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Policy Analysis
Emission Impacts of Electric Vehicles in the US Transportation Sector Following Optimistic Cost and Efficiency Projections Azadeh Keshavarzmohammadian, Daven K. Henze, and Jana B Milford Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.6b04801 • Publication Date (Web): 11 Apr 2017 Downloaded from http://pubs.acs.org on April 15, 2017
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Environmental Science & Technology
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Emission Impacts of Electric Vehicles in the US
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Transportation Sector Following Optimistic Cost
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and Efficiency Projections
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Azadeh Keshavarzmohammadian†, Daven K. Henze†, Jana B. Milford*,†
5
†
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80309-0427, United States
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KEYWORDS: Electric vehicles, MARKAL, EPA US 9-region database, well-to-wheels analysis
8
TOC ART
9
10
2010
Compact ICEV
Compact BEV200
Use Phase Processing Upstream
Compact BEV100
Compact ICEV
Optimistic Scenario
Compact BEV200
400 350 300 250 200 150 100 50 0
Compact BEV100
WTW GHG (g CO2-eq mi -1 )
Department of Mechanical Engineering, University of Colorado at Boulder, Boulder, CO
2030
ABSTRACT
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This study investigates emission impacts of introducing inexpensive and efficient electric
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vehicles into the US light duty vehicle (LDV) sector. Scenarios are explored using the
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ANSWER-MARKAL model with a modified version of the Environmental Protection Agency’s
14
(EPA) 9-region database. Modified cost and performance projections for LDV technologies are
15
adapted from the National Research Council (2013) optimistic case. Under our optimistic
16
scenario (OPT) we find 15% and 47% adoption of battery electric vehicles (BEVs) in 2030 and
17
2050, respectively. In contrast, gasoline vehicles (ICEVs) remain dominant through 2050 in the
18
EPA reference case (BAU). Compared to BAU, OPT gives 16% and 36% reductions in LDV
19
greenhouse gas (GHG) emissions for 2030 and 2050, respectively, corresponding to 5% and 9%
20
reductions in economy-wide emissions. Total nitrogen oxides, volatile organic compounds, and
21
SO2 emissions are similar in the two scenarios due to inter-sectoral shifts. Moderate, economy-
22
wide GHG fees have little effect on GHG emissions from the LDV sector, but are more effective
23
in the electricity sector. In the OPT scenario, estimated well-to-wheels GHG emissions from full-
24
size BEVs with 100-mile range are 62 gCO2-e mi-1 in 2050, while those from full-size ICEVs are
25
121 gCO2-e mi-1.
26
INTRODUCTION
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A variety of alternative fuels, vehicle technologies, and policy options have been considered to
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reduce dependence on oil and emissions from the transportation sector.1-4 In particular,
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greenhouse gas (GHG) emissions from light duty vehicles (LDVs) can be reduced by improving
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efficiency of vehicles with conventional internal combustion engines (ICEVs) and hybrid electric
31
vehicles (HEVs) via load reductions and powertrain improvements; however, deeper reductions
32
may require electrification. 5
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This study evaluates potential emissions implications of future use of electric vehicles (EVs) in
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the LDV sector, following optimistic assumptions about improvements in vehicle cost and
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efficiency. We use an integrated energy system model to evaluate how the US energy system
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might respond to increased EV penetration. Although EVs, both plug-in hybrid (PHEV) and all-
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electric (BEV), have low or no tailpipe emissions, they may lead to indirect emissions,
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depending on the technology used to generate electricity for battery charging.5-9 Moreover,
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increased penetration of EVs could shift emissions in sectors beyond electricity generation.10 For
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example, increased EV penetration could draw natural gas from the industrial sector to the
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electricity sector and push the industrial sector to use more carbon-intensive fuels.
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Prior studies have examined potential reductions in fuel use and GHG emissions from the
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LDV sector, including through introducing EVs.5-8,11-15 Some of these studies examined how to
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reduce emissions to a set target level;5,8,14,15 others examined reductions achievable under
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specified policies.6,7,11-13 The prior studies examined specific pathways such as demand
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reductions or use of alternative fuels and technologies; some investigate electrification in
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particular.5-7,10-14 However, recent advances in EV technology have outpaced vehicle cost and
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performance assumptions used in earlier assessments, so consideration of more optimistic
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projections is needed. Furthermore, most prior studies of implications of EV introduction have
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focused on the transportation and electricity sectors alone without considering implications for
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energy use in other parts of the economy. 5-8,11-15 Although some studies have accounted for “life
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cycle” emissions upstream of the electric sector,5,11-15 they still lack the inter-sectoral
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connections of an integrated model and a feasibility check for their exogenous assumptions such
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as the assumed penetration rates of EVs. Integrated assessments are needed to develop
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coordinated policies covering LDVs within the whole energy sector.5
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In one of the few previous cross-sectoral studies, Yeh et al. (2008) applied the integrated
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energy modeling system ANSWER-MARKAL with the 2008 US EPA 9-Region (US9R)
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database to evaluate CO2 emission reductions and fuel use in the LDV sector considering PHEVs
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and ethanol flex-fuel vehicles, but not BEVs, as alternative technologies.9 Their study suggests
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that a tight economy-wide cap is required to be able to sharply reduce CO2 emissions from the
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transportation sector.9 Loughlin et al.10 included deploying PHEVs and BEVs among the
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pathways they investigated for reducing NOx emissions, using the 2014 EPA US9R database.
