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Sensitivities of Simulated Source Contributions and Health Impacts of PM2.5 to Aerosol Models Yu Morino, Kayo Ueda, Akinori Takami, Tatsuya Nagashima, Kiyoshi Tanabe, Kei Sato, Tadayoshi Noguchi, Toshinori Ariga, Keisuke Matsuhashi, and Toshimasa Ohara Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.7b04000 • Publication Date (Web): 24 Nov 2017 Downloaded from http://pubs.acs.org on November 29, 2017
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Sensitivities of Simulated Source Contributions and Health Impacts of PM2.5 to
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Aerosol Models
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Yu Morino,†,* Kayo Ueda,‡ Akinori Takami,† Tatsuya Nagashima,† Kiyoshi Tanabe,† Kei
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Sato,† Tadayoshi Noguchi,† Toshinori Ariga, || Keisuke Matsuhashi, || and Toshimasa
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Ohara¶
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†
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Studies, 16-2, Onogawa, Tsukuba, Ibaraki, 305-8506, Japan
Center for Regional Environment Research, National Institute for Environmental
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‡
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Nishikyo-ku, Kyoto, 615-8530, Japan
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||
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Environmental Studies, 16-2, Onogawa, Tsukuba, Ibaraki, 305-8506, Japan
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¶
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Fukushima-shi, Fukushima, 960-8670, Japan
Graduate School of Engineering, Kyoto University, Kyoto daigaku-katsura,
Center for Social and Environmental Systems Research, National Institute for
Fukushima Branch, National Institute for Environmental Studies, 2-16, Sugitsumacho,
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Submitted to Environmental Science and Technology
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Last revised on Oct. 22, 2017.
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ABSTRACT: Chemical transport models are useful tools for evaluating source
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contributions and health impacts of PM2.5 in the atmosphere. We recently found that
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concentrations of PM2.5 compounds over Japan were much better reproduced by a
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volatility basis set model with an enhanced dry deposition velocity of HNO3 and NH3
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compared with a two-product yield model. In this study, we evaluated the sensitivities
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to organic aerosol models of the simulated source contributions to PM2.5 concentrations
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and of PM2.5-related mortality. Overall, the simulated source contributions to PM2.5
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were similar between the two models. However, because of the improvements
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associated with the volatility basis set model, the contributions of ammonia sources
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decreased, particularly in winter and spring, and contributions of biogenic and
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stationary evaporative sources increased in spring and summer. The improved model
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estimated that emission sources in Japan contributed 35%–48% of the PM2.5-related
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mortality in Japan. These values were higher than the domestic contributions to average
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PM2.5 concentrations in Japan (26%–33%) because the domestic contributions were
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higher in higher population areas. These results indicate that control of both domestic
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and foreign emissions is necessary to reduce health impacts due to PM2.5 in Japan.
36 37
Keywords: PM2.5, mortality, VBS, source contributions, organic aerosols
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TOC Art Source contributions of PM2.5-related mortality over Japan 1.0
20
15
0.6 10 0.4
40
Winter
Spring
AERO6
AERO6VBS
AERO6
AERO6VBS
AERO6VBS
0 AERO6
0.0
Summer
-1
5
0.2
Mortality (death day )
Contributions (-)
0.8
Sources from Japan / Asia Others NH3 sources Biogenic Biomass burning Evaporative Energy sector Industrial sector Transport sector
Asia+Japan
Volcano Marine shipping
Mortality
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INTRODUCTION
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Because atmospheric aerosols can have large impacts on human health,1,2
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environmental standards for PM2.5 have been set in many countries. In Japan,
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environmental standards for PM2.5 were enacted in 2009 (annual average, 15 µg m−3;
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daily average, 35 µg m−3), but these limits have not been met at many observational
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stations in western Japan or in the Tokyo metropolitan area (TMA).3 To devise effective
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control strategies to reduce ambient PM2.5 concentrations, accurate knowledge of the
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contributions of PM2.5 sources is crucial.
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Chemical transport models (CTMs) are useful tools for evaluating the source
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contributions and health impacts of PM2.5 in the atmosphere. However, model results
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generally include large uncertainties because of problems with input data (e.g.,
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meteorological, boundary, and emissions data), the parameterization of each process,
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and missing science elements. Recently, we used PM2.5 chemical composition data
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measured simultaneously over several regions of Japan in the winter, spring, and
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summer of 2012 to evaluate simulation results based on a secondary organic aerosol
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(SOA) yield model and a volatility basis set (VBS) model.4 We found that
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concentrations of organic aerosol were better reproduced by a VBS model than a
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two-product SOA yield model, consistent with the results of previous studies (e.g.,
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Ahmadov et al.5). In addition, concentrations of aerosol nitrate were better reproduced
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by a model with dry-deposition velocities of nitric acid and ammonia enhanced by a
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factor of five, as was the case in a previous study.6
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In Japan, chemical transport models have been applied to estimate source
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contributions7,8 and health impacts.9 However, all of these estimates have been based on
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a two-product SOA yield model that underestimated the organic aerosol (OA)
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concentrations.10 Because OA makes a large contribution to PM2.5,11,12 source
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contributions and health impacts should be evaluated using a VBS model, which better
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reproduces OA concentrations over Japan.4
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In this study, we evaluated the sensitivities to aerosol models of simulated source
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contributions and health impacts of PM2.5. We first evaluated the source contributions to
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emission rates of atmospheric pollutants and to PM2.5 concentrations over Japan.
