Identifying Factors for Selecting Land over Maritime in Inter-Regional Cross-Border Transport
Abstract
:1. Introduction
2. Literature Review
3. Data
4. Methodology
- Gross Domestic Product (GDP) per capita. The definition of GDP per capita (USD) is the GDP divided by mid-year population. It is used in our model, because it expresses a proxy value of the economic power of shippers or forwarders who can pay the transport costs. Moreover, our target countries have different economic powers that are related to the transport cost as a typical factor for mode choice [22,23]. The cost of land transport is generally higher than that of maritime transport, and a country wielding economic power can almost always afford to use the mode having the higher cost. Thus, the expected sign is positive. We calculate the mean of the origin and destination country/area as the input value of the OD pair, because the shipper or forwarder who pays the transport cost between the OD countries/areas depends on the trade contract [28].
- Distance. The distance is measured by connecting the main cities in the origin country/area and the destination country/area with the main cities of the country/area in-between the two. The cost per distance of road and rail transport was higher than that of maritime transport, whereas the road and rail transport have a lower cost for short distances [29]. The distance variable represents the degree to which maritime transport is superior to land transport from a cost perspective. Thus, the expected sign is negative. Distance data were taken from the maps prepared by the Geospatial Information Authority of Japan [30] and are presented in kilometers. We selected the capital city as the main city. However, the largest economic city was selected in some countries. If the origin or destination was an area, the city used to measure the distance was selected as the main city of the highest GDP country of the included countries.
- Export of manufacturing commodity. The fact that transport flows were highly heterogeneous is undoubtedly a critical aspect when analyzing freight transport [31]. The value of the cargo being transported was included as heterogeneous and can affect the choice of transport mode. We used the ratio (percentage) of manufacturer exports over the total amount of merchandise exports from the origin country/area. We assumed that manufacturing products had a higher value than did other products, such as agricultural raw materials and fuels. Thus, the expected sign was positive. We selected Sections 5 (chemicals), 6 (basic manufactures), 7 (machinery and transport equipment), and 8 (miscellaneous manufactured goods) and excluded division 68 (non-ferrous metals) as manufacturing commodities from the Standard International Trade Classification [28].
- Landlocked country (dummy). A landlocked country does not have a port in its territory. Thus, it often requires more cost and time to trade [32,33]. The dummy variable is equal to one if the origin or destination country is a landlocked country. Otherwise, it is set to zero. The expected sign is positive, because land transport should be superior to maritime transport.
- Neighboring country/area (dummy). This dummy variable is set to one if the origin and destination country/area shares a land border. Otherwise, the variable is set to zero. We assume that a border crossing is an obstacle to land transport, because the cargo must pass through customs, immigration, and quarantine, which leads to longer transport times and higher costs [11]. However, if an OD pair neighbors the country, the number of border crossings can be only one. Thus, the expected sign is positive.
- Number of land borders. This variable represents how many times the cargo must cross a border when being transported by road or rail. This represents an additional obstacle during land transport. Thus, the expected sign is negative.
- Country risk. Euromoney [34] calculates country risk by conducting a consensus survey of expert opinions from 186 countries. The scores express a social network of economic and political risk for each country. We assume that the country risk affects land transport, especially at borders where ethical conflicts, corruption, or bribes may occur [35]. The scores range from 0 to 100. A higher score indicates a lower country risk value. Thus, the expected sign is positive. We calculate the mean of the origin and destination country/area as the input value of the OD pair. The year of data used in this study is 2011.
- Infrastructure level. The level of investment in land infrastructure (e.g., highways and railways) affects the time and cost of land transport. Most research in the literature review [9,10,13] assumed it to be a critical factor. Thus, we use three indicators to express the road conditions between the origin and destination. First is the ratio of total road length to total land area (km/km2). Second is the ratio of paved road length to total road length (percentage). Third is the ratio of total railway length to total land area (km/km2). These data were derived from The CIA World Factbook [36]. Many studies integrated indicators that used principle component analysis, wherein the first principle component is used as the input value [33,37]. We also implemented three indicators, and the first principle component held more than 60% of the variable information. Therefore, we use the mean of the first principle component of the origin country/area and destination country/area as the input value of the OD pair, which has both positive and negative values. More land infrastructure thus provides better conditions for land transport. Thus, the expected sign is positive.
- Port access time. Transport time is a significant factor for mode choice [22,23]. Thus, port access time, a component of transport time, is used to represent the port accessibility of a major city. We use the sum of the export lead time in an origin country/area and the import lead time in the corresponding destination country/area as the input value of the OD pair. The unit is a day [38]. The definition of export lead time is the median time (the value for 50% of shipments) from shipment point to port of loading, and the import lead time is the median time (the value for 50% of shipments) from port of discharge to arrival at the consignee. Longer port access time is, therefore, better for land transport. Thus, the expected sign is positive.
- Port infrastructure level. Port infrastructure level represents the development level of port infrastructure in the origin and destination countries/areas. This is a critical factor for the same reason as the infrastructure level. These data reflect the quality of port infrastructure [38]. This index ranges from 1 to 7 and measures the perception of a country’s port facilities as assessed by business executives. Because higher values indicate better port quality, the expected sign is negative. We calculate the mean of the origin and destination countries/areas as the input value of the OD pair. In the case of a landlocked country, we use the index value of the quality of port of the country that the landlocked country generally used at the import and export [39].
- Maritime transport frequency. It was compared the performances of rail/road and sea shipping freight transport corridors in terms of the transport service frequency in operational performances [16]. Thus, we use the linear shipping connectivity index as the maritime transport frequency between the origin and destination countries/areas [38]. This index captures how well countries are connected to global shipping networks based on five components of the maritime transport sector: number of ships, container-carrying capacity, maximum vessel size, number of services, and number of companies deploying container ships in a port. The index generates a value of 100 for the average index. Therefore, the values range from zero to more than 100. Because higher values better reflect maritime transport services, the expected sign is negative. We calculate the mean of the origin and destination as the input value of the OD pair. For a landlocked country, we use the general index value of the country of the landlocked country, similar to the port infrastructure-level variable.
5. Results and Discussion
5.1. Summary of the Land Ratio
5.2. Model Estimation
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Papers | Methodology | Regions or Countries | Transport Mode | Border Crossing |
---|---|---|---|---|
Moon et al. (2015) [8] | TOPSIS analysis | Sea and land transport routes between the Republic of Korea and Europe | Inland and maritime | √ |
Transakul et al. (2013) [9] | Analytic hierarchy process | East–West Economic Corridor of Greater Mekong Subregion | Inland | √ |
Banomyong (2008) [10] | Logistics Macro-Level Scorecard | North–South and the East–West Economic Corridors of Greater Mekong Subregion | Inland | √ |
Regmi and Hanaoka (2012) [11] | Time-cost-distance method | Important intermodal transport corridors linking North-East and Central Asia | Inland | √ |
Jain and Jehling (2020) [12] | Spatial and non-spatial analysis | Delhi–Mumbai Industrial Corridor in India | Inland | |
Fraser and Notteboom (2014) [13] | Resource and capability corridor appraisal model | Corridors connecting a port system to contestable hinterlands for southern Africa | Inland | |
Rodemann and Templar (2014) [14] | PESTLE analysis | Intercontinental rail transport between Asia and Europe | Inland | √ |
Lim et al. (2017) [15] | Exploratory and confirmatory factor analysis | Transit trade corridors in the Northeast Asia region | Inland | √ |
Wiegmans and Janic (2019) [16] | “what if” scenario approach | Intercontinental freight transport corridors spreading between China and Europe | Inland and maritime | √ |
Panagakos and Psaraftis (2017) [17] | Key Performance Indicators estimation | Green Corridor in the North Sea Region | Inland and maritime | √ |
Zhang et al. (2020) [18] | Mixed integer linear programing model | (Numerical example only) | Maritime | |
Wang et al. (2018) [19] | Augmented gravity model | 113 countries and regions all over the world | Unspecified | √ |
Göçmen and Erol (2018) [20] | A mixed-integer programming-based mathematical model with a fuzzy-based approach | Between Turkey and Europe | Inland and maritime | √ |
Tadić et al. (2020) [21] | Hybrid multicriteria decision-making model combined Delphi, AHP, and CODAS methods in a grey environment | Western Balkans region | (Dry port) | |
Feo et al. (2021) [22] | Discrete choice model | Door-to-door road transport and short sea shipping in the Sea of south-west Europe | Inland and maritime | √ |
Arencibia et al. (2015) [23] | Discrete choice model | Freight flows between Spain and Europe. | Inland and maritime | √ |
Jiang et al. (2018) [24] | Discrete choice model | China Railway express focusing on its hinterland patterns | Inland and maritime | |
Li et al. (2020) [25] | Conditional logit model | China, Myanmar, and Vietnam | Inland and maritime | √ |
Baindur and Viegas (2011) [26] | Agent-based modeling | Atlantic–Mediterranean Transition Region | Inland and maritime | √ |
Pair 1 | Africa | Western Asia |
Pair 2 | Central America and the Caribbean | North America |
Pair 3 | Central America and the Caribbean | South America |
Pair 4 | East Asia | Indian Subcontinent |
Pair 5 | European Union | Other European Countries |
Pair 6 | European Union | Western Asia |
Pair 7 | Indian Subcontinent | Western Asia |
Pair 8 | Other European Countries | Western Asia |
Variables | Max | Min | Mean | Standard Deviation | Expected Sign |
---|---|---|---|---|---|
Land ratio [%] | 98.96 | 1.07 | 42.80 | 37.39 | |
GDP per capita [USD] | 70,728 | 853 | 15,918 | 14,776 | + |
Distance [km] | 7728 | 81 | 2496 | 1651.4 | − |
Export of manufacturing commodity [%] | 94.0 | 0.1 | 44.8 | 30.9 | + |
Landlocked country | 1 | 0 | 0.11 | 0.32 | + |
Neighboring country/area | 1 | 0 | 0.33 | 0.47 | + |
Number of land border | 12 | 1 | 2.98 | 2.25 | − |
Country risk [index] | 84.64 | 29.80 | 53.23 | 11.18 | + |
Infrastructure level [index] | 2.0333 | −1.3722 | −0.1895 | 0.8909 | + |
Port access time [days] | 16.0 | 2.0 | 5.4 | 2.6 | + |
Port infrastructure level [index] | 6.7 | 2.7 | 4.3 | 0.7 | − |
Maritime transport frequency [index] | 139.1 | 4.7 | 40.7 | 23.2 | − |
1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | 11 | |
---|---|---|---|---|---|---|---|---|---|---|---|
1 GDP per capita | 1.00 | ||||||||||
2 Distance | 0.15 | 1.00 | |||||||||
3 Export of manufacturing commodity | 0.01 | 0.21 | 1.00 | ||||||||
4 Landlocked country | −0.09 | −0.10 | −0.01 | 1.00 | |||||||
5 Neighboring country/area | −0.18 | −0.38 | −0.26 | 0.01 | 1.00 | ||||||
6 Number of land border | 0.41 | 0.56 | 0.33 | −0.04 | −0.61 | 1.00 | |||||
7 Country risk | 0.67 | 0.09 | 0.04 | −0.09 | −0.04 | 0.14 | 1.00 | ||||
8 Infrastructure level | 0.43 | 0.17 | 0.61 | 0.09 | −0.33 | 0.57 | 0.37 | 1.00 | |||
9 Port access time | −0.03 | −0.22 | −0.53 | 0.06 | 0.32 | −0.31 | −0.49 | −0.19 | 1.00 | ||
10 Port infrastructure level | 0.66 | 0.21 | 0.29 | −0.10 | −0.27 | 0.49 | 0.58 | 0.50 | −0.37 | 1.00 | |
11 Maritime transport frequency | 0.18 | 0.28 | 0.56 | −0.01 | −0.10 | 0.16 | 0.46 | 0.33 | −0.39 | 0.52 | 1.00 |
Base | Exclude Two European Inter-Regions | Neighbors (without Landlocked Countries) | Non-Neighbors | |||||
---|---|---|---|---|---|---|---|---|
Variable | Coeff. | Std Errors | Coeff. | Std Errors | Coeff. | Std Errors | Coeff. | Std. Errors |
Intercept | −0.2698 | 0.1941 | −0.4002 * | 0.2117 | 0.0533 | 0.3135 | −0.0613 | 0.2358 |
GDP per capita | −0.0000 | 0.0000 | 0.0000 | 0.0000 | −0.0000 | 0.0000 | −0.0000 * | 0.0000 |
Distance | −0.0001 *** | 0.0000 | −0.0001 *** | 0.0000 | −0.0001 *** | 0.0000 | −0.0001 *** | 0.0000 |
Export of manufacturing commodity | 0.0030 *** | 0.0008 | 0.0027 *** | 0.0008 | 0.0024 * | 0.0014 | 0.0032 *** | 0.0008 |
Landlocked country | 0.2169 *** | 0.0476 | 0.0735 | 0.0674 | - | 0.2112 *** | 0.0542 | |
Neighboring country/area | 0.2799 *** | 0.0400 | 0.3155 *** | 0.0472 | - | - | ||
Number of land border | 0.0462 *** | 0.0123 | −0.0196 | 0.0194 | - | 0.0358 *** | 0.0123 | |
Country risk | 0.0106 *** | 0.0020 | 0.0018 | 0.0023 | 0.0022 | 0.0039 | 0.0129 *** | 0.0024 |
Infrastructure level | 0.0559 * | 0.0294 | −0.1381 *** | 0.0378 | −0.0635 | 0.0599 | 0.0940 *** | 0.0339 |
Port access time | 0.0171 ** | 0.0075 | 0.0046 | 0.0079 | 0.0241 * | 0.0127 | 0.0014 | 0.0093 |
Port infrastructure level | 0.0291 | 0.0351 | 0.1410 *** | 0.0388 | 0.1057 * | 0.0618 | −0.0307 | 0.0421 |
Maritime transport frequency | −0.0019 * | 0.0010 | −0.0024 ** | 0.0010 | −0.0013 | 0.0021 | −0.0019 * | 0.0010 |
Adjusted R squared | 0.5622 | 0.5396 | 0.4153 | 0.6192 | ||||
Number of samples | 280 | 210 | 81 | 188 |
Factors | Region | Origin | Destination | Actual Value | Predicted Value | Residual Error | Std. Residual Error |
---|---|---|---|---|---|---|---|
Geographical Conditions | Africa | Algeria | Burkina Faso, Mali, Niger | 4.8% | 55.7% | −50.9% | −2.27 |
Burkina Faso, Mali, Niger | Algeria | 4.1% | 58.0% | −53.9% | −2.40 | ||
Libya | Burkina Faso, Mali, Niger | 4.1% | 55.9% | −51.8% | −2.31 | ||
Burkina Faso, Mali, Niger | Libya | 3.8% | 58.8% | −55.1% | −2.45 | ||
Africa and Western Asia | Egypt | Bahrain | 2.9% | 48.5% | −45.5% | −2.03 | |
Israel | Libya | 5.1% | 66.2% | −61.1% | −2.72 | ||
Central America and North America | Costa Rica, Panama | Colombia | 7.9% | 61.5% | −53.6% | −2.39 | |
Country Relationship | Africa & Western Asia | Egypt | Saudi Arabia | 6.0% | 54.7% | −48.7% | −2.17 |
Egypt | Israel | 7.1% | 96.0% | −88.9% | −3.96 | ||
Israel | Egypt | 5.5% | 111.8% | −106.3% | −4.74 | ||
Indian Subcontinent and Western Asia | Pakistan | Iran, Iraq | 3.6% | 68.6% | −65.0% | −2.90 | |
Regulation | East Asia | Singapore | Malaysia | 53.6% | 109.4% | −55.8% | −2.49 |
Distance | North America | Canada | Mexico | 85.9% | 27.1% | 58.8% | 2.62 |
Mexico | Canada | 87.6% | 39.8% | 47.9% | 2.13 | ||
Infrastructure Level | Central America and North America | Costa Rica, Panama | Mexico | 83.5% | 19.4% | 64.1% | 2.86 |
El Salvador, Honduras, Nicaragua | Mexico | 89.3% | 41.3% | 48.0% | 2.14 | ||
South America | Bolivia | Brazil | 98.8% | 48.2% | 50.6% | 2.25 | |
Bolivia | Argentina | 92.9% | 45.9% | 47.0% | 2.10 |
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Hanaoka, S.; Matsuda, T.; Saito, W.; Kawasaki, T.; Hiraide, T. Identifying Factors for Selecting Land over Maritime in Inter-Regional Cross-Border Transport. Sustainability 2021, 13, 1471. https://doi.org/10.3390/su13031471
Hanaoka S, Matsuda T, Saito W, Kawasaki T, Hiraide T. Identifying Factors for Selecting Land over Maritime in Inter-Regional Cross-Border Transport. Sustainability. 2021; 13(3):1471. https://doi.org/10.3390/su13031471
Chicago/Turabian StyleHanaoka, Shinya, Takuma Matsuda, Wataru Saito, Tomoya Kawasaki, and Takashi Hiraide. 2021. "Identifying Factors for Selecting Land over Maritime in Inter-Regional Cross-Border Transport" Sustainability 13, no. 3: 1471. https://doi.org/10.3390/su13031471
APA StyleHanaoka, S., Matsuda, T., Saito, W., Kawasaki, T., & Hiraide, T. (2021). Identifying Factors for Selecting Land over Maritime in Inter-Regional Cross-Border Transport. Sustainability, 13(3), 1471. https://doi.org/10.3390/su13031471