Synchromodal Supply Chains for Fast-Moving Consumer Goods
Abstract
:Featured Application
Abstract
1. Introduction
2. Literature Review
2.1. Concept of Synchromodality
- Multimodality is the transportation of goods by a sequence of at least two different transport modes [17];
- Intermodality is the transportation of goods integrating at least two modes such that the load is transported door to door using the same load unit [18];
- Combined modality is a sustainable form of intermodal transportation [19];
- Comodality is efficient transportation through optimal and sustainable use of resources [20].
2.2. Strategic Tradeoffs in a Synchromodal Supply Chain
3. Problem under Consideration
4. Methodology
4.1. Data Analysis and Validation
4.2. Center of Gravity
4.3. MILP Model
4.3.1. Notation
- SWs: set of supply warehouses;
- MCs: set of mixing centers;
- POLs: set of ports of loading;
- PODs: set of ports of discharge.
- tcSW,MC: truck cost from the supply warehouse to the mixing center;
- rcSW,MC: rail cost from the supply warehouse to the mixing center;
- tcMC,POL: truck cost from the mixing center to the port of loading;
- rcMC,POL: rail cost from the mixing center to the port of loading;
- ocPOL,POD: ocean cost from port of loading to the port of discharge;
- opc: operational cost associated with mixing centers;
- Ce: holding cost;
- DPOD: demand at port of discharge;
- RPOD: review period at port of discharge;
- σPOD: standard deviation of demand at port of discharge;
- k: safety factor that corresponds to the confidence in the data points within a certain standard deviation value (k = 2.05 based on 98% service level);
- LPOD: lead time at port of discharge;
- SupplySW: supply at supply warehouse;
- OpenMC: binary to reflect an open mixing center;
- M: an arbitrary large number to ensure the linking constraints.
- tfSW,MC: truck flow from the supply warehouse to mixing center;
- tfMC,POL: truck flow from the mixing center to port of loading;
- rfSW,MC: rail flow from the supply warehouse to mixing center;
- rfMC,POL: rail flow from the mixing center to port of loading;
- ofPOL,POD: ocean flow from port of loading to the port of discharge;
- RailOpenSW,MC: binary to reflect an open rail flow from supply warehouse to mixing center;
- TruckOpenSW,MC: binary to reflect an open truck flow from supply warehouse to mixing center;
- RailOpenMC,POL: binary to reflect an open rail flow from mixing center to port of loading;
- TruckOpenMC,POL: binary to reflect an open truck flow from mixing center to port of loading.
4.3.2. Objective Function and Constraints
4.3.3. Implementation
5. Results
5.1. Data Collection and Analysis
5.2. Center of Gravity Analysis
5.3. Modeling Results and Sensitivity Analysis
6. Discussion
6.1. Insights and Managerial Implications
6.2. Impacts on Sustainability
6.3. Synchromodality in Light of Digital Transformation
6.4. Limitations and Directions for Future Research
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
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Concept | Two or More Modes of Transportation | Integration | Sustainability | Efficiency | Flexibility |
---|---|---|---|---|---|
Multimodality | X | ||||
Intermodality | X | X | |||
Combined | X | X | X | ||
Comodality | X | X | X | X | |
Synchromodality | X | X | X | X | X |
Advantages and Value of Synchromodality | Reference |
---|---|
A flexible, efficient, and sustainable transportation strategy | [28] |
An efficient, sustainable, and reliable transportation network | [29] |
Alternatives and options for flexibility and responsiveness | [30] |
Real-time design and coordination of value chains in the transportation system | [31] |
Flexibility in changing different modes, emission reduction | [32] |
Efficient transportation service based on real-time information | [17] |
Cost and emission reduction without sacrificing the service level | [33] |
Efficient, reliable, flexible, and sustainable services | [11] |
Dynamic mode adaptation based on real-time information | [2] |
Carbon footprint reduction and increased efficiency | [34] |
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Jackson, I.; Saenz, M.J.; Li, Y.; Moreno, M.S.R. Synchromodal Supply Chains for Fast-Moving Consumer Goods. Appl. Sci. 2023, 13, 3119. https://doi.org/10.3390/app13053119
Jackson I, Saenz MJ, Li Y, Moreno MSR. Synchromodal Supply Chains for Fast-Moving Consumer Goods. Applied Sciences. 2023; 13(5):3119. https://doi.org/10.3390/app13053119
Chicago/Turabian StyleJackson, Ilya, Maria Jesus Saenz, Yulu Li, and Michelle Stephanie Ramirez Moreno. 2023. "Synchromodal Supply Chains for Fast-Moving Consumer Goods" Applied Sciences 13, no. 5: 3119. https://doi.org/10.3390/app13053119
APA StyleJackson, I., Saenz, M. J., Li, Y., & Moreno, M. S. R. (2023). Synchromodal Supply Chains for Fast-Moving Consumer Goods. Applied Sciences, 13(5), 3119. https://doi.org/10.3390/app13053119