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Because the spatial and temporal distributions differ among PM2.5 chemical compounds,
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we also assessed the source contributions to PM2.5 chemical compounds. We then
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estimated the premature mortality associated with PM2.5 exposure over the long term
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and short term. In addition, we assessed the source contributions to PM2.5-related
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mortality. We then briefly discuss the relationship between source contributions to
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PM2.5 concentrations and PM2.5-related mortality. These analyses elucidated the impact
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of model uncertainty on estimates of PM2.5 sources and health impacts.
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METHODOLOGY
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Model system and sensitivity simulations.
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We simulated the distributions of gaseous and particulate species by using a
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three-dimensional CTM, the Models-3 Community Multiscale Air Quality (CMAQ,
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v5.0.2) modeling system developed by the U.S. Environmental Protection Agency.13
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Because the model setups were the same as those of Morino et al.,4 we have not
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included the details of the model here. In this study, we analyzed results of two
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sensitivity simulations, as summarized in Table S1 of the Supporting Information (SI).
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In both simulations, the chemical mechanism was based on the Carbon Bond
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Mechanism 05 (CB05) model of Yarwood et al..14 We used the sixth-generation aerosol
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module of CMAQ (AERO6, which is based on a SOA yield model), as well as the
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AERO6 coupled with a VBS model (AERO6VBS). The AERO6VBS simulation
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considered an aging reaction between OH radicals and semi-volatile organic compounds
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(SVOCs) produced from both anthropogenic and biogenic non-methane volatile organic
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compounds (NMVOCs) with a reaction rate of 2 × 10−11 cm3 molecule−1 s−1. In addition,
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in the AERO6VBS simulation, dry-deposition velocities for nitric acid (HNO3) and
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ammonia (NH3) were enhanced by a factor of 5, as in Shimadera et al..6 Meteorological
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fields were calculated with the Weather Forecast Research (WRF) model version 3.3.15
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For analysis nudging, we used the three-dimensional meteorological fields from the
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National Centers for Environmental Prediction Final Analysis datasets. Data for
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emissions from anthropogenic and natural sources in the simulation domains are
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summarized in Table S2 of SI. The two simulation domains of this study are shown in
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Figure 1. Domain 1 covered East Asia with a horizontal resolution of 60 km, and
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Domain 2 covered Japan with a horizontal resolution of 15 km. Monthly averaged data
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from the global chemical climate model, Chemical AGCM for Study of Atmospheric
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Environment and Radiative Forcing (CHASER)16 were used as the lateral boundary
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conditions for Domain 1. Interior data for Domain 1 were used as the lateral boundary
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conditions for Domain 2, which was 1-way nested within Domain 1.
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Morino et al. 4 conducted a comprehensive model evaluation of PM2.5 chemical
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composition. That study showed that model performance was significantly improved in
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the AERO6VBS simulation compared with the AERO6 simulation (Table 4 of Morino
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et al. 4). Simulation models have been shown to fail to reproduce concentrations of
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NO3– and OA in Japan6,10,17. As was the case in these previous studies, the AERO6
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simulation largely underestimated OA concentrations. The underestimation, which was
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a factor of ~3 in winter and summer, was resolved by the AERO6VBS simulation in
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summer, when the mean simulated-to-observed OA concentration ratio was 1.16. The
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AERO6 simulation also overestimated NO3– concentrations by factors of 3 (summer) to
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15 (winter). This overestimation was reduced by the AERO6VBS simulation, though
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NO3– in winter was still overestimated by a factor of 4. Although the AERO6VBS
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simulation somewhat underestimated SO42– and OA concentrations in winter and spring,
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it reproduced well the chemical composition of PM2.5. These improvements in model
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performance suggest that the AERO6VBS simulation will provide better estimates of
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the source contributions to PM2.5. We should note that unspeciated mass makes an
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important contribution to PM2.5.18 Because the chemical composition of this mass is
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unknown, the simulated concentration of this mass could not be verified. Thus, we did
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not focus on the evaluation of this unspeciated PM2.5 mass.
