Sustainable Rail/Road Unimodal Transportation of Bulk Cargo in Zambia: A Review of Algorithm-Based Optimization Techniques
Abstract
:1. Introduction
- We present an up-to-date review of the application of mathematical optimization in sustainable transportation of cargo with a focus on unimodal transport systems suitable for landlocked countries.
- For the reviewed transport models, we identify the key challenges in implementation suitability for a developed country like Zambia.
- We provide potential solutions for adaptation of these optimization models to suit the Zambian transport system for bulk mining cargo and ultimately enable the drive towards sustainability.
2. Related Work
3. Transport Optimization Models for Cargo Movement
3.1. Intermodal Transport Optimization
- All customers to be considered (set notation, ),
- Proposed locations (set notation, ),
- Goods to be transported from to (notation, ),
- Cost of transportation through route (notation, )
- Transportation cost if part of the goods from route are transported via terminals and (notation, ),
- Loading capacity of terminal (notation, ),
- Building cost (fixed) of terminal (notation, ).
- : considered as a binary variable where the binary is when is a terminal and when not,
- : when part of is transported from to without diverting,
- : When part of is transported from to through terminals and
- (1)
- , , , ,
- (2)
- , , , ,
- (3)
- , ,
- (4)
- , ,
- (5)
- , , , , , , ,
- (6)
- The value of .
3.2. Multimodal Transport Optimization
3.3. Unimodal Transport Systems
3.3.1. Single Function Formulation
- (1)
- (2)
- (3)
- The value or . are the decision variables such that;
- (1)
- ,
- (2)
- ,
- (3)
- The value of .
3.3.2. Two-Dimensional Function Assignment
- (1)
- ,
- (2)
- ,
- (3)
- The value of .
- standing for costs for construction of fixed network ,
- for transportation cost of cargo along route ,
- representing the transportation capacity of network ,
- being the demand of item at destination .
- . These parameters are used to model abstract design decisions using integer variables,
- Decision variables are such that when action is limited to a certain route and represents the number of facilities constructions that include the service capability,
- , , represents the traffic passing through route carrying cargo .
- (1)
- , ,
- (2)
- , ,
- (3)
- , , ,
- (4)
- ,
4. Overview on the Impact of Overloading Cargo on Transport Sustainability
- : This represents the general cost as a result of transportation using vehicle along route where is the terrain type and is the condition status of the pavement,
- : Travel time by vehicle through route type ,
- : Cost per travel time using vehicle via link ,
- : Length of route ,
- : Cost per unit distance using vehicle along route ,
- : Toll fee chargeable on vehicle along a selected route,
- : Represents the fine imposed on overloaded vehicle and
- , , and represent perceived values.
5. Research Challenges and Lessons Learnt
6. Conclusions and Future Work
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Ref. | Title | Solution Approach Parameters | ||||
---|---|---|---|---|---|---|
Transport System (Modal) | Transportation Cost per Ton-Kilometers and Road/Rail Maintenance | Exhaust Emissions (Kilograms/Ton-Kilometers) under Real Driving Conditions (RDC) | Time (h) | Distance (km) | ||
[10] | Optimization in multimodal freight transportation problems: A Survey | Multimodal | √ | × | × | √ |
[8] | A Survey of Transportation Problems | Multimodal | √ | × | √ | × |
[25] | A Survey for Vehicle Routing Problems and Its Derivatives. | Multimodal | × | × | √ | √ |
[28] | A review of online dynamic models and algorithms for railway traffic management. | Multimodal | × | × | √ | √ |
[23] | A survey of models and algorithms for optimizing shared mobility | Multimodal/Intermodal | √ | × | × | √ |
[19] | A Survey on Various Optimization Algorithms to Solve Vehicle Routing Problem | General | × | × | √ | √ |
[9] | Multi-class hazmat distribution network design with inventory and superimposed risks | General | × | × | √ | √ |
