Grantee Research Project Results
Final Report: Center for Air, Climate, and Energy Solutions (CACES)
EPA Grant Number: R835873Center: Center for Air, Climate, and Energy Solutions
Center Director: Robinson, Allen
Title: Center for Air, Climate, and Energy Solutions (CACES)
Investigators: Robinson, Allen , Marshall, Julian D. , Adams, Peter , Apte, Joshua S. , Azevedo, Inês L , Burnett, Richard T , Coggins, Jay S. , Donahue, Neil , Ezzati, Majid , Hankey, Steve , Hill, Jason , Jaramillo, Paulina , Michalek, Jeremy J. , Millet, Dylan B , Muller, Nicholas , Pandis, Spyros N. , Polasky, Stephen , Pope, Clive Arden , Presto, Albert , Boies, Adam M. , Brauer, Michael , Matthews, H. Scott
Institution: Carnegie Mellon University , Virginia Tech , Brigham Young University , Middlebury College , The University of Texas at Austin , University of Washington , University of Minnesota , University of British Columbia , Health Canada - Ottawa , Imperial College
EPA Project Officer: Chung, Serena
Project Period: May 1, 2016 through April 30, 2021 (Extended to April 30, 2022)
Project Amount: $10,000,000
RFA: Air, Climate And Energy (ACE) Centers: Science Supporting Solutions (2014) RFA Text | Recipients Lists
Research Category: Airborne Particulate Matter Health Effects , Air , Climate Change , Human Health
Objective:
The Center for Air, Climate, and Energy Solutions (CACES) was a multidisciplinary, multi-institutional research center that focused on questions at the nexus of air, climate, energy and human health. CACES developed and applied novel measurement and modeling approaches to understand the spatial and temporal differences in human exposures to air pollution and associated health outcomes. CACES used models to investigate a range of technology and policy scenarios for addressing our nation’s air, climate, and energy challenges, and tested their potential ability to meet policy goals such as improved health outcomes and cost-effectiveness. CACES had cross-cutting themes of multi-pollutant, environmental justice, modifiable factors, regional differences and development and dissemination of tools for air quality impact assessment.
Summary/Accomplishments (Outputs/Outcomes):
CACES was comprised of five thematically and scientifically integrated research projects and one support center. Project 1 developed and evaluated a new class of reduced complexity models for air quality and exposure assessment and extended existing chemical transport models to high spatial resolution (1 km) with tagged source apportionment. Project 2 conducted comprehensive measurements in three cities (Oakland, CA; Pittsburgh, PA; Baltimore, MD) to quantify factors influencing gradients in pollutant concentrations, to evaluate model predictions, and to develop mechanistic understanding of how pollutant transformations affect population exposures. Project 3 developed multi-pollutant empirical exposure models at high spatial resolution (~0.1 km), national-scale and over multiple decades. Project 4 used tools developed in other projects to investigate key air, climate, and energy challenges and their interactions focusing on four main elements: electricity generation; transportation; agriculture; and economy- wide. Project 5 analyzed nationally representative population-based health data, combined with novel multi-pollutant exposure estimates and source contributions developed by Projects 1, 2 and 3, to derive new knowledge on multi-pollutant mortality risk and its variability across the U.S. This section provides an integrated discussion of the major findings of these five projects.
Air Quality Measurements
CACES measured spatial (intra-city, urban-to-rural, and inter-city) and temporal distributions of multiple air pollutants, including both criteria (e.g., PM2.5, NO2) and non-criteria (ultrafine particles and source-resolved PM2.5) pollutants. To characterize hyperlocal patterns in pollutant concentrations, we performed mobile monitoring (in-motion measurements using vehicle-mounted instruments) in three cities (Pittsburgh PA, Oakland CA, and Baltimore MD). We also developed and deployed networks of condensation particle counters and low-cost sensors in Pittsburgh. In this section, we briefly describe these measurements; in subsequent sections of the report, we describe the application of the data to develop empirical exposure models, to quantify the effects of modifiable factors in pollutant concentrations, and to evaluate exposure disparities by race-ethnicity and income.
To characterize the spatial variation in PM2.5 composition and sources, we performed mobile measurements with an Aerodyne high resolution aerosol mass spectrometer (HR-AMS) and an aethalometer. The mobile laboratory was slowly and repeatedly driven on pre-defined routes designed to systematically sample a variety of urban settings. Through repeated sampling, we characterized the spatial patterns associated with long-term exposure. Positive matrix factorization was performed on the HR-AMS data to decompose the measured PM2.5 in source-resolved components, including hydrocarbon organic aerosol (HOA) and cooking organic aerosol (COA). The measurements demonstrate that source-resolved PM2.5 is highly spatially variable within cities, and that these spatial variations can be attributed to known modifiable factors often associated with land use. In addition, the spatial patterns for these source-resolved pollutants are similar across multiple cities. Finally, traffic (HOA plus black carbon (BC)) and cooking (COA) emissions explain the majority of intraurban variability of PM2.5 mass.
To characterize the spatial variation in ultrafine particles (UFP) concentrations, we deployed a network of water-based condensation particle counters (CPC) at 32 sites in Pittsburgh and surrounding communities. Measurement sites were selected to span a range of urban land use attributes including urban background, near-local and arterial roads, traffic intersections, urban street canyon (downtown), near-highway, near large industrial source, and restaurant density. Across the Pittsburgh region, particle number concentrations varied by about a factor of four, which is two-to-three times more spatially heterogeneous than PM2.5 mass. The highest particle number concentrations were observed in urban street canyons, downwind of major highways, and near large industrial sources. The data from this CPC network were used as an independent validation test of a national UFP exposure model developed by CACES.
Finally, CACES developed and operated one of the first large-scale low-cost sensor networks in the US. The network was comprised of 60+ low-cost sensors that measured O3, NO2, CO, SO2, and PM2.5 deployed across the Pittsburgh region. This required developing improved methods for low-cost sensor calibration and data quality assurance. We developed non-parametric machine learning based calibration models for electrochemical sensors. These models often outperformed traditional linear models. We also demonstrated that generalized calibration models based on a subset of the monitors could be successfully applied to a much larger number of monitors with only a small performance penalty. This is particularly useful when deploying a large network, as only a subset of the monitors need to be collocated annually, thus reducing maintenance efforts significantly. We used data from the low cost-sensor network to quantify the contribution of large industrial sources to exposure disparities in the Pittsburgh data.
Development and Evaluation of Air Quality Models
A major focus of CACES was the development and evaluation of both mechanistic and empirical air quality models. Mechanistic models use knowledge of chemical and physical processes to predict concentrations of PM2.5 and other air pollutants. They complement purely empirical (statistical) models that are derived solely from observations. We used data collected by CACES (and archived data) to extensively evaluate model predictions.
The primary purpose of CACES modeling activities was to quantify the influence of modifiable factors on pollutant concentrations; to derive exposure estimates for health analyses; and to investigate disparities in pollutant exposure by race-ethnicity and income. The results from these applications are described in other sections of this report. This section focuses on CACES model development and evaluation activities
Mechanistic Modeling: CACES used two broad types of mechanistic models: chemical transport models (CTMs) and reduced-complexity models (RCMs). CTMs are highly detailed models requiring specialized expertise, large computing clusters, preparation of detailed input files, and generally months of time to analyze a set of scenarios. Reduced complexity models (RCMs) are newer and much simpler tools than CTMs. They are much faster and more accessible than CTMs and can be used to help link policy decisions to emissions to air quality and health outcomes. They offer the opportunity to bring rigorous consideration of air quality and public health impacts to decision analyses that previously omitted them, treated them simply, or considered only changes in emissions rather than changes in concentration and health endpoints. However, they are newer than CTMs and the necessary simplifications required to create them mean that they must be evaluated and used with care.
The CACES mechanistic modeling activities focused on RCMs. CACES investigators developed three RCMs: APEEP, EASIUR, and InMAP. Predictions from all three RCMs are available online (www.caces.us).
CACES RCM development activities included creation of very high spatial resolution (300 m) models for environmental justice analyses; development of a model that accounts for recent advances in our knowledge of organic particulate matter sources and chemistry (semi-volatile primary organic aerosol (POA), intermediate-volatility organic compounds (IVOCs), and multi-generational aging); and development of RCMs that can be used for applications outside the US. This work demonstrated the need for very high resolution (~1 km) analyses to capture race-ethnicity and other demographic differences in PM2.5 exposure. It also demonstrates that health damages per ton of VOC emitted vary strongly across source categories. Finally, we explored using machine learning approaches to build RCMs that better preserve a CTM-like structure while speeding up the computations via neural network emulators of key processes such as chemistry.