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To estimate the source contributions of individual emission sectors, we conducted 18
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sensitivity simulations. For 10 emission sectors (transport (TRAN), navigation (NAVI,
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marine shipping), industry (INDS), power plant (POWP), stationary evaporative sources
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(EVAP), biomass burning (BIOB), biogenic sources (BIOG), other NH3 (ONH3),
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volcano (VOLC), and others (OTHR)), we conducted sensitivity simulations with the
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emissions from these individual sectors reduced by 20%. Ikeda et al.7 have noted that
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sensitivity simulations using 20% perturbations and 50% perturbations implied very
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similar source contributions (agreement of annual mean PM2.5 concentrations within a
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few percent), the suggestion being that the effect of non-linearity was not large and that
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this sensitivity analysis provided reasonable results. The correspondence between the 10
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sector groups and the original categories of the emission inventories is summarized in
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Table S3 of SI. Because these sensitivity simulations were computationally expensive,
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we conducted these sensitivity simulations for 1 January to 29 February 2012 (winter),
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1 April to 31 May 2012 (spring), and 1 July to 31 August 2012 (summer), with a spin-up
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calculation of 10 days. To roughly evaluate the seasonality of source contributions to
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PM2.5 concentrations over Japan, we also conducted three year-long sensitivity
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simulations based on the AERO6VBS model. In these simulations, emissions were
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reduced by 20% from Japan, other countries, or marine shipping plus volcanoes. A
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year-long standard simulation was also conducted to estimate mortality associated with
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PM2.5.
146 147 148 149
Estimation of health impacts due to PM2.5. Mortality associated with PM2.5 pollution was estimated with the following equation19,20
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PM2.5-related Mortality = Baseline mortality × {1 — exp(—∆[PM2.5] βPM2.5).
(1)
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In eq. 1, ∆[PM2.5] represents the enhanced PM2.5 concentration and βPM2.5 represents
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the concentration–response (C–R) function for PM2.5 (βPM2.5 = ln(RRPM2.5)/∆[PM2.5],
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where RRPM2.5 represents the relative risk due to PM2.5 exposure). In previous estimates
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of PM2.5-related mortality using regional models19,21,22, βPM2.5 was mostly taken from
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epidemiological analyses based on cohort studies in the United States.23-25 To our
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knowledge, a C–R function for long-term PM2.5 exposure has not been assessed in
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Asian countries. Therefore, we used the RRPM2.5 data of Pope et al.23 (RRPM2.5 = 1.04,
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95% confidence intervals 1.01–1.08 per 10 µg m–3 increase in PM2.5) and Laden et al.24
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(RRPM2.5 = 1.16, 95% confidence intervals 1.07–1.26 per 10 µg m–3 increase in PM2.5) as
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lower and upper limits, respectively.
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The C–R function for short-term PM2.5 exposure has been assessed in many countries,
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including Japan27,28. In this study, we also estimated short-term health impacts of PM2.5
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using the βPM2.5 estimated from mortality and the PM2.5 data in 20 areas of Japan during
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2002–2004 28 (RRPM2.5 = 1.0053 ± 0.0019 per 10 µg m–3 increase in PM2.5). These data
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were used to estimate PM2.5-related mortality in each season. The RRPM2.5 for long-term
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PM2.5 exposure was larger than that for short-term exposure, because short-term
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mortality impacts are only a small part of the impact of total mortality.29
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In previous modeling studies, it has often been assumed that there is no threshold
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PM2.5 concentration in the C–R function22,30. However, recent studies have suggested
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that threshold PM2.5 values exist in the C–R function, a reflection of the fact that there is
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no excess risk associated with exposure below the counterfactual low-exposure
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level.31-33 To take account of this uncertainty, we evaluated long-term PM2.5-related
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mortality by setting the threshold value to either 0 µg/m3,22,30 2.4 µg m–3, 33 or 5.8 µg m–
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3 34
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Burden of Diseases study,33 lower thresholds were used in order to check sensitivities of
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the mortality estimates to three different thresholds. To our knowledge, threshold values
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have not been proposed for the C–R function in the case of short-term PM2.5 exposure.
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We therefore set the threshold to zero for the assessment of impacts due to short-term
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PM2.5 exposure. As noted earlier, in this study, reproduction of total PM2.5 concentration
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was not intended due to lack of knowledge about unspeciated PM2.5. Introduction of
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threshold values was therefore another source of uncertainty because of the nonlinearity
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of the C–R function. The effect of the nonlinear relationship between mortality and
. Although thresholds of 2.4–5.9 µg m–3 have been recommended in the latest Global
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concentrations should be further evaluated after unspeciated PM2.5 has been better
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identified.
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Baseline mortality was the sum of the 5-year age-specific number of deaths of
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persons older than 30 years; it was calculated by multiplying the number of persons in
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each age group in 2010 by the baseline mortality rate for that age group. We used the
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age-specific population data per grid obtained from the Statistics Bureau, Ministry of
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Internal Affairs and Communications in Japan. Data on age-specific mortality rates
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were obtained from the Ministry of Health Labour and Welfare. Table S4 and Figure S1
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of SI summarize the estimated populations and baseline mortalities in nine regions of
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Japan.
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RESULTS AND DISCUSSION Contributions of individual source sectors to emissions.