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They find the EV pathway to be complicated due to offsetting emissions from inter-sectoral
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shifts.10 Rudokas et al.16 used MARKAL with the 2012 US9R database and examined the
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influence of system-wide CO2 emissions fees or a 70% CO2 emissions cap on the transportation
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sector, looking out to the year 2050. They find that EV penetration increases with a
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transportation sector CO2 emissions cap, but see little influence of economy-wide emissions fees
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on that sector.16 Babaee et al.17 developed a US dataset for the MARKAL-EFOM (TIMES)
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model and investigated combined HEV and EV penetration and associated emissions under
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numerous combinations of assumptions about natural gas and oil prices, CO2 emissions cap,
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renewable portfolio standards and battery costs. They find low battery costs to be an important
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driver of EV and HEV adoption.17 However, their national-level model ignores regional trades
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and fuel supply curves, transmission constraints and energy conversion and processing
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technologies other than power plants. Furthermore, while Babaee et al.17 investigated the effect
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of battery cost on EV penetration, their study ignores the effect of other technology
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improvements on efficiency and cost, not only for EVs but also for other LDV technologies.
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Unlike these prior studies, here we develop scenarios representing consistent optimistic
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technology advances across ICEVs and EVs to investigate the effect of these advances on
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emissions not only from the LDV sector, but also from the whole US energy system.
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In this study, we use ANSWER-MARKAL in connection with the EPA US9R database
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(version v1.1; 2014) to examine the impacts of greater EV penetration in the US LDV fleet from
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now to 2055. Compared to prior studies, the model includes a relatively comprehensive suite of
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available and viable forthcoming technologies, focusing on improved ICEVs and EVs, for
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meeting demand for energy services in all economic sectors, including the LDV portion of the
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transportation sector. Rather than pre-specifying mixes of energy sources and shares of
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technologies in any of the sectors of the economy, we use an optimization model to determine
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the least costly choices for meeting demand, with key cost and performance assumptions detailed
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below. We modeled an optimistic scenario by adapting cost and efficiency estimates for ICEV
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and EV technologies from the optimistic case developed by the National Research Council
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Committee on Transitions to Alternative Vehicles and Fuels (NRC, 2013).5 As shown below, this
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case projects greater improvements in vehicle efficiency and cost than assumed in previous
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analyses. We compare results from this optimistic scenario with those from EPA’s original 2014
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US9R database. We also examine how the energy system responds to GHG fees with and
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without the optimistic LDV assumptions, and examine the sensitivity of the results with respect
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to the future level of LDV travel demand, oil prices, and fees. In addition, we estimate well-to-
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wheel (WTW) GHG, SO2, and NOx emissions for BEV and gasoline ICEV technologies based
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on our OPT scenario results.
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METHODS
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ANSWER-MARKAL
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MARKAL uses linear programming to estimate energy supply shifts over a multi-decadal
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timeframe, finding the least-cost means to supply specified demands for energy services subject
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to user-defined constraints, assuming a fully competitive market.18 The model computes energy
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balances at all levels of an energy system from primary sources to energy services, supplies
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energy services at minimum total system cost, and balances commodities in each time period.18
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Outputs consist of the penetration of various energy supply technologies at both regional and
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national levels, technology-specific fuel use by type, and conventional air pollutant and GHG
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emissions.
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EPA US9R Database
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The 2014 EPA US9R database provides inputs to the MARKAL model for nine US regions
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(shown in Figure S1) and an international import/export region. The database specifies technical
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and cost features of current and future technologies at five-year intervals, with a structure that
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connects energy carriers (e.g., output of mining or importing technologies) to conversion or
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process technologies (e.g., power plants and refineries) and in turn to the transportation,
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residential, industrial, and commercial end-use sectors. Demand for energy services of end-use
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sectors is given from 2005 through 2055. Primary energy supplies are specified via piece-wise
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linear supply curves. The database includes comprehensive treatment of air pollutant emissions
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from energy production, conversion, and use, accounting for existing control requirements and
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including a range of additional control options. Current regulations including Renewable
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Portfolio Standards and biofuel mandates are included as constraints. The database includes joint
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Corporate Average Fuel Economy (CAFE) and GHG emission standards for LDVs, requiring
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average fuel economy for passenger cars and light trucks of 34.1 mpg by 2016, rising to 54.5
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mpg by 2025.19,20 The 2015 Clean Power Plan (CPP) requirements are not included, since they
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were not finalized at the time of the 2014 release.21 All costs are presented in 2005 US dollars,
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with deflator factors from the Department of Commerce Bureau of Economic Analysis used to
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adjust prices to the base year. More details are provided in the US9R database documentation.22
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Future LDV transportation demand in the US9R database is specified based on Annual Energy
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Outlook (AEO) 2014 projections,23 allocated to the model’s nine regions and to seven vehicle
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size classes ranging from mini-compacts to light trucks. Demand rises from 2687 billion vehicle
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miles traveled (bVMT) in 2005 to 3784 bVMT in 2055. This future demand can be met with
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gasoline (conventional), diesel, ethanol, CNG, and liquefied petroleum gas (LPG) or flex-fueled
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ICEVs; HEVs; PHEVs; fuel cell vehicles; and BEVs. PHEVs have 20 or 40-mile ranges; BEVs
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have 100 and 200-mile ranges. All technology and fuel combinations are available in all size
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classes, except that mini-compact cars have limited options. That is, mini-compact cars are only
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available for ICEVs, and BEVs. Technology-specific hurdle rates are used to reflect customer,
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market, and infrastructure barriers. Hurdle rates range from 18% for gasoline and diesel ICEVs
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to 28% for BEVs. Cost and efficiency of vehicles other than BEVs are taken from AEO2014
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projections and data from EPA’s Office of Transportation and Air Quality. Cost and efficiency
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estimates for BEVs are based on expert judgment.24 Emissions factors are calculated from the
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EPA MOVES model.22 For EV charging, the year is partitioned into summer, winter, and
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intermediate seasons and the day into am, pm, peak, and nighttime hours. The fraction of EV
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charging in each time period is fixed as an input in the model and is uniform across regions.
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Most charging happens at night in all seasons.
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Changes to the EPA US9R Database and Scenarios Modeled
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Table 1. Scenarios and sensitivity analyses included in this study. Scenario Name
Description
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BAU
OPT
BAUFEE/ OPTFEE BAUHIFEE/
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Reference scenario with unmodified 2014 EPA US9R database, including EPA’s efficiency and cost estimates for future gasoline ICEV, HEV, PHEV, BEV, and ethanol vehicles. Substitutes optimistic efficiency and cost improvement for gasoline ICEV, HEV, PHEV, BEV, and ethanol vehicles from NRC (2013); adds and refines upstream emissions and refines cost and performance estimates for other sectors. Moderate CO2, and CH4 fees are applied to BAU and OPT scenarios, starting in 2020, based on social cost of carbon and methane.31
OPTHIFEE
CO2 fees are 52% higher in 2020 and 41% higher in 2050 compared to moderate fees; CH4 fees are 36% higher in 2020 and 21% higher in 2050.31
BAULOFEE/ OPTLOFEE
CO2 fees are 69% lower in 2020 and 63% lower in 2050 compared to moderate fees; CH4 fees are 50% lower in 2020 and 48% lower in 2050.31
BAUHIDMD/ OPTHIDMD
LDV demand is increased by 0% in 2005 to 6% in 2040 relative to BAU and OPT scenarios, based on AEO2014 high LDV demand projections. See Figure S2 for complete high demand projections.
BAULODMD/ OPTLODMD
LDV demand is reduced by 0% in 2005 to 19% in 2040 relative to BAU and OPT scenarios, based on AEO2014 low LDV demand projections. (See Figure S2).
BAUHIOIL/ OPTHIOIL BAULOOIL/ OPTLOOIL
Oil prices are increased by 0% in 2005 to 78% in 2040 relative to BAU and OPT scenarios, based on AEO2015 high North Sea Brent crude oil price projections. For complete high oil price projections refer to Figure S3. Oil prices are reduced by 0% in 2005 to 47% in 2040 relative to BAU and OPT scenarios, based on AEO2015 low North Sea Brent crude oil price projections. (See Figure S3).
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Table 1 lists the scenarios examined in this study. The reference case (BAU) uses the
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unmodified 2014 EPA US9R database, including EPA’s efficiency and cost estimates for all
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LDV. In contrast, the optimistic scenario (OPT) uses cost and efficiency estimates for gasoline
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and ethanol ICEV, HEV, PHEVs, and BEVs based on the optimistic projections given by NRC
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(2013).5 Costs and efficiencies for other fuels and technologies, including FCEV and CNG
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vehicles, were not modified for the OPT case as they were little used in the BAU case (as shown
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below) and were not the focus of this study.
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The NRC Committee developed their projections considering both technology-specific
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powertrain technology improvements and common improvements via reductions in weight and
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rolling resistance and aerodynamic drag, and improved energy efficiencies for accessories across
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all technologies. Learning curves were considered for technology improvements and costs,
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which are calculated based on mass production assumptions. According to the NRC Committee,
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meeting the optimistic projections would entail significant research and development, but no
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fundamental technology innovations.5 The Committee also found that meeting these projections
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would require significant incentives or regulatory requirements to spur development and increase
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production levels. Compared to other available projections, the NRC estimates provide a more
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consistent accounting of improvements across different technologies,2,15,23,25 are more readily
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extended across vehicle sizes,2,11,15,25 and extend further into the future.11,15 For details of the
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assumptions and calculations see the NRC report and its appendix F.5 Additional changes to the
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LDV segment in the OPT scenario are summarized in Table 2, and discussed further in the SI
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Section 4. The SI also explains how the NRC projections are extrapolated to the other vehicle
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size classes included in the US9R database.
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Table 2. Major changes to LDV sector inputs or constraints for the OPT scenario. See SI Sections 2 and 4 for more information. Parameter/ Description of modifications/ changes Constraint LDV cost
Estimated based on optimistic case of NRC (2013) for gasoline ICEV, HEV, PHEV, BEV, and ethanol vehicle technologies for seven classes of vehicles for the entire time horizon. For example, in 2050 the BEV100 vehicle costs range from 9% to 33% lower than in the BAU scenario.
LDV
Same as cost. For example, in 2050 the BEV100 vehicle fuel economies range
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efficiency
from 30% to 90% higher than in the BAU scenario.
LDV demand
Updated based on 2014 US Census population projections, which results in lower projections for LDV demand. LDV demand is reduced by 2% in 2050 relative to BAU.
Hurdle rate
Assumed to be uniform at 24% for all technologies to reflect a fully competitive market without customer and infrastructure barriers, compared to 18% for ICEVs, 24% for HEVs and 28% for EVs in the BAU scenario.
