A Systemic View of Future Mobility Scenario Impacts on and Their Implications for City Organizational LCA: The Case of Autonomous Driving in Vienna
Abstract
:1. Introduction
2. Methodology
2.1. Baselining Vienna’s Passenger Transportation System
2.2. Scenario Definition
- Scenario A: Conventional car ban. New AV services enter the city based on own assumptions and distinct effects deducted from literature. If, as a result, the conventional car share is > 0% (based on pkm), the remaining demand will be met by all other modes left. It will be distributed to all modes based on their new share after the AV uptake.
- Scenario B: Maximal individualization of transport. New AV services enter the city based on expert assumptions and distinct effects deducted from literature. If, as a result, the conventional bus share is > 0% (based on pkm), the remaining bus demand will also be met by the AV service.
2.3. AV Effect Mechanisms and Scenario Assumptions
2.3.1. Individual AV
2.3.2. Shared AV
2.3.3. Shared AV Ride
2.4. Environmental Impact Calculation Model
2.5. Vienna’s GHG Profile According to City-OLCA
3. Results
3.1. Transport Demand and Modal Split
3.2. Emissions, Traffic and Passenger Capacity
3.3. Transport Emissions
3.4. Motorized Road Traffic
3.5. Passenger Capacity
4. Discussion Part I: The Transportation System
4.1. Mobility Scenario Analysis and the AV’s Role in Reducing Greenhouse Gas Emissions and Reshaping Vienna’s Transportation System
4.2. The E-Car Effect: Accounting for Future Mobility Trends in An Electrified Transportation System
- The new reference (e*baseline) performs significantly better than the old baseline. Without any intervention on modes or introduction of AV services, an electrified transportation system is 60% lower than Vienna’s initial baseline from Figure 4.
- Comparing AVs in a fully electrified transportation system shows an actual increase in emissions among most cases. For owned AVs, this means that they cannot offset their additional transportation demand with vehicle efficiency gains (e*IA/A,B). For example, switching entirely from private conventional cars to private AVs would increase emissions by 33%. In general, emission increase is observed at a range from 11% (e*SA/B) to 48% (e*SR/B). Shared AVs under scenario A (e*SA/A) is the only case that show an emission benefit (−4.2%).
- Differences between scenario cases become smaller. The delta between lowest to highest emissions is 852 kt CO2e for the all electric cases, while it was 1890 kt CO2e for the baseline cases (on average). Especially, scenario B cases have decreased, which is mainly caused by less emissions from electric buses compared to the ones with combustion engines. In addition, that is by taking all upstream emissions, including battery production, into account.
- Sensitivity to grid mix becomes higher. All scenario cases show a significantly higher sensitivity to grid mix choice compared to the ones from Figure 4. As a result, emission reductions could be achieved if a highly decarbonized electricity mix is used (lower range in Figure 5). However, these reductions become only effective if Vienna would keep its carbon intensive grid mix (upper range in Figure 5).
4.3. Life Cycle Stages and Emission Sources
4.4. Harmonization of Transport Research Parameters to Ensure Consistency
4.5. Different Forms of Sharing Approaches
5. Discussion Part II: The City
5.1. An Illustrative Case of Mobility Scenario Impacts on Vienna’s City-OLCA: Potential Emission and Responsibility Shifts Explained
5.2. Environmental Impacts beyond Global Warming
5.3. Limitations of City-OLCA-Related Implications
5.3.1. Accounting for Service Quality
5.3.2. Estimating the Probability of A Trend
5.3.3. Non-Environmental Performance Indicators
5.3.4. Transferability to Other Cities
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Parameter | Unit | Description | Reasoning |
---|---|---|---|
