The Road to 2030: Combining Life Cycle Assessment and Multi-Criteria Decision Analysis to Evaluate Commuting Alternatives in a University Context
Abstract
1. Introduction
- Development of an integrated LCA–MCDA framework for evaluating seven commuting alternatives across 16 environmental impact criteria.
- Application of the PROMETHEE (Preference Ranking Organization METHod for Enrichment of Evaluations) method to systematically rank alternatives and identify trade-offs between impact categories.
- Provision of actionable insights for institutional mobility planners relevant to sustainability reporting and strategic decision-making.
2. Literature Review
2.1. LCA in Transportation Sustainability
2.2. MCDA in Transportation Planning
2.3. Gaps and Contributions
3. Methodology
3.1. Framework Definition
3.2. Life Cycle Assessment
3.2.1. Inventory
3.2.2. Environmental Impact Assessment
3.3. MCDA Foundation and Framework
3.3.1. Method Overview
3.3.2. Framework
3.3.3. Commuting Alternatives
- Business-as-Usual (BAU): Assumes the continuation of current modal split patterns through 2030, without significant interventions or policy changes. Projections were based on the full 2019–2023 dataset, including pandemic years, to capture recent variability in mobility behavior. In this scenario, conventional vehicles and walking remain the dominant transportation modes, with smaller proportions of electric/hybrid vehicles, public transport, bicycles, electric scooters, and motorcycles.
- Business-as-Usual Pre-Pandemic Trend (BAUp): Similar to BAU but excludes data from 2020 and 2021 to avoid distortions caused by pandemic-related disruptions. This alternative reflects a trajectory based solely on typical operational conditions.
- Optimistic Shift (OS): Reflects the stated willingness of survey respondents to adopt more sustainable transport modes. This scenario models a complete transition away from conventional vehicles, with their usage being redistributed across alternative modes according to the preferences indicated in the mobility survey. It assumes that all users of conventional fossil fuel vehicles would switch to their preferred alternative mode, creating an ambitious yet preference-based vision of future mobility.
- Public Transport (PT): Models a targeted shift from private vehicles to conventional diesel buses, aligned with survey responses indicating willingness to adopt public transport by 2030. This scenario isolates and implements only the public transport preference segment from the survey data, focusing on the substantial group of respondents who expressed interest in shifting to bus transportation specifically, while other modal preferences remain unchanged from the BAU scenario.
- Public Transport with Electric BRT (PT-BRT): Builds on the previous scenario by incorporating the electric bus rapid transit (BRT) system set for implementation in Coimbra by 2026. The same modal shift assumptions apply as in the PT scenario, but trips are allocated to electric buses instead of diesel buses. This represents a technological enhancement of the public transport strategy without changing behavioral assumptions.
- Active Mobility (AM): Focuses on respondents willing to replace private vehicle use with walking or cycling. This scenario selectively implements the active transportation preferences from the survey, reallocating conventional vehicle trips to walking and cycling based on appropriate distance ranges. Walking is prioritized for shorter trips and cycling for medium-distance commutes, reflecting the practical limitations of these modes.
- Full Electrification (FE): Envisions complete electrification of all motorized transport by 2030, assuming 100% replacement of conventional vehicles (private cars and public buses) with electric counterparts, while maintaining existing modal split proportions. Unlike the preference-based scenarios, this alternative represents a purely technological transition, without behavioral changes in mobility patterns, focusing on the impact of powertrain substitution rather than modal shifts.