Given the simplifications required to derive RCM, robustness of their predictions is a concern. To evaluate this issue, we compared the predicted marginal social costs of the three RCMs. That intercomparison showed that, despite being derived in fundamentally different ways, the three RCMs predicted similar marginal social costs. For example, nationally averaged social costs agreed to within 10-40% depending on species and emissions height. This range is indicative of the uncertainty one might expect when doing a cost-benefit assessment of a broad (spanning the country) policy. This level of uncertainty is manageable and boosted confidence in RCMs for use in policy analyses. An important conclusion for managing uncertainty is to apply multiple models that are based on fundamentally different simplifying assumptions to the same policy scenarios. Consistency between predictions provides confidence in conclusions; inconsistency highlight areas that require additional study.
The CACES CTM development focused on evaluating the value-added associated with higher spatial resolution (1 km horizontal resolution) simulations. Perhaps not surprisingly, higher resolution simulations significantly improved predicted concentrations of primary and/or short-lived species such as NO2 and ultrafine particles (UFPs). In contrast, CTM predictions for total PM2.5 were only marginally improved by increasing CTM spatial resolution. This is not surprising given that much of PM2.5 mass is secondary and regional in nature. Probably the most important effect of resolution is better prediction of urban-rural gradients in PM2.5. Total population exposure and, therefore, total health damages associated with PM2.5 are very similar across 36 km, 12 km, 4 km, and 1 km model resolutions supporting the use of coarser model resolutions in environmental impact studies and other applications that prioritize total damages across the population.
Empirical Modeling: CACES developed a suite of national-scale, high spatial resolution empirical models to predict outdoor concentrations of multiple pollutants at census tract and census block group levels. We developed models for both criteria and non-criteria pollutants, including the first empirical models for UFPs, COA, HOA, and BC in the contiguous US. We also investigated model development using low-cost and mobile air quality data. Finally, we investigated novel land use covariates and different modeling frameworks. Predictions of many of these models are available for download via the CACES website (www.caces.us/data).
We developed a suite of empirical models to predict outdoor concentrations of criteria pollutant (O3, CO, SO2, NO2, PM2.5, PM10) concentrations throughout the contiguous U.S. Model estimates are annual-average values for the years 1979 – 2015 (O3, SO2, NO2), 1988 – 2015 (PM10), 1990-2015 (CO), and 1999-2015 (PM2.5). These models were derived using regulatory monitoring data, satellite information, publicly available land use variables, and a partial least squares – universal kriging modeling approach. We combined predictions of the CTM with the PM2.5 empirical model to derive species and source-resolved PM2.5 estimates at the county-scale for health analyses.
As part of a CACES-led ACE-center collaborative project, we compared predictions of our base criteria pollutant empirical models against six other (i.e., non-CACES) national empirical models. There is a relatively high level of agreement among the six national empirical models. For example, for year-2010 PM2.5, pairwise correlation (“r”) values are between 0.84 and 0.92 and RMSD (root-mean-square-difference) values are 0.83 – 1.43 μg/m3.
We also developed national empirical exposure models for non-criteria pollutants, including ultrafine particles (UFP), traffic organic aerosol (HOA), cooking organic aerosol (COA), and black carbon (BC). This is a challenging problem because of the lack of routine monitoring data for non-criteria pollutants. We demonstrated that a nationally representative dataset can be generated for even sparsely monitored pollutants through a careful and targeted sampling design. We achieved this by using a hybrid approach that combines both mobile and fixed site measurements. The mobile measurements were used to characterize the intraurban spatial patterns in pollutant concentrations; the fixed site measurements from urban and rural locations were used to characterize the interurban and regional patterns in pollutant concentrations. We used this hybrid approach to create the first national exposure models that predict UFP and source-resolved PM2.5 at high spatial resolution (census block group). In addition, the hybrid approach we developed is suitable for use for other pollutants not measured by national networks and/or require very expensive instrumentation. The models reveal that the spatial patterns of non-criteria pollutants were distinct from criteria pollutants with clear links to sources (e.g., restaurants for COA). Predictions of these models were used for health analyses at the census tract level.
We investigated the use of low-cost sensing data from the open-source PurpleAir PM2.5 sensor network to derive national models. We found that hybrid land use regression (LUR) models that include the low-cost network may better capture within-city variation than models derived using data from regulatory networks and satellites.
Finally, we investigated the value of novel land use variables and algorithms for empirical exposure modeling. This included: (1) Landsat satellite-derived Local Climate Zones (LCZs) with spatiotemporally varying landcover variables with historical coverage (back to ~1980s); (2) Google Point of Interest (POI) data that can provide microscale information on sources (e.g., restaurants, gas stations) that are not well covered by existing covariates; (3) Yelp data that adds detailed information on restaurant type and location; and (4) object identification from Google Street View (GSV) imagery. We found that integrating the Google POI data improves performance of empirical exposure models. We also found that machine learning (ML) models outperformed traditional approaches (e.g., stepwise forward selection models). In addition, ML approaches allow for creation of high performing exposure models with only the new microscale covariates (POI, GSV, and LCZ) and satellite-based air pollution measurements, highlighting the utility of a flexible ML approach and supporting our use of new covariates for exposure model building.
Effects of Modifiable Factors
Reducing the air pollutant health impacts effectively, efficiently, and equitably requires attributing them to specific emission sources and other modifiable factors. CACES used both measurements and models to quantify the contribution of different sources air pollutant concentrations. We used measured data to quantify the influence of important urban sources (traffic and restaurant cooking) on intraurban spatial patterns of PM2.5. We used RCMs to estimate the impact of different source categories in both economy-wide and sector-specific frameworks.
We used our spatially and source resolved measurements to investigate the influence of modifiable factors such as land use in air pollution concentration. In all three focus cities (Pittsburgh, Oakland, and Baltimore), traffic and cooking created more than half of the intraurban variability of PM2.5. Restaurant density and commercial land use-related variables are important predictors for the spatial variability of COA. Transportation and urbanicity-related variables are important predictors for the spatial variability of HOA. The results highlight the the potential importance of controlling commercial cooking emissions for air quality management in the US.
Using RCMs, we estimated air quality-related health effects of 428 distinct sectors of the United States economy. All sectors are major contributors to excess mortality risk, not just those dominated by tailpipes and smokestacks. However, half of air pollution-related deaths are attributable to just five activities: (i) electricity generation, (ii) passenger vehicle use, (iii) industrial boiler and combustion engine use, (iv) residential cooking and heating, and (v) livestock rearing. The diversity of sectors demonstrates the need for economy-wide regulatory strategies.
We also used integrated assessment models (IAMs) to compute marginal damages for PM2.5-related emissions for each county in the contiguous United States and matched location-specific emissions with these marginal damages to compute economy-wide gross external damage (GED) due to premature mortality. We found that economy-wide, GED has decreased by more than 20% from 2008 to 2014, underscoring the benefits of improved air quality. Four sectors, comprising less than 20% of the national gross domestic product (GDP), are responsible for ∼75% of GED attributable to economic activities. Given the substantial emission reductions in transportation and electricity generation, farms have become the largest contributor to air pollution damages from PM2.5-related emissions.
CACES also performed sector specific analyses. Given the importance of agricultural in our economy-wide analyses, much of the CACES sector-specific analysis focused on agriculture and food production. Using RCMs, we estimated that agricultural production in the United States results in 17,900 annual air quality–related deaths, 15,900 of which are from food production. Of those, 80% are attributable to animal-based foods, both directly from animal production and indirectly from growing animal feed. On-farm interventions can reduce PM2.5-related mortality by 50%, including improved livestock waste management and fertilizer application practices that reduce emissions of ammonia. Dietary shifts toward plant-based foods that maintain protein intake and other nutritional needs could reduce agricultural air quality–related mortality by 68 to 83%.
Food production also emits greenhouse gases. We found that even if fossil fuel emissions were immediately halted, current trends in global food systems would prevent the achievement of the 1.5°C target and, by the end of the century, threatening the achievement of the 2°C target. Therefore meeting climate targets will require rapid and ambitious changes to food systems as well as to all nonfood sectors.
In addition to agriculture and food production, we investigated the effects of changes in the electricity, transportation and natural gas sectors. Examples of this sector specific work include an analysis the implications of integrating health and climate when determining the best locations for replacing power plants with new wind, solar, or natural gas to meet a CO2 reduction target in the United States; quantifying the effects of changing emissions standard and atmospheric conditions on secondary organic aerosol for gasoline vehicle exhaust; and quantification of the cumulative effects of the shale gas boom in the Appalachian basin from 2004 to 2016 on air quality, climate change and employment. The breadth and extent of these analysis required collaboration across the entire CACES team.