Transport demand | pkm/a | Total passenger transport demand in the city with all modes of transport per year | Main driver of how much service is to be provided in the city |
Modal split | %/pkm | Share of different modes on the total passenger transport demand | Main driver how the transport service is provided |
Utilized capacity | P | Utilized passenger capacity per vehicle km for all modes | Main driver of how efficient a specific transport service is |
GHG emissions | kg CO2e | GHG emissions per vehicle km including production and use phase | Key parameter of environmental performance of the transport service |
Mode | Energy Consumption Operation | Utilized Capacity in Vienna | |||||
---|---|---|---|---|---|---|---|
Energy Carrier | Value | Unit | Source | Value | Unit | Source | |
Subway | Electric | 56.52 | MJ/vkm | [27] | 259 | Passengers | [28] |
Tram | Electric | 27.04 | MJ/vkm | [27] | 71 | Passengers | [28] |
City train | Electric | 65.52 | MJ/vkm | [27] | 259 | Passengers | [28] |
Interregional train | Electric | 82.08 | MJ/vkm | [27] | 259 | Passengers | [28] |
Bus | Diesel | 15.78 | MJ/vkm | [27] | 17 | Passengers | [28] |
Electric | 7.81 | MJ/vkm | [29] | 17 | Passengers | [28] | |
Bus rapid transit | Diesel | 15.78 | MJ/vkm | [27] | 28 | Passengers | [28] |
Car | Petrol | 2.71 | MJ/vkm | [27] | 1.3 | Passengers | [28] |
Diesel | 2.41 | MJ/vkm | [27] | 1.3 | Passengers | [28] | |
Electric | 0.67 | MJ/vkm | [29] | 1.3 | Passengers | [28] | |
Taxi | Diesel | 2.41 | MJ/vkm | [27] | 1.7 | Passengers | [28] |
AV | Electric | 0.53 | MJ/vkm | [29] | 0.9–1.3 | Passengers | [6,15,17] |
AV minibus | Electric | 1.62 | MJ/vkm | [30] | 2.5 | Passengers | [6,15,17] |
Scenario Case Code | Use Case | Scenario (See Section 2.2) |
---|---|---|
baseline | Not applicable | Not applicable |
IA/A,B | Individual AV | A: Conventional car ban or B: Prioritized AV |
SA/A | Shared AV | A: Conventional car ban |
SA/B | Shared AV | B: Prioritized AV |
SR/A | Shared AV ride | A: Conventional car ban |
SR/B | Shared AV ride | B: Prioritized AV |
Model Parameters | Unit | Individual AV | Shared AV | Shared AV Ride Service |
---|---|---|---|---|
Transport demand | Pkm/a | ✓ | ✓ | ✓ |
Modal split transport system | %/pkm | ✓ | ✓ | ✓ |
Passenger capacity per mode | P | ✓ | ✓ | ✓ |
Energy/fuel consumption per mode | kWh/km | ✓ | ✓ | ✓ |
Upstream and direct emissions per mode | kg CO2e | ✓ | ✓ | ✓ |
Income distribution | % | ✓ | ||
Fuel elasticity | [–] | ✓ | ||
Time elasticity | [–] | ✓ | ||
Fuel cost reduction | % | ✓ | ✓ | ✓ |
Time cost reduction | % | ✓ | ||
Changed capacity utilization AV | P | ✓ | ✓ | |
Changed capacity utilization PT | % | ✓ | ||
Sharable trips | % | ✓ | ||
Willingness to share | % | ✓ | ||
Car trips shift | % | ✓ | ||
PT trips shift | % | ✓ |
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Cremer, A.; Müller, K.; Finkbeiner, M. A Systemic View of Future Mobility Scenario Impacts on and Their Implications for City Organizational LCA: The Case of Autonomous Driving in Vienna. Sustainability 2022, 14, 158. https://doi.org/10.3390/su14010158
Cremer A, Müller K, Finkbeiner M. A Systemic View of Future Mobility Scenario Impacts on and Their Implications for City Organizational LCA: The Case of Autonomous Driving in Vienna. Sustainability. 2022; 14(1):158. https://doi.org/10.3390/su14010158
Chicago/Turabian StyleCremer, Alexander, Katrin Müller, and Matthias Finkbeiner. 2022. "A Systemic View of Future Mobility Scenario Impacts on and Their Implications for City Organizational LCA: The Case of Autonomous Driving in Vienna" Sustainability 14, no. 1: 158. https://doi.org/10.3390/su14010158
APA StyleCremer, A., Müller, K., & Finkbeiner, M. (2022). A Systemic View of Future Mobility Scenario Impacts on and Their Implications for City Organizational LCA: The Case of Autonomous Driving in Vienna. Sustainability, 14(1), 158. https://doi.org/10.3390/su14010158