4. Results and Discussion
4.1. Life Cycle Assessment Outcomes
4.2. Multi-Criteria Decision Analysis
4.2.1. Performance Matrix
4.2.2. Outranking Results
4.3. Discussion: Implications for Institutional Mobility Planning
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
AHP | Analytic Hierarchy Process |
AM | Active Mobility (2030 alternative) |
AP | Acidification Potential |
BAU | Business-as-Usual (2030 alternative) |
BAUp | Business-as-Usual Pre-Pandemic Trend (2030 alternative) |
BRT | Bus Rapid Transit |
CV | Coefficient of Variation |
ELECTRE | ELimination and Choice Translating Reality |
FE | Full Electrification (2030 alternative) |
FETP | Freshwater Ecotoxicity Potential |
FEP | Freshwater Eutrophication Potential |
GHG | Greenhouse Gas |
GWP | Global Warming Potential |
HTPc | Human Toxicity Potential, cancer effects |
HTPnc | Human Toxicity Potential, non-cancer effects |
IRP | Ionizing Radiation Potential |
LCA | Life Cycle Assessment |
LCI | Life Cycle Inventory |
LU | Land Use |
MCDA | Multi-Criteria Decision Analysis |
MEP | Marine Eutrophication Potential |
ODP | Ozone Depletion Potential |
OEF | Organizational Environmental Footprint |
OS | Optimistic Shift (2030 alternative) |
PKM | Passenger-Kilometers |
PM | Particulate Matter |
POFP | Photochemical Ozone Formation Potential |
PROMETHEE | Preference Ranking Organization METHod for Enrichment of Evaluations |
PT | Public Transport (2030 alternative) |
PT-BRT | Public Transport with Bus Rapid Transit (2030 alternative) |
RUF | Resource Use, Fossils |
RUM | Resource Use, Minerals and Metals |
SD | Standard Deviation |
SEM | Standard Error of the Mean |
TEP | Terrestrial Eutrophication Potential |
TOPSIS | Technique for Order Preference by Similarity to Ideal Solution |
TTW | Tank-to-Wheel |
WTT | Well-to-Tank |
WTW | Well-to-Wheel |
WU | Water Use |
Appendix A
Group | Sample (n, (%)) | Response Rate (%) | Total Population (n, (%)) |
---|---|---|---|
Students | 586 (51.4) | 2.08 | 28,182 (88.8) |
Faculty (Lecturers) | 246 (21.6) | 13.04 | 1887 (5.9) |
Researchers | 73 (6.4) | 25.00 | 292 (0.9) |
Technical Staff | 236 (20.7) | 17.21 | 1371 (4.3) |
Total | 1141 (100) | 3.60 | 31,732 (100) |
Location | Sample (n, (%)) | Response Rate (%) | Total Population (n) |
---|---|---|---|
Polo I (incl. FPCEUC) | 602 (52.8) | 3.59 | 16,749 |
Polo II | 233 (20.4) | 4.00 | 5825 |
Polo III | 132 (11.6) | 2.42 | 5458 |
St. António dos Olivais (incl. FEUC) | 101 (8.9) | 3.22 | 3138 |
Santa Clara (incl. FCDEFUC & Stadium) | 25 (2.2) | 2.59 | 965 |
Other Locations | 48 (4.2) | – | – |
Appendix B
Appendix B.1. Data Sources and Collection
- University census data:The following highlights are the same.These data covered the five years from 2019 to 2023, allowing to extrapolate transportation patterns for the entire university community and conduct a temporal trend analysis.
- Institutional survey data:This dataset stemmed from the survey conducted at the University of Coimbra in 2022, which provided the foundational mobility data for our analysis. With 1141 valid responses, this sample offers critical insights into transportation modes, frequency of use, and travel distances for students and staff.
- LCI data:Sourced from the Ecoinvent database (v3.8), this dataset translates transportation activities into environmental impacts across 16 selected criteria.
Appendix B.2. Modeling Approach and Assumptions
Impact Category | Methodological Foundation |
---|---|
Human Toxicity, Cancer (HTPc) | Based on USEtox 2.1 methodology, this indicator integrates fate factors (environmental persistence), exposure factors (bioavailability to humans), and effect factors (dose–response relationships). It accounts for multiple exposure pathways, including inhalation and ingestion, with cancer risk factors derived from epidemiological and toxicological studies. |
Human Toxicity, Non-Cancer (HTPnc) | Employs the same multimedia fate model as HTPc, however with different effect factors focused on non-carcinogenic endpoints, such as developmental, reproductive, and neurological toxicity. Uncertainty is typically higher than for cancer effects due to less standardized dose–response relationships. |
Particulate Matter (PM) | Incorporates both primary particulates and secondary particulate precursors (, , ), accounting for atmospheric formation processes. The impact pathway includes emission-to-concentration modeling, population exposure assessment, and concentration–response functions primarily for cardiovascular and respiratory diseases. |
Ionizing Radiation (IRP) | Based on the Dreicer method, this category models the dispersion of radionuclides, calculates effective dose equivalents to the population, and converts this to damage based on radiation protection standards. The reference unit (U-235) normalizes various radionuclides according to their potential. |