CAFE constraint
Recalculated based on LHV (Lower Heating Value), which tightens the CAFE representation in the model by 7-9% in each year.
Investment constraints
Removed for years after 2025, except for BEV with 100-mile range. Constraints updated for BEV100, reflecting limited market for shorter-range vehicles.
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In addition to the changes made for LDVs, the OPT scenario also incorporates refinements for
172
other sectors as described in the SI Section 5, Brown et al.26-28 and McLeod et al.29,30 Overall, the
173
changes provide for a more comprehensive treatment of upstream emissions, an expanded set of
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emissions control options, especially in the industrial sector, and updates and refinements to cost
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and equipment lifetime estimates in the electricity sector.
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The fees applied in the GHG fee scenarios are adapted from EPA (2012),31 which provides
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estimates for the social cost of methane from an integrated assessment model, rather than more
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simplistic scaling based on global warming potentials (GWPs).31 The EPA (2012) projections of
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social cost of CO2 (SCC) are almost equal to those reported by the Interagency Working Group.32
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The moderate CO2 (CH4) fees are 40 2005 US $/metric tonne of CO2 (1036 $/ tonne of CH4) in
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2020, escalating to 80 (3107) $/tonne in 2055. High fees are a factor of 1.5 (1.3) times greater,
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and low fees are 2.9 (1.9) times lower. The full set of values is given in Table S2. CO2-eq is
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calculated considering CO2 and methane as the main GHG contributors, using both a 20-year
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GWP of 84 and a 100-yr GWP of 28 for CH4,33 as we are interested in opportunities for
185
reductions over a range of time horizons.
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The BAU and OPT scenarios were also run with high and low LDV demand and high and low
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oil prices (Table 1) to test sensitivity to these assumptions. We also ran six diagnostic cases,
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listed in Table S3, to identify which changes made between the BAU and OPT scenarios most
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influence the results. One case includes all modifications implemented in the OPT scenario
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except those specific to the LDV sector while the others isolate separate modifications to the
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LDV sector.
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Well-To-Wheel Emissions Calculation
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We use the results from MARKAL to estimate WTW emissions rates for GHG, NOx, and SO2,
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in grams per mile, for ICEV and BEV technologies. WTW estimates focus on the fuel cycle
195
supporting vehicle operation and neglect emissions from vehicle manufacturing and recycling.
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We calculate WTW emissions using vehicle efficiencies, upstream emission factors, and the
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electricity mix corresponding to a certain scenario’s results in each year. We use a 100-year
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GWP for methane for calculating WTW GHG emissions. Regional calculations for BEV
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emissions are estimated using the electricity mix for each particular region in each scenario. For
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ICEV, regional differences are much less significant, so only national average emissions rates
201
are shown.
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Comparison of LDV Efficiencies and Costs
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Table 3 illustrates how the optimistic efficiencies from the NRC study compare to projections
204
from the original EPA US9R database and other studies, for gasoline ICEV, HEV and BEV.2,11,25
205
For simplicity, comparisons are shown only for the year 2030 and average or full-size vehicles.
206
Comparisons for other years and fuel-technology combinations are included in Figure S5. The
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NRC optimistic case projects higher fuel economies across all vehicle types and sizes than the
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comparison studies. In particular, the recent Argonne National Laboratory (ANL) study of
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prospects for LDVs11 projects fuel economies for BEVs and HEVs that are higher than those in
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the EPA US9R BAU case but lower than those in the NRC optimistic case.
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Table 4 compares costs for full-size vehicles in 2030 and 2050 between the NRC optimistic
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case and the original EPA US9R database. The NRC and EPA costs are similar for gasoline
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ICEV and HEV technologies in 2030 and 2050. However, for BEV100, the NRC costs are lower
214
than those projected by EPA. For 2030, the NRC’s incremental costs for HEV and BEV100 are
215
also relatively low compared to those for similar vehicles in the recent ANL study.11 Additional
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comparisons are provided in Figure S4. Table 3. Comparison of projected efficiencies (mpge) for average* or full-sizea LDVs for
217 218
model year 2030. NRC mid.
EPA
ANL
ANL
DOT
DOT
ANL
US9R
avg.25
high25
min.2*
max.2*
201611
NRC opt.5 b,5
ICEV
61
70
53
37
44
31
40
49
HEV
76
88
71
66
83
38
61
76
BEVc
180
207
96
144
163
-
-
172
219
a
220
approach for the other studies to be able to compare the results. ANL 2016 values are for a midsize car.
221
b
222
average (avg.) and high; and from DOT (2010) as minimum and maximum values.
223
c
224
ANL (2016).
225
*: This study focuses on the average vehicle size.
226 227
Midsize and large cars are aggregated to the full-size category in the EPA database. We have taken the same
Estimates from NRC (2013) are characterized as mid-range (mid.) and optimistic (opt.); from ANL (2009) as
BEV range is 130 miles in NRC (2013); 100 miles in the EPA database, 150 miles in ANL (2009), and 90 miles in
Table 4. Comparison of projected cost (thousands 2010 $) for full-size vehicles for model years 2030 and 2050. 2030
2050
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Technology
EPA US9R
NRC opt.5
EPA US9R
NRC opt.5
ICEV
27.72
28.57
27.74
29.86
HEV
30.85
29.18
30.66
30.45
BEV100
34.95
28.40
32.73
28.01
228 229
Transition Policies
230
For contrast with the BAU scenario, our OPT scenario is constructed based on the assumption
231
that customer and market barriers for penetration of EVs have been lowered to make EVs
232
competitive with gasoline vehicles, in particular after 2025. To get to this point, subsidies or
233
regulations that will lower initial market barriers and encourage increased production volumes
234
are needed. Except for CAFE, these policies are not explicitly represented in our scenarios, but
235
rather they are approximated by the relaxed investment constraints and equalized hurdle rates in
236
the OPT scenario.
