A Hybrid MCDM for the Location of Urban Distribution Centers under Uncertainty: A Case Study of Casablanca, Morocco
Abstract
:1. Introduction
2. Literature Review
2.1. Location Problems in the Literature
2.2. The Problem of Location Literature in a Fuzzy Environment
2.2.1. Triangular Fuzzy Number
2.2.2. Location with Fuzzy Logic
3. Methodology
3.1. Fuzzy Stepwise Weighted Assessment Ratio Analysis (F-SWARA) Method
3.2. Entropy Method
3.3. Hybridization of the F-SWARA and F-ENTROPY Methods
3.4. Fuzzy Vlse Kriterijumska Optimizacija Kompromisno Resenje (F-VIKOR) Method
4. Decision-Making Process for Evaluating and Selecting UDC Location
4.1. Case Study on the City of Casablanca
4.1.1. Presentation of the Problem
- -
- The existence of a need for a UDC.
- -
- The existence of land that can potentially accommodate a UDC.
- -
- Only territorial criteria influence the choice of location.
4.1.2. Collection of Information
4.2. Application of the Decision-Making Approach for the Location of UDCs
4.2.1. Determination of Stakeholders
4.2.1.1. Stakeholders in the Literature
- Economic Sphere
- -
- Entrepreneur: The project owner can be private, such as a transport company or a production company whose aim is to pool its resources with other companies, or public, in which case the initiative to set up a UDC can come from a governmental or local decision whose aim is to rationalize urban traffic and minimize the access of heavy goods vehicles to cities.
- -
- Business: this can refer to either customers or suppliers; businesses will desire to minimize their transport costs through their collaboration with the UDC.
- Urban Sphere
- -
- Residents or associations that defend them: they must understand the interest of the implementation of the UDC, knowing the benefits on traffic fluidity, the improvement of mobility in general, etc.
- -
- Institutional: Institutions have a very important role in the implementation of the UDC. The improvement of the quality of life of citizens and the application of standards are the first priority of the institutions and the UDC helps in its application (time restrictions, banning of heavy goods vehicles in cities). The latter can also tighten up regulations to minimize the negative impact of transport in the city, which will also help the project to succeed.
4.2.1.2. CATWOE Method
- ⇨
- The municipality and Private entrepreneur.
- ⇨
- Upstream customer (suppliers) and downstream customer (company or individual).
- ⇨
- It is a new activity (no existing competitors).
- ⇨
- Carrier.
- ⇨
- Neighbour.
- ⇨
- Everyone is affected by air pollution due to the activity of the system.
4.2.2. Determination of Criteria
Methods/PP | Municipalities (PP1) | Private Company (PP6) | Suppliers/Customers (PP2) | Transporters (PP3) | Residents (PP4) | People Affected by Air Pollution (PP7) | States (PP5) |
---|---|---|---|---|---|---|---|
PPi from the literature review | X | X | X | X | X | X | |
PPi from the CATWOE method | X | X | X | X | X | X | |
Final PPs selected after interviews | X | X | X | X | X |
4.2.3. Application of the Combined Method
Result of the F-VIKOR Method
4.2.4. Interpretation of Results
- -
- The ranking of the alternatives is different when considering the hybrid method and the weighting methods each separately, which shows that the use of the hybridization method makes it possible to obtain a result that combines the two methods and approaches more than reality.
- -
- Alternative 4 was selected as the best option, as it is a regional road connecting the city with several internal and external industrial centers. Very close to potential customers and logistics platforms, a UDC in this location can be a major asset for the city. The only drawback is the low availability of land in the desired area.
- -
- The next most effective UDCs are alternatives 7 and 6, where the most effective criteria were the proximity to internal customers and security, since this alternative is in the city center. The main weakness of these alternatives is the state of the road, which is very congested by the various road users and the permanent road works.