Acidification Potential (AP) | Utilizes the Accumulated Exceedance model, which calculates the exceedance of critical loads of acidity in ecosystems. The characterization accounts for atmospheric dispersion, deposition processes, and ecosystem sensitivity, with spatial differentiation reflecting regional ecosystem vulnerabilities. |
Global Warming Potential (GWP) | Incorporates IPCC AR6 radiative forcing coefficients, atmospheric lifetime modeling, and indirect effects. The 100-year time horizon represents a compromise between short-term climate forcers and long-lived greenhouse gases, capturing both immediate and intergenerational climate impacts. |
Freshwater Ecotoxicity (FETP) | Based on USEtox 2.1. This indicator models the environmental fate of chemicals through air, water, soil, and sediment compartments. The effect assessment uses Species Sensitivity Distributions (SSDs) to determine the concentration at which a certain percentage of species would be affected. |
Freshwater Eutrophication (FEP) | Employs the EUTREND model, focusing on phosphorus as the limiting nutrient in freshwater systems. The fate model tracks phosphorus from emission to concentration increase in water bodies, accounting for retention, sedimentation, and water residence time factors. |
Marine Eutrophication (MEP) | Models nitrogen fate through watershed transport, atmospheric deposition, and direct emissions to coastal waters. It accounts for nitrogen speciation (, , organic-N) and their different bioavailability and transport behaviors in marine ecosystems. |
Terrestrial Eutrophication (TEP) | Based on the Accumulated Exceedance methodology, which calculates exceedance of critical loads for nitrogen in terrestrial ecosystems. Includes atmospheric dispersion modeling of nitrogen compounds and ecosystem-specific sensitivity thresholds derived from experimental and field studies. |
Photochemical Ozone Formation (POFP) | Utilizes the LOTOS-EUROS model to simulate tropospheric ozone formation through complex photochemical reactions. Characterization factors account for regional atmospheric conditions, VOC reactivity profiles, and /VOC-limited regimes that influence ozone formation potential. |
Land Use (LU) | Based on the LANCA model, which assesses multiple soil quality indicators: biotic production potential, erosion resistance, mechanical filtration, groundwater replenishment, and physicochemical filtration. The integration of these indicators creates a score reflecting ecosystem service impacts. |
Ozone Depletion (ODP) | Follows the World Meteorological Organization methodology for calculating ozone depletion potentials based on substances’ atmospheric lifetime, stratospheric transport efficiency, and catalytic ozone destruction capacity. The semi-steady state approach accounts for both direct and indirect emissions. |
Water Use (WU) | Implements the AWARE methodology, which is based on the ratio of water availability to demand in a given watershed. The model incorporates seasonal variations, human water requirements, and environmental water needs, producing scarcity-weighted consumption values. |
Resource Use, Fossils (RUF) | Based on the abiotic depletion potential approach using fossil resource calorific values. The method considers resource quality, extraction-to-reserve ratios, and thermodynamic parameters, focusing on energy carrier function rather than material properties. |
Resource Use, Minerals and Metals (RUM) | Employs the abiotic depletion potential method for ultimate reserves, calculating characterization factors as the ratio of annual extraction rate to the square of ultimate reserves, relative to antimony as the reference substance. The approach emphasizes geological scarcity. |
- Transportation modes: Nine different commuting options were captured: walking, bicycle, electric scooter, motorcycle, carpooling/ride-sharing, public transportation, taxi/ride-hailing, conventional combustion vehicles, and electric/hybrid vehicles.
- Usage frequency: The survey categorized transportation usage as ‘at least 3 times per week’, ‘1–2 times per week’, or ‘rarely/never’, allowing us to establish weekly usage patterns for different demographic groups.
- Travel distances: Respondents indicated their typical one-way commuting distance within five distance bands: up to 1 km, 1–2 km, 2–5 km, 5–10 km, and more than 10 km. For modeling purposes, the midpoint of each range (0.5 km, 1.5 km, 3.5 km, 7.5 km) was used, and 15 km was assigned as a conservative estimate for the highest category.
- Temporal extrapolation: Assuming that the transportation modes and patterns identified in the 2022 survey reflect general preferences over the past five years, with necessary adjustments for pandemic-related disruptions.
- Pandemic adjustment factors: To account for the significant disruption to campus activities during the COVID-19 pandemic, temporal correction factors were applied to the commuting estimates: 1.0 for standard academic years (2019, 2022, 2023), 0.67 for partial disruption (2021), and 0.25 for severe disruption (2020).