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RESULTS AND DISCUSSION
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LDV Penetration
239
Figure 1a shows national results for LDV penetration in terms of vehicle stocks for the BAU
240
and OPT scenarios. While gasoline vehicles dominate in the BAU scenario for the entire time
241
horizon, in the OPT scenario BEVs gain a LDV market share of about 15% (all from BEV100)
242
by 2030 and 47% (with 20% share from BEV100 and 27% from BEV200) by 2050. In 2050,
243
these BEVs are mainly in the compact (6% from BEV100 and 21% from BEV200), full (4%
244
from BEV100 and 6% from BEV200), and small SUV (10% from BEV100), size classes, which
245
have relatively high share and lower upfront cost compared to other size classes. HEVs play a
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negligible role in the BAU scenario, but are adopted to a moderate extent in the midterm in the
247
OPT scenario. Ethanol vehicles account for about 3% of VMT in both scenarios in 2030, but are
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eliminated by 2050 in the OPT scenario. Diesel vehicles account for a steady 4% in both
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scenarios.
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As noted above, approaching the OPT scenario for EV penetration would require transition
251
policies to lower market barriers. These are not explicitly modeled in this study. That is, our
252
study assumes market barriers for deploying EVs have been conquered, such as charging stations
253
have become widely available. However, the NRC assessment5 illustrates the level of subsidy
254
that might be required to lower market barriers for EVs. The NRC Committee used the Light-
255
duty Alternative Vehicle Energy Transitions (LAVE-Trans) model of consumer demand in the
256
transportation sector to explore several transition policy scenarios, including one that assumed
257
optimistic EV technology advances together with EV subsidies. The current $7500 federal tax
258
credit for EVs was continued through 2020, briefly increased to $15000 in 2021 and then phased
259
out by ~2030. This scenario achieved market shares of 8% PHEV and 33% BEV in 2050, with
260
no subsidies provided at that point in time.5 Our OPT case is somewhat more aggressive,
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achieving about a 15% higher EV market share in 2050.
262
Regional results (not shown) generally follow the same pattern as the national scale results,
263
except that the ethanol vehicle share varies across the regions. In 2030, it ranges from 0% to
264
21% for the BAU scenario and from 0% to 16% for the OPT scenario. In 2050, the ethanol share
265
ranges from 0% to 37% for the BAU scenario, but ethanol is not used in 2050 in the OPT
266
scenario. The highest ethanol penetration is in the East North Central region, where corn is
267
relatively abundant and ethanol fuel costs are relatively low. For the OPT scenario, the BEV
268
share is about 15% in 2030 in all regions, but ranges from 40% to 52% across regions in 2050.
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Six additional diagnostic cases (see Table S3) were run to understand which changes between
270
BAU and OPT were most influential. The results (see Figure S7) show that CAFE is the main
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driving force for HEV penetration in the mid-term (case D1). In case D1, HEVs account for 14%
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of total VMT in 2030, but are not used in 2050. The reason for this is that by 2025-2030, ICEVs
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are not sufficiently efficient to satisfy CAFE requirements. HEVs are more efficient than ICEVs,
274
and are cheaper than other alternative technologies that could be used to satisfy the standards.
275
However, the database assumes ICEV efficiency will continue to improve and by 2050 they are
276
sufficiently efficient to meet CAFE requirements. The model selects ICEVs over HEVs at this
277
point because ICEVs are less expensive. In isolation, incorporating optimistic LDV cost and
278
efficiency assumptions (case D2) or lowering hurdle rates and investment constraints (D3) do not
279
significantly alter BEV penetration compared to the BAU scenario. However, significant BEV
280
penetration occurs when these changes are combined (cases D4 and D5). Combining these
281
optimistic assumptions reflects a more realistic and consistent scenario than separating them,
282
since if cost and technological barriers of EVs have been addressed, it is expected that hurdle
283
rates would also be lowered. Lastly, modifications outside the LDV sector have negligible
284
impact on the LDV mix (D6).
285
We also consider results from a variety of scenarios designed to explore the sensitivity of our
286
results to assumptions regarding VMT demand, GHG fees, and oil prices (see Table 1). In the
287
low (high) LDV demand cases, input LDV demand was reduced (increased) by 12% (5%) in
288
2030, and by 20% (4%) in 2050 in the BAU scenario, and by 19% (6%) in 2050 in the OPT
289
scenario. With lower demand, the VMT of gasoline cars was reduced by 14% in the BAU
290
scenario and 24% in the OPT scenario in 2030; and by 20% in both scenarios in 2050. In the
291
OPTLODMD case, HEV VMT is 36% higher in 2030 than in the OPT scenario. Increasing LDV
292
demand results in approximately proportional increases in the VMT of gasoline vehicles in both
293
the BAU and OPT scenarios. BEV VMT in the OPTHIDMD scenario also increases in
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proportion to overall VMT demand. Sensitivity to oil prices was tested using AEO2015
295
projections.34 These changes had negligible impact on the technology mix in the LDV sector in
296
either the BAU or OPT scenario. This is because, as shown in SI Section 8, upfront vehicle costs
297
have a much greater effect than fuel costs on the annualized unit cost of vehicle ownership.
