Towards Sustainable Transportation: A Review of Fuzzy Decision Systems and Supply Chain Serviceability
Abstract
:1. Introduction
2. Literature Review
- 1.
- Demand forecasting: Fuzzy decision systems can be used to forecast product demand, taking into account factors such as seasonality, customer preferences, and market trends. This can help supply chain managers plan production and inventory levels more accurately, improving serviceability by ensuring that products are available when customers need them.
- 2.
- Inventory management: Fuzzy decision systems can be used to optimize inventory levels based on factors such as lead time, demand variability, and cost. This can help to reduce stockouts and overstocking, which can both have a negative impact on serviceability.
- 3.
- Supplier selection: Fuzzy decision systems can evaluate potential suppliers based on various criteria, such as quality, reliability, and cost. This can help supply chain managers make more informed decisions about which suppliers to use, improving serviceability by ensuring that high-quality materials and components are delivered on time.
3. Commonly Used Approaches for Sustainability Evaluation: Models and Issues
- Life cycle analysis (LCA) was initially developed for evaluating industrial processes but has increasingly been used to assess the environmental impact of transportation systems [46]. The core concept of LCA is to combine a range of criteria, such as polluting emissions and resource usage, into a few metrics that reflect the overall impact of the system over its entire life cycle. The method has undergone significant efforts to standardize impact assessment and interpretation of the results.
- Cost–benefit analysis (CBA) and cost-effectiveness analysis (CEA) are based on considering the budgetary equivalent of all positive and negative effects of a business project. Cost-effectiveness analysis is used when the value of the project is unmeasurable economically or when a degree of realization of the achieved result is given. With the CBA and CEA [47] approaches, it is challenging to quantify external and social costs directly (e.g., air pollution, noise pollution, accidents, congestion, and fuel costs).
- Environmental impact assessment (EIA) is a method designed to evaluate the ecological impact of new localized polluters, such as industries or highways, and their surrounding areas [48,49,50]. When applied to transportation, EIA is utilized to investigate the environmental effects of specific transportation methods.
- Optimization models (OM) are mathematical models that consist of an objective function and a set of constraints represented in an equation or inequality network. Linear programming is commonly used to find an optimal solution that aligns with social, economic, and environmental objectives. An example of the application of OM in urban transport can be found in [51].
- System dynamics models (SDM) are used to model complex systems by representing the dynamics of the system. These models show the relationships between system elements over time through stocks, flows, and a feedback mechanism.
- Assessment indicator models (AIM) use indicators to assess the sustainability of transportation systems. These models can be classified into composite index models and multi-dimensional matrix models. Composite index models output a single index that represents the degree of satisfaction with economic, social, and environmental objectives. Examples of these models include ecological footprint and green gross national product. However, it is difficult to obtain a single universal composite index for sustainable transportation.
- Data analysis is a category of models that involves using statistical data and applying techniques such as surveys, hypothesis testing, and structural equation modeling to investigate sustainable transportation systems.
- Multi-Criteria Decision Analysis (MCDA) comprises various methods such as Multi-Attribute Value Function Theory (MATT), Multi-Attribute Utility Function Theory (MAUT), and Analytic Hierarchy Process (AHP). These methods offer a framework for integrating information from different disciplines to support decision making. MCDA has found numerous applications in the management environment for selecting the best alternative from a set of options. However, as multiple criteria are often involved, there is no single optimal solution. Therefore, trade-offs and compromises must be made to maximize the benefits of multiple criteria.
4. AHP, DEMATEL, TOPSIS, and Their Applications
4.1. AHP
4.2. DEMATEL
4.3. TOPSIS
4.4. Advantages and Disadvantages of AHP, DEMATEL, and TOPSIS
5. Fuzzy Based Techniques: State of the Art
6. Fuzzy Decision-Making Techniques
6.1. Choice of Fuzzy Structure
- Simplicity: Triangle fuzzy sets are simple to understand and easy to work with. They only require three parameters to define their shape: the left edge, the peak, and the right edge.
- Intuitive interpretation: The triangular shape of the membership function is intuitive and can be easily understood by non-experts.
- Useful for modeling gradual change: Triangle fuzzy sets are useful for modeling gradual change in a system, such as temperature or humidity levels.