Environmental Justice
Environmental justice was an important cross-cutting theme of CACES. We used the wealth of spatially-resolved data along with our empirical exposure models to investigate exposure disparities by race-ethnicity and income at both the urban and national scales. Our analyses show that exposure disparities vary by pollutant, year, and U.S. state; however, there are no examples of states that do not experience disparities. Where there are disparities, non-Hispanic White people experience lower-than-average exposures, and the most-exposed group is a racial- ethnic minority. In addition, concentration differences among racial-ethnic groups are larger than among income categories. An important goal of CACES was to move beyond simply characterizing exposure disparities and to begin attributing these disparities to modifiable factors. For example, using source-resolved PM2.5 measurements and RCMs, we investigated the contribution of different sources to the observed exposure disparities.
Using our national exposure models, we investigated exposure disparities by race-ethnicity and income. Our work considered changes in concentrations of six criteria pollutants from 1990 to 2010. We found that for all years and pollutants, the racial-ethnic group with the highest national average exposure was a racial-ethnic minority group. In 2010, the disparity between the racial-ethnic group with the highest versus lowest national-average exposure was largest for NO2 (64%) and smallest for O3 (4%). Absolute exposure disparities were much larger among racial- ethnic groups than among income categories. From 1990 to 2010, absolute racial-ethnic exposure disparities declined by between 35% (PM2.5) and 88% (CO). However, in 2010, racial-ethnic exposure disparities remained across income levels, in urban and rural areas, and in all states, for multiple pollutants.
At the urban scale, measured spatial patterns in source-resolved PM2.5 associated with modifiable factors leads to higher exposures for people of color. We showed that the magnitude of these disparities can vary from city-to-city, but the same disparities exist in all of our sampled cities and are driven by the same set of sources. Somewhat unexpectedly, commercial cooking created more disparities than traffic.
Analysis of air pollution data collected with Google Street View cars in San Francisco Bay Area revealed the complex interplay of the different spatial scales of air pollution and demographics. The data revealed that in the Bay Area systematic disparities by race-ethnicity are influenced by regional concentration gradients due to sharp contrasts in demographic composition among cities and urban districts, while within-group extremes arise from local peaks in pollutant concentrations. These findings could help inform the spatial scales for regulatory action.
Using RCMs, we investigated the specific emissions sources that contribute most to PM2.5 exposure and disparities in exposure by race-ethnicity and income across the contiguous United States. We linked PM2.5 exposure to the human activities responsible for PM2.5 pollution. We used these results to explore “pollution inequity”: the difference between the environmental health damage caused by a racial–ethnic group and the damage that group experiences. We showed that, in the United States, PM2.5 exposure is disproportionately caused by consumption of goods and services mainly by the non-Hispanic white majority, but disproportionately inhaled by black and Hispanic minorities. We found substantial geographic variation in the relative importance of individual source categories for exposure and exposure disparities. This suggests that there is no clear one-size-fits-all policy approach to mitigate inequitable exposure to air pollution across the United States. Instead, these findings and RCM models can help states prioritize efforts to further study and address the unique causes of environmental injustice within their borders.
Human Health
Using predictions of the CACES exposure models, we estimated multi-pollutant mortality risk surfaces using two large, unique, population-based U.S. datasets. We also investigated regional and temporal variability in risk and inequalities based on income, poverty, education and race. Several review/meta-analysis were also performed, including a review and discussion of 25 plus years of cohort studies and a formal meta-analytic analysis that was used to generate health impact functions to assess marginal changes in PM2.5.
National Health Interview Survey (NHIS) Cohort Studies: We conducted a series of studies using cohorts constructed from the U.S. National Health Interview Survey (NHIS) data linked to the national mortality death index. We performed analyses using both unrestricted (publicly available) data for metropolitan statistical areas (MSA) and restricted data at the census-tract level. The restricted data were accessed through the NCHS Research Data Center (RDC).
We found elevated risks of mortality, including cardiopulmonary mortality and lung cancer, associated with PM2.5 (Pope et al., Environ. Health Persp., 2019). Causal inference techniques were used to test the sensitivity of these associations to modelling approaches. The estimates were generally robust to model selection. The analysis of the restricted NHIS data was extended to include multiple pollutants, including PM2.5, PM2.5-10, and SO2, NO2, and O3 (Lefler et al. Environ Health 2019). The association between PM2.5 and mortality risk was the most robust and least sensitive to controlling for other pollutants. Smaller, less consistent associations were also observed for coarse fraction particulate matter (PM2.5-10) and sulfur dioxide (SO2).
We also investigated all-cause, cardiopulmonary, and cancer mortality associations with PM2.5 species and sources, including ultrafine particle concentrations. Cardiopulmonary mortality associations varied by species and source with evidence that elemental carbon, secondary organic aerosols, vehicle sources and cooking may be important contributors to mortality risk. With further validation, these findings could facilitate targeted pollution regulations that more efficiently reduce air pollution mortality.
In single-pollutant models, UFP was significantly associated with all-cause and cancer mortality. However, in two-pollutant models, mortality associations varied based on co-pollutant adjustment. UFP mortality associations were robust to controlling for PM2.5-10 and SO2, but not PM2.5.
To further investigate associations between air pollution and cancer risk, a series of analyses were conducted using the SEER Cancer Registry county-level cross-sectional data. All cancer and lung cancer were associated with PM2.5. PM2.5 exposures were also adversely associated with cardiopulmonary mortality for cancer patients and survivors, especially those who received chemotherapy or radiation treatment. Greenness was associated with decreased risk of cancer mortality; PM2.5 was associated with increased cardiopulmonary mortality (Coleman et al., Environ. Int., 2021).
County Mortality Data Studies Data on all deaths in the contiguous US from 1999 to 2015, with information on county of residence, were used to directly estimate the number of deaths, by age group and sex, and loss of life expectancy due to current PM2.5 using time-series of PM concentrations from LUR models in Project 3. Estimates were based on novel Bayesian spatiotemporal models that directly estimate the proportional (percent) increase in county-level age-specific death rates from cardiorespiratory diseases associated with the county’s annual PM2.5 concentration. We estimated that current air pollution concentrations are associated with a significant health burden after any reasonable control for other local determinants of mortality. Life expectancy loss due to PM2.5 was larger in counties with lower income than in wealthier counties, counties with a higher proportion of population whose family income is below the poverty threshold, with a higher proportion of population who are of Black or African American race, or with a lower proportion of population who graduated from high school, contributing to nationwide health inequalities. We also estimated that reductions in air pollution since 1999 have contributed to the longevity gains in the US population, with larger benefits especially in California and some southern states such as Alabama and Georgia, where PM2.5 declined more than the national average.
A thorough understanding of the long-term dynamics of seasonality of mortality, and its geographical and demographic patterns, is needed to identify at-risk groups, plan responses at the present time as well as under changing climate conditions. To address this need, we analyzed the seasonality of mortality by age group and sex from 1980 to 2016 in the USA and its subnational climatic regions, and investigated the impacts of temperature anomalies that are expected to increase with global climate change. We identified distinct seasonal patterns in relation to age group and sex, including elevated risks among young adults in the summertime. This led to an investigation if deaths from various unintentional (transport, falls and drownings) and intentional (assault and suicide) injuries might be affected by anomalously warm temperatures that occur today and are expected to become increasingly common as a result of global climate change. We defined a novel measure of anomalous temperature for each county and month, which represents the deviation from the county’s long-term average temperature in that month, which mimics the conditions that may arise with global climate change. We used a spatiotemporal model to estimate how cold and warm temperature anomalies are associated with deaths from various injuries. We found that a 1.5 °C anomalously warm year, as envisioned under the Paris Climate Agreement, would be associated with an estimated ~1,600 additional injury deaths mostly in adolescence to middle age.
Data democratization
A final goal of CACES was data democratization. Through the CACES support center, we provided multiple tools, models, and datasets in a publicly-available website, www.caces.us.
Download rates have grown over time. Currently download rates average ~70 data-downloads per month (i.e., more than 2 data-downloads per day), a rate that far exceeded our goals and expectations when we established the website.