- Academic calendar: Assuming an average of 36 active weeks per year for the university community during normal operations, which formed the basis for annual travel calculations.
- Modal frequency conversion: Survey responses of ‘at least 3 times per week’ were modeled as 5 trips per week, ‘1–2 times per week’ as 2 trips per week, and ’rarely/never’ as 0 trips per week.
- Public transportation: In the case of community bus transport, the average capacity of 10 passengers per bus was considered, which was the default in the Ecoinvent database (v3.9).
Transportation Mode | PKM/Person.Year | ||||
---|---|---|---|---|---|
2019 | 2020 | 2021 | 2022 | 2023 | |
Walking | 1135.89 | 286.22 | 762.00 | 1147.04 | 1150.33 |
Bicycle | 93.91 | 23.37 | 62.37 | 93.36 | 93.20 |
Electric scooter | 63.73 | 16.00 | 42.64 | 64.09 | 64.19 |
Motorcycle | 58.10 | 14.35 | 38.36 | 57.22 | 56.97 |
Public transport (bus) | 63.98 | 16.10 | 42.87 | 64.48 | 64.63 |
Conventional vehicle | 1087.51 | 260.25 | 709.59 | 1054.78 | 1050.68 |
Electric/Hybrid vehicle | 99.91 | 24.41 | 65.41 | 97.10 | 96.27 |
Total | 2603.03 | 640.70 | 1723.24 | 2577.07 | 2576.27 |
Appendix B.3. Model Validation
Indicator Score | 1 | 2 | 3 | 4 | 5 |
---|---|---|---|---|---|
Reliability | Verified data based on measurements | Verified data partly based on assumptions or non-verified data based on measurements | Non-verified data partly based on assumptions | Qualified estimate (by expert) | Non-qualified estimate |
Completeness | Representative data from all sites relevant for the market considered over an adequate period | Representative data from >50% of the sites relevant for the market considered over an adequate period | Representative data from only some sites relevant for the market considered or >50% of sites but shorter periods | Representative data from only one site relevant for the market considered or some sites but shorter periods | Representativeness unknown or data from a small number of sites and shorter periods |
Temporal correlation | Less than 3 years of difference to the time period of the dataset | Less than 6 years of difference to the time period of the dataset | Less than 10 years of difference to the time period of the dataset | Less than 15 years of difference to the time period of the dataset | Age of data unknown or more than 15 years of difference to the time period of the dataset |
Geographical correlation | Data from area under study | Average data from larger area in which the area under study is included | Data from area with similar production conditions | Data from area with slightly similar production conditions | Data from unknown or distinctly different area |
Further technological correlation | Data from enterprises, processes and materials under study | Data from processes and materials under study but from different enterprises | Data from processes and materials under study but from different technology | Data on related processes or materials but same technology | Data on related processes or materials but different technology |
- Mean: The expected value of the impact category, representing the central tendency across all iterations.
- Median: The middle value when all results are arranged in order, which may differ from the mean when the distribution is skewed.
- Standard Deviation (SD): Quantifies the absolute spread or dispersion of the data points around the mean.
- Coefficient of Variation (CV): Expresses the relative standard deviation as a percentage of the mean, enabling direct comparison of uncertainty across impact categories with different units and magnitudes.
- Percentiles (2.5% and 97.5%): Define the lower and upper bounds of the 95% confidence interval, indicating the range within which we can be 95% confident that the true value lies.
- Standard Error of the Mean (SEM): Quantifies the precision of the estimated mean, calculating how much the sample mean is expected to vary from the true population mean.
