The Impact of Logistics Performance on Argentina, Brazil, and the US Soybean Exports from 2012 to 2018: A Gravity Model Approach
Abstract
:1. Introduction
- RQ1:
- Does logistics performance influence the international soybean commodity trade?
- RQ2:
- Which logistics aspects affect this trade?
2. Literature Background
2.1. Soybean Supply Chains
2.2. Trade and Logistics Performance
2.3. Logistics Performance on Soybean Trade
2.4. Logistics Performance Index
- Customs: the efficiency of customs and border clearance.
- Infrastructure: the quality of trade and transport infrastructure.
- Logistics, quality and competence: the competence and quality of logistics services (trucking, forwarding, and customs brokerage).
- Timeliness: the frequency at which shipments reach consignees within scheduled or expected delivery times.
- International shipments: the ease of arranging competitively priced shipments.
- Tracking and trace: the ability to track and trace consignments.
3. Material and Methods
Data
4. Results and Discussion
4.1. Main Results
4.2. Robustness Checks
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Appendix A
Variable | Description | Source |
---|---|---|
Exports | Soybean bilateral exports from Argentina, Brazil, and the United States and their partners (2012–2018) | Argentina: INDEC: https://comex.indec.gob.ar/search; Brazil: MDIC: COMEXSTAT http://comexstat.mdic.gov.br/pt/gera; United States: U.S. Department of Agriculture, Foreign Agricultural Service: https://apps.fas.usda.gov/gats/default.aspx |
Gross domestic product | GDP (US$) (2012–2018) | World Bank: The World Development Indicators. Economy & Growth: http://data.worldbank.org |
Distance | Distance between relevant ports of soybean trade or the main port of the country | SEARATES https://www.searates.com |
Indexes Customs, Infrastructure, International Shipments, Logistics, Quality and Competence, Tracking and Trace, and Timeliness | Logistics Performance Index the World Bank | Arvis et al. (2018) |
Common language | Dummy variable that takes the value of 1 when the official language of both countries is the same and 0 otherwise | Author’s elaboration |
Common border | Dummy variable that takes the value of 1 when countries share physical boarders and 0 otherwise | Author’s elaboration |
Free Trade Agreement | Dummy variable that takes the value of 1 when countries share physical boarders and 0 otherwise | Author’s elaboration using SICE/OAS data: www.sice.oas.org |
Country size | Geographic area of the country | World Bank, https://data.worldbank.org/indicator |
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Study | Focus | Techniques | Measures |
---|---|---|---|
Bensassi et al. [6] | To simultaneously analyze domestic Spanish and foreign trade and estimate the empirical relationship between logistics and trade | Augmented gravity model | World Bank LPI and Local LPI developed by the authors |
Clark et al. [38] | To explore the factors affecting port efficiency and the effect of port efficiency on transport costs | Price equations | Port efficiency is ranked on a one-to-seven index based on surveys performed in representative firms of each country |
Castaño et al. [42] | To investigate the effects of logistic performance on international trade flows | Augmented gravity model | Hardware (ports and roadways infrastructure), software (technology and human capital), and logistics variables developed by the authors |
Coşar and Demir [37] | To understand how internal transportation infrastructure affects regional access to international markets | Elasticity equations of distance and trade associated | Road network data in Turkey |
Ekici et al. [33] | To develop a decision making tool to support policy makers in improving the logistics performance of their country | Fuzzy linguistic and artificial neural networks in a case study | World Bank LPI |
Hilmola [43] | To identify through proposed data envelopment analysis (DEA) models, oil exporters with the most potential to develop further | DEA models | World Bank LPI |
Limão and Venables [34] | To study the determinants of transport costs and how they depend both on countries’ geography and their infrastructure levels | Gravity models | Levels of infrastructure (measured by an index combining road, rail, and telecommunications density) |
Marques-Ramos et al. [39] | To investigate the relationship between maritime trade and maritime freight rates at sectoral level | Price equations | Transportation freight rates |
Nguyen and Tongzon [36] | To examine the dynamics of the causal relationship between trade and transport sector, especially in the context of Australia’s trade with China and the Australian transport and logistics sector | Gravity models; test was conducted using equation with lag length being selected using the Akaike information criterion (AIC) and the Schwartz Bayesian criterion (SBC) | Growth rate of the transport and logistics sector |
Reis and Leal [40] | To develop a new mathematical model that operates from the point of view of a single shipper to plan the logistics for a soybean supply chain | Linear programming model | Revenue soybean value and cost of transportation |
Sánchez et al. [35] | To examine the determinants of maritime transport costs with particular emphasis on efficiency at the port level | Principal Component Analysis | Maritime transport cost |
Shepherd and Hamanaka [44] | To identify major challenges that Asian–Pacific policy-makers face in drawing up international logistics policies, and to seek possible solutions to problems | Multiple case studies | World Bank LPI, Corridor performance measurement and monitoring (CPMM) and Maputo corridor logistics initiative (MCLI) |
Study | Focus | Techniques | Measures |
---|---|---|---|
Danao et al. [48] | It describes the design, fabrication, and testing of custom instrumentation for recording grain conditions (using soybeans) and logistics during short-haul truck transport from farms to storage | Sensors analysis | Data about humidity and emissions of grains during the transportation using datalog and GPS |
Lima et al. [19] | It aims to identify the impact of the variation in export volumes of soybean to China on the Brazilian port infrastructure, exploiting the concept of the “bullwhip” effect (BE) | Bullwhip Effect calculation | Data on the export volumes of the five largest Brazilian soybean-producing States |
Lopes et al. [47] | It seeks to aid in strategic transport decision-making to soybean via a discrete event simulation project | Simulation | Route costs and availability of ports |
Melo et al. [49] | It purposes to collectively measure and compare the efficiency of Brazilian and American soybean transport corridors, from farmers to export ports | Data Envelopment Analysis (DEA) and Principal Component Analysis (PCA) | Data and cost for selected routes |
Reis et al. [22] | It investigates the soybean supply chains and compare the maritime transportation costs among soybean products: grain, meal, and oil | Social Network Analysis and Price equations | Maritime transport cost and soybean products volume |
Salin [21] | It studies the costs of soybean transportation in Brazil and the US to Main Markets infrastructure levels | Price comparison | Road, Train, and Maritime freight rates |
Toloi [46] | It analyzes the factors that affect soybean production, commercialization, and logistics | Interviews and Analytic Hierarchy Process | Field research with producers and specialists |
Variable | Obs | Mean | Std.Dev. | Min | Max | |
---|---|---|---|---|---|---|
Bilateral exports | X_ijt | 1092 | 7.05 × 108 | 4.16 × 109 | 0 | 6.86 × 1010 |
Log of bilateral exports | lnX_ijt | 789 | 17.33 | 3.54 | 2.08 | 24.95 |
Log of GDP exporter | lnGDP_it | 1092 | 28.98 | 1.42 | 26.98 | 30.65 |
Log of GDP importer | lnGDP_jt | 1092 | 26.39 | 1.64 | 20.93 | 30.65 |
Log of distance | lnD_ij | 1092 | 9.22 | 0.66 | 6.80 | 10.00 |
Common language | Lang_ij | 1092 | 0.22 | 0.41 | 0 | 1 |
Common border | Bor_ij | 1092 | 0.08 | 0.28 | 0 | 1 |
Free Trade Agreement | FTA_ij | 1092 | 0.19 | 0.39 | 0 | 1 |
Customs of exporter | Cust_i | 1092 | 3.04 | 0.62 | 2.49 | 3.76 |
Customs of importer | Cust_j | 1092 | 2.90 | 0.59 | 1.79 | 4.09 |
Infrastructure of exporter | Infra_i | 1092 | 3.42 | 0.59 | 2.81 | 4.10 |
Infrastructure of importer | Infra_j | 1092 | 3.04 | 0.67 | 1.83 | 4.38 |
International shipments of exporter | Ship_i | 1092 | 3.17 | 0.32 | 2.89 | 3.54 |
International shipments of importer | Ship_j | 1092 | 3.09 | 0.46 | 2.18 | 3.97 |
Logistics, quality, and competence of exporter | LQC_i | 1092 | 3.39 | 0.48 | 2.82 | 3.93 |
Logistics, quality, and competence of importer | LQC_j | 1092 | 3.10 | 0.59 | 2.02 | 4.26 |
Tracking and tracing of exporter | TT_i | 1092 | 3.57 | 0.48 | 3.13 | 4.13 |
Tracking and tracing of importer | TT_j | 1092 | 3.17 | 0.59 | 1.76 | 4.22 |
Timeliness of exporter | Tim_i | 1092 | 3.74 | 0.34 | 3.41 | 4.14 |
Timeliness of importer | Tim_j | 1092 | 3.50 | 0.53 | 2.46 | 4.40 |
Variable | OLS | FEM | PPML |
---|---|---|---|
lnGDP_it | 0.335 | 1.797 ** | −0.735 |
(0.764) | (0.795) | (0.480) | |
lnGDP_jt | 0.605 * | −1.222 | −0.475 |
(0.330) | (0.914) | (0.541) | |
lnD_ij | 1.615 *** | 10.345 *** | 5.651 *** |
(0.571) | (0.653) | (0.349) | |
Bor_ij | 0.002 | 26.792 *** | 14.626 *** |
(0.926) | (0.829) | (0.354) | |
Lang_ij | 1.871** | 1.842 *** | −0.195 *** |
(0.727) | (0.208) | (0.062) | |
FTA_ij | 0.390 | 0.393 | 1.843 *** |
(0.596) | (0.257) | (0.086) | |
Cust_j | −5.103 ** | −12.984 * | −6.637 |
(2.560) | (7.243) | (4.359) | |
Infra_j | 1.928 * | 13.227 *** | 3.455 * |
(2.283) | (3.462) | (2.057) | |
Ship_j | 0.696 | −43.298 *** | −20.604 *** |
(1.778) | (6.177) | (3.690) | |
LQC_j | 5.110 *** | 28.090 ** | 12.835 * |
(2.867) | (12.178) | (7.338) | |
TT_j | −5.493 ** | 38.776 *** | 37.151 *** |
(2.405) | (3.340) | (2.150) | |
Tim_j | 2.831 | −41.362 *** | −34.646*** |
(1.982) | (1.427) | (0.819) | |
Cust_i | −2.192 | −44.402 *** | −43.877 *** |
(2.533) | (7.920) | (4.084) | |
Infra_i | 45.149 *** | 50.092 *** | |
(9.847) | (4.860) | ||
Ship_i | |||
LQC_i | 2.851 | ||
(5.491) | |||
TT_i | |||
Tim_i | |||
Cons | −28.401 | −57.233 * | −3.781 |
(18.967) | (33.950) | (24.297) | |
Obs. | 789 | 789 | 1091 |
Adj R2 | 0.245 | 0.776 | 0.971 |
Hausman test p-values | 0.000 | ||
Time test effect | 0.001 | ||
Breusch-Pagan test p-values | 0.000 |
Variable | FEM (Geographic Area) | FEM (Without Trade War) |
---|---|---|
lnGDP_it | 1.797 * | 1.809 * |
(0.794) | (1.010) | |
lnGDP_jt | −1.123 | −1.709 |
(0.914) | (1.205) | |
lnD_ij | 7.820 *** | 8.805 *** |
(1.320) | (0.916) | |
lnSize_i | 3.443 * | |
(2.006) | ||
LnSize_j | 2.774 *** | |
(0.781) | ||
Lang_ij | 1.842 *** | 1.836 *** |
(0.208) | (0.225) | |
Bor_ij | 15.110 *** | 24.750 *** |
(2.769) | (0.936) | |
FTA_ij | 0.393 | 0.345 |
(0.257) | (0.276) | |
Cust_j | 16.954 *** | −19.761 ** |
(1.201) | (9.636) | |
Infra_j | 2.621 *** | 16.390 *** |
(0.607) | (4.817) | |
Ship_j | −20.782*** | −52.198 *** |
(0.384) | (8.591) | |
LQC_j | −5.446 * | 43.388 *** |
(2.790) | (16.179) | |
TT_j | 30.284 *** | 25.089 *** |
(5.594) | (4.821) | |
Tim_j | −33.446*** | −30.320 *** |
(3.130) | (2.097) | |
Cust_i | −3.943 *** | −30.518 *** |
(1.308) | (9.406) | |
Infra_i | 29.804*** | |
(11.364) | ||
Ship_i | ||
LQC_i | ||
TT_i | ||
Tim_i | ||
Cons | −109.758 | −22.326 |
(45.388) | (38.945) | |
Obs. | 789 | 572 |
Adj R2 | 0.776 | 0.814 |
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Share and Cite
Mendes dos Reis, J.G.; Sanches Amorim, P.; Sarsfield Pereira Cabral, J.A.; Toloi, R.C. The Impact of Logistics Performance on Argentina, Brazil, and the US Soybean Exports from 2012 to 2018: A Gravity Model Approach. Agriculture 2020, 10, 338. https://doi.org/10.3390/agriculture10080338
Mendes dos Reis JG, Sanches Amorim P, Sarsfield Pereira Cabral JA, Toloi RC. The Impact of Logistics Performance on Argentina, Brazil, and the US Soybean Exports from 2012 to 2018: A Gravity Model Approach. Agriculture. 2020; 10(8):338. https://doi.org/10.3390/agriculture10080338
Chicago/Turabian StyleMendes dos Reis, João Gilberto, Pedro Sanches Amorim, José António Sarsfield Pereira Cabral, and Rodrigo Carlo Toloi. 2020. "The Impact of Logistics Performance on Argentina, Brazil, and the US Soybean Exports from 2012 to 2018: A Gravity Model Approach" Agriculture 10, no. 8: 338. https://doi.org/10.3390/agriculture10080338
APA StyleMendes dos Reis, J. G., Sanches Amorim, P., Sarsfield Pereira Cabral, J. A., & Toloi, R. C. (2020). The Impact of Logistics Performance on Argentina, Brazil, and the US Soybean Exports from 2012 to 2018: A Gravity Model Approach. Agriculture, 10(8), 338. https://doi.org/10.3390/agriculture10080338