Journal Articles: 136 Displayed | Download in RIS Format
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Bechle MJ, Millet DB, Marshall JD. Does urban form affect urban NO2 ? Satellite-based evidence for more than 1200 cities. Environmental Science & Technology 2017;51(21):12707-12716. |
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Bennett JE, Tamura-Wicks H, Parks RM, Burnett RT, Pope III CA, Bechle MJ, Marshall JD, Danaei G, Ezzati M. Particulate matter air pollution and national and county life expectancy loss in the USA: A spatiotemporal analysis. PLoS medicine. 2019 Jul;16(7). |
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Chambliss SE, Pinon CPR, Messier KP, LaFranchi B, Upperman CR, Lunden MM, Robinson AL Marchall, JD Apte, JS.Local-and regional-scale racial and ethnic disparities in air pollution determined by long-term mobile monitoring.PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE OF AMERICA 2021;118(37):e2109249118 |
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Clark LP, Millet DB, Marshall JD. Changes in transportation-related air pollution exposures by race-ethnicity and socioeconomic status:outdoor nitrogen dioxide in the United States in 2000 and 2010. Environmental Health Perspectives 2017;125(9):097012 (10 pp.). |
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Clark M, Hill J, Tilman D. The diet, health,and environment.Annual Review of Environment and Resources 2019; 43:109–134 |
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Drosatou AD, Skyllakou K, Theodoritsi GN, Pandis SN. Positive matrix factorization of organic aerosol:Insights from a chemical transport model. Atmospheric Chemistry and Physics 2019;19:973–86. |
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Fantke P, McKone TE, Tainio M, Jolliet O, Apte JS, Stylianou KS, et al. Global effect factors for exposure to fine particulate matter. Environmental Science & Technology 2019;53:6855–68 |
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Gilmore EA, Heo J, Muller NZ, Tessum CW, Hill J, Marshall J, Adams PJ. An inter-comparison of air quality social cost estimates from reduced-complexity models. Environmental Research Letters. 2019 Apr 18. |
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Giordano M, Mailings C, Pandis S, Presto A, McNiell V, Wetervelt D, Beekman M, Subrgamanian R. From low-cost sensors to high-quality data:A summary of challenges and best practices for effectively calibrating low-cost particulate matter mass sensors. JOURNAL OF AEROSOL SCIENCE 2021;158. |
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Goodkind AL, Tessum CW, Coggins JS, Hill JD, Marshall JD. Fine-scale damage estimates of particulate matter air pollution reveal opportunities for location-specific mitigation of emissions. Proceedings of the National Academy of Science 2019;116(18):8775-8780 |
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Gordon TD, Presto AA, Nguyen NT, Robertson WH, Na K, Sahay KN, Zhang M, Maddox C, Rieger P, Chattopadhyay S, Maldonado H, Maricq MM, Robinson AL. Secondary organic aerosol production from diesel vehicle exhaust: impact of aftertreatment, fuel chemistry and driving cycle. Atmospheric Chemistry and Physics 2014;14(9):4643-4659. |
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Gu P, Li HZ, Ye Q, Robinson ES, Apte JS, Robinson AL, Presto AA. Intracity variability of particulate matter exposure is driven by carbonaceous sources and correlated with land-use variables. Environmental Science & Technology 2018; 52:11545–11554 |
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Robinson ES, Gu P, Ye Q, Li HZ, Shah RU, Apte JS, Robinson AL, Presto AA. Restaurant impacts on outdoor air quality:Elevated organic aerosol mass from restaurant cooking with neighborhood-scale plume extents. Environmental Science & Technology 2018; 52:9285-9294 |
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Hankey S, Lindsey G, Marshall JD. Population-level exposure to particulate air pollution during active travel: planning for low-exposure, health-promoting cities. Environmental Health Perspectives 2017;125(4):527-534. |
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Hankey S, Marshall JD. Urban form, air pollution, and health. Current Environmental Health Reports 2017;4(4):491-503. |
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Heo J, Adams PJ, Gao HO. Public health costs accounting of inorganic PM2.5 pollution in metropolitan areas of the United States using a risk-based source-receptor model. Environment International 2017;106:119-126. |
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Hill J, Goodkind A, Tessum C, Thakrar S, Tilman D, Polasky S, Smith T, Hunt N, Mullins K, Clark M, Marshall J. Air-quality-related health damages of maize. Nature Sustainability2019:2;397-403 |
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Humes M, Wang M, Kim S, Machesky J, Gentner D, Robinson A, Donahue N, Presto A. Limited Secondary Organic Aerosol Production from Acyclic Oxygenated Volatile Chemical Products. ENVIRONMENTAL SCIENCE TECHNOLOGY 2022;56(8):4806-4815. |
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Jain S, Presto A, Zimmerman N. Spatial Modeling of Daily PM2.5, NO2, and CO Concentrations Measured by a Low-Cost Sensor Network:Comparison of Linear, Machine Learning, and Hybrid Land Use Models. ENVIRONMENTAL SCIENCE & TECHNOLOGY 2021;55(13):8631-8641. |
R835873 (2020) R835873 (Final) R836286 (Final) |
Exit Exit |
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Kaltsonoudis C, Kostenidou E, Louvaris E, Psichoudaki M, Tsiligiannis E, Florou K, Liangou A, Pandis SN. Characterization of fresh and aged organic aerosol emissions from meat charbroiling. Atmospheric Chemistry and Physics 2017;17(11):7143-7155. |
R835873 (2017) R835873 (2018) R835873 (Final) |
Exit Exit Exit |
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Kelp M, Gould T, Austin E, Marshall JD, Yost M, Simpson C, Larson T. Sensitivity analysis of area-wide, mobile source emission factors to high-emitter vehicles in Los Angeles. Atmospheric Environment 2020;223:117212 |
R835873 (2019) R835873 (Final) R834796 (Final) |
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Lane HM, Morello-Frosch R, Marshall JD, Apte JS. Historical redlining is associated with present-day air pollution disparities in U.S. cities. Environmental Science \amp; Technology Letters 2022. doi:10.1021/acs.estlett.1c01012. |
R835873 (Final) |
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Li HZ, Dallmann TR, Li X, Gu P, Presto AA. Urban organic aerosol exposure:spatial variations in composition and source impacts. Environmental Science & Technology 2018;52(2):415-426. |
R835873 (2017) R835873 (2018) R835873 (Final) |
Exit Exit Exit |
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Li HZ, Gu P, Ye Q, Zimmerman N, Robinson ES, Subramanian R, Apte JS, Robinson AL, Presto AA. Spatially dense air pollutant sampling:Implications of spatial variability on the representativeness of stationary air pollutant monitors. Atmospheric Environment:X. 2019 Apr 1;2:100012. |
R835873 (2018) R835873 (Final) R836286 (2018) R836286 (2019) |
Exit Exit |
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Liu L, Hwang T, Lee S, Ouyang Y, Lee B, Smith SJ, Tessum CW, Marshall JD, Yan F, Daenzer K, Bond TC. Health and climate impacts of future United States land freight modelled with global-to-urban models. Nature Sustainability 2019;2:105; doi:10.1038/s41893-019-0224-3. |
R835873 (2019) R835873 (2020) R835873 (Final) |
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Malings C, Westervelt DM, Hauryliuk A, Presto AA, Grieshop A, Bittner A, Beekmann M, R. Subramanian. Application of low-cost fine particulate mass monitors to convert satellite aerosol optical depth to surface concentrations in North America and Africa. Atmospheric Measurement Techniques 2020;13:3873–92. doi:10.5194/amt-13-3873-2020. |
R835873 (2019) R835873 (Final) |
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Messier KP, Chambliss SE, Alvarez RA, Brauer M, Choi JJ, Hamburg SP, Kerckhoffs J, LaFranchi B, Lunden MM, Marshall JD, Portier CJ, Roy A, Szpiro AA, Vermeulen RCH, Apte JS. Mapping air pollution with Google Street View cars:Efficient approaches with mobile monitoring and land use regression. Environmental Science & Technology 2018;52:12563-12572 |
R835873 (2018) R835873 (Final) |
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Muller NZ, Jha A. Does environmental policy affect scaling laws between population and pollution? Evidence from American metropolitan areas. PLoS One 2017;12(8):e0181407 (15 pp.). |
R835873 (2017) R835873 (Final) R835873C004 (2016) |
Exit Exit Exit |
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Muller NZ, Matthews PH, Wiltshire-Gordon V. The distribution of income is worse than you think: including pollution impacts into measures of income inequality. PLoS ONE 2018;13(3):e0192461 (15 pp.). |
R835873 (2017) R835873 (2018) R835873 (Final) |
Exit Exit |
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Muller NZ. Environmental benefit-cost analysis and the national accounts. Journal of Benefit-Cost Analysis 2018;9(1):27-66. |