- Limited flexibility: The triangular shape is restrictive and may not be suitable for modeling complex or nonlinear systems.
- Limited accuracy: The triangular shape may not accurately capture the degree of membership of an element in the set, especially if the shape of the data distribution is not triangular.
- Flexibility: Spherical fuzzy sets can take on any shape, making them more flexible for modeling complex and nonlinear systems.
- Higher accuracy: The spherical shape can accurately capture the degree of membership of an element in the set, even for non-triangular data distributions.
- Complexity: Spherical fuzzy sets require more parameters to define their shape, which can make them more difficult to work with.
- Less intuitive interpretation: The spherical shape is less intuitive than the triangular shape, which may make it more difficult for non-experts to understand.
6.2. Fuzzy AHP
- step 1 Compute values for each row as follows:
- step 2 The following equations will determine the degree of possibility of and . Let and , then:
- step 3 Calculate the weight of the criteria by
- step 4 Compute the normalized weight.
6.3. Fuzzy DEMATEL
- step 1 The pairs of criteria that influence the matrix are as follows.
- step 2 Normalizing the IP influence matrix by equation and obtaining the NP normalized influence matrix:
- step 3 Obtain the fuzzy matrix of the total relation by:
- step 4 Computing the sum of rows and columns of the total relation matrix and calling them and .
- step 5 Obtaining the weights through
- step 6 Defuzzification of fuzzy weights using the equation:
6.4. Fuzzy TOPSIS
- step 1 Rating assignments to criteria and alternatives. Assume that there are possible alternatives called that will be assessed against the n criteria . The weights of the criteria are indicated by . The performance grading of each decision maker for each alternative with respect to criteria C are denoted by with the membership function .
- step 2 The total fuzzy rating is calculated and computed for criteria and alternatives. If the fuzzy rating of all decision makers is described as a triangular fuzzy number , then the total fuzzy rating is given by , whereIf the fuzzy rating and importance weight of the kth decision maker are and , respectively, then the aggregated fuzzy rating of alternatives with respect to each criterion is given by , whereThe aggregated fuzzy weights of each criterion are calculated as where
- step 3 Determine the fuzzy decision matrix. The fuzzy decision matrix for alternatives () and criteria () is constructed as follows:
- step 4 Normalization of the fuzzy decision matrix. By using linear scale transformation, the raw data can be normalized to various criteria scale. The normalized fuzzy decision matrix is given by:
- step 5 Compute the weighted normalized matrix. The weighted normalized matrix for the criteria is calculated by multiplying the weights () of the evaluation criteria with the normalized fuzzy decision matrix where
- step 6 Determine the ideal fuzzy positive and negative solutions. These are computed as follows: where
- step 7 Compute the distance of each alternative from positive and negative solutions. The distance of each weighted alternative is calculated as follows: where is the distance measurement between two fuzzy numbers and .
- step 8 Compute the closeness coefficient of each alternative. The closeness coefficient represents the distances between the fuzzy positive ideal solution () and the fuzzy negative ideal solution () simultaneously. The closeness coefficient of each alternative is calculated as:
- step 9 The different alternatives are ranked according to the closeness coefficient () in decreasing order. The best choice is closest to the positive and farthest from the negative.
6.5. Hybrid Fuzzy Approaches
7. Discussion and Future Directions
- Promoting the use of public transportation: Encouraging people to use buses, trains, and subways instead of private cars can reduce congestion, air pollution, and carbon emissions. Governments can also invest in expanding public transportation infrastructure to improve its accessibility and convenience.
- Encouraging cycling and walking: Encouraging people to cycle or walk instead of driving can reduce greenhouse gas emissions, improve public health, and reduce traffic congestion. Governments can invest in building cycling and walking paths, improving pedestrian infrastructure, and creating incentives for people to use these modes of transportation.
- Promoting electric vehicles: Electric vehicles emit fewer greenhouse gases than traditional gasoline-powered vehicles. Governments can incentivize people to purchase electric cars and invest in charging infrastructure to support their use.
- Implementing smart mobility solutions: Smart mobility solutions such as car-sharing, ride-sharing, and on-demand public transportation can improve accessibility and reduce the need for private cars. Governments can also invest in intelligent transportation systems to improve traffic flow and reduce congestion.