Mode | Reliability | Completeness | Temporal | Geographical | Technological | SD |
---|---|---|---|---|---|---|
Bicycle | 1 | 1 | 1 | 3 | 2 | 1.07 |
Motorcycle | 1 | 1 | 1 | 4 | 2 | 1.09 |
Electric Car | 1 | 1 | 1 | 2 | 3 | 1.21 |
Gasoline Car | 2 | 1 | 1 | 2 | 2 | 1.09 |
Bus | 1 | 1 | 1 | 3 | 3 | 1.20 |
E-Scooter | 1 | 1 | 1 | 4 | 2 | 1.09 |
IC | Unit | Mean | Median | SD | CV | 2.5% | 97.5% | SEM |
---|---|---|---|---|---|---|---|---|
AP | mol H+ eq | 1.20 | 1.18 | 1.84 × 10−1 | 15.3% | 8.99 × 10−1 | 1.63 | 5.81 × 10−3 |
GWP | kg CO2 eq | 3.82 × 102 | 3.79 × 102 | 4.55 × 101 | 11.9% | 3.08 × 102 | 4.78 × 102 | 1.44 |
FETP | CTUe | 2.16 × 103 | 2.49 × 103 | 2.35 × 104 | 1090% | −4.26 × 104 | 4.75 × 104 | 7.44 × 102 |
PM | disease inc. | 1.84 × 10−5 | 1.79 × 10−5 | 3.20 × 10−6 | 17.4% | 1.37 × 10−5 | 2.62 × 10−5 | 1.01 × 10−7 |
MEP | kg N eq | 2.42 × 10−1 | 2.38 × 10−1 | 3.42 × 10−2 | 14.1% | 1.87 × 10−1 | 3.14 × 10−1 | 1.08 × 10−3 |
FEP | kg P eq | 5.84 × 10−2 | 5.38 × 10−2 | 2.43 × 10−2 | 41.6% | 2.79 × 10−2 | 1.23 × 10−1 | 7.68 × 104 |
TEP | mol N eq | 2.48 | 2.45 | 3.36 × 10−1 | 13.5% | 1.92 | 3.23 | 1.06 × 10−2 |
HTPc | CTUh | 2.14 × 108 | 3.76 × 108 | 7.13 × 10−6 | 333% | −1.45 × 10−5 | 1.39 × 10−5 | 2.26 × 10−7 |
HTPnc | CTUh | −4.72 × 10−5 | −7.28 × 10−6 | 1.68 × 10−3 | −35.60% | −3.26 × 10−3 | 3.15 × 10−3 | 5.30 × 10−5 |
IRP | kBq U-235 eq | 1.11 × 101 | 7.65 | 1.06 × 101 | 95.6% | 3.60 | 4.09 × 101 | 3.36 × 10−1 |
LU | Pt | 1.85 × 103 | 1.74 × 103 | 5.53 × 102 | 30.0% | 1.12 × 103 | 3.06 × 103 | 1.75 × 101 |
ODP | kg CFC11 eq | 8.73 × 10−6 | 8.18 × 10−6 | 2.70 × 10−6 | 30.9% | 5.20 × 10−6 | 1.58 × 10−5 | 8.53 × 108 |
POFP | kg NMVOC eq | 1.57 | 1.52 | 2.85 × 10−1 | 18.2% | 1.16 | 2.27 | 9.03 × 10−3 |
RUF | MJ | 4.97 × 103 | 4.65 × 103 | 1.49 × 103 | 30.0% | 3.00 × 103 | 8.65 × 103 | 4.70 × 101 |
RUM | kg Sb eq | 4.14 × 10−3 | 3.96 × 10−3 | 9.72 × 104 | 23.5% | 2.73 × 10−3 | 6.30 × 10−3 | 3.07 × 10−5 |
WU | m3 water depriv. | 3.06 × 102 | 5.17 × 102 | 3.86 × 103 | 1260% | −8.33 × 103 | 7.03 × 103 | 1.22 × 102 |
Appendix C
Appendix C.1. Preference Functions
Type | Equation | Definition | Parameters |
---|---|---|---|
Usual | Sharp threshold with no tolerance | – | |
U-shape | Indifference below , full preference above | ||
V-shape | Linear increase in preference up to | ||
Level | Stepwise preference: indifference, moderate, full | ||
V-shape with indifference | Linear growth after indifference threshold | ||
Gaussian | Smooth, non-linear transition |
Appendix C.2. Prospective Modeling of Commuting Alternatives
Transportation Mode | Intercept (b) | Slope (m) | |
---|---|---|---|
Walking | −69,237.32 | 1147.36 | 1.000 |
Bicycle | 3401.76 | 93.35 | 1.000 |
Electric scooter | −2187.72 | 64.10 | 1.000 |
Motorcycle | 5410.58 | 57.20 | 1.000 |
Public transport (bus) | −3126.60 | 64.49 | 1.000 |
Electric/Hybrid vehicle | 17,439.14 | 97.01 | 0.999 |