R835873 (2017) R835873C004 (2016) |
Exit Exit |
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Nguyen NP, Marshall JD. Impact, efficiency, inequality, and injustice of urban air pollution: variability by emission location. Environmental Research Letters 2018;13(2):024002 (9 pp.). |
R835873 (2017) R835873 (2018) R835873 (Final) R833624 (Final) |
Exit Exit |
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Paolella DA, Tessum CW, Adams PJ, Apte JS, Chambliss S, Hill J, Muller NZ, Marshall JD. Effect of model spatial resolution on estimates of fine particulate matter exposure and exposure disparities in the United States. Environmental Science & Technology Letters 2018;5(7):436-441. |
R835873 (2017) R835873 (2018) R835873 (Final) |
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Parks RM, Bennett JE, Foreman KJ, Toumi R, Ezzati M. National and regional seasonal dynamics of all-cause and cause-specific mortality in the USA from 1980 to 2016. eLife 2018; 7:e35500. |
R835873 (2018) R835873 (2020) R835873 (Final) |
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Pope III CA, Ezzati M, Cannon JB, Allen RT, Jerrett M, Burnett RT. Mortality risk and PM2.5 air pollution in the USA: An analysis of a national prospective cohort. Air Quality, Atmosphere & Health 2018;11(3):245-252. |
R835873 (2017) R835873 (2018) R835873 (Final) |
Exit Exit |
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Pope III CA, Lefler JS, Ezzati M, Higbee JD, Marshall JD, Kim SY, Bechle M, Gilliat KS, Vernon SE, Robinson AL, Burnett RT. Mortality Risk and Fine Particulate Air Pollution in a Large, Representative Cohort of US Adults. Environmental health perspectives. 2019 Jul 24;127(7):077007. |
R835873 (2018) R835873 (Final) |
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Robinson ES, Shah RU, Messier K, Gu P, Li HZ, Apte JS, Robinson AL, Presto AA. Land-use regression modeling of source-resolved aerosol components from mobile Sampling. Environmental Science & Technology 2019; 53(15):8925-8937 |
R835873 (2018) R835873 (Final) |
Exit |
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Saha PK, Robinson ES, Shah RU, Zimmerman N, Apte JS, Robinson AL, Presto AA. Reduced ultrafine particle concentration in urban air: Changes in nucleation and anthropogenic emissions. Environmental Science & Technology 2018;52(12):6798-6806. |
R835873 (2017) R835873 (2018) R835873 (Final) |
Exit Exit Exit |
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Saha PK, Zimmerman N, Malings C, Hauryliuk A, Li Z, Snell L, Subramanian R, Lipsky E, Apte JS, Robinson AL, Presto AA. Quantifying high-resolution spatial variations and local source impacts of urban ultrafine particle concentrations. Science of the Total Environment. 2019; 655:473-81 |
R835873 (2018) R835873 (Final) R836286 (2018) R836286 (2019) |
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Saha PK, Li HZ, Apte JS, Robinson AL, Presto AA. Urban ultrafine particle exposure assessment with land-use regression:Influence of sampling strategy. Environmental Science & Technology 2019; 53:7326-7336 |
R835873 (2018) R835873 (Final) |
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Sergi B, Davis A, Azevedo I. The effect of providing climate and health information on support for alternative electricity portfolios. Environmental Research Letters 2018;13(2):024026 (10 pp.). |
R835873 (2017) R835873 (2018) R835873 (Final) |
Exit Exit Exit |
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Shah RU, Robinson ES, Gu P, Robinson AL, Apte JS, Presto AA. High spatial resolution mapping of aerosol composition and sources in Oakland, California using mobile aerosol mass spectrometry. Atmospheric Chemistry and Physics 2018; 18(22):16325–16344 |
R835873 (2018) R835873 (Final) |
Exit Exit |
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Skyllakou K, Rivera PG, Dinkelacker B, Karnezi E, Kioutsioukis I, Hernandez C, Adams PJ, Pandis SN. Changes in PM2.5 concentrations and their sources in the US from 1990 to 2010. Atmospheric Chemistry and Physics ;21(22):17115-17132. |
R835873 (2020) |
Exit |
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Tessum CW, Hill JD, Marshall JD. InMAP: a model for air pollution interventions. PLoS ONE 2017;12(4):e0176131 (26 pp.). |
R835873 (2016) R835873 (2017) R835873 (2018) R835873C001 (2016) |
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Tessum CW, Hil JD, Marshall JD. InMAP:A model for air pollution interventions. PLoS ONE 12, e0176131, 0.1371/journal.pone.0176131, 2017. |
R835873 (Final) R835873C001 (2016) |
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Tessum CW, Apte JS, Goodkind AL, Muller NZ, Mullins KA, Paolella DA, Polasky S, Springer NP, Thakrar SK, Marshall JD, Hill JD. Inequity in consumption of goods and services adds to racial–ethnic disparities in air pollution exposure. Proceedings of the National Academy of Sciences of the United States of America 2019; 116 (13):6001-6006 |
R835873 (2018) R835873 (Final) |
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Thakrar SK, Goodkind AL, Tessum CW, Marshall JD, Hill JD. Life cycle air quality impacts on human health from potential switchgrass production in the United States. Biomass and Bioenergy 2018;114:73-82. |
R835873 (2017) R835873 (2018) R835873 (Final) |
Exit Exit Exit |
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Thind MPS, Wilson EJ, Azevedo IL, Marshall JD. Marginal emissions factors for electricity generation in the Midcontinent ISO. Environmental Science & Technology 2017;51(24):14445–14452. |
R835873 (2017) R835873 (2018) R835873 (Final) |
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Tschofen P, Azevedo IL, Muller NZ. Fine particulate matter damages and value added in the United States economy. Proceedings of the National Academies of Science 2019; 116(40):19857-19862 |
R835873 (2018) R835873 (Final) |
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Vaishnav P, Horner N, Azevedo IL. Was it worthwhile? Where have the benefits of rooftop solar photovoltaic generation exceeded the cost? Environmental Research Letters 2017;12(9):094015 (14 pp.). |
R835873 (2017) R835873 (2018) R835873 (Final) R833864 (Final) |
Exit Exit Exit |
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Weis A, Jaramillo P, Michalek J. Consequential life cycle air emissions externalities for plug-in electric vehicles in the PJM interconnection. Environmental Research Letters 2016;11(2):024009 (12 pp.). |
R835873 (2016) R835873 (2017) R835873 (2018) R835873C001 (2016) R835873C004 (2016) |
Exit Exit Exit |
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Ye Q, Gu P, Li HZ, Robinson ES, Lipsky E, Kaltsonoudis C, Lee AKY, Apte JS, Robinson AL, Sullivan RC, Presto AA, Donahue NM. Spatial variability of sources and mixing state of atmospheric particles in a metropolitan area. Environmental Science & Technology 2018;52(12):6807-6815. |
R835873 (2017) R835873 (2018) R835873 (Final) |
Exit Exit Exit |
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Ye Q, Li HZ, Gu P, Robinson ES, Apte, Sullivan Ryan C., Robinson Allen L., Donahue Neil M., Presto Albert A. Moving beyond fine particle mass:High-spatial resolution exposure to source-resolved atmospheric particle number and chemical mixing state. Environmental Health Perspectives 2020;128:017009. doi:10.1289/EHP5311. |
R835873 (2019) R835873 (Final) |
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Zakoura M, Pandis SN. Overprediction of aerosol nitrate by chemical transport models: the role of grid resolution. Atmospheric Environment 2018;187:390-400. |
R835873 (2017) R835873 (2018) R835873 (Final) |
Exit Exit Exit |
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Zhao Y, Saleh R, Saliba G, Presto AA, Gordon TD, Drozd GT, Goldstein AH, Donahue NM, Robinson AL. Reducing secondary organic aerosol formation from gasoline vehicle exhaust. Proceedings of the National Academy of Sciences of the United States of America 2017;114(27):6984-6989. |
R835873 (2016) R835873 (2017) R835873 (2018) R835873 (Final) R835873C001 (2016) R835873C004 (2016) |
Exit Exit Exit |
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Zimmerman N, Presto AA, Kumar SPN, Gu J, Hauryliuk A, Robinson ES, Robinson AL, Subramanian R. A machine learning calibration model using random forests to improve sensor performance for lower-cost air quality monitoring. Atmospheric Measurement Techniques 2018;11(1):291-313. |
R835873 (2017) R835873 (2018) R835873 (Final) R836286 (2017) R836286 (2018) R836286 (2019) |
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Zimmerman N, Presto AA, Kumar SPN, Gu J, Hauryliuk A, Robinson ES, Robinson AL, Subramanian R. Closing the gap on lower cost air quality monitoring:machine learning calibration models to improve low-cost sensor performance. Atmospheric Measurement Techniques Discussions August 2017 [In review]. |
R835873 (2016) R836286 (2016) |
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Apte JS, Brauer M, Cohen AJ, Ezzati M, Pope CA. Ambient PM2.5 reduces global and regional life expectancy. Environmental Science & Technology Letters 2018;5:546–51. |
