Optimizing Transportation between Sea Ports and Regions by Road Transport and Rail and Inland Waterway Transport Means Including “Last Mile” Solutions
Abstract
:1. Introduction
- -
- How much does competition between transport modes that include increasing or decreasing energy demands and costs influence the selection of optimal transport chains?
- -
- What are the advantages of improving transportation processes during cargo delivery?
2. Analysis of Opportunities and Literature Sources for Optimization of Freight Transport and Energy Saving in Transport Routes
3. Theoretical Basis for the Energy Saving by Cargo Transportation Modes and Its Combinations, Methods
3.1. Research Methodology
- Collection and analysis of the data mentioned above.
- Planning possible distances between regions, ports, and main reloading points (intermodal terminals).
- Calculation of the cargo reloading time and costs in cargo reloading points, based on collected data.
- Calculation of particular transportation parameters, such as time costs and fuel consumption.
- Calculations of transport modes energy comparative index for the transport corridors.
- Drawing the conclusions and recommendations for the specific conditions.
3.2. Mathematical Model
4. Case Study on the Different Transport Modes between Ports and Consignee Location Evaluation (Lithuania Case)
5. Discussions
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Trends | Consequences |
---|---|
Increasing competition between transport modes | More efficient transport systems |
Globalization | More investments in modern transport systems |
More effective transport systems | Faster logistics |
Increasing energy costs | Energy savings |
Increasing environmental demands | New fuels, removable energy, automation |
Transport Means | Transportation Costs (Factors) | Transportation Time (Factors) | Transportation Energy Demand (Factors) | Environmental Factors | Complex Factors | Remarks |
---|---|---|---|---|---|---|
Road | [4,7,12,21,22,23,24,25,29,31,40] | [4,7,21,22,23,24,25,28,29,31,34,40] | [13] | [17,18] | [3] | The factors of road transport are well researched, but there are limited comprehensive studies. |
Rail | [5,6,29,40] | [5,25,40] | [13] | [17,18] | [3] | The railway transport part of the factor is investigated, but in most cases, it does not include complex investigations. |
Inland water ways | [8,31,36,37,39,40] | [8,20,31,37,39,40] | [9,39] | [11,14,16,17,19,34] | Inland waterway transport lacks in-depth comprehensive research. | |
Intermodal | [26,29] | [26,29] | [28] | [18] | Research on intermodal transport mainly covers road and rail and maritime transport, but excludes inland waterway transport. | |
Logistics | [10,18] | [18] | [19] | Logistics research lacks the assessment of complex transportation factors that include all modes of transport. | ||
Complex transport | [18] | [18] | [3] | [18,19] | [3] | Limited studies have been carried out on the comprehensive assessment methods of all factors |
Transport Mode | Number of Real Data (Cases) | Dispersion | ||
---|---|---|---|---|
Road | 53 | 1.0 | 0.034 | 0.18 |
Railway | 22 | 0.65 | 0.021 | 0.14 |
Inland waterway | 7 | 0.53 | 0.012 | 0.11 |
Factors | Existing Methods | Developed Method in This Paper | Future Research Prospects |
---|---|---|---|
Transportation time, costs and energy demand factors | Exist methods evaluate costs and time transportation; problematic to evaluate energy demand | It is possible evaluate optimal costs, transportation time, energy demand and additional factors | It is important make research works that more accurate receive factors weight coefficients |
Environmental factors | It is possible to evaluate environmental impact factors and existing limitations and provide complex evaluation together with costs, time and energy demand evaluation | Method could be adopted evaluate economics and environmental factors | In future need research works more accurate evaluate economics and environmental factors in case of non-standard transportation processes |
Complex evaluation of the main factors | Problematic, because in case of many factors not clear systems | Possible, but need clear evaluate weight of the factors | Finding weight of the factors could be main research tasks in future adopted to concrete conditions |
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Paulauskas, V.; Henesey, L.; Plačiene, B.; Jonkus, M.; Paulauskas, D.; Barzdžiukas, R.; Kaulitzky, A.; Simutis, M. Optimizing Transportation between Sea Ports and Regions by Road Transport and Rail and Inland Waterway Transport Means Including “Last Mile” Solutions. Appl. Sci. 2022, 12, 10652. https://doi.org/10.3390/app122010652
Paulauskas V, Henesey L, Plačiene B, Jonkus M, Paulauskas D, Barzdžiukas R, Kaulitzky A, Simutis M. Optimizing Transportation between Sea Ports and Regions by Road Transport and Rail and Inland Waterway Transport Means Including “Last Mile” Solutions. Applied Sciences. 2022; 12(20):10652. https://doi.org/10.3390/app122010652
Chicago/Turabian StylePaulauskas, Vytautas, Lawrence Henesey, Birute Plačiene, Martynas Jonkus, Donatas Paulauskas, Raimondas Barzdžiukas, Artur Kaulitzky, and Martynas Simutis. 2022. "Optimizing Transportation between Sea Ports and Regions by Road Transport and Rail and Inland Waterway Transport Means Including “Last Mile” Solutions" Applied Sciences 12, no. 20: 10652. https://doi.org/10.3390/app122010652
APA StylePaulauskas, V., Henesey, L., Plačiene, B., Jonkus, M., Paulauskas, D., Barzdžiukas, R., Kaulitzky, A., & Simutis, M. (2022). Optimizing Transportation between Sea Ports and Regions by Road Transport and Rail and Inland Waterway Transport Means Including “Last Mile” Solutions. Applied Sciences, 12(20), 10652. https://doi.org/10.3390/app122010652