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Contributions of individual source sectors to emission rates of atmospheric pollutants
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are summarized in Figure 2. Over Domain 1, anthropogenic combustion sources made
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the largest contributions to emission rates of NOx, SO2, PM2.5, and CO, although their
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relative contributions differed among compounds. TRAN, POWP, and INDS sources
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made the largest contributions (70%–80% of the total) to NOx emissions, whereas INDS
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and POWP were major contributors to SO2 emissions (~80% of the total). Fossil fuel
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sources made large contributions to PM2.5 (60%–70%) and CO emissions (50%–55%),
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although OTHR (domestic sector and soil-NOx for East Asia Domain) and BIOB also
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made important contributions to these emissions. In particular, domestic emissions
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made important contributions to PM2.5; these contributions were highest in the winter,
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when fuel consumption for residential heating was estimated to be high.30
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Non-combustion sources made major contributions to NMVOC and NH3. The largest
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contributor to NMVOC was BIOG, followed by OTHR (domestic) and TRAN. Over
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Asia, fertilizer application and manure management contributed 55% and 19%,
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respectively, to emissions of NH3.35
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Several characteristics of emission sources differed between Japan and East Asia. First,
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VOLC made larger contributions to SO2 emissions (~80%) than anthropogenic
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combustion sources in Japan, and 13%–16% of the VOLC emissions came from the
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Miyake-jima volcano, which erupted in 2000. Second, the contributions of the domestic
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sector (OTHR) to emissions of NOx, CO, and PM2.5 were much smaller in Japan. Within
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the OTHR category, the commercial sector and waste burning made higher
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contributions to NOx and PM2.5 emissions than the domestic sector made. Third, EVAP
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made important contributions to emissions of total NMVOCs in Japan, and EVAP was
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the largest emitter of NMVOCs in winter. For NH3 emissions in Japan, manure
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management made higher contributions (52%) than fertilizer application (26%).36
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As shown in Figure S2 of SI, seasonal variations of emissions were especially large for
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NMVOCs because their major sources (EVAP and BIOG) underwent large seasonal
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variations. Seasonal variations of biogenic NMVOC emissions were more significant in
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mid-latitude regions than in tropical regions.37 Seasonal variations were therefore larger
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in Japan than in Asia. Emissions of NOx and SO2 were dominated by fossil-fuel
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combustion, and their seasonal variations were therefore relatively small. Emission rates
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of PM2.5 showed distinct seasonal variations in both East Asia and Japan. Emissions
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from domestic burning in East Asia were larger in winter, and those from biomass
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burning in Japan were higher in autumn (the harvest season).
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Sector-based source contributions to PM2.5 concentrations.
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Figure 3 summarizes the contributions of emission sources from both Japan and
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foreign countries Source contributions to simulated PM2.5 concentrations over nine
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regions of Japan. Both models showed that PM2.5 concentrations generally decreased
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from west to east in winter and spring, with the exception of the Kanto region. In
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contrast, during the summer, the PM2.5 concentration was highest over the Kanto region
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and lower in western and northern Japan.
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Both models simulated similar source contributions in all seasons, though contributions of ONH3, BIOG and EVAP differed largely between the two models. In winter, both model simulations indicated that ONH3 emissions made the highest
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contributions to PM2.5 over Japan. However, the resolution of the NO3– overestimation
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in the AERO6VBS model showed that the contributions of ONH3 from foreign
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countries decreased greatly. The OTHR (mostly domestic sources), TRAN, INDS, and
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POWP sectors also made important contributions.
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In spring, the contributions of ONH3 decreased, and the contributions of BIOG and
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EVAP slightly increased in the AERO6VBS model than in the AERO6 model. Overall,
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the INDS and POWP sectors from foreign countries made the highest contributions
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(28%–39% in total). The VOLC, BIOB, ONH3, and TRAN sectors also made nontrivial
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contributions.
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In summer, VOLC made the highest contributions (14%–25%); TRAN, INDS,
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POWP, and BIOG also made important contributions. Contributions of BIOG and
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EVAP in Japan were significantly increased by improvement of the OA model,
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particularly in and around the Kanto region.
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Contributions of domestic emissions were apparently highest in the Kanto region
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during all seasons (40%–60%). In particular, ONH3, TRAN, and INDS sources were
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the dominant sources in Japan. Emission rates of pollutants were particularly high over
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the Kanto region (e.g., Figure S3 of SI), and these high emission rates caused the
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contribution of Japanese emissions to PM2.5 to be particularly high. In contrast, the
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contributions of domestic emissions decreased in southwestern and northern Japan.
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Here we further discuss the factors controlling the simulated PM2.5 source
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contributions in two characteristic and contrasting regions, the Kyushu and Kanto
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regions (Figure 1). The Kyushu region is located in the southwestern edge of Japan and
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is affected mostly by transboundary pollution. In 2012, 34% of the Japanese population
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resided in the Kanto region, and emissions of anthropogenic pollutants there were the
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highest of all Japanese regions.
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Figure 4, Tables S5a-S5c and S6a-S6c of SI shows the source contributions to the
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chemical composition of PM2.5. Contributions of domestic sources were larger in the
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Kanto region than in the Kyushu region for all species during all seasons. In the Kyushu
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region, SO42– and OA concentrations were attributable mainly to foreign sources. Even
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in the cases of NO3– and EC, foreign sources made contributions that were higher or
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comparable to domestic sources in the winter and spring. In contrast, in the Kanto
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region, EC and NO3– were dominated by domestic sources. The OA was also dominated
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by domestic sources, particularly in the summer.
