Simulated Impacts of Soy and Infrastructure Expansion in the Brazilian Amazon: A Maximum Entropy Approach
Abstract
:1. Introduction
2. Study Area and Methods
2.1. Study Area
2.2. The Modern Agricultural Frontier: A Conceptual Framework
2.2.1. Agricultural Suitability
2.2.2. Accessibility
2.2.3. Land Use and Land-Use Regulations
2.2.4. Land Price Speculation
2.3. Identification of Areas Suitable for Soy Expansion
2.3.1. Soy Occurrence
2.3.2. Environmental and Socio-Economic Variables
2.3.3. MaxEnt Calibration and Output
2.4. Impact of Predicted Soy Expansion
2.5. Soy Expansion Simulation
2.6. Model Validation
3. Results
3.1. Sensitivity Analysis and Model Validation
3.2. Simulated Changes in Soy Expansion Probabilities across Scenarios
4. Discussion
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Category | Variable | Code | Source/Reference |
---|---|---|---|
Agricultural Suitability | Annual Mean Temperature | bio1 | [66] |
Mean Diurnal Range (Mean of monthly (max temp–min temp)) | bio2 | ||
Isothermality (bio2/bio7) (* 100) | bio3 | ||
Temperature Seasonality (standard deviation * 100) | bio4 | ||
Max Temperature of Warmest Month | bio5 | ||
Min Temperature of Coldest Month | bio6 | ||
Temperature Annual Range (bio5–bio6) | bio7 | ||
Mean Temperature of Wettest Quarter | bio8 | ||
Mean Temperature of Driest Quarter | bio9 | ||
Mean Temperature of Warmest Quarter | bio10 | ||
Mean Temperature of Coldest Quarter | bio11 | ||
Annual Precipitation | bio12 | ||
Precipitation of Wettest Month | bio13 | ||
Precipitation of Driest Month | bio14 | ||
Precipitation Seasonality (Coefficient of Variation) | bio15 | ||
Precipitation of Wettest Quarter | bio16 | ||
Precipitation of Driest Quarter | bio17 | ||
Precipitation of Warmest Quarter | bio18 | ||
Precipitation of Coldest Quarter | bio19 | ||
Soil quality/type | [67] | ||
Elevation | [68] | ||
Slope | authors | ||
Accessibility | Cities | [69] | |
Roads | [70] * | ||
Railroads | [70] | ||
Waterways | [70] | ||
Ports and terminals | [71] | ||
Storage facilities | [70] | ||
Crushing facilities | [70] | ||
Travel cost to cities | dist cities | authors | |
Travel cost to ports and terminals | dist ports | authors | |
Travel cost to storage facilities | dist storage | authors | |
Travel cost to crushing facilities | dist crush | authors | |
Land use and institutions | Land cover (2008–2014) | [72] | |
Settlements | [73] | ||
Protected areas (Sustainable use, Integral protection, Indigenous reserve, Military areas) | [74] | ||
Land price | Agricultural land price | land price A | [75] |
Pastureland price | land price P | [75] | |
Forested land price | land price N | [75] |
Category Roads | 2014 | Scenario 1 | Scenario 2 | Scenario 3 |
---|---|---|---|---|
Paved | paved | paved | paved | paved |
Established | unpaved | unpaved | paved | paved |
Natural Surface (Leito Natural) | unpaved | unpaved | paved | paved |
Not informed | unpaved | unpaved | paved | paved |
Under construction of new lane | unpaved | paved | paved | paved |
Under pavement | unpaved | paved | paved | paved |
New lane added | paved | paved | paved | paved |
Planned | removed | unpaved | paved | paved |
Under construction | removed | unpaved | paved | paved |
River crossing | water | water | water | water |
Railroads | ||||
In operation | railway | railway | railway | railway |
Planned | removed | railway | railway | railway |
Under construction | removed | railway | railway | railway |
Suspended traffic | removed | railway | railway | railway |
Not informed | removed | railway | railway | railway |
New Facilities | ||||
Storage | - | - | - | yes |
Crushing | - | - | - | yes |
Scenario | 2014 (Mha) | Scenario 1 (Variation Compared to 2014) | Scenario 2 (Variation Compared to 2014) | Scenario 3 (Variation Compared to 2014) |
---|---|---|---|---|
Total area | 14.66 | 2.45% | 12.97% | 14.57% |
Protected areas and settlements | ||||
Not publicly protected | 14.66 | 2.45% | 2.45% | 2.45% |
Strictly protected | 0.00 | 0.00% | 0.00% | 0.00% |
Sustainable use | 0.00 | 0.00% | 0.00% | 0.00% |
Indigenous territories | 0.00 | 0.00% | 0.00% | 0.00% |
Military | 0.00 | 0.00% | 0.00% | 0.00% |
Settlements | 1.15 | 1.48% | 11.59% | 12.57% |
Land use | ||||
Forest | 0.44 | 9.56% | 38.62% | 51.44% |
Pasture | 9.18 | 1.82% | 10.96% | 11.38% |
Agriculture | 1.77 | 1.08% | 4.07% | 4.63% |
Planted forest | >0.01 | 2.46% | 4.89% | 4.89% |
Coastal zone forest | 0.00 | 0.00% | >0.01 Mha | >0.01 Mha |
Other | 3.22 | 3.98% | 19.98% | 23.83% |
Conservation priority | ||||
High | 0.05 | 2.99% | 5.07% | 5.07% |
Very high | 0.06 | 5.65% | 29.89% | 32.79% |
Extremely High | 3.29 | 3.87% | 23.75% | 24.32% |
Insufficiently known | 0.27 | 5.09% | 14.61% | 14.40% |
New areas identified by regional groups | 0.00 | 0.00% | >0.01 Mha | >0.01 Mha |
Potential biomass (Mg ha−1) | ||||
0–100 | 7.77 | 2.35% | 12.40% | 13.60% |
100–200 | 0.28 | 1.24% | 12.92% | 13.04% |
>200 | 6.61 | 2.63% | 13.53% | 15.65% |
© 2018 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
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Frey, G.P.; West, T.A.P.; Hickler, T.; Rausch, L.; Gibbs, H.K.; Börner, J. Simulated Impacts of Soy and Infrastructure Expansion in the Brazilian Amazon: A Maximum Entropy Approach. Forests 2018, 9, 600. https://doi.org/10.3390/f9100600
Frey GP, West TAP, Hickler T, Rausch L, Gibbs HK, Börner J. Simulated Impacts of Soy and Infrastructure Expansion in the Brazilian Amazon: A Maximum Entropy Approach. Forests. 2018; 9(10):600. https://doi.org/10.3390/f9100600
Chicago/Turabian StyleFrey, Gabriel P., Thales A. P. West, Thomas Hickler, Lisa Rausch, Holly K. Gibbs, and Jan Börner. 2018. "Simulated Impacts of Soy and Infrastructure Expansion in the Brazilian Amazon: A Maximum Entropy Approach" Forests 9, no. 10: 600. https://doi.org/10.3390/f9100600