- -
- Alternatives 1 and 3 were voted as the worst UDC locations. The distance and the low demand from nearby customers tipped the analysis towards this result. On the positive side, the availability of land and the safety of the area should not be ruled out.
- -
- The other UDC alternatives were positioned between the high- and low-ranking alternatives mentioned.
- -
- Various criteria can be utilized in MCDM models. In this case, 11 criteria in five dimensions in this study were looked for. Other factors, such as economic, societal, and environmental consequences, were not considered in this study.
- -
- Criteria are always confronted with uncertainty in studies in the field of selection procedures, such as this one. However, fuzzy logic was used in this study to deal with and overcome uncertainty. Other strategies for overcoming uncertainty (such as stochastic data and grey numbers) were also accessible but they do not matter for the study. Finally, the model may be solved using all three methods, and the results compared.
4.3. Sensitivity Analysis
5. Conclusions and Perspectives
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Author | Methods Used | Fuzzy Logic | Year of Appearance |
---|---|---|---|
[6] | ENTROPY + TODIM | 2019 | |
[7] | AHP + WASPAS | 2019 | |
[8] | GPSI + GPIV | 2021 | |
[9] | AHP + PROMETHEE | 2019 | |
[10] | GARA + TOPSIS | 2021 | |
[12] | SAW + AHP + TOPSIS | 2019 | |
[14] | TOPSIS | 2020 | |
[11,12,17,19] | AHP + TOPSIS | 2018, 2021, 2019, 2019 | |
[16] | ANP + AHP + TOPSIS | 2019 | |
[18] | CoCOSo + SWARA | 2020 | |
[20] | AHP + PROMETHEE | 2021 | |
[22] | AHP + DEA + TOPSIS | X | 2018 |
[23] | DEMATEL + FOWA + MULTIMOOORA | X | 2020 |
[24] | AHP | X | 2017 |
[25] | DEMATEL + AHP + TOPSIS | X | 2020 |
[28] | Delphi + ANP + Entropy + DEMATEL | X | 2020 |
Our study | F-SWARA + F-ENTROPY + F-VIKOR | X | 2022 |
Criteria ID | Enumeration | Source | ||
---|---|---|---|---|
C1 | C11 | Allocated land | Availability of land | [5,37,38] |
C12 | Possibility of extensions | [37,38] | ||
C2 | C21 | Structure of the city | Existence and position of potential suppliers and customers in the urban air | [27,37,38,39] |
C22 | Infrastructure of the city | [5,27,38] | ||
C3 | C31 | Soil characteristics | Geographical conditions | [5,40] |
C32 | Accessibility of the information system | [37] | ||
C4 | C41 | Environmental safety | Environmental safety and security | [41,42] |
C42 | Natural disaster risk | [5,27] | ||
C5 | C51 | Government policy | Level of development of the area | [27] |
C52 | Attractiveness of the region through investment in logistics | [42] | ||
C53 | Government policy on the development of the area | [5,42,43] |
Criteria | Validation (Y for Maintain, N for Reject) | Explanation |
---|---|---|
C11 | Y | The existence of land that can accommodate a UDC is crucial to the choice of location |
C12 | N | A new UDC can be created in the area without sticking to the original |
