Assessing the Sustainability of Transport Systems through Indexes: A State-of-the-Art Review
Abstract
:1. Introduction
- What are the current research trends in assessing transport sustainability through composite indicators?
- What are the existing research gaps and what are the possible research works in this domain?
2. Definition of Composite Indicators
- Normalization becomes necessary only when indicators are incomparable, i.e., when they possess different measurement units. If all elementary indicators are expressed in the same units (or dimensionless), normalization is not required. In the application of multiple-criteria decision-making (MCDM) methods, “benefit”-type elementary indicators and “cost”-type elementary indicators undergo distinct normalization processes.
- The weighting step significantly influences the composite indicator and the obtained results. It involves assigning varying levels of importance to each indicator. The most commonly utilized weighting methods fall into three categories:
- i.
- The equal weighting method is an objective technique that assigns the same weight to all variables.
- ii.
- Objective data-based methods determine weights using statistical-based techniques.
- iii.
- Subjective participation methods consider the subjective opinions of experts and/or stakeholders.
- Aggregation involves the mathematical combination of elementary indicators. The choice of an appropriate aggregation technique is crucial in constructing a composite indicator. Aggregation can be classified into three categories, each with distinct characteristics as outlined in Table 1 [7,8,9].
- i.
- The compensatory technique operationalizes weak sustainability, employing additive aggregation methods (e.g., arithmetic mean). This implies full compensation between elementary indicators, meaning an unfavorable result of one indicator can be compensated by a favorable result of another.
- ii.
- The partially compensatory technique operationalizes the limited sustainability through techniques based on the geometric mean. In this case, elementary indicators are mutually and preferentially independent, but they have certain limitations related to the compensations of indicators.
- iii.
- The non-compensatory technique operationalizes strong sustainability. This aggregation method is used when full compensation between elementary indicators is deemed unacceptable. Therefore, an unfavorable result of one indicator cannot be compensated by a favorable result from another indicator.
3. Literature Review
- Step 1: Search criteria.In the initial phase, we utilized a comprehensive set of keywords to identify existing approaches for assessing sustainable transport using indicators and composite indices. Key terms included “sustainable transport”, “sustainability indicators”, “compo-site index”, and “assessment”. Research articles related to case studies in sustainable transportation were sourced from the Scopus database, renowned as the largest abstract and citation database of peer-reviewed literature, including scientific journals, books, and conference proceedings. Consequently, our literature search incorporated a diverse set of source databases, such as Google Scholar, Web of Science, Scopus, Taylors & Francis, Springer, Science Direct, and Wiley Online Library.
- Step 2: Collect data.We examined diverse data sources to provide a comprehensive perspective on sustainable transport assessment approaches. Clear key terms were established for the inclusion or exclusion of articles, ensuring the selection of the most relevant studies. The study involved identifying 61 pertinent articles in the literature, prioritizing the most frequently referenced approaches, thereby emphasizing established and widely recognized methodologies.
- Step 3: Research refinement.The process of refining the research focused particularly on elucidating the methodologies associated with constructing composite indicators, excluding approaches related to the selection of elementary sustainability indicators. This refinement involved a comprehensive examination of 47 studies conducted between 2002 and 2022, providing a nuanced understanding of the evolution and trends in composite indicator construction.
- Step 4: Analysis and discussion of results.This critical step aimed at synthesizing the literature and presenting the findings. The process involved an initial descriptive analysis of the identified literature, followed by a detailed examination of the reviewed studies. The latter focused on identifying gaps and future research directions, thereby contributing to a more nuanced understanding of sustainable transport assessment methodologies.
