| Literature DB >> 31525217 |
Yuhua Zheng1, Shiqi Li1, Shuangshuang Xu1.
Abstract
China's transport sector is facing enormous challenges from soaring energy consumption and greenhouse gas (GHG) emissions. Transport electrification has been viewed as a major solution to transportation decarbonization, and electric vehicles (EVs) have attracted considerable attention from policymakers. This paper analyzes the effects of the introduction of EVs in China. A system dynamics model is developed and applied to assess the energy-saving and emission-reducing impacts of the projected penetration of EVs until the year 2030. Five types of scenarios of various EV penetration rates, electricity generation mixes, and the speed of technological improvement are discussed. Results confirm that reductions in transport GHG emissions and gasoline and diesel consumption by 3.0%-16.2%, 4.4%-16.1%, and 15.8%-34.3%, respectively, will be achieved by 2030 under China's projected EV penetration scenarios. Results also confirm that if EV penetration is accompanied by decarbonized electricity generation, that is, the use of 55% coal by 2030, then total transport GHG emissions will be further reduced by 0.8%-4.4%. Moreover, further reductions of GHG emissions of up to 5.6% could be achieved through technological improvement. The promotion of EVs could substantially affect the reduction of transport GHG emissions in China, despite the uncertainty of the influence intensity, which is dependent on the penetration rate of EVs, the decarbonization of the power sector, and the technological improvement efficiency of EVs and internal combustion engine vehicles.Entities:
Year: 2019 PMID: 31525217 PMCID: PMC6746360 DOI: 10.1371/journal.pone.0222448
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1CTEGER.
Fig 2Transport oil product consumption and GHG emission subsystem.
Results of cointegration and ECM equations.
| Gasoline | Diesel | Kerosene | ||||
|---|---|---|---|---|---|---|
| Variables | Coefficient | Variables | Coefficient | Variables | Coefficient | |
| Cointegration Eqs ( | Ln | 4.653 | ln | 0.877 | ln | 1.322 |
| ln | 0.655 | ln | 1.298 | ln | 2.387 | |
| ln | 3.836 | ln | 1.283 | |||
| -17.498 | -8.754 | -3.420 | ||||
| ECM Eqs ( | ⊿ln | -0.264 | ⊿ln | 0.452 | ⊿ln | -0.207 |
| ⊿ln | 0.726 | ⊿ln | 0.285 | ⊿ln | 0.200 | |
| ⊿ln | -0.975 | ⊿ln | -0.413 | ⊿ln | -0.420 | |
| ⊿ln | 0.658 | ⊿ln | 0.404 | |||
| ⊿ln | -0.209 | ⊿ln | 1.167 | |||
| ⊿ln | 0.419 | |||||
| ⊿ln | -2.259 | |||||
| ⊿ln | -0.930 | |||||
| -0.065 | -0.079 | -0.155 | ||||
| 0.218 | 0.047 | -0.204 | ||||
Note:
a ecm(-1) denotes the error correction coefficient;
c denotes the constant term.
b *denotes 10% significant level,
**denotes 5% significant level,
***denotes 1% significant level.
Fig 3EV and GHG emission reduction subsystem.
LCGEC of different power-generating sources.
| Share in the electricity generation mix | Range of LCGEC in China | LCGEC used in this study | |
|---|---|---|---|
| Coal-fired power | 68.2% | 900–1342 (Refs. [ | 1133 |
| Natural gas-fired power | 4% | 573–973 (Refs. [ | 773 |
| Photovoltaic Power | 1% | 20–240 (Refs. [ | 140 |
| Hydropower | 19.4% | 1–50 (Refs. [ | 17 |
| Nuclear power | 3.5% | 6.2–11.9 (Refs. [ | 9 |
| Wind power | 3.9% | 6.5 −68 (Refs. [ | 32 |
Summary of historical and operating test errors.
| Variable | Error confidence | Range of relative error | ||
|---|---|---|---|---|
| Historical test error | Operating test error | Operating test error | ||
| 100%–95% | ≦3% | ≦5% | ||
| 95%–90% | ≦10% | |||
| 100%–95% | ≦5% | ≦5% | ||
| 95%–90% | ≦5% | |||
| 100%–95% | ≦5% | ≦5% | ||
| 95%–90% | ≦10% | |||
| 100%–95% | ≦5% | ≦1% | ≦1% | |
| 95%–90% | ||||
| 100%–95% | ≦10% | ≦10% | ||
| 95%–90% | ≦10% | |||
| 100%–95% | ≦3% | ≦1% | ≦1% | |
| 95%–90% | ||||
| 100%–95% | ≦1% | ≦1% | ||
| 95%–90% | ≦10% | |||
Fig 4Results of historical tests.
(a) gasoline consumption and (b) diesel consumption and (c) kerosene consumption.
Fig 5Results of operating tests.
(a) gasoline consumption and (b) diesel consumption and (c) kerosene consumption.
