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Article
Uncertainty Assessment of Gaseous Oxidized Mercury Measurements Collected by Atmospheric Mercury Network Irene Cheng, and Leiming Zhang Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.6b04926 • Publication Date (Web): 06 Dec 2016 Downloaded from http://pubs.acs.org on December 14, 2016
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Environmental Science & Technology
Uncertainty Assessment of Gaseous Oxidized Mercury Measurements Collected by Atmospheric Mercury Network Irene Cheng* and Leiming Zhang* Air Quality Research Division, Science and Technology Branch, Environment and Climate Change Canada, Toronto, Ontario M3H 5T4 Canada *Corresponding authors: Irene Cheng Air Quality Research Division Science and Technology Branch Environment and Climate Change Canada 4905 Dufferin Street Toronto, Ontario M3H 5T4 Canada Tel: 1 416-739-4455; Fax: 1 416-739-4281 Email:
[email protected] Leiming Zhang Air Quality Research Division Science and Technology Branch Environment and Climate Change Canada 4905 Dufferin Street Toronto, Ontario M3H 5T4 Canada Tel: 1 416-739-5734; Fax: 1 416-739-4281 Email:
[email protected] ACS Paragon Plus Environment
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ABSTRACT
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Gaseous oxidized mercury (GOM) measurement uncertainties undoubtedly impact the
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understanding of mercury biogeochemical cycling; however, there is a lack of consensus on the
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uncertainty magnitude. The numerical method presented in this study provides an alternative
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means of estimating the uncertainties of previous GOM measurements. Weekly GOM in
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ambient air was predicted from measured weekly mercury wet deposition using a scavenging
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ratio approach, and compared against field measurements of 2-4 hourly GOM to estimate the
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measurement biases of the Tekran speciation instruments at thirteen Atmospheric Mercury
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Network (AMNet) sites. Multi-year average GOM measurements were estimated to be biased
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low by more than a factor of 2 at six sites, between a factor of 1.5 and 1.8 at six other sites, and
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below a factor of 1.3 at one site. The differences between predicted and observed were
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significantly larger during summer than other seasons potentially because of higher ozone
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concentrations that may interfere with GOM sampling. The analysis of multi-year data collected
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at multiple sites provides a consensus of the systematic bias in GOM measurements, suggesting
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the need for further development of new measurement technologies and identifying the chemical
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composition of GOM.
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1. INTRODUCTION
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Accurate measurements of gaseous oxidized mercury are indispensable to the study of mercury
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cycling in the environment, including identifying mercury transformation mechanisms, modeling
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its dry deposition, and evaluating mercury chemical transport models. The Tekran speciation
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system (Tekran® Instruments Corporation) is a widely used set of automated instruments for
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measuring three operationally-defined forms of atmospheric mercury, including gaseous
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elemental mercury (GEM), gaseous oxidized mercury (GOM) and particle-bound mercury in fine
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particles (< 2.5µm) (PBM), at high temporal resolution. The instruments have been deployed
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around the world by researchers and large-scale mercury monitoring networks, such as the
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Atmospheric Mercury Network (AMNet)1,2 and Global Mercury Observation System3,4. Despite
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the prevalent use of the Tekran speciation system, the accuracy of GOM measurements remains
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a very polarizing issue; however, researchers increasingly acknowledge that GOM and PBM
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have large measurement uncertainties5. This is because the exact chemical compositions of
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GOM and PBM are unknown and have not been quantified which hinders the development of
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calibration standards, and recent studies show there are potential sampling artifacts and
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discrepancies in GOM concentrations among various measurement methods5-9.
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Studies suggest elevated ozone can cause a positive artifact on PBM measurements10 and loss of
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GOM11. Water vapor can also interfere with GOM measurements and cause denuders to become
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passivated10,12,13. There may be chemical reactions between atmospheric mercury and other
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gases and aerosols during sampling that can result in GOM loss or positive artifacts on PBM6,14.