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The dominant sources of SO42– were INDS and POWP from foreign countries;
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VOLC also made important contributions in the Kanto and Kyushu regions. Although
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the source of NO3– appeared to be ONH3, the direct source of NOx was surely not
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ONH3 (Figure 2). However, because atmospheric NH3 reacts with gas-phase HNO3 to
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produce particulate NH4NO3, NH3 emissions are a critical factor controlling
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atmospheric NH4NO3 concentrations. In the improved model, the contribution of
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foreign ONH3 sources decreased significantly. Major sources of EC were TRAN and
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INDS in the Kanto region. INDS and OTHR sources from foreign countries also made
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important contributions in the Kyushu region.
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The source contributions to OA were generally rather complicated, a reflection of the
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fact that OA is composed of primary organic aerosol (POA) and SOA and that OA is
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composed of thousands of organic compounds.38 In the Kanto region, contributions of
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domestic sources to OA concentrations were larger than those of foreign sources in the
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winter and summer. TRAN in Japan made important contributions to OA in the winter
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because a transport sector is an important source of POA. In contrast, during spring and
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summer, BIOG and EVAP (major sources of NMVOCs) contributed much of the SOA
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in the Kanto region.
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The differences of OA concentrations between the two models were larger (smaller)
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in the Kanto region than in the Kyushu region during summer (spring) (Tables S5b and
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S5c). In summer, the contributions of BIOG and EVAP from Japan were higher by 0.52
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µg m−3 and 0.28 µg m−3, respectively, in the AERO6VBS model than in the AERO6
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model. Simulated OA concentration were therefore significantly higher in the Kanto
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region. In contrast, during the spring, simulated OA concentrations in the Kyushu
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region were higher in the AERO6VBS model than in the AERO6 model because
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contributions of EVAP (0.35 µg m−3), TRAN (0.21 µg m−3), and BIOB (0.12 µg m−3)
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from foreign counties were higher in the AERO6VBS model. The higher OA
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concentrations simulated by the AERO6VBS model were mostly associated with higher
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SOA concentrations that resulted from consideration of SOA aging reactions in the
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VBS module.4 Emission sources of VOCs, which are SOA precursors, therefore made
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larger contributions to OA in the AERO6VBS model. In Japan, regulation of VOC
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emissions began in 2005 to reduce air pollution associated with ozone and particulate
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matter. Assessment of the effectiveness of this regulation requires that the processes
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involved in formation of SOA be appropriately modeled. Thus, for assessment of
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compliance with this regulation, simulations with the AERO6VBS model are
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recommended.
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Between these two regions, the major sources of PM2.5 during high–PM2.5 events
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differed (Figure S4 of SI). In winter and spring, contributions of Japanese emissions
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decreased when PM2.5 concentrations were relatively high in the Kyusyu region.
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Contributions of ONH3 and OTHR from foreign countries increased in winter, and
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those of INDS and POWP from foreign countries increased in spring. In contrast,
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contributions of Japanese emissions increased when PM2.5 concentrations were
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relatively high in the Kanto region, where contributions of TRAN and INDS increased
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in winter and those of TRAN and ONH3 increased in spring. These results highlight the
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fact that high PM2.5 events were associated with transboundary pollution in the Kyushu
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region, whereas high PM2.5 concentrations were associated with local pollution in the
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Kanto region. This pattern was not as clear in summer.
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The factors that control and the processes that transport these PM2.5 chemical
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compounds have been discussed in previous studies. It has often been reported that
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SO42– is transported to Japan in spring, when the winds blow primarily from the
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west.10,39 In spring, emissions in central and northern China make the greatest
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contributions to SO42– aerosols and PM2.5 in Japan. Winds transport SO42– from the
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Asian continent to Japan even in summer, when the North Pacific anticyclone is located
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around Japan and southerly winds prevail. An analysis by Shimadera et al.6 has shown
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that when a high-pressure system prevails over the East China Sea and a low-pressure
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system passes north of Japan, synoptic westerly winds associated with this pressure
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pattern transport a large amount of SO42– from the Asian continent to Japan. Because
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local sources had dominant contributions to primary-emitted gaseous-NH3, NH4NO3
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was mostly from domestic sources in the Kanto Area. However, in the Kyushu Area,
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transboundary transport is the major contributor of NH4NO3 in the winter. NH4NO3
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produced in the Asian continent has been shown to be effectively transported to Japan,
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particularly when the rate of SO42– production is low.40 Local sources generally make
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larger contributions to primary particles, such as EC and POA, than to secondary
338
particles. In the Kanto Area, the dominant source of EC and POA is local burning of
339
fossil fuels.17 However, our model estimate is consistent with observational data and
340
trajectory analyses, which suggest that most EC is transported from the Asian continent
341
to western Japan from autumn to spring.41
342
There have been several estimates of sources of PM2.5 over Japan. Ikeda et al.7,10
343
analyzed the area-specific source contributions to PM2.5 over Fukue Island, a remote
344
western Japanese island, and over nine regions of Japan. Transboundary pollution made
345
the major contributions to PM2.5 over Fukue Island, and domestic sources accounted for
346
only 7% (spring) and 19% (summer). Contributions of domestic sources were 20%–
347
30% and 50% over western Japan and the Kanto area, respectively, roughly in accord
348
with our source estimates. Li et al. 42 analyzed the source–receptor relationships of
349
PM10 in East Asian countries. They found that domestic sources contributed 40% of
350
PM10 over Japan. These modeling results revealed that, on average, transboundary
351
pollution made higher contributions to PM2.5 and PM10 than domestic sources in Japan.