- Adopting sustainable urban planning: Sustainable urban planning can reduce the need for transportation by creating mixed-use developments that integrate residential, commercial, and recreational areas. This can reduce the need for long-distance commuting and promote sustainable transportation modes.
8. Conclusions
Funding
Data Availability Statement
Conflicts of Interest
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Authors | Year | Contribution | Reference |
---|---|---|---|
Pourghasemi et al. | 2012 | Fuzzy theory and AHP | [10] |
Ligmann-Zielinska and Jankowski | 2014 | Monte Carlo simulation and AHP | [11] |
Razandi et al. | 2015 | ANP and frequency ratio | [12] |
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Rajak et al. | 2016 | Fuzzy theory | [14] |
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Acronym | Definition |
---|---|
AHP | Analytic Hierarchy Process |
AIM | Assessment indicator models |
AI | Artificial Intelligence |
ANP | Analytic Network Process |
BMW | Best-Worst Method |
CBA | Cost-benefit analysis |
CEA | Cost-effectiveness analysis |
DEMATEL | The Decision Making Trial and Evaluation Laboratory |
EIA | Environmental Impact Assessment |
FDSST | Fuzzy Decision Systems for Sustainable Transport |
FAHP | Fuzzy Analytic Hierarchy Process |
AIM | Assessment indicator models |
LCA | Life Cycle Analysis |
OM | Optimization Model |
MADM | Multiple Attribute Decision Making |
MCDM | Multi-Criteria Decision Making |
MAVT | Multi-Attribute Value Function Theory |
MAUT | Multi-Attribute Utility Function Theory |
SDM | System Dynamics Model |
TOPSIS | Technique for Order of Preference by Similarity to Ideal Solution |
Criteria | Definition | Category |
---|---|---|
Operating costs | Costs to administer the transport service for the service | I |
Safety | Safety of transportation system | II |
Security | Reliability of the transportation system | II |
Reliability | Ability to perform the assured service accurately | II |
Air pollutants | Transportation system’s air pollution | II |
Noise | Transportation system’s environmental noise | II |
GHG emissions | GHG emissions from the transportation system | II |
Usage of fossil fuels | Use of hydrocarbon-containing material | II |
Travel costs | Costs for travel between any given stations | II |
Waste from road transport | Waste from transport on roads | II |
Energy consumption | Energy consumption by the transportation system | II |
Land usage | Land space used for running the transportation service | II |
Accessibility | Access to residential areas | I |
Benefits to economy | Benefits to the economy from the transportation model | I |
Competency | State-of-the-art technology | I |
Equity | Equal opportunity for dissimilar people | I |
Possibility of expansion | Capacity to expand the service if required | I |
Mobility | Ability to service over the transportation area | I |
Productivity | Ability to achieve thresholds | I |
Rate of occupation | Capacity usage of transportation mode | I |
Share in public transit | Public transport’s share | I |
Convenience to use | Satisfaction in using the service of transport | I |
Quality of service | Quality of service supplied by the transportation staff | I |
Method | Pros | Cons |
---|---|---|
AHP |
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DEMATEL |
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TOPSIS |
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Share and Cite
Jahanshahi, H.; Alijani, Z.; Mihalache, S.F. Towards Sustainable Transportation: A Review of Fuzzy Decision Systems and Supply Chain Serviceability. Mathematics 2023, 11, 1934. https://doi.org/10.3390/math11081934
Jahanshahi H, Alijani Z, Mihalache SF. Towards Sustainable Transportation: A Review of Fuzzy Decision Systems and Supply Chain Serviceability. Mathematics. 2023; 11(8):1934. https://doi.org/10.3390/math11081934
Chicago/Turabian StyleJahanshahi, Hadi, Zahra Alijani, and Sanda Florentina Mihalache. 2023. "Towards Sustainable Transportation: A Review of Fuzzy Decision Systems and Supply Chain Serviceability" Mathematics 11, no. 8: 1934. https://doi.org/10.3390/math11081934
APA StyleJahanshahi, H., Alijani, Z., & Mihalache, S. F. (2023). Towards Sustainable Transportation: A Review of Fuzzy Decision Systems and Supply Chain Serviceability. Mathematics, 11(8), 1934. https://doi.org/10.3390/math11081934