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However, this may only be an issue during long sampling duration (12 h)14. The mechanisms
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causing the aforementioned issues are also not well established. More recently, it was revealed
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that denuders do not capture all forms of GOM15, contradictory to an earlier study demonstrating 3 ACS Paragon Plus Environment
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high collection efficiency of GOM by denuders16. Other measurement techniques, such as mist
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chambers, nylon and cation exchange membranes, and Detector for Oxidized Hg, were capable
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of collecting more GOM than KCl-denuders6,15,17,18. However similar to the Tekran instrument,
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these alternative methods are not immune to sampling artifacts caused by high water vapor15,18
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and other gases and aerosols17. Studies suggest the temperature settings of the Tekran instrument
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favour GOM deposition in the sampling lines and gas-particle partitioning and evaporative losses
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of PBM within the instrument6,7,11,19,20. Slemr et al.21 also reported that the Tekran Hg analyzer
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was unable to quantify small signal to noise peaks resulting in very low or non-detectable total
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gaseous mercury concentrations.
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With the growing number of studies raising issues regarding GOM and PBM uncertainties and
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their potential consequences on analysis and modeling of mercury, further studies are needed to
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determine the magnitude of the GOM and PBM uncertainties, improve the instrumentation
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detection of Hg species, and develop calibration technologies. Current estimates of GOM
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measurement uncertainties are a factor of 1.3-5.06,15,18 and up to a factor of 127 based on
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intercomparisons of various sampling and analysis methods. However, consensus has yet to be
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reached on the uncertainty magnitude. In this study, an indirect numerical modeling approach
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was developed to quantify the uncertainties of Tekran measurements of GOM at multiple
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AMNet sites, taking advantage of the large amount of speciated data that have been made
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available in the past several years (2009-2014). This dataset is longer than those collected from
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previous intercomparison studies of different measurement techniques, which typically span over
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a one month period. The approach predicts GOM concentrations from Hg wet deposition since
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Hg in precipitation originates from GOM and PBM, and a previous study has shown a strong
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empirical relationship between atmospheric oxidized mercury and mercury wet deposition22.
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Predicted GOM are then compared to observed GOM to estimate the potential measurement
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biases.
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2. METHODS
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2.1 Site and data description
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GOM concentrations were predicted at 13 AMNet sites (co-located instruments at MD98/99)
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located in the U.S. and Canada (Table 1). Ambient monitoring data from 2009-2014 near the
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AMNet sites were obtained from various networks (Table S1 of the SI). GEM, GOM and PBM
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measured using the Tekran speciation system and mercury wet deposition fluxes were obtained
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from the AMNet and Mercury Deposition Network, respectively 23,24. Trace gases and inorganic
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ions in air and precipitation were obtained from the Clean Air Status and Trends Network
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(CASTNET25), National Trends Network26, and the Canadian Atmospheric and Precipitation
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Monitoring Network (CAPMoN27) for the NS01 site (Sect. 1 of SI). PM2.5 and PM10
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concentrations were obtained from AirData28 and CAPMoN. Meteorological data and ground-
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level ozone were obtained from CASTNET and CAPMoN. Due to the different sampling
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intervals of the networks, the datasets were averaged to a weekly interval. The datasets were
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also averaged to monthly intervals to examine differences between weekly and monthly data
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resolution and to estimate the method uncertainties. The data was quality controlled according to
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the criteria in Tables S2 and S3.
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2.2 Determination of the HNO3 scavenging ratio
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The premise behind the method for predicting GOM is based on the knowledge of the mercury
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wet deposition and assumptions on GOM and PBM wet scavenging efficiencies. The wet
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scavenging of GOM and PBM were quantified using the scavenging ratios of other pollutants. 5 ACS Paragon Plus Environment
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Scavenging ratios (equation (1)) are typically determined for particulate pollutants, whereas
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scavenging ratios of gaseous pollutants are rare because the total pollutant (dissolved +
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particulate) concentration in precipitation is typically measured like in the case of mercury and
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ammonium, nitrate and sulfate. In the absence of direct measurements, gaseous HNO3 was used
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as a surrogate for the scavenging ratio of GOM based on the similarities in their physicochemical
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properties. Both HNO3 and GOM are water soluble and easily scavenged by precipitation. Both
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gases have low surface resistance and high dry deposition velocity (1-5 cm s-1)16; thus, GOM is
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modeled like HNO3 in dry deposition models 29-32.