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We did not explicitly evaluate contributions from outside Asia in this study. Estimates
353
from multiple global models have indicated that contributions from sources of
354
emissions in other areas (North America, Europe, and South Asia) to area-averaged and
355
population-weighted PM2.5 concentrations over East Asia are 3% and 8%, respectively.34
356
Given the location of Japan in East Asia, it seems likely that contributions from sources
357
of emissions in areas other than East Asia to PM2.5 concentrations in Japan would be
358
smaller than these percentages. We therefore feel that contributions from other areas are
359
not important.
360 361
Mortality associated with PM2.5 estimated using simulation data.
362
We estimated annual premature mortality associated with PM2.5 over Japan based on
363
eq. 1 and simulation results of the AERO6VBS (Figure S5 of SI) and AERO6 (Figure
364
S6 of SI). Results of the AERO6VBS model indicated that long-term PM2.5-related
365
mortality was 21,600 (5527–41,924) and 79,207 (36,956–120,413) deaths per year
366
based on the βPM2.5 of Pope et al.23 and Laden et al.24, respectively, in the absence of a
367
threshold PM2.5 concentration (Table 1 of SI). These values were somewhat lower than
368
the estimates based on the AERO6 model (33,116 (8513–63,891) and 119,361 (56,403–
369
179,241), respectively). These differences were mostly explained by the decrease of
370
simulated NH4NO3 concentrations. The PM2.5-related mortality estimated in this study
371
is higher than the previous estimate by Nawahda et al.9 (6662 deaths per year), and
372
similar to that by Lelieveld et al.43 (25,516 deaths per year). We should note that the
373
estimated mortality was very sensitive to the threshold concentration, particularly with
374
relatively low PM2.5 concentrations in the case of the AERO6VBS simulation.
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We also estimated short-term PM2.5-related mortality using the βPM2.5 of Ueda et al.28
376
Based on the AERO6 and AERO6VBS models, PM2.5-related mortality was estimated
377
to be 4530 ± 1617 and 2939 ± 1050 deaths per year. Source contributions to
378
PM2.5-related mortality were estimated during three seasons (Figure 5). Because the
379
contribution of domestic sources to PM2.5 concentration was relatively high in
380
high-population areas, percentage contributions of domestic sources to PM2.5-related
381
mortality (48%, 35%, and 43% in winter, spring, and summer, respectively, Figure 5)
382
were higher than the percentage contributions to PM2.5 concentrations (30%, 26%, and
383
33%, respectively, Figure S7 of SI). Because the population and mortality were highest
384
in the Kanto region (Figure S4 of SI), PM2.5-related mortality was highest in the Kanto
385
region over Japan, followed by the Kansai and Kyushu regions (Figures S8 and S9 of
386
SI).
387
Based on three year-long sensitivity simulations, we here briefly discuss the seasonal
388
variations of PM2.5-related mortality (Figure 6). Contributions from domestic sources
389
were obviously higher in summer and winter than in spring and autumn. In summer,
390
SO42– and OA from domestic sources made important contributions, whereas in winter,
391
NO3– made the highest contributions to domestic PM2.5. In spring and autumn, SO42–
392
and OA were the largest contributors from foreign sources.
393
Recently, contributions of sectoral and regional sources of emissions to PM2.5-related
394
mortality have been evaluated using global models.43,44 Lelieveld et al.43 have estimated
395
that agricultural sources make the largest contributions to PM2.5-related mortality over
396
Japan, followed by the industrial, energy, residential, and transport sectors; our
397
estimates are similar, though natural emission sources (volcanoes and biogenic
398
NMVOC) made larger contributions in our study. Zhang et al. 44 have examined
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comprehensive source-receptor relationships with PM2.5 in 13 regions globally:
400
although they did not explicitly estimate contributions to and from Japan, they indicated
401
that contributions of Chinese emissions to other East Asian countries were comparable
402
to those from other parts of East Asia, the suggestion being that transboundary pollution
403
makes important contributions in East Asia.
404
We should note that there were several sources of uncertainty in these estimates. One
405
is in the simulation of PM2.5 concentrations. NO3– made a large contribution to PM2.5 in
406
the AERO6 model, and the degree of its overestimation was reduced by enhancing the
407
dry-deposition velocities of HNO3 and NH3. Based on aircraft measurements of power
408
plant plumes, Neuman et al.45 have suggested that dry-deposition velocities of HNO3
409
should be faster than traditional estimates, but the reasons for this difference are still
410
unresolved. Sources of OA are also uncertain because there are large uncertainties in the
411
aging reaction rates and emission profiles of SVOC and intermediate-volatility organic
412
compounds (IVOC) assumed in the VBS model46. Recently, measurements of organic
413
tracers or radiocarbons have been used to directly validate the simulated source
414
contributions of OA, 17,47,48 but few of these observational data are available currently.