C21 | Y | The position of the customers is important |
C22 | Y | The infrastructure will link the center to the customers, so it is important to consider its condition |
C31 | Y | The slope and quality of the soil directly influence the price of the land and its construction, and it is important to take this into consideration |
C32 | N | The information system is almost the same in all big cities |
C41 | Y | Safety and security are very important for this kind of project |
C42 | N | Disaster risk is low and equal in all areas |
C51 | Y | Acceptability of the project to the local population is important for its proper functioning |
C52 | Y | Are there other projects in the area that may be interested in the UDC? It is important to know the answer to this question, hence its interest. |
C53 | Y | This criterion is responsible for the long-term viability of the project |
Criteria | SUB-CRITERIA | |||
---|---|---|---|---|
C1 | (0.33,0.38,0.44) | C11 | (0.95,1,1) | (0.31,0.38,0.44) |
C2 | (0.18,0.23,0.29) | C21 | (0,45,0.5,0.55) | (0.081,0.11,0.15) |
C22 | (0,45,0.5,0.55) | (0.081,0.11,0.15) | ||
C3 | (0.10,0.16,0.21) | C31 | (0.95,1,1) | (0.095,0.16,0.21) |
C4 | (0.07,0.12,0.18) | C41 | (0.95,1,1) | (0.065,0.12,0.18) |
C5 | (0.02,0.08,0.13) | C51 | (0.25,0.3,0.35) | (0.005,0.024,0.045) |
C52 | (0.25,0.3,0.35) | (0.005,0.024,0.045) | ||
C53 | (0.25,0.3,0.35) | (0.005,0.024,0.045) |
C11 | C21 | C22 | C31 | C41 | C51 | C52 | C53 | |
---|---|---|---|---|---|---|---|---|
A1 | (0.15,0.21,0.26) | (0.06,0.10,0.16) | (0.05,0.09,0.13) | (0.09,0.13,0.19) | (0.09,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) |
A2 | (0.06,0.10,0.16) | (0.06,0.10,0.16) | (0.06,0.10,0.16) | (0.06,0.10,0.16) | (0.08,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) |
A3 | (0.15,0.21,0.26) | (0.04,0.08,0.13) | (0.04,0.08,0.13) | (0.06,0.10,0.16) | (0.09,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) |
A4 | (0.04,0.08,0.13) | (0.06,0.10,0.16) | (0.15,0.21,0.26) | (0.06,0.10,0.16) | (0.04,0.08,0.13) | (0.08,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) |
A5 | (0.15,0.21,0.26) | (0.04,0.08,0.13) | (0.04,0.08,0.13) | (0.08,0.13,0.19) | (0.09,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) |
A6 | (0.02,0.05,0.10) | (0.15,0.21,0.26) | (0.15,0.21,0.26) | (0.08,0.13,0.19) | (0.15,0.21,0.26) | (0.08,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) |
A7 | (0.02,0.05,0.10) | (0.06,0.10,0.16) | (0.06,0.10,0.16) | (0.09,0.13,0.19) | (0.06,0.10,0.16) | (0.08,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) |
A8 | (0.06,0.10,0.16) | (0.13,0.18,0.25) | (0.06,0.10,0.16) | (0.09,0.13,0.19) | (0.06,0.10,0.16) | (0.08,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) |
Wej | (0.04,0.08,0.13) | (0.06,0.10,0.16) | (0.15,0.21,0.26) | (0.06,0.10,0.16) | (0.04,0.08,0.13) | (0.08,0.13,0.19) | (0.08,0.13,0.19) | (0.08,0.13,0.19) |
Criteria | Weight with F-SWARA | Weight with F-Entropy | Final Weight |