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Since the scavenging ratio of HNO3 (WHNO3) cannot be determined directly from field
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measurements, the approach for determining WHNO3 required calculating the scavenging ratios
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(W) of the particulate-phase inorganic ions Ca2+, Mg2+, Na+, and K+ using equation (1).
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W =
(1)
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Cprec and Cair are the precipitation and air concentrations, respectively. The scavenging ratio of
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coarse PM (WcPM) was determined by averaging WCa, WMg, and WNa since these ions dominate
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the coarse PM fraction33. WK was used as a surrogate for the scavenging ratio of fine PM (WfPM)
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for inland sites, whereas WK/2 was assumed for coastal sites (NS01, NY06) following the
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methodology in Cheng et al.33
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The wet scavenging of particulate nitrate (pNO3-) is then determined using equation (2):
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[pNO3-] prec = WfPM [pNO3-] air Pf + WcPM [pNO3-] air (1-Pf)
(2)
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WfPM and WcPM are the scavenging ratios of fine and coarse PM. [pNO3-]air is the NO3-air
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concentration. Pf is the fine mass fraction of NO3-. Similar to the methodology in Cheng and 6 ACS Paragon Plus Environment
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Zhang34, a Pf of 0.84 was assumed for the winter months (DJF), while 0.29 was used for all other
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months since lower temperatures favor ammonium nitrate production in fine particles.
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Equation (3) is subsequently used to determine WHNO3.
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WHNO3 =
[ ] [ ]
=
[ ] [ ] [ ]
(3)
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[Total NO3-]prec is the total NO3- precipitation concentration and [pNO3-]prec is from equation (2).
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If [HNO3]prec< 0, it is assumed that only pNO3- contributed to total NO3- in precipitation and
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WHNO3 is not determined.
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2.3 Determination of GOM wet deposition and prediction of GOM
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The detailed methodology for determining the wet deposition flux of GOM is described in Cheng
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et al.33. A synopsis of the methodology is provided here. First, the wet deposition fluxes of fine
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PBM and coarse PBM are determined using scavenging ratios, air concentrations of PBM, and
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precipitation amount. The difference between total Hg wet deposition and the wet deposition
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fluxes of fine and coarse PBM results in the wet deposition flux of GOM. Given the GOM wet
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deposition flux (FGOM), the assumption that WHNO3 ≈ WGOM from the previous section, and the
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precipitation amount (P), the GOM concentration (CGOM) can be predicted using equation (4).
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FGOM = WGOMCGOMP (4)
CGOM =
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2.4 Comparison of predicted and observed GOM
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The predicted GOM were compared to the observed GOM to assess the bias in the observed
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GOM measured by the Tekran system. Bias and normalized mean bias (NMB), which are model 7 ACS Paragon Plus Environment
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evaluation metrics reported in chemical transport modeling studies35, were used to quantify the
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bias in GOM (equations (5) and (6)). Bias = Pi - Oi (5)
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∑ !
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NMB =
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BiasF = 1.0+NMB
∑ !
(6)
(7)
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Pi and Oi are the predicted GOM and observed GOM, respectively. The observed GOM is a
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weekly or monthly average value calculated from the 2-4 h concentrations. N is the number of
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weekly or monthly cases. Bias is the difference between predicted and observed GOM, while
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NMB represents an average percent difference between predicted and observed GOM from all
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the data35. BiasF is defined here as a bias factor, which can be simply used to adjust measured
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data by multiplying this factor. The scavenging ratio method uncertainties are described in Sect.
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2 of the SI and shown in Table S4.