R835873 (2019) R835873 (Final) |
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Lu Q, Zhao Y, Robinson AL. Comprehensive organic emission profiles for gasoline, diesel, and gas-turbine engines including intermediate and semi-volatile organic compound emissions. Atmospheric Chemistry and Physics 2018;18:17637–54; doi:10.5194/acp-18-17637-2018. |
R835873 (2019) R835873 (Final) |
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Knibbs LD, van Donkelaar A, Martin RV, Bechle MJ, Brauer M, Cohen DD, Cowie CT, Dirgawati M, Guo Y, Hanigan IC, Johnston FH, Marks, GB, Marshal JD, Pereira G, Jalaludin B, Heyworth JS, Morgan GG, Barnett AG. Satellite-based land-use regression for continental-scale long-term Ambient PM2.5M exposure assessment in Australia. Environmental Science & Technology 2018;52:12445–55 |
R835873 (2019) R835873 (Final) |
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Zhao Y, Lambe AT, Saleh R, Saliba G, Robinson AL. Secondary organic aerosol production from gasoline vehicle exhaust:Effects of engine technology, cold start, and emission certification standard. Environmental Science & Technology 2018;52:1253–61. doi:10.1021/acs.est.7b05045. |
R835873 (Final) |
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Lefler JS, Higbee JD, Burnett RT, Ezzati M, Coleman NC, Mann DD, Marshall JD, Bechle M, Wang Y, Robinson AL, Pope, CA. Air pollution and mortality in a large, representative U.S. cohort:multiple-pollutant analyses, and spatial and temporal decompositions. Environmental Health 2019; 18:101 |
R835873 (2019) R835873 (Final) |
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Mayfield EN, Cohon JL, Muller NZ, Azevedo IML, Robinson AL. Cumulative environmental and employment impacts of the shale gas boom. Nature Sustainability 2019;2:1122–31. doi:10.1038/s41893-019-0420-1. |
R835873 (Final) |
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Tanzer R, Malings C, Hauryliuk A, Subramanian R, Presto AA. Demonstration of a Low-Cost Multi-Pollutant Network to Quantify Intra-Urban Spatial Variations in Air Pollutant Source Impacts and to Evaluate Environmental Justice. International Journal of Environmental Research and Public Health. 2019 Jan;16(14):2523. |
R835873 (Final) R836286 (2018) |
Exit Exit |
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Tanzer R, Malings C, Hauryliuk A, Subramanian R, Presto AA. Demonstration of a low-cost multi-pollutant network to quantify intra-urban spatial variations in air pollutant source impacts and to evaluate environmental justice. International Journal of Environmental Research and Public Health 2019;16:2523. doi:10.3390/ijerph16142523. |
R835873 (2019) R836286 (2019) |
Exit Exit |
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Ward JW, Michalek JJ, Azevedo IL, Samaras C, Ferreira P. Effects of on-demand ridesourcing on vehicle ownership, fuel consumption, vehicle miles traveled, and emissions per capital in U.S. States. Transportation Research Part C:Emerging Technologies 2019;108:289–301. doi:10.1016/j.trc.2019.07.026. |
R835873 (2019) R835873 (Final) |
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Dimanchev EG, Paltsev S, Yuan M, Rothenberg D, Tessum CW, Marshall JD, Selin NE. Health co-benefits of sub-national renewable energy policy in the US. Environmental Research Letters 2019;14(8):085012 |
R835873 (2019) R835873 (Final) R835872 (2018) R835872 (2019) |
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Zakoura M, Pandis SN. Improving fine aerosol nitrate predictions using a Plume-in-Grid modeling approach. Atmospheric Environment 2019;215:116887. doi:10.1016/j.atmosenv.2019.116887. |
R835873 (2019) R835873 (Final) |
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Lu T, Lansing J, Zhang W, Bechle MJ, Hankey S. Land use regression models for 60 volatile organic compounds:Comparing Google Point of Interest (POI) and city permit data. Science of The Total Environment 2019;677:131–41; doi:10.1016/j.scitotenv.2019.04.285. |
R835873 (2019) R835873 (Final) |
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Clark MA, Springmann M, Hill J, Tilman D. Multiple health and environmental impacts of foods. Proceedings of the National Academy of Sciences of the United States of America 2019;116:23357–62 |
R835873 (2019) R835873 (Final) |
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Xu H, Bechle MJ, Wang M, Szpiro AA, Vedal S, Bai Y, Marshall JD. National PM2.5 and NO2 exposure models for China based on land use regression, satellite measurements, and universal kriging. Science of The Total Environment 2019;655:423–33. doi:10.1016/j.scitotenv.2018.11.125. |
R835873 (2019) R835873 (Final) |
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Mayfield EN, Cohon JL, Muller NZ, Azevedo IML, Robinson AL. Quantifying the social equity state of an energy system:environmental and labor market equity of the shale gas boom in Appalachia. Environmental Research Letters 2019;14:124072. doi:10.1088/1748-9326/ab59cd. |
R835873 (Final) |
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Sergi B, Azevedo I, Xia T, Davis A, Xu J. Support for emissions reductions based on Immediate and long-term pollution exposure in China. Ecological Economics2019;158:26–33. doi:10.1016/j.ecolecon.2018.12.009. |
R835873 (Final) |
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Muller NZ. The derivation of discount rates with an augmented measure of income. Journal of Environmental Economics and Management 2019;95:87–101. doi:10.1016/j.jeem.2019.02.007. |
R835873 (2019) R835873 (Final) |
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Alotaibi R, Bechle M, Marshall JD, Ramani T, Zietsman J, Nieuwenhuijsen MJ, Khreis H. Traffic related air pollution and the burden of childhood asthma in the contiguous United States in 2000 and 2010. Environment International 2019;127:858–67. |
R835873 (2019) R835873 (Final) |
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Eilenberg SR, Subramanian R, Malings C, Hauryliuk A, Presto AA, Robinson AL. Using a network of lower-cost monitors to identify the influence of modifiable factors driving spatial patterns in fine particulate matter concentrations in an urban environment. Journal of Exposure Science & Environmental Epidemiology 2020;30(6):949-61. |
R835873 (2020) R835873 (Final) R836286 (Final) |
Exit Exit |
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Kelp MM, Jacob DJ, Kutz JN, Marshall JD, Tessum CW. Toward stable, general machine-learned models of the atmospheric chemical system. Journal of Geophysical Research-Atmospheres 2020;125:e2020JD032759. |
R835873 (2020) R835873 (Final) R840012 (2021) R840012 (2022) R840014 (2023) |
Exit Exit Exit |
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Zimmerman N, Li HZ, Ellis A, Hauryliuk A, Robinson ES, Gu P, Shah RU, Ye Q, Snell L, Subramanian R, Robinson AL, Apte JS, Presto AA. Improving correlations between land use and air pollutant concentrations using wavelet analysis:Insights from a low-cost sensor network. Aerosol Air Quality Resesearch 2020;20:314–28. doi:10.4209/aaqr.2019.03.0124. |
R835873 (2019) R835873 (Final) R836286 (2019) |
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Fabisiak JP, Jackson EM, Brink LL, Presto AA. A risk-based model to assess environmental justice and coronary heart disease burden from traffic-related air pollutants. Environ Health 2020;19:34 |
R835873 (2019) R835873 (Final) |
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Parks RM, Bennett JE, Tamura-Wicks H, Kontis V, Toumi R, Danaei G, Ezzati M. Anomalously warm temperatures are associated with increased injury deaths. Nature Medicine 2020;26:65–70. doi:10.1038/s41591-019-0721-y. |
R835873 (2019) R835873 (Final) |
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Kim S-Y, Bechle M, Hankey S, Sheppard L, Szpiro AA, Marshall JD. Concentrations of criteria pollutants in the contiguous U.S., 1979 – 2015:Role of prediction model parsimony in integrated empirical geographic regression. PLOS ONE 2020;15:e0228535 |
R835873 (2019) R835873 (Final) |
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Goodkind AL, Jones BA, Berrens RP. Cryptodamages:Monetary value estimates of the air pollution and human health impacts of cryptocurrency mining. Energy Research & Social Science 2020;59:101281 |
R835873 (2019) R835873 (Final) |
Exit Exit Exit |
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Malings C, Tanzer R, Hauryliuk A, Saha PK, Robinson AL, Presto AA, Subramanian R. Fine particle mass monitoring with low-cost sensors:Corrections and long-term performance evaluation. Aerosol Science and Technology 2020;54:160–74. doi:10.1080/02786826.2019.1623863. |
R835873 (2019) R835873 (Final) R836286 (2018) R836286 (2019) |
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Pope CA, Coleman N, Pond ZA, Burnett RT. Fine particulate air pollution and human mortality:25+ years of cohort studies. Environmental Research 2020;183:108924. doi:10.1016/j.envres.2019.108924. |
R835873 (2019) R835873 (Final) |