Conventional vehicle | 215,366.46 | 935.66 | 0.998 |
Transportation Mode | Preference (%) |
---|---|
Electric Scooter | 8.74% |
Public Transport | 29.85% |
Motorcycle | 1.47% |
Bicycle | 11.99% |
Electric Car | 21.36% |
Conventional Car | 0.00% |
Walking | 18.69% |
Carpooling | 7.91% |
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Abbr. | Unit | Description |
---|---|---|
AP | mol H+ eq | Acidification potential in soil and water |
GWP | kg CO2 eq | Global warming potential |
FETP | CTUe | Freshwater ecotoxicity potential |
PM | Disease incidence | Cases of disease linked to particulate matter exposure |
MEP | kg N eq | Marine eutrophication potential |
FEP | kg P eq | Freshwater eutrophication potential |
TEP | mol N eq | Terrestrial eutrophication potential |
HTPc | CTUh | Comparative toxic units for humans, increased morbidity (cancer effects) |
HTPnc | CTUh | Comparative toxic units for humans, increased morbidity (non-cancer effects) |
IRP | kBq U-235 eq | Radioactive impact on human health |
LU | Pt | Land use impact reflecting soil quality and land transformation |
ODP | kg CFC-11 eq | Stratospheric ozone depletion potential |
POFP | kg NMVOC eq | Photochemical ozone formation potential |
RUF | MJ | Fossil resource use, measured in megajoules |
RUM | kg Sb eq | Mineral and metal resource depletion, in kg antimony equivalent |
WU | m3 world depriv. | Water use, measured in cubic meters of world-equivalent water |
Criteria | Unit (per Person) | 2019 | 2020 | 2021 | 2022 | 2023 | 23/19 (%) |
---|---|---|---|---|---|---|---|
AP | mol H eq | 1.24 | 0.30 | 0.81 | 1.20 | 1.19 | −4.0 |
GWP | kg CO2 eq | 399 | 97 | 261 | 386 | 382 | −4.3 |
FETP | CTUe | 3050 | 741 | 1990 | 2950 | 2920 | −4.4 |
PM | Disease incidence | 1.90 × 10−5 | 4.63 × 10−6 | 1.24 × 10−5 | 1.84 × 10−5 | 1.82 × 10−5 | −4.1 |
MEP | kg N eq | 0.25 | 0.06 | 0.16 | 0.24 | 0.24 | −3.7 |
FEP | kg P eq | 0.06 | 0.01 | 0.04 | 0.06 | 0.06 | −4.1 |
TEP | mol N eq | 2.57 | 0.63 | 1.68 | 2.49 | 2.47 | −3.9 |
HTPc | CTUh | 3.01 × 10−7 | 7.33 × 10−8 | 1.97 × 10−7 | 2.91 × 10−7 | 2.88 × 10−7 | −4.3 |
HTPnc | CTUh | 3.94 × 10−6 | 9.59 × 10−7 | 2.57 × 10−6 | 3.81 × 10−6 | 3.77 × 10−6 | −4.3 |
IRP | kBq U-235 eq | 11.0 | 2.69 | 7.21 | 10.7 | 10.6 | −4.1 |
LU | Pt | 1900 | 462 | 1240 | 1830 | 1820 | −4.3 |
ODP | kg CFC-11 eq | 9.02 × 10−6 | 2.19 × 10−6 | 5.88 × 10−6 | 8.71 × 10−6 | 8.62 × 10−6 | −4.4 |
POFP | kg NMVOC eq | 1.62 | 0.40 | 1.06 | 1.57 | 1.56 | −3.7 |
RUF | MJ | 5130 | 1250 | 3350 | 4960 | 4910 | −4.3 |
RUM | kg Sb eq | 4.34 × 10−3 | 1.06 × 10−3 | 2.83 × 10−3 | 4.20 × 10−3 | 4.15 × 10−3 | −4.4 |
WU | m3 water depriv. | 35.1 | 8.54 | 22.9 | 34.0 | 33.6 | −4.3 |
Criteria | Units | BAU | BAUp | OS | PT | PT | AM | FE |
---|---|---|---|---|---|---|---|---|
(per Person) | BRT | |||||||
AP | mol H eq | 1.21 | 1.09 | 0.79 | 0.80 | 0.78 | 0.77 | 1.52 |