415
Radiocarbon measurements have indicated that anthropogenic SOA and biogenic SOA
416
make comparable contributions in the northern TMA in the summer,17 and this behavior
417
was reproduced by the current AERO6VBS model (Figure 4). OA models should be
418
evaluated in detail with organic tracer measurements in the future. In addition,
419
characterization of unspeciated PM2.5 will be necessary to simulate total PM2.5 using
420
numerical models.
421
Another source of uncertainty is the C–R function. To our knowledge, there have
422
been no estimates of mortality due to long-term PM2.5 exposure over Asia. Because the
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423
C–R function might differ between continents or countries, a C–R function estimated in
424
the United States could lead to errors if it were applied in Japan. In addition,
425
PM2.5-related mortality might depend on the chemical composition of the particles.43,49
426
There have been several studies of the relationship between mortality and the chemical
427
composition of PM2.5 (e.g., Ueda et al.27), although there has been no consensus
428
regarding the differences of toxicity among PM2.5 compounds. There have been several
429
analyses of the association between source contributions to PM2.5 and its health
430
effects.50-51 These analyses likely will provide insights concerning the toxicity of
431
individual PM2.5 compounds. As already noted, treatment of the threshold PM2.5
432
concentration in the C–R function is also a source of uncertainty.
433
Spatial resolution is another concern. Because suburban cities are often smaller than a
434
grid size, primary particles such as EC cannot be well reproduced by a CTM.4 However,
435
Thompson et al.22 have shown that simulated PM2.5-related mortality in the United
436
States is not very sensitive to the horizontal resolutions of the CTM (36 km, 12 km, and
437
4 km). In Japan, secondary production makes a large contribution to PM2.5, and thus
438
simulated PM2.5-related mortality likely will not change much, even in simulations with
439
finer horizontal resolution.
440
Overall, the PM2.5-related mortalities simulated by the two models were within a
441
factor of 2–3 of each other, but estimated C–R functions differed by more than a factor
442
of 10. Nonetheless, to establish effective control strategies for air pollution, accurate
443
estimates of absolute and relative source contributions are necessary. We found that
444
both domestic and foreign sources made important contributions to PM2.5
445
concentrations and PM2.5-related mortality in Japan. Control of both domestic and
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foreign emissions will therefore be necessary to reduce health impacts due to PM2.5 in
447
Japan.
448 449
AUTHOR INFORMATION
450
Corresponding author
451
*
Phone: +81-29-850-2544; fax: +81-29-850-2480; e-mail:
[email protected] 452 453
ACKNOWLEDGEMENTS
454
This research was supported by the Environment Research and Technology
455
Development Fund (5-1408 and S12-1) of the Ministry of the Environment, Japan, and
456
by a Grant-in-Aid for Scientific Research (24310024) from the Ministry of Education,
457
Culture, Sports, Science, and Technology.
458
Supporting Information Available
459
Additional details of our analysis. This material is available free of charge via the
460
Internet at http://pubs.acs.org.e
461 462
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Table 1. All-cause mortality associated with long-term and short-term PM2.5 exposure. Relative risk per 10 μg m–3 increase in PM2.5 (RRPM2.5) RRPM2.5
Long-term23
Long-term24
Short-term28
1.04 (1.01 – 1.08)
1.16 (1.07 – 1.26)
1.0053 ± 0.0019
Mortality (deaths y–1, AERO6VBS) PM2.5
21,600 (5527 – 41,924)
79,207 (36,956 – 120,413)
PM2.5#1
1104 (280 – 2162)
4156 (1901 – 6448)
PM2.5#2
12,553 (3201 – 24,471)
46,609 (21,548 – 71,546)
SO42–
8384 (2134 – 16,384)
31,348 (14,418 – 48,371)
1134 ± 405
1983 (504 – 3886)
7477 (3417 – 11,611)
268 ± 96
EC
1712 (435 – 3355)
6457 (2951 – 10,030)
231 ± 82
OA
6027 (1533 – 11,790)
22,606 (10,372 – 34,968)
814 ± 291
NO3
–
2939 ± 1050
Mortality (deaths y–1, AERO6) PM2.5
33,116 (8513 – 63,891)
119,361 (56,403 – 179,241)
PM2.5#1
11,431 (2916 – 22,272)
42,383 (19,614 – 64,994)
PM2.5#2
24,178 (6195 – 46,847)
88,220 (41,313 – 133,677)
10,983 (2798 – 21,433)
40,908 (18,868 – 62,946)
1487 ± 532
NO3–
6287 (1599 – 12,295)
23,561 (10,818 – 36,419)
850 ± 304
EC
1913 (486 – 3749)
7213 (3296 – 11,203)
258 ± 92
OA
3708 (942 – 7262)
13,956 (6387 – 21,642)
500 ± 179
SO4
2–
4530 ± 1617
#1: Threshold PM2.5 concentration of 5.8 μg m–3, #2: Threshold PM2.5 concentration of 2.4 μg m–3.