298
To examine how optimistic assumptions about LDV technology advances would alter the
299
response of the energy system to GHG fees, moderate system-wide fees were applied starting in
300
the year 2020 (BAUFEE and OPTFEE). The LDV segment of the transportation sector is able to
301
respond by shifting to more efficient vehicle technologies and/or to fuels with lower in-use and
302
upstream GHG emissions. As shown in Figure 1a, with BAU assumptions for LDV efficiency
303
and costs, applying moderate economy-wide GHG fees has little effect on the LDV technology
304
and fuel mix. With OPT assumptions, application of moderate fees increases the share of BEVs
305
by 4.4% in 2050. Some ethanol also enters the vehicle/fuel mix in 2050 in the OPTFEE scenario.
306
Note that there are uncertainties associated with upstream emissions for ethanol that could offset
307
the uptake of CO2 that is assumed in the model.35-36 Changing the fees as indicated in Table 1
308
produced negligible change in the LDV technology mix in the BAU scenario (results not shown).
309
In the OPT scenario, increasing the fees does not change the share of BEVs in 2050; decreasing
310
the fees reduces the BEV share by 3%. Overall, the influence of GHG emission fees on the LDV
311
technology and fuel mix is limited due to their modest impact on the cost of vehicle ownership.
312
For all vehicle technologies, the impact of emissions fees in future decades is lower than it would
313
be in the near term due to improvements in vehicle efficiency.
314
Electricity Mix
315
Use of an integrated energy system model allows for examination of how changes in the LDV
316
sector might affect energy choices in other sectors, including electricity generation. As shown in
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Figure 1b, while the total electricity generation is equal in the BAU and OPT scenarios in 2030,
318
it is 4% higher in 2050 in the OPT scenario, mainly due to the increased use of BEVs. Electricity
319
generation from natural gas increases over time in both scenarios, whereas generation from
320
existing coal plants declines. Our diagnostic case D6 shows that the extra natural gas generation
321
in the OPT scenario compared to BAU is mainly due to the change we made to the EPA US9R
322
database in limiting the lifetime of existing coal plants to 75 years. In the original database,
323
existing coal plants could be used to the end of the modeled time horizon. Electricity generation
324
from other technologies including wind and solar are similar between the BAU and OPT
325
scenarios, with these two renewable technologies contributing about 9% of generation in 2050.
326
Altering the LDV demand changes the total electricity demand by less than 1% in both low and
327
high demand cases, with either BAU or OPT scenarios.
328
When moderate GHG fees are applied, total electricity demand in both scenarios decreases by
329
3% in 2030 and 5% in 2050. Both BAUFEE and OPTFEE utilize more natural gas (49% and
330
41% in 2030, and 23% and 11% in 2050) and wind (44% and 42% in 2030, and 50% and 61% in
331
2050) and less coal (46% and 48% in 2030, and 50% and 56% in 2050) than the respective
332
scenarios without fees. Electricity consumption is 5% higher in the OPTFEE scenario in 2050
333
compared to the BAUFEE scenario, due to greater BEV penetration. For both BAU and OPT,
334
total electricity generation is 1-3% higher in the low fee cases and 1-2% lower in the high fee
335
cases, compared to the corresponding moderate fee scenarios. Carbon capture and sequestration
336
is applied to 4% of generation in 2050 in the BAUHIFEE case and 3% of generation in the
337
OPTHIFEE case.
338
Crude Oil Consumption
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Changes in crude oil consumption in the BAU and OPT scenarios and corresponding fee and
340
sensitivity cases are shown in Figure S8. Total crude oil consumption in the BAU scenario
341
decreases by 4% from 2010 to 2030, driven by reductions in gasoline, which are somewhat offset
342
by increases in diesel. The reductions in gasoline consumption correspond to average efficiency
343
improvements of 65% for gasoline ICEV, which offset the 18% increase in LDV VMT demand.
344
The increased diesel consumption is mainly for heavy-duty vehicles (HDV). In 2030, gasoline
345
consumption in OPT is 3% lower than in the BAU scenario, largely because 30% of VMT is met
346
with HEVs and BEVs. From 2030 to 2050, gasoline consumption remains steady in the BAU
347
scenario despite an increase in LDV VMT demand. By 2050, gasoline consumption in the OPT
348
scenario is 62% lower than in the BAU scenario, because BEV provide almost half of LDV
349
VMT. The decrease in gasoline consumption in OPT provides more capacity for other refined
350
products, such as jet fuel and petrochemical feedstock, so the total reduction in crude oil
351
consumption from BAU to OPT is not as large as the reduction in gasoline use. Consumption of
352
imported refined products (including gasoline) is almost five times lower than that of
353
domestically refined products in both scenarios throughout the time horizon.
354
In the sensitivity tests, increasing the LDV demand results in less than a 1% increase in crude
355
oil consumption in 2030 and 2050 in both the BAUHIDMD and OPTHIDMD cases. However,
356
reducing LDV demand decreases total crude oil consumption by 3% in 2030 in both cases, and
357
by 6% (BAULODMD) and 3% (OPTLODMD) in 2050, mainly from reduced gasoline
358
consumption. With moderate GHG fees, the largest change is seen in 2050, where the total crude
359
oil consumption in the OPTFEE case is about 3.5% lower than in the OPT scenario.