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Initially, the comparison of predicted and observed GOM was performed on all cases. However,
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this comparison resulted in an unreasonably large NMB (Table S5) and a very low correlation
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between predicted and observed GOM (r = 0.07, p = 0.071). It was speculated that outliers in
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certain parameters caused the extremely high predicted GOM. Therefore, data quality control
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was applied on specific parameters, such as PBM and GOM concentrations and WHNO3. PBM
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and GOM were constrained to concentrations ≥ 1 pg m-3, which is an estimate of the PBM and
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GOM detection limits of the Tekran system. The exclusion of highly uncertain PBM and GOM
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(i.e. low concentrations) would likely result in a more reliable NMB. The range in WHNO3 were
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constrained between 372 and 6612 (mass basis), which represents the interquartile range (25th-
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75th percentile) of the WHNO3 from our previous study of Canadian rural sites34. Limited field
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data on scavenging ratios of HNO3 and other gases are available; therefore, the WHNO3 predicted
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from our previous long-term multi-site study was used to constrain WHNO3 in this study. The
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constraints on PBM and GOM concentrations had little effect on the NMB and correlation
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between predicted and observed GOM. However, narrowing the WHNO3 range led to a more
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reasonable NMB (Table S5) and correlation coefficient (r = 0.2, p
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predicted GOM. The positive and negative biases suggest that the low GOM bias associated
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with the Tekran instrument cannot be generalized to all locations and measurements. More field
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intercomparison studies of different GOM measurement methods are needed to assess the spatial
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variability of the GOM bias and confirm whether there are positive and/or negative biases.
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3.2 Seasonal variation in bias
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Aggregating all the sites together, BiasF of weekly GOM was 1.9 in winter, 1.8 in spring, 2.9 in
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summer, and 2.0 in fall, and the corresponding method uncertainties were a factor of 1.7, 1.5,
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1.01, and 1.3, respectively. These results indicate that the biases in GOM measurements were
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the largest in summer (> factor of 2 after considering the method uncertainties) (Fig. 3). The
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seasonal trend of the predicted GOM was similar to that of the observed GOM with the
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exception of the higher predicted GOM during summer (Fig. 3). The larger bias in GOM during
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summer may be attributed to ozone interferences on GOM measurements as reported in
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experimental studies11, since ozone concentrations are frequently elevated in the summer (Fig.
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3). However, the mechanisms causing the loss of GOM when KCl-coated denuders are exposed
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to elevated ozone during sampling are not yet known.
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3.3 The case of GA40 in southeastern U.S.
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It is noted that 11 of the 13 sites have BiasF values smaller than 3.0 and one site (OK99) has a
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value of 5.4. However, an extremely high BiasF value of 14.3 was found at GA40, a
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southeastern U.S. site. This is because AMNet sites in the southeastern U.S observed much
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higher mercury wet deposition, although similar ambient GOM concentration, than sites
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elsewhere in the U.S.36-38. Elevated Hg wet deposition in southeastern U.S. and Puerto Rico has
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been attributed to the efficient scavenging of GOM from the free troposphere by deep convective
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storms38-41. Elevated GOM was indeed observed in the free troposphere by aircraft
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measurements. 42-44 About 60% of the total Hg wet deposition was estimated to be from upper-
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level (or in-cloud) scavenging in southeastern U.S. based on model simulations40,41. In this case,
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the predicted GOM represents more of the upper altitude than surface concentration. For GA40,
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if the total wet deposition was reduced by 60%, then the revised BiasF would be 5.7, which is
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more in line with values at other sites. Thus, the discrepancy between the predicted and
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observed GOM at GA40 should be a combination of the enhanced wet deposition due to deep
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convection and the instrument measurement uncertainties, the latter was the focus of the present
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study. Note that the exact contributions from these two sources to the total BiasF cannot be
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quantified in this study.
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The higher BiasF during summer than other seasons can also be explained by the higher
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predicted wet deposition of GOM aside from elevated ozone during summer. The higher wet
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scavenging of GOM during summer is not due to the higher precipitation amount, since it was
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lower than the precipitation amount in spring (Fig. S2 of SI). It was due to the higher
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precipitation Hg concentration during summer. Figure 4 illustrates the strong relationship
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between the predicted- observed GOM difference and the precipitation Hg concentration. This
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relationship can be used to predict the discrepancy between predicted and observed GOM given
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the precipitation Hg concentration. With the precipitation Hg concentration < 20 ng l-1 at most
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Mercury Deposition Network (MDN) locations in the U.S. and Canada36, the expected difference
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between the predicted and observed GOM concentrations would be up to ~15 pg m-3. Based on
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the geographical distribution of precipitation Hg concentrations36, this difference is expected to
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be larger in southeastern U.S. which further supports the high BiasF at GA40.
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3.4 Uncertainties of PBM measurements on GOM bias - a sensitivity analysis
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The method of predicting GOM in this study relies on PBM (