Descriptions and assumptions of scenarios.
| Scenario Type | Scenario Name | Descriptions and Assumptions |
|---|---|---|
| BAU | BAU | Oil product consumption and GHG emissions are predicted based on Eqs ( |
| EV replacement | EVH | EV high (EVH) replacement scenario assumes that EV ownership will increase to 80 million in 2030. |
| EVL | EV low (EVL) replacement scenario assumes that EV ownership will increase to 15 million in 2030. | |
| EVB | EV baseline (EVB) replacement scenario assumes that EV ownership will increase to 47.5 million in 2030. | |
| Decarbonized electricity generation | EVHS | EVH scenario combined with decarbonized electricity generation scenario, which assumes the use of 55% coal in 2030. |
| EVLS | EVL scenario combined with decarbonized electricity generation scenario, which assumes the use of 55% coal in 2030. | |
| EVBS | EVB scenario combined with decarbonized electricity generation scenario, which assumes the use of 55% coal in 2030. | |
| Technological improvement in EVs | EVB+HT | EVB (EVBS) scenario combined with high technological improvement speed of EV, that is, electricity consumption rate of EVs will be reduced by 10% every 5 years until 2030. |
| EVB+LT | EVB (EVBS) scenario combined with low technological improvement speed of EV, that is, electricity consumption rate of EVs will be reduced by 5% every 5 years until 2030. | |
| EVB+BT | EVB (EVBS) scenario combined with moderate technological improvement speed of EV, that is, electricity consumption rate of EVs will be reduced by 7.5% every 5 years until 2030. | |
| Technological improvement in EVs and ICEVs | EVB (EVBS) | EVB (EVBS)+HT scenario combined with technological improvement of ICEV, that is, the average fuel consumption rate of gasoline cars and diesel buses will be reduced to 5.5 L/100 km and 29.1 L/100 km, respectively, in 2030. |
| EVB (EVBS) | EVB (EVBS)+LT scenario combined with technological improvement of ICEV, that is, the average fuel consumption rate of gasoline cars and diesel buses will be reduced to 5.5 L/100 km and 29.1 L/100 km, respectively, in 2030. | |
| EVB (EVBS) | EVB (EVBS)+BT scenario combined with technological improvement of ICEV, that is, the average fuel consumption rate of gasoline cars and diesel buses will be reduced to 5.5 L/100 km and 29.1 L/100 km, respectively, in 2030. |
Fig 6Transport oil product consumption under the BAU scenario.
Fig 7Transport GHG emissions from oil product consumption under the BAU scenario.
Emission coefficient of various types of vehicles.
| Vehicle types | Vehicle usages | Emission coefficient (gCO2e/100 km) | ||
|---|---|---|---|---|
| (68.2% coal fired) | (60% coal fired) | (55% coal fired) | ||
| Gasoline vehicles | Private cars and taxis | 21,752 | – | – |
| Diesel vehicles | Buses | 139,299 | – | – |
| BEVs | Private cars and taxis | 15,842 | 13,583 | 11,541 |
| Buses | 82,891 | 71,072 | 60,387 | |
| PHEVs | Private cars and taxis | 19,434 | 18,349 | 17,367 |
| Buses | 114,838 | 108,407 | 102,550 | |
| CNGVs | Taxis | 19,988 | – | – |
| Buses | 83,282 | – | – | |
Data source: Refs. [64–65]
Fig 8Simulation results of gasoline consumption under different scenarios of EV replacement.
Fig 9Simulation results of diesel consumption under different scenarios of EV replacement.
Fig 10Total GHG emissions under various EV scenarios.
Fig 11GHG emission reduction of BEVs and PHEVs.
GHG emission reduction of (a) BEVs and (b) PHEVs under the current power generation mix and (c) BEVs and (d) PHEVs under the decarbonized power generation mix.
Fig 12GHG emission reduction of EVs under various scenarios.
Comparison between the present study and established literature.
| Country or region | Scenario year | Method | Emission reduction considering the use of EVs instead of ICEVs | Scenario description | Reference |
|---|---|---|---|---|---|
| India | 2030 | WTW | −10% compared with BAU | Significant policy support for EV, technological improvement, and cost reduction | [ |
| Australia | 2030 | Hybrid LCA | −32% compared with BAU | 94% EV shares and 96% renewable energy shares compared with 18% EV shares and 36% renewable energy shares under BAU | [ |
| America | 2025 | WTW | −65% in California and in the NPCC; –25% in Midwestern states. | California has 9% coal-based electricity; the three Midwestern states have 54% | [ |
| Japan | 2030 | Complete LCA | −25.4% of the BAU scenario | Infrastructure development, high carbon tax, and high oil price | [ |
| 2050 | TTW and WTW | −86.9% of TTW and −69.6% of WTW compared with the baseline scenario | Market share of BEVs accounts for 99.5% of new vehicle sales in 2050 | [ | |
| Greece | 2020 | WTW | −21% compared with baseline scenario | 50% gasoline, 20% diesel, 10% electricity, 10% biodiesel, and 10% natural gas in the energy mix | [ |
| Brail | 2030 | WTW | −30% emission reduction | Over 70% of electricity by hydroelectric power | [ |
| China | 2030 | WTW | − (3.0~16.2)% compared with BAU | Projected EV penetration | Present study |
| − (3.8%~20.6)% compared with BAU | Projected EV penetration with 55% coal-based electricity | ||||
| −(5.8%~17.1)% compared with BAU | Projected EV penetration, 55% coal-based electricity, and EV technological improvement |