360
GHG Emissions
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Figure 2a shows GHG emissions for the BAU and OPT scenarios as CO2-eq using the 100-
362
year GWP for methane. Results calculated using a 20-year GWP are shown in Figure S9 and
363
demonstrate similar patterns. Total GHG emissions decrease from 2010 to 2030 and then
364
increase from 2030 to 2050 in both scenarios. In the BAU scenario, GHG emissions from the
365
LDV sector decline by 53% from 2010 to 2030 and by an additional 21% from 2030 to 2050,
366
due largely to existing CAFE regulations. Correspondingly, in the BAU scenario the LDV share
367
of total emissions is reduced from 21% in 2010 to 10% in 2030 and 7% in 2050. Direct
368
emissions from the LDV sector contribute 9% and 5% of GHG emissions in the OPT scenario in
369
2030 and 2050, respectively. That is, our OPT scenario results in GHG emissions from LDVs
370
that are 36% lower than in the BAU scenario in 2050.
371
Total GHG emissions in the OPT scenario are 5% lower than those in the BAU scenario in
372
2030 and 9% lower in 2050. This is a smaller percentage reduction than that from the LDV
373
sector, because LDV emissions represent a declining share of total emissions and because of
374
inter-sectoral shifts in emissions. The differences between the OPT and BAU scenarios come
375
from greater reductions from the LDV segment (16% lower in OPT than BAU in 2030 and 36%
376
lower in 2050); other transportation (16% lower in OPT in 2030 and 25% lower in 2050); and
377
from the electric power sector (5% lower in OPT in 2030, and 7% lower in 2050). The Pacific
378
region shows the largest reductions in GHG emissions in the OPT scenario compared to BAU
379
(23% in 2030 and 22% in 2050), and the West South Central region shows the least reductions
380
(2% in 2030, and 4% in 2050).
381
In diagnostic case D5, with all the OPT improvements in the LDV sector but without
382
modifications in the electric sector, emissions from the electric sector are 2% higher in 2050 than
383
in the BAU scenario, due to greater LDV demand for electricity. The reduction in GHG
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384
emissions from the non-LDV segment of the transportation sector in OPT versus BAU is mainly
385
due to a shift to more efficient technologies in freight shipping. Consistent with the results for
386
the LDV mix, LDV emissions are reduced or increased approximately in proportion to LDV
387
demand, for both BAU and OPT scenarios.
388
significantly in sensitivity tests with modified oil prices applied in either the BAU or OPT
389
scenarios.
Similarly, CO2-eq emissions do not change
390
For both the BAU and OPT scenarios, application of moderate GHG fees reduces total CO2-eq
391
emissions by 11% in 2030 and by 12% in 2050. In both comparisons, the main reductions are
392
from the electric power sector, based on increased use of natural gas and some renewables in
393
place of coal. GHG emissions from the electric sector are reduced by about 40% in the BAUFEE
394
and OPTFEE scenarios in 2030 compared to 2005. For BAU and OPT, total GHG emissions are
395
9-10% higher with low GHG fees and 7-9% lower with high fees compared to the moderate fee
396
results (Figure S10), again mainly due to changes in electric sector emissions. For the LDV
397
segment, GHG emissions in 2050 are only 9% lower in OPTFEE than in OPT. Thus, despite
398
using more optimistic assumptions for EV cost and efficiency than used by Rudokas et al.16, our
399
results agree with their conclusion that GHG fees would have little effect on LDV emissions.
400
Moreover, over time LDV emissions represent a sharply declining share of total GHG emissions,
401
even without more optimistic technology improvements or fees. On the other hand, the OPT
402
scenario shows that applying energy system-wide GHG fees could help curtail the industrial
403
sector emissions increases that might otherwise occur if widespread use of BEVs induced
404
industrial sector fuel switching.
405
NOx and SO2 Emissions
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Figures 2b and c show how NOx and SO2 emissions compare for the BAU, OPT and
407
corresponding fee scenarios. (Results for VOC emissions are presented in Figure S11.) In the
408
BAU scenario, NOx emissions from LDV decline from about 2 million tonnes in 2010 to 0.4
409
million tonnes in 2030 and to 0.3 million tonnes in 2050, due to tailpipe emissions limits that
410
have already been promulgated. In the OPT scenario, direct NOx emissions from LDV are about
411
0.3 million tonnes in 2030 and 0.2 million tonnes in 2050, which is 35% lower than in the BAU
412
scenario. However, total energy system NOx emissions are about the same in 2050 in the OPT
413
and BAU scenarios, because industrial sector emissions are 27% higher in the former. In the
414
OPT scenario, the industrial sector shifts from use of electricity to use of combustion-based
415
technologies for heat and power. However, the increase in industrial NOx emissions in the OPT
416
scenario is partially offset by a decrease in HDV emissions that results from use of more efficient
417
and less polluting technologies in freight shipping, as more diesel is used in the industrial sector.
418
Loughlin et al.10 similarly saw a shift in NOx emissions from the transportation sector to other
419
sectors in their study of NOx emissions reduction pathways, including vehicle electrification.
420
Application of GHG emissions fees has little impact on LDV NOx emissions.
421
The transportation sector makes a negligible contribution to SO2 emissions (Figure 2c).