---|---|---|---|
C11 | (0.31,0.38,0.44) | (0.09,0.13,0.19) | (0.17,0.23,0.29) |
C21 | (0.081,0.11,0.15) | (0.08,0.13,0.19) | (0.08,0.12,0.17) |
C22 | (0.081,0.11,0.15) | (0.09,0.13,0.19) | (0.08,0.12,0.17) |
C31 | (0.095,0.16,0.21) | (0.04,0.08,0.13) | (0.06,0.11,0.16) |
C41 | (0.065,0.12,0.18) | (0.09,0.13,0.19) | (0.08,0.12,0.18) |
C51 | (0.005,0.024,0.045) | (0.15,0.21,0.26) | (0.09,0.13,0.17) |
C52 | (0.005,0.024,0.045) | (0.06,0.10,0.16) | (0.03,0.06,0.11) |
C53 | (0.005,0.024,0.045) | (0.06,0.10,0.16) | (0.03,0.06,0.11) |
F-SWARA | F-ENTROPY | Hybridation | ||||
---|---|---|---|---|---|---|
Pi | Rank | Pi | Rank | Pi | Rank | |
A1 | 0 | 8 | 0 | 8 | 0 | 8 |
A2 | 1.0244145 | 6 | 0.99512365 | 5 | 0.64068348 | 5 |
A3 | 0.6547895 | 7 | 0.55365478 | 6 | 0.368209814 | 7 |
A4 | 2.0324895 | 1 | 1.54948762 | 1 | 1.728088018 | 1 |
A5 | 1.5236547 | 4 | 0.25321456 | 7 | 0.53358569 | 6 |
A6 | 1.3652489 | 5 | 1.52365789 | 2 | 1.417528352 | 3 |
A7 | 1.8563214 | 2 | 1.42146972 | 3 | 1.55667757 | 2 |
A8 | 1.6245879 | 3 | 1.12365478 | 4 | 0.753944441 | 4 |
Experience | C1 | C2 | C3 | C4 | C5 |
---|---|---|---|---|---|
EXP1 | (0.8,0.9,1) | (0,0.1,0.2) | (0,0.1,0.2) | (0,0.1,0.2) | (0,0.1,0.2) |
EXP2 | (0,0.1,0.2) | (0.8,0.9,1) | (0,0.1,0.2) | (0,0.1,0.2) | (0,0.1,0.2) |
EXP3 | (0,0.1,0.2) | (0,0.1,0.2) | (0.8,0.9,1) | (0,0.1,0.2) | (0,0.1,0.2) |
EXP4 | (0,0.1,0.2) | (0,0.1,0.2) | (0,0.1,0.2) | (0.8,0.9,1) | (0,0.1,0.2) |
EXP5 | (0,0.1,0.2) | (0,0.1,0.2) | (0,0.1,0.2) | (0,0.1,0.2) | (0.8,0.9,1) |
Alternative/Experience | Initial Solution | EXP1 | EXP2 | EXP3 | EXP4 | EXP5 |
---|---|---|---|---|---|---|
A1 | 8 | 8 | 6 | 8 | 6 | 8 |
A2 | 5 | 6 | 4 | 7 | 5 | 6 |
A3 | 7 | 7 | 8 | 6 | 7 | 7 |
A4 | 3 | 4 | 5 | 2 | 8 | 5 |
A5 | 6 | 1 | 7 | 1 | 1 | 1 |
A6 | 1 | 2 | 1 | 3 | 2 | 2 |
A7 | 2 | 3 | 2 | 4 | 3 | 3 |
A8 | 4 | 5 | 3 | 5 | 4 | 4 |
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Bennani, M.; Jawab, F.; Hani, Y.; ElMhamedi, A.; Amegouz, D. A Hybrid MCDM for the Location of Urban Distribution Centers under Uncertainty: A Case Study of Casablanca, Morocco. Sustainability 2022, 14, 9544. https://doi.org/10.3390/su14159544
Bennani M, Jawab F, Hani Y, ElMhamedi A, Amegouz D. A Hybrid MCDM for the Location of Urban Distribution Centers under Uncertainty: A Case Study of Casablanca, Morocco. Sustainability. 2022; 14(15):9544. https://doi.org/10.3390/su14159544
Chicago/Turabian StyleBennani, Maha, Fouad Jawab, Yasmina Hani, Abderrahman ElMhamedi, and Driss Amegouz. 2022. "A Hybrid MCDM for the Location of Urban Distribution Centers under Uncertainty: A Case Study of Casablanca, Morocco" Sustainability 14, no. 15: 9544. https://doi.org/10.3390/su14159544
APA StyleBennani, M., Jawab, F., Hani, Y., ElMhamedi, A., & Amegouz, D. (2022). A Hybrid MCDM for the Location of Urban Distribution Centers under Uncertainty: A Case Study of Casablanca, Morocco. Sustainability, 14(15), 9544. https://doi.org/10.3390/su14159544