technology
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Figures
539 540 541 542 543 544 545 546 547 548 549 550
Fig. 1 Spatial distribution of ammonia concentrations observed from surface network (site) versus satellite column data (grid) in China. The detailed surface observation site information can be found in Table 1 and SI. Satellite NH3 total column distributions are derived from the Infrared Atmospheric Sounding Interferometer (IASI) aboard MetOp-A for the year 2015. We collect the observations from morning overpass time (9:30 LTC) and filter the columns with relative error above 100% following procedures presented in Van Damme et al 12. The filtered IASI satellite columns are then mapping to 0.25°×0.25° horizontal resolution by averaging available observations within each grid cell. The provincial boundary layer with a scale of 1:4,000,000 was obtained from the National Geomatics Center of China (http://ngcc.sbsm.gov.cn/). Maps were generated based upon a geospatial analysis using ESRI ArcGIS software (version 10.1: http://www.esri.com/software/arcgis/arcgis-for-desktop).
551
National observation of ammonia in China ACS Paragon Plus Environment
Environmental Science & Technology
Page 24 of 26
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552
553
554
555 556 557
Fig. 2 Seasonal variations of ammonia concentrations observed from surface network (site) in China.
National observation of ammonia in China ACS Paragon Plus Environment
Page 25 of 26
Environmental Science & Technology
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560 561 562
Fig. 3 Comparisons of passive diffusion sampler to the continuously active analyzers of
563
MARGA and DELTA. Ammonia concentrations are aggregated to monthly data points. MHF ERG
SJW
ALT DAG CCU
HCA FKD
LZA
CLD
HBG SPT WLG
ALD
BJU YFSXLM BDI TSM LCA YCA ASA
MXF LSA
564
kg N ha yr 0-3.3 3.3-6.6 6.6-13.2 13.2-26.4 26.4-39.5 39.5-52.7 52.7-65.9 65.9-125.6
o
NJU THL
CDU YTA
DHL DTL PYL
GGM
Agriculture inventory −1
HTF GZA HJK
ALM
250-500 500-1000 1000-2000 2000-3000 3000-4000
BNF −1
kg N ha yr 0-5 5-15 15-30
−1
MMU
YXI
Yellow River Yangtze River
4000-5000 5000-9530
QYF DHM XMU GZU
−1
0.25 grid [t yr ] 0 - 250
SYA
FQA
WNA
−1
CBM
ING NMD
AKA
0 250 500
km 1,000
565
Fig. 4 Spatial distribution of site-based dry deposition flux versus the gridded agriculture
566
emission inventory of ammonia in China. The legend for gridded ammonia inventory was also
567
shown in unit of kg N ha−1 yr−1 (red numbers in the left corner), in addition to t yr−1 per 0.25o
568
by 0.25o. The NH3 inventory used in this study is from the Multi-Resolution Emission
National observation of ammonia in China ACS Paragon Plus Environment
Environmental Science & Technology
Page 26 of 26
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569
Inventory of China (MEIC, http://meicmodel.org)
570
described by Huang et al. 26 The MEIC inventory is provided with monthly gridded emissions
571
of NH3 at 0.25°×0.25° by five sectors, i.e., power generation, industry, residential,
572
transportation, and agriculture. The agriculture sector is a dominant source of NH3 emissions
573
on national scale, mainly contributed by fertilizer applications and manure managements. We
574
choose the year of 2012 to conduct the spatial comparison because emissions after 2012 are
575
not available at present. The provincial boundary layer with a scale of 1:4,000,000 was
576
obtained from the National Geomatics Center of China (http://ngcc.sbsm.gov.cn/). Maps were
577
generated based upon a geospatial analysis using ESRI ArcGIS software (version 10.1:
578
http://www.esri.com/software/arcgis/arcgis-for-desktop).
, and are originally developed and
579 580
581 582
Fig. 5 Comparison of site-based dry deposition flux versus the gridded agriculture emission
583
inventory of ammonia in China (1o by 1o). The sites are colored by regions. The unit of
584
emission data is converted to kg N ha−1 yr−1 for comparison with that of ammonia deposition.
585
1:1 line represents the same value of ammonia dry deposition to emissions.
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National observation of ammonia in China ACS Paragon Plus Environment