The Name of the Composite Indicator | Case Study | Selection of Indicators | Steps in the Construction of the Composite Indicator | Reference | |||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Sustainability Dimensions | Number of Indicators | Normalization | Weighting | Aggregation | |||||||
Economic | Environmental | Social/Societal | Others | Methods | Aggregation Technique | ||||||
STPM | Countries (28 countries, OECD and USA) | * | 9 | Z-score | PCA | Linear Aggregation | C | [10] | |||
SI | Countries (79 countries) | * | * | * | 33 | Z-score | Equal weighting | Concordance Analysis Technique | NC | [11] | |
SusTrans | Countries (27 Member States) | * | * | * | Technical | 55 | Min–Max | Equal weighting | Simple additive rules | C | [12] |
SMI | City (Belo Horizonte, Brazil) | * | * | * | 26 | Min–Max | AHP | Linear Aggregation | C | [13] | |
SILENT | City (Gold Coast, Australia) | * | Demography, Land use and urban form, Transport | 30 | Likert scale | Delphi | Simple additive rules | C | [16] | ||
I_SUM | City (São Paulo, Brazil) | * | * | * | 87 | Lookup Table | Expert opinion | Linear Aggregation | C | [17] | |
WIPS | Countries (United Kingdom) | * | * | * | 233 | Likert scale | AHP | SAW | C | [18] | |
TPI | Cities (36 European cities) | * | * | * | 24 | Min–Max | Equal weighting | DE | C | [19] | |
CIMI | Countries (15 European countries) | * | * | * | 17 | -- | AHP | TOPSIS | C | [20] | |
Index | City (San Antonio, Texas) | * | * | * | 13 | Min–Max | Delphi | MAUT | C | [21] | |
TSI | SUCCESS Project (Smaller Urban Communities in CIVITAS for Environmentally Sustainable Solutions) | * | * | * | Transport, Energy | 9 | -- | AHP | Dempster–Shafer theory | C | [50] |
IOST | Cities (100 world cities) | * | * | * | 9 | Z-score | Equal weighting | Linear Aggregation | C | [24] | |
SCI | City (Taipei, Taiwan) | * | * | * | Finance, Energy | 10 | Min–Max | AHP | Simple additive rules | C | [23] |
ESI | Country (United States) | * | * | * | 19 | Min–Max | Equal weighting | Linear Aggregation | C | [26] | |
CSI | Countries (13 countries, Atlanta Metropolitan region) | * | * | * | Efficiency | 15 | Min–Max | Equal weighting | Linear Aggregation | C | [25] |
ICST | City (Melbourne, Australia) | * | * | * | 9 | Min–Max | PCA, FA | Linear Aggregation | C | [27] | |
SDi | Country (Taïwan) | * | * | * | Energy | 19 | Min–Max | PCA | Linear Aggregation | C | [28] |
IOST | City (Esfahan, Iran) | * | * | * | 9 | Z-score | Equal weighting | Simple additive rules | C | [29] | |
CIsust | Cities (23 European cities) | * | * | * | 9 | Z-score | Expert opinion | Simple additive rules | C | [30] | |
CSILINK | City (Bangalore, India) | * | * | * | 16 | Min–Max | AHP | Simple additive rules | C | [31] | |
MUSIX | City (Gold Coast, Australia) | * | 14 | Likert scale | Expert opinion | Linear Aggregation | C | [14] | |||
CSI | City (Vancouver, Canada) | * | * | * | Efficiency | 19 | Z-score, Min–Max DR | Equal weighting | Linear Aggregation | C | [33] |
FTSI | Companies (Transport companies in India) | * | * | * | Efficiency | 60 | -- | Expert opinion | Linear Aggregation, Euclidean distance | C | [34] |
NTSI | Countries (28 European countries) | * | * | * | 10 | Z-score | Equal weighting | Linear Aggregation | C | [32] | |
-- | City (City in a developing country) | * | * | * | 13 | -- | F-AHP | Geometric aggregation | PC | [35] | |
-- | Cities (26 cities in Asia and the Middle East) | * | * | * | Efficiency | 29 | Min–Max | Equal weighting | [36] | ||
SUTI | Cities (4 cities in the Asia-Pacific region) | * | * | * | 10 | Min–Max | Equal weighting | Geometric aggregation | PC | [37] | |
IMUS | City (Greater Vitoria, Brazil) | * | * | * | 20 | Min–Max | Equal weighting | Simple additive rules | C | [38] | |
CI | Cities (116 Italian provincial cities) | * | * | * | 16 | Z-score, Min–Max, DR | Equal weighting, PCA | Geometric, linear and concave aggregation | CP, C, NC | [40] | |
ITS | Country (United States) | * | * | * | 89 | Min–Max | PCA/FA; Equal weighting | Linear Aggregation | C | [39] | |