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Coleman NC, Burnett RT, Ezzati M, Marshall JD, Robinson AL, Pope CA. Fine particulate matter exposure and cancer incidence:Analysis of SEER cancer registry data from 1992-2016. Environmental Health Perspectives 2020;128(10); doi:10.1289/EHP7246. |
R835873 (Final) |
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Jorga SD, Kaltsonoudis C, Liangou A, Pandis SN. Measurement of formation rates of secondary aerosol in the ambient urban atmosphere using a dual smog chamber system. Environmental Science & Technology 2020;54:1336–43 |
R835873 (2019) R835873 (Final) |
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Lu Q, Murphy BN, Qin M, Adams PJ, Zhao Y, Pye HOT, Efstathiou C, Robinson AL. Simulation of organic aerosol formation during the CalNex study:Updated mobile emissions and secondary organic aerosol parameterization for intermediate-volatility organic compounds. Atmospheric Chemistry and Physics 2020;20:4313–32; doi:10.5194/acp-20-4313-2020. |
R835873 (2019) R835873 (Final) |
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Shah RU, Coggon MM, Gkatzelis GI, McDonald BC, Tasoglou A, Huber H, Gilman J, Warneke C, Robinson AL, Presto AA. Urban oxidation flow reactor measurements reveal significant secondary organic aerosol contributions from volatile emissions of emerging Importance. Environmental Science & Technology 2020;54:714–25. doi:10.1021/acs.est.9b06531. . |
R835873 (2019) R835873 (Final) |
Exit Exit |
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Skyllakou K, Rivera PG, Dinkelacker B, Karnezi E, Kioutsioukis I, Hernandez C, Adams PJ, Pandis SN. Changes in PM2.5 concentrations and their sources in the US from 1990 to 2010. Atmospheric Chemistry and Physics 2021;21:17115–32. doi:10.5194/acp-21-17115-2021. |
R835873 (Final) |
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Li J, Hauryliuk A, Malings C, Eilenberg SR, Subramanian R, Presto AA. Characterizing the aging of Alphasense NO2 sensors in long-term field deployments. ACS Sensors 2021;6:2952–9. doi:10.1021/acssensors.1c00729. |
R835873 (Final) |
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Coleman CJ, Yeager RA, Riggs DW, Coleman NC, Garcia GR, Bhatnagar A, Pope CA. Greenness, air pollution, and mortality risk:A U.S. cohort study of cancer patients and survivors. Environment International 2021;157:106797. doi:10.1016/j.envint.2021.106797. |
R835873 (Final) |
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Lu T, Marshall JD, Zhang W, Hystad P, Kim S-Y, Bechle MJ, Demuzere M, Hankey S. National empirical models of air pollution using microscale measures of the urban environment. Environmental Science & Technology 2021;55:15519–30. doi:10.1021/acs.est.1c04047. |
R835873 (Final) |
Exit |
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Presto AA, Saha PK, Robinson AL. Past, present, and future of ultrafine particle exposures in North America. Atmospheric Environment:X 2021;10:100109. |
R835873 (Final) |
Exit Exit |
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Balasubramanian S, Domingo NGG, Hunt ND, Gittlin M, Colgan KK, Marshall JD, Robinson AL, Azevedo IML, Thakrar SK, Clark MA, Tessum CW, Adams PJ, Pandis SN, Hill JD. The food we eat, the air we breathe:A review of the fine particulate matter-induced air quality health impacts of the global food system. Environ Res Lett. 2021;16:103004. doi:10.1088/1748-9326/ac065f. |
R835873 (Final) |
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Liang Y, Sengupta D, Campmier MJ, Lunderberg DM, Apte JS, Goldstein AH. Wildfire smoke impacts on indoor air quality assessed using crowdsourced data in California. Proceedings of the National Academy of Sciences of the United States of America 2021;118:. doi:10.1073/pnas.2106478118. |
R835873 (Final) |
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Parks RM, Benavides J, Anderson GB, Nethery RC, Navas-Acien A, Dominici F, Ezzati M, Kioumourtzoglou M-A. Association of tropical cyclones with county-level mortality in the US. JAMA 2022;327:946–55. doi:10.1001/jama.2022.1682. |
R835873 (Final) |
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Pond ZA, Hernandez CS, Adams PJ, Pandis SN, Garcia GR, Robinson AL, Marshall JD, Burnett R, Skyllakou K, Garcia Rivera P, Karnezi E, Coleman CJ, Pope CA. Cardiopulmonary mortality and fine particulate air pollution by species and source in a national U.S. cohort. Environmental Science & Technology 2022;56:7214–23. doi:10.1021/acs.est.1c04176. |
R835873 (Final) |
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Burnett RT, Spadaro JV, Garcia GR, Pope CA. Designing health impact functions to assess marginal changes in outdoor fine particulate matter. Environmental Research 2022;204:112245. doi:10.1016/j.envres.2021.112245. |
R835873 (Final) |
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Kontis V, Bennett JE, Parks RM, Rashid T, Pearson-Stuttard J, Asaria P, Zhou B, Guillot M, Mathers CD, Khang Y-H, McKee M, Ezzati M. Lessons learned and lessons missed:impact of the coronavirus disease 2019 (COVID-19) pandemic on all-cause mortality in 40 industrialised countries and US states prior to mass vaccination. Wellcome Open Research 2022;6:279. doi:10.12688/wellcomeopenres.17253.2. |
R835873 (Final) |
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Wang Y, Apte JS, Hill JD, Ivey CE, Patterson RF, Tessum CW, Marshall JD. Location-specific strategies for eliminating US national racial-ethnic PM2.5 exposure inequality. Proceedings of the National Academy of Sciences 2022;119(44). doi:10.1073/pnas.2205548119. |
R835873 (Final) |
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Pond ZA, Saha PK, Coleman CJ, Presto AA, Robinson AL, Arden Pope III C. Mortality risk and long-term exposure to ultrafine particles and primary fine particle components in a national U.S. Cohort. Environment International 2022;167:107439. doi:10.1016/j.envint.2022.107439. |
R835873 (Final) |
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Roth MB, Adams PJ, Jaramillo P, Muller NZ. Policy spillovers, technological lock-in, and efficiency gains from regional pollution taxes in the U.S. Energy and Climate Change 2022;3:100077. doi:10.1016/j.egycc.2022.100077. |
R835873 (Final) |
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Saha PK, Presto AA, Hankey S, Marshall JD, Robinson AL. Racial-ethnic exposure disparities to airborne ultrafine particles in the United States. Environmental Resesearch Letters 2022;17:104047. doi:10.1088/1748-9326/ac95af. |
R835873 (Final) |
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Garcia Rivera P, Dinkelacker BT, Kioutsioukis I, Adams PJ, Pandis SN. Source-resolved variability of fine particulate matter and human exposure in an urban area. Atmospheric Chemistry and Physics 2022;22:2011–27. doi:10.5194/acp-22-2011-2022. |
R835873 (Final) |
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Ward JW, Michalek JJ, Samaras C. Air pollution, greenhouse gas, and traffic externality benefits and costs of shifting private vehicle travel to ridesourcing services. Environmental Science & Technology 2021;55:13174–85. doi:10.1021/acs.est.1c01641. |
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Domingo NG, Balasubramanian S, Thakrar SK, Clark MA, Adams PJ, Marshall JD, Muller NZ, Pandis SN, Polasky S, Robinson AL, Tessum CW. Air quality–related health damages of food. Proceedings of the National Academy of Sciences 2021 ;118(20). |
R835873 (Final) |
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Coleman NC, Burnett RT, Higbee JD, Lefler JS, Merrill RM, Ezzati M, Marshall JD, Kim SY, Bechle M, Robinson AL, Pope CA. Cancer mortality risk, fine particulate air pollution, and smoking in a large, representative cohort of US adults. Cancer Causes & Control 2020:767-76. |
R835873 (Final) |
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Bekbulat B, Apte JS, Millet DB, Robinson AL, Wells KC, Presto AA, Marshall JD. Changes in criteria air pollution levels in the US before, during, and after Covid-19 stay-at-home orders:Evidence from regulatory monitors. Science of the Total Environment 2021;769:144693. |
R835873 (Final) |
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Demuzere M, Hankey S, Mills G, Zhang W, Lu T, Bechtel B. Combining expert and crowd-sourced training data to map urban form and functions for the continental US. Scientific data 2020 ;7(1):1-3.. |
R835873 (Final) |
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Davies B, Parkes BL, Bennett J, Fecht D, Blangiardo M, Ezzati M, Elliott P. Community factors and excess mortality in first wave of the COVID-19 pandemic in England. Nature Communications 2021 ;12(1):1-9. |
R835873 (Final) |
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Chambliss SE, Preble CV, Caubel JJ, Cados T, Messier KP, Alvarez RA, LaFranchi B, Lunden M, Marshall JD, Szpiro AA, Kirchstetter TW. Comparison of mobile and fixed-site black carbon measurements for high-resolution urban pollution mapping. Environmental Science & Technology 2020;54(13):7848-57. |
R835873 (Final) |
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Qin M, Murphy BN, Isaacs KK, McDonald BC, Lu Q, McKeen SA, Koval L, Robinson AL, Efstathiou C, Allen C, Pye HO. Criteria pollutant impacts of volatile chemical products informed by near-field modelling. Nature sustainability 2021 ;4(2):129-37. |