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Figure 1. Model domain which covers Asia (Domain 1) with annual mean NOx emission rates (left). Model domain which covers Japan (Domain 2) with nine regions of Japan (right).
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TRAN BIOB
INDS ONH3
POWP OTHR
EVAP VOLC
BIOG NAVI
Asia Fraction of emission rates
1.0 0.8 0.6 0.4 0.2
winter spring summer
winter spring summer
winter spring summer
winter spring summer
winter spring summer
winter spring summer
0.0
NOx
SO2
CO
NMVOC
NH3
PM2.5
Japan Fraction of emission rates
1.0 0.8 0.6 0.4 0.2
winter spring summer
winter spring summer
winter spring summer
winter spring summer
winter spring summer
winter spring summer
0.0
NOx
SO2
CO
NMVOC
NH3
PM2.5
Figure 2. Sector-based emission rates of atmospheric pollutants (NOx, SO2, CO, NMVOC, NH3, and PM2.5) over East Asia (Domain 1) and Japan. Grouping of sectors are summarized in Table S2 of the Supporting Information (Abbreviations: TRAN, transport; INDS, industry; POWP, power plant; EVAP, stationary evaporative sources; BIOG, biogenic sources; BIOB, biomass burning; ONH3, other NH3; others, OTHR; VOLC, volcano; and NAVI, navigation).
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Figure 3. Sector-based source contributions to PM2.5 concentrations estimated by the AERO6 (left) and AERO6VBS (right) models. Bottom axis indicate nine regions of Japan (Figure 1). Abbreviations of sectors are the same with Figure 2.
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AERO6VBS
AERO6
1.0
2
1.5
1
2
1.5
-3
1
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
2.0
Winter Spring Summer
0
Kanto
Kyushu
Japan
Kanto
Kyushu
Japan
Kanto
Kyushu
Japan
Kanto
Kyushu
AERO6VBS
AERO6
0.5 2.0 1.5
1.0
1.0 1.5 0.5
0.8
0.5
0.6 1.0 0.4 1.5
0.2
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
Winter Spring Summer
2.0
Winter Spring Summer
0.0
Winter Spring Summer
2.0
0.0
Winter Spring Summer
0.0
1.0
-3
2.5
AERO6VBS
Japan
Kanto
Kyushu
Japan
Kanto
Kyushu
Japan
Kanto
Kyushu
Japan
Kanto
Kyushu
Contribution of domestic emissions (-)
0.0
Contribution of domestic emissions (-)
3.0
-3
1.0
3
Japan
AERO6
OA (g m )
4
Winter Spring Summer
2.0
0.5
5
Winter Spring Summer
0
0.0 6
EC (g m )
-3
SO42- (g m )
0.5 3
AERO6VBS Contribution of domestic emissions (-)
4
Contribution of domestic emissions (-)
0.0
NO3- (g m )
AERO6
Japan/Asia OTHR ONH3 BIOG BIOB EVAP POWP INDS TRAN Asia+Japan VOLC NAVI Contribution
Figure 4. Sector-based source contributions to PM2.5 chemical composition (SO42–, NO3–, OA, and EC) over whole Japan, Kanto region, and Kyushu region estimated by the AERO6 (left) and AERO6VBS (right) models. Contributions of emissions from Japan are also shown.
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Japan 1.0
20
15
0.6 10 0.4
-1
5
0.2
Mortality (death day )
Contributions (-)
0.8
Japan/Asia OTHR ONH3 BIOG BIOB EVAP POWP INDS TRAN Asia+Japan VOLC NAVI Mortality
AERO6VBS
Spring
AERO6
AERO6VBS
Winter
AERO6
AERO6VBS
0 AERO6
0.0
Summer
Figure 5. Sector-based source contributions to short-term PM2.5-related mortality estimated by the AERO6 (left) and AERO6VBS (right) models over Japan.
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1.0
8
6
0.6 4
-3
0.4
Conc (g m )
Contributions (-)
0.8
Asia+Japan vol + navi
2
0.2
Japan/Asia Others OA EC NH4 NO3 SO4
PM2.5 Conc. Dec
Nov
Oct
Sep
Aug
Jul
Jun
May
Apr
Mar
Feb
0 Jan
0.0
1.0
12 10 8
0.6 6 0.4 4 0.2
2
Japan/Asia Others OA EC NH4 NO3 SO4 Asia+Japan vol + navi mortality
Dec
Nov
Oct
Sep
Aug
Jul
Jun
May
Apr
Mar
Feb
0 Jan
0.0
Mortality (death/day)
Contributions (-)
0.8
2012
Figure 6. Seasonal variations of source contributions to PM2.5 concentrations and short-term PM2.5-related mortality estimated by the AERO6VBS models over Japan.
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