[16] | A review of transportation carbon emissions research using bibliometric analyses | General | × | √ | × | √ |
This Survey | Sustainable Rail/Road Transportation of Bulk Cargo: A Review of Algorithm-Based Optimization Techniques | Unimodal | √ | √ | √ | √ |
Ref. | Transportation Mode | Method of Analysis | Parameters and Constraints Considered | |||||
---|---|---|---|---|---|---|---|---|
Infrastructure Maintenance Costs and Investment | Transportation Cost (Handling and Movement) | Emissions (Environmental and Social Effects/Costs | Fuel Costs (L/ton-km) | Time (h) | Distance | |||
[31] | Intermodal | (Geospatial Intermodal Freight Transportation) GIFT model and GAMS software. | x | √ | x | x | x | √ |
[32] | Intermodal | Intermodal transport problems and analyses model | √ | x | x | x | √ | √ |
[33] | Intermodal | General Optimization | √ | √ | x | x | x | x |
[34] | Intermodal | Intermodal allocation model | √ | √ | √ | x | x | x |
[35] | Intermodal | Intermodal Transportation Problem (ITP) model- ILOG Cplex 12.1 | x | √ | x | x | x | √ |
[36] | Intermodal | Non-linear trucker shipping cost minimization function | x | √ | x | x | √ | √ |
[37] | Intermodal | Mixed Integer Programming and Fuzzy methods | x | √ | √ | x | x | √ |
Ref. | Transportation Mode | Method of Analysis | Parameters and Constraints Considered | |||||
---|---|---|---|---|---|---|---|---|
Infrastructure Maintenance Costs and Investment | Transportation Cost (Handling and Movement) | Emissions (Environmental and Social Effects/Costs) | Fuel Costs (L/Ton-km) | Time (h) | Distance [44] | |||
[27] | Multimodal | Various (Review) | x | √ | √ | x | √ | x |
[39] | Multimodal | Dijkstra’s Algorithm | x | x | √ | x | √ | √ |
[40] | Multimodal | Analytic hierarchy process (AHP) and Zero-one goal programming (ZOGP) | x | √ | x | x | √ | √ |
[41] | Multimodal | Binary Logit Model and Geographical Information System [45] | x | √ | x | √ | √ | √ |
[3] | Multimodal | Explorative and Comparable descriptive Methods | √ | √ | x | x | x | √ |
[42] | Multimodal | Multinomial logit mode-choice | √ | √ | x | √ | x | √ |
[43] | Multimodal | Statistical program | √ | x | x | x | x | √ |
[10] | Multimodal | General (Unimodal/Intermodal/Multimodal) | √ | √ | √ | x | x | √ |
Ref. | Transportation Mode | Method of Analysis | Parameters and Constraints Considered | |||||
---|---|---|---|---|---|---|---|---|
Infrastructure Maintenance Costs | Transportation Cost per ton-km. | Emissions (kgs/ton-km) | Fuel Costs (L/ton-km) | Time (h) | Distance | |||
[50] | Unimodal (road) | Weigh-in-motion (WIM) system | √ | x | x | x | √ | √ |
[45] | Unimodal (road) | System Dynamics (SD) Model | √ | √ | x | x | x | x |
[48] | General (Unimodal/Intermodal/Multimodal) | System Dynamics (SD) Model | √ | x | x | √ | √ | x |
[49] | Intermodal and Multimodal | System Dynamics (SD) Model | √ | √ | √ | x | x | √ |
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Miyoba, F.; Mujuni, E.; Ndiaye, M.; Libati, H.M.; Abu-Mahfouz, A.M. Sustainable Rail/Road Unimodal Transportation of Bulk Cargo in Zambia: A Review of Algorithm-Based Optimization Techniques. Mathematics 2024, 12, 348. https://doi.org/10.3390/math12020348
Miyoba F, Mujuni E, Ndiaye M, Libati HM, Abu-Mahfouz AM. Sustainable Rail/Road Unimodal Transportation of Bulk Cargo in Zambia: A Review of Algorithm-Based Optimization Techniques. Mathematics. 2024; 12(2):348. https://doi.org/10.3390/math12020348
Chicago/Turabian StyleMiyoba, Fines, Egbert Mujuni, Musa Ndiaye, Hastings M. Libati, and Adnan M. Abu-Mahfouz. 2024. "Sustainable Rail/Road Unimodal Transportation of Bulk Cargo in Zambia: A Review of Algorithm-Based Optimization Techniques" Mathematics 12, no. 2: 348. https://doi.org/10.3390/math12020348
APA StyleMiyoba, F., Mujuni, E., Ndiaye, M., Libati, H. M., & Abu-Mahfouz, A. M. (2024). Sustainable Rail/Road Unimodal Transportation of Bulk Cargo in Zambia: A Review of Algorithm-Based Optimization Techniques. Mathematics, 12(2), 348. https://doi.org/10.3390/math12020348