R835873 (Final) |
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Dinkelacker BT, Pandis SN. Effect of chemical aging of monoterpene products on biogenic secondary organic aerosol concentrations. Atmospheric Environment 2021;254:118381. |
R835873 (Final) |
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Bruchon MB, Michalek JJ, Azevedo IL. Effects of Air Emission Externalities on Optimal Ridesourcing Fleet Electrification and Operations. Environmental Science & Technology 2021 ;55(5):3188-200. |
R835873 (Final) |
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Thind MPS, Tessum CW, Azevedo IL, Marshall JD. Fine particulate air pollution from electricity generation in the US:Health impacts by race, income, and geography. Environmental Science & Technology 2019;53:14010–9. doi:10.1021/acs.est.9b02527. |
R835873 (2019) R835873 (Final) |
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Coleman NC, Ezzati M, Marshall JD, Robinson AL, Burnett RT, Pope III CA. Fine particulate matter air pollution and mortality risk among US cancer patients and survivors. JNCI cancer spectrum 2021:pkab001. |
R835873 (Final) |
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Hunt ND, Liebman M, Thakrar SK, Hill JD. Fossil energy use, climate change impacts, and air quality-related human health damages of conventional and diversified cropping systems in Iowa, USA. Environmental Science & Technology 2020 ;54(18):11002-14. |
R835873 (Final) |
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Clark MA, Domingo NG, Colgan K, Thakrar SK, Tilman D, Lynch J, Azevedo IL, Hill JD. Global food system emissions could preclude achieving the 1.5 and 2 C climate change targets. Science 2020;370(6517):705-8. |
R835873 (Final) |
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Tanzer-Gruener R, Li J, Eilenberg SR, Robinson AL, Presto AA. Impacts of modifiable factors on ambient air pollution:A case study of COVID-19 shutdowns. Environmental Science & Technology Letters. 2020 Jun 23;7(8):554-9. |
R835873 (Final) |
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Konstantinoudis G, Padellini T, Bennett J, Davies B, Ezzati M, Blangiardo M. Long-term exposure to air-pollution and COVID-19 mortality in England:a hierarchical spatial analysis. Environment international 2021 ;146:106316. |
R835873 (Final) |
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Tang R, Lu Q, Guo S, Wang H, Song K, Yu Y, Tan R, Liu K, Shen R, Chen S, Zeng L. Measurement report:Distinct emissions and volatility distribution of intermediate-volatility organic compounds from on-road Chinese gasoline vehicles:implication of high secondary organic aerosol formation potential. Atmospheric Chemistry and Physics 2021 ;21(4):2569-83. |
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Roth MB, Adams PJ, Jaramillo P, Muller NZ. Near term carbon tax policy in the US Economy:limits to deep decarbonization. Environmental Research Communications 2020 ;2(5):051004. |
R835873 (Final) |
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Sergi BJ, Adams PJ, Muller NZ, Robinson AL, Davis SJ, Marshall JD, Azevedo IL. Optimizing emissions reductions from the us power sector for climate and health benefits. Environmental science & technology 2020 ;54(12):7513-23. |
R835873 (Final) |
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Tessum CW, Paolella DA, Chambliss SE, Apte JS, Hill JD, Marshall JD. PM2. 5 polluters disproportionately and systemically affect people of color in the United States. Science Advances 2021 ;7(18):eabf4491. |
R835873 (Final) |
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Gasparik JT, Ye Q, Curtis JH, Presto AA, Donahue NM, Sullivan RC, West M, Riemer N. Quantifying errors in the aerosol mixing-state index based on limited particle sample size. Aerosol Science and Technology 2020 ;54(12):1527-41. |
R835873 (Final) |
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Thakrar SK, Balasubramanian S, Adams PJ, Azevedo IML, Muller NZ, Pandis SN, Polasky S, Pope CA, Robinson AL, Apte JS, Tessum CW, Marshall JD, Hill JD. Reducing mortality from air pollution in the United States by targeting specific emission sources. Environmetnal Science & Technology Letters 2020. doi:10.1021/acs.estlett.0c00424. |
R835873 (2019) R835873 (Final) |
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Sergi B, Azevedo I, Davis SJ, Muller NZ. Regional and county flows of particulate matter damage in the US. Environmental Research Letters 2020 ;15(10):104073. |
R835873 (Final) |
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Konstantinoudis G, Padellini T, Bennett J, Davies B, Ezzati M, Blangiardo M. Response to “Re:Long-term exposure to air-pollution and COVID-19 mortality in England:A hierarchical spatial analysis”. Environment International 2021 ;150:106427. |
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Garcia III GR, Coleman NC, Pond ZA, Pope III CA. Shape of BMI–Mortality Risk Associations:Reverse Causality and Heterogeneity in a Representative Cohort of US Adults. Obesity 2021 ;29(4):755-66. |
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Shah RU, Robinson ES, Gu P, Apte JS, Marshall JD, Robinson AL, Presto AA. Socio-economic disparities in exposure to urban restaurant emissions are larger than for traffic. Environmental Research Letters 2020 ;15(11):114039. |
R835873 (Final) |
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Saha PK, Sengupta S, Adams P, Robinson AL, Presto AA. Spatial correlation of ultrafine particle number and fine particle mass at urban scales: Implications for health assessment. Environmental Science & Technology 2020;54(15):9295-304. |
R835873 (Final) |
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Wang Y, Bechle MJ, Kim S-Y, Adams PJ, Pandis SN, Pope CA, Robinson AL, Sheppard L, Szpiro AA, Marshall JD. Spatial decomposition analysis of NO2 and PM2.5 air pollution in the United States. Atmospheric Environment 2020:117470. doi:10.1016/j.atmosenv.2020.117470. |
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Song R, Presto AA, Saha P, Zimmerman N, Ellis A, Subramanian R. Spatial variations in urban air pollution:Impacts of diesel bus traffic and restaurant cooking at small scales. Air Quality, Atmosphere & Health 2021. doi:10.1007/s11869-021-01078-8. |
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Ward JW, Michalek JJ, Samaras C, Azevedo IL, Henao A, Rames C, Wenzel T. The impact of Uber and Lyft on vehicle ownership, fuel economy, and transit across US cities. Iscience 2021;24(1):101933. . |
R835873 (Final) |
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Lu T, Bechle MJ, Wan Y, Presto AA, Hankey S. Using crowd-sourced low-cost sensors in a land use regression of PM2.5 in 6 US cities. Air Quality, Atmosphere & Health 2022. doi:10.1007/s11869-022-01162-7. |
R835873 (Final) |
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Tong F, Azevedo IM. What are the best combinations of fuel-vehicle technologies to mitigate climate change and air pollution effects across the United States?. Environmental Research Letters 2020 ;15(7):074046. Wang Y, Bechle MJ, Kim SY, Adams PJ, Pandis SN, Pope III CA, Robinson AL, Sheppard L, Szpiro AA, Marshall JD. Spatial decomposition analysis of NO2 and PM2. 5 air pollution in the United States. Atmospheric environment 2020 ;241:117470. |
R835873 (Final) |
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Cain KP, Liangou A, Davidson ML, Pandis SN. α-Pinene, Limonene, and Cyclohexene Secondary Organic Aerosol Hygroscopicity and Oxidation Level as a Function of Volatility. Aerosol and Air Quality Research 2021 ;21. |
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Supplemental Keywords:
air pollution, climate, energy, health effects, social cost, impact assessment, environmental justiceRelevant Websites:
Center for Air, Climate, and Energy Solutions Exit
Progress and Final Reports:
Original Abstract Subprojects under this Center: (EPA does not fund or establish subprojects; EPA awards and manages the overall grant for this center).
R835873C001 Mechanistic Air Quality Impact Models for Assessment of Multiple Pollutants at High Spatial Resolution
R835873C002 Air Quality Observatory
R835873C003 Next Generation LUR Models: Development of Nationwide Modeling Tools for
Exposure Assessment and Epidemiology
R835873C004 Air Pollutant Control Strategies in a Changing World
R835873C005 Health Effects of Air Pollution and Mitigation Scenarios
The perspectives, information and conclusions conveyed in research project abstracts, progress reports, final reports, journal abstracts and journal publications convey the viewpoints of the principal investigator and may not represent the views and policies of ORD and EPA. Conclusions drawn by the principal investigators have not been reviewed by the Agency.
Project Research Results
- 2020 Progress Report
- 2019 Progress Report
- 2018 Progress Report
- 2017 Progress Report
- 2016 Progress Report
- Original Abstract
136 journal articles for this center