GWP | kg CO2 eq | 388 | 347 | 132 | 231 | 230 | 229 | 258 |
FETP | CTUe | 2960 | 2650 | 836 | 1750 | 1730 | 1720 | 1560 |
PM | Disease incidence | 1.85 × 10−5 | 1.66 × 10−5 | 9.77 × 10−6 | 1.19 × 10−5 | 1.16 × 10−5 | 1.16 × 10−5 | 1.84 × 10−5 |
MEP | kg N eq | 0.24 | 0.22 | 0.18 | 0.18 | 0.16 | 0.16 | 0.29 |
FEP | kg P eq | 0.06 | 0.05 | 0.06 | 0.04 | 0.04 | 0.04 | 0.13 |
TEP | mol N eq | 2.50 | 2.28 | 1.77 | 1.83 | 1.69 | 1.67 | 2.82 |
HTPc | CTUh | 2.93 × 10−7 | 2.63 × 10−7 | 1.39 × 10−7 | 1.80 × 10−7 | 1.77 × 10−7 | 1.81 × 10−7 | 2.73 × 10−7 |
HTPnc | CTUh | 3.83 × 10−6 | 3.43 × 10−6 | 2.39 × 10−6 | 2.36 × 10−6 | 2.38 × 10−6 | 2.39 × 10−6 | 5.20 × 10−6 |
IRP | kBq U-235 eq | 10.7 | 9.67 | 12.7 | 7.31 | 7.81 | 7.35 | 29.5 |
LU | Pt | 1840 | 1650 | 714 | 1110 | 1120 | 1100 | 1440 |
ODP | kg CFC-11 eq | 8.75 × 10−6 | 7.82 × 10−6 | 2.05 × 10−6 | 5.06 × 10−6 | 5.01 × 10−6 | 5.00 × 10−6 | 3.97 × 10−6 |
POFP | kg NMVOC eq | 1.58 | 1.43 | 0.98 | 1.10 | 1.05 | 1.05 | 1.57 |
RUF | MJ | 4980 | 4460 | 1730 | 2980 | 2970 | 2940 | 3400 |
RUM | kg Sb eq | 4.21 × 10−3 | 3.77 × 10−3 | 3.07 × 10−3 | 2.61 × 10−3 | 2.61 × 10−3 | 2.62 × 10−3 | 6.99 × 10−3 |
WU | m3 water depriv. | 34.1 | 30.6 | 23.3 | 21.3 | 21.8 | 21.5 | 51.3 |
Rank | Scenario | |||
---|---|---|---|---|
1 | Optimistic Shift (OS) | 0.389 | 0.414 | 0.025 |
2 | Active Mobility (AM) | 0.262 | 0.292 | 0.030 |
3 | Public Transportation with BRT (PT-BRT) | 0.255 | 0.286 | 0.031 |
4 | Public Transportation (PT) | 0.231 | 0.271 | 0.041 |
5 | Business-as-Usual Pre-Pandemic Trend (BAUp) | −0.230 | 0.087 | 0.317 |
6 | Business-as-Usual (BAU) | −0.399 | 0.046 | 0.446 |
7 | Full Electrification (FE) | −0.508 | 0.059 | 0.566 |
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Deda, D.; Manzolli, J.A.; Quina, M.J.; Gervasio, H. The Road to 2030: Combining Life Cycle Assessment and Multi-Criteria Decision Analysis to Evaluate Commuting Alternatives in a University Context. Sustainability 2025, 17, 5839. https://doi.org/10.3390/su17135839
Deda D, Manzolli JA, Quina MJ, Gervasio H. The Road to 2030: Combining Life Cycle Assessment and Multi-Criteria Decision Analysis to Evaluate Commuting Alternatives in a University Context. Sustainability. 2025; 17(13):5839. https://doi.org/10.3390/su17135839
Chicago/Turabian StyleDeda, Denner, Jônatas Augusto Manzolli, Margarida J. Quina, and Helena Gervasio. 2025. "The Road to 2030: Combining Life Cycle Assessment and Multi-Criteria Decision Analysis to Evaluate Commuting Alternatives in a University Context" Sustainability 17, no. 13: 5839. https://doi.org/10.3390/su17135839
APA StyleDeda, D., Manzolli, J. A., Quina, M. J., & Gervasio, H. (2025). The Road to 2030: Combining Life Cycle Assessment and Multi-Criteria Decision Analysis to Evaluate Commuting Alternatives in a University Context. Sustainability, 17(13), 5839. https://doi.org/10.3390/su17135839