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A Modeling Approach for Analyzing the Hydrological Impacts of the Agribusiness Land-Use Scenarios in an Amazon Basin.

Authors :
Cunha, Zandra A.
Mello, Carlos R.
Beskow, Samuel
Vargas, Marcelle M.
Guzman, Jorge A.
Moura, Maíra M.
Source :
Land (2012); Jul2023, Vol. 12 Issue 7, p1422, 20p
Publication Year :
2023

Abstract

The Xingu River Basin (XRB) in the Brazilian Amazon region has a great relevance to the development of northern Brazil because of the Belo Monte hydropower plant and its crescent agribusiness expansion. This study aimed to evaluate the potential of the Lavras Simulation of the Hydrology (LASH) model to represent the main hydrological processes in the XRB and simulate the hydrological impacts in the face of land-use change scenarios. Following the trend of the most relevant agribusiness evolution in the XRB, four agribusiness scenarios (S) