Electricity
generation is a large contributor to fine particulate
matter (PM2.5) air pollution. However, the demographic
distribution of the resulting exposure is largely unknown. We estimate
exposures to and health impacts of PM2.5 from electricity
generation in the US, for each of the seven Regional Transmission
Organizations (RTOs), for each US state, by income and by race. We
find that average exposures are the highest for blacks, followed by
non-Latino whites. Exposures for remaining groups (e.g., Asians, Native
Americans, Latinos) are somewhat lower. Disparities by race/ethnicity
are observed for each income category, indicating that the racial/ethnic
differences hold even after accounting for differences in income.
Levels of disparity differ by state and RTO. Exposures are higher
for lower-income than for higher-income, but disparities are larger
by race than by income. Geographically, we observe large differences
between where electricity is generated and where people experience
the resulting PM2.5 health consequences; some states are
net exporters of health impacts, other are net importers. For 36 US
states, most of the health impacts are attributable to emissions in
other states. Most of the total impacts are attributable to coal rather
than other fuels.
Environmental consequences of electricity generation are often determined using average emission factors. However, as different interventions are incrementally pursued in electricity systems, the resulting marginal change in emissions may differ from what one would predict based on system-average conditions. Here, we estimate average emission factors and marginal emission factors for CO, SO, and NO from fossil and nonfossil generators in the Midcontinent Independent System Operator (MISO) region during years 2007-2016. We analyze multiple spatial scales (all MISO; each of the 11 MISO states; each utility; each generator) and use MISO data to characterize differences between the two emission factors (average; marginal). We also explore temporal trends in emissions factors by hour, day, month, and year, as well as the differences that arise from including only fossil generators versus total generation. We find, for example, that marginal emission factors are generally higher during late-night and early morning compared to afternoons. Overall, in MISO, average emission factors are generally higher than marginal estimates (typical difference: ∼20%). This means that the true environmental benefit of an energy efficiency program may be ∼20% smaller than anticipated if one were to use average emissions factors. Our analysis can usefully be extended to other regions to support effective near-term technical, policy and investment decisions based on marginal rather than only average emission factors.
We quantify and compare three environmental impacts from
inter-regional
freight transportation in the contiguous United States: total mortality
attributable to PM2.5 air pollution, racial–ethnic
disparities in PM2.5-attributable mortality, and CO2 emissions. We compare all major freight modes (truck, rail,
barge, aircraft) and routes (∼30,000 routes). Our study is
the first to comprehensively compare each route separately and the
first to explore racial–ethnic exposure disparities by route
and mode, nationally. Impacts (health, health disparity, climate)
per tonne of freight are the largest for aircraft. Among nonaircraft
modes, per tonne, rail has the largest health and health-disparity
impacts and the lowest climate impacts, whereas truck transport has
the lowest health impacts and greatest climate impactsan important
reminder that health and climate impacts are often but not always
aligned. For aircraft and truck, average monetized damages per tonne
are larger for climate impacts than those for PM2.5 air
pollution; for rail and barge, the reverse holds. We find that average
exposures from inter-regional truck and rail are the highest for White
non-Hispanic people, those from barge are the highest for Black people,
and those from aircraft are the highest for people who are mixed/other
race. Level of exposure and disparity among racial–ethnic groups
vary in urban versus rural areas.
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