422
However, SO2 is of interest with EVs due to the possibility of increased emissions from the
423
electric sector. In the BAU scenario, SO2 emissions from electricity generation fall from 5
424
million tonnes in 2010 to 1.4 million tonnes in 2050, due to existing control requirements and the
425
shift away from coal-fired generation. This reduction is modestly countered in the BAU scenario
426
by an increase in SO2 emissions from the industrial sector. In the OPT scenario, SO2 emissions
427
from the industrial sector in 2050 are 20% higher than in the BAU scenario in 2050, due to
428
increased direct fuel use in place of electricity. This change offsets the reductions from the
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electric sector that result from less use of coal-fired power generation in the OPT scenario. GHG
430
fees reduce total SO2 emissions in the BAUFEE and OPTFEE scenarios, respectively, by 17%
431
and 22% in 2030, and by 21% and 28% in 2050. Most of the reductions occur in the electric
432
sector in the BAU scenario; in the OPT scenario emissions from the industrial sector are reduced
433
as well.
434
Well-To-Wheel Emissions
435
We highlight the impact of potential improvements in LDV efficiency by using our OPT
436
scenario results to calculate WTW GHG emissions from gasoline ICEV and BEV technologies.
437
WTW results for NOx, and SO2 were also calculated and are presented in the Supporting
438
Information (Figures S12 and S13). On average for 2010, we estimate WTW GHG emissions of
439
186 and 450 gCO2-eq mi-1 for full-size BEV100 and gasoline-fueled ICEVs in the US,
440
respectively. For BEV100, 89% of the emissions are from electricity generation and 11% from
441
upstream fuel sectors. For ICEVs, 88% of emissions are from the use phase, 7% from the
442
refinery, and 5% from fuel production. WTW GHG emissions for full-size BEV100 drop to 94
443
gCO2-eq mi-1 in 2030 and 62 gCO2-eq mi-1 in 2050. For full-size ICEVs, emissions are 181
444
gCO2-eq mi-1 in 2030 and 121 gCO2-eq mi-1 in 2050. Thus by 2050, the WTW GHG emissions
445
estimated for both technologies are about one-third of those estimated for 2010. The percentage
446
contributions across WTW stages are relatively constant over time, for both BEVs and ICEVs.
447
ANL (2016)11 estimates higher WTW GHG emissions for midsize ICEV, and BEV90 in 2015
448
and 2030, than our estimations for full-size (combination of midsize and large) cars in those
449
years. Our range for BEV is also slightly higher.
450
In addition to the WTW GHG emissions estimated based on the average national electricity
451
mix, we also calculated average WTW emissions for each MARKAL region (See Figure S14).
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Regional WTW GHG emissions for full-size BEV100 range from 96 to 219 gCO2-eq mi-1 in
453
2010, 42 to 121 gCO2-eq mi-1 in 2030, and 35 to 83 gCO2-eq mi-1 in 2050. Thus the highest
454
regional WTW emissions in 2050 are less than the lowest regional WTW emissions in 2010.
455
Across the full time horizon, the lowest BEV WTW GHG emissions correspond to the Pacific
456
region, which has a low share of electricity from coal power plants and high hydropower
457
resources. We find the highest emissions for the West North Central region, which has the
458
highest share of generation from coal (59% in 2030 and 54% in 2050 in the OPT scenario). Our
459
regional rankings for EV WTW emissions in 2015 match those presented by the Union of
460
Concerned Scientists (2015);12 however, their study did not consider future scenarios.
461
Although not directly examined in this study, vehicle cycle emissions are also important in
462
comparing across technologies. ANL (2016) estimated emissions from vehicle manufacturing of
463
about 41 gCO2-eq mi-1 for current midsize ICEV, and about 64 gCO2-eq mi-1 for BEV90
464
vehicles.11 In the future, these emissions are expected to decline as electricity sector emissions
465
are reduced and manufacturing processes become more efficient.
466
vehicles generally become more efficient, with lower WTW emissions, the vehicle production
467
cycle will likely comprise an increasing fraction of total life cycle emissions. Thus, in future
468
assessments greater attention needs to be focused on vehicle manufacturing and recycling
469
impacts, as well as on upstream emissions and on the potential for inter-sectoral shifts.
However, as light duty
470 471
ASSOCIATED CONTENT
472
Supporting Information
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Additional details describing modifications made to the EPA US9R database, scenario
474
development and additional results. This material is available free of charge via the Internet at
475
http://pubs.acs.org.
476
AUTHOR INFORMATION
477
Corresponding Author
478
*Tel.: (303) 492-5542. Fax: (303) 492-3498. Email:
[email protected].
479
ACKNOWLEDGMENT
480
This work was supported by a Sustainable Energy Pathways grant from the National Science
481
Foundation, award number CHE-1231048. We thank Kristen E. Brown, Jeffrey McLeod, Dan
482
Loughlin and Carol Shay for contributions to and assistance with the MARKAL/US9R model.
483
Any opinions, findings, and conclusions or recommendations expressed in this material are those
484
of the authors and do not necessarily reflect the views of the National Science Foundation.
485
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Figure 1. US technology mix for (a) LDV and (b) electricity generation by scenario and year. PHEV, ICEV and HEV are gasoline fueled. 114x165mm (300 x 300 DPI)
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Figure 2. US emissions in 2050 compared to BAU2010 emissions (a) GHG (b) NOx (c) SO2 by sector and scenario; HDV sector includes off-road vehicles. 152x294mm (300 x 300 DPI)
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43x25mm (300 x 300 DPI)
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