SIUFT | City (Rio de Janeiro, Brazil) | * | * | * | 10 | -- | Equal weighting | Linear Aggregation | C | [42] | |
ISM | Cities (6 cities, Spain) | * | * | * | Technology | 16 | Min–Max | Equal weighting | Square root | NC | [41] |
FTSSI | Companies (7 companies, India) | * | 74 | -- | Expert opinion | Linear Aggregation, Euclidean distance | C | [45] | |||
SUTPI | City (Jakarta, Indonesia) | * | * | * | 5 | -- | Weighted average | Linear Aggregation | C | [15] | |
SPI | Logistics service providers in India | * | * | * | Efficiency, Safety, Advanced Technology | 34 | Likert scale | Delphi, TISM, F-AHP | Linear Aggregation | C | [43] |
CSTI | Cities (7 cities, India) | * | * | * | 8 | Min–Max | Equal weighted; Expert opinion | Square root | [44] | ||
IFSM | Cities (16 states and 1 Union territory of India) | * | * | * | 12 | Min–Max | FA | Linear Aggregation | C | [49] | |
ZSI | Companies (Freight transport companies) | * | * | * | 16 | -- | Linguistic variables | Linear Aggregation | C | [46] | |
FTE-nSoSI | Companies (Freight transport companies) | * | * | 63 | -- | F-BWM, Expert opinion | Linear Aggregation | C | [47] | ||
-- | Companies (7 freight transport companies in Spain) | * | * | * | 15 | R-DEMATEL | R-MABAC | PC | [51] | ||
ISTA | Cities (26 States and 1 Union Territory of India) | 116 | Min–Max | PCA/FA, Equal weighting | Linear Aggregation | C | [52] | ||||
I | Cities (4 metropolitan cities in India) | * | * | * | 10 | Min–Max | PCA, Equal weighting, Fuzzy-Weighted | Linear Aggregation | C | [53] | |
ISFT | Companies (Indian freight transport companies) | * | * | * | 31 | Min–Max | Consensus model | FERA | [54] | ||
-- | Freight transport operators in India | * | * | * | Efficiency, Safety, Advanced Technology | 34 | ERA | C | [55] | ||
-- | Companies (Transport and logistics companies in India) | * | * | * | Technology | 22 | Min–Max | Equal weighting | -- | C | [56] |
FLS | City (Sfax, Tunisia) | * | * | * | Political, Spatial | 15 | Min–Max | F-FUCOM | F-MAIRCA, F-PROMETHEE | C, PC | [57] |
FLS | City (Sfax, Tunisia) | * | * | * | Political, Spatial | 15 | -- | F-FUCOM | F-MAIRCA | C, PC | [58] |
4. Findings and Results
4.1. Application Field of Composite Indicators
4.2. Sustainability Dimensions
4.3. Normalization Methods
4.4. Weighting Methods
4.5. Aggregation Methods
4.6. Consideration of Uncertainty
5. Research Trends and Gaps
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Aggregation Technique | Compensatory | Partially Compensatory | Non-Compensatory |
---|---|---|---|
Sustainability perspective | Weak sustainability | Limited sustainability | Strong sustainability |
Priority | Economic | Balance between dimensions | Environmental |
Target | Short term | Medium term | Long term |
Principle | No environmental protection without a strong economic base | Reconcile environmental protection, social equity and economic growth | Sustainability of the human capital cannot be ensured without taking into account the capacities of the ecological support |
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Ayadi, H.; Benaissa, M.; Hamani, N.; Kermad, L. Assessing the Sustainability of Transport Systems through Indexes: A State-of-the-Art Review. Sustainability 2024, 16, 1455. https://doi.org/10.3390/su16041455
Ayadi H, Benaissa M, Hamani N, Kermad L. Assessing the Sustainability of Transport Systems through Indexes: A State-of-the-Art Review. Sustainability. 2024; 16(4):1455. https://doi.org/10.3390/su16041455
Chicago/Turabian StyleAyadi, Hana, Mounir Benaissa, Nadia Hamani, and Lyes Kermad. 2024. "Assessing the Sustainability of Transport Systems through Indexes: A State-of-the-Art Review" Sustainability 16, no. 4: 1455. https://doi.org/10.3390/su16041455
APA StyleAyadi, H., Benaissa, M., Hamani, N., & Kermad, L. (2024). Assessing the Sustainability of Transport Systems through Indexes: A State-of-the-Art Review. Sustainability, 16(4), 1455. https://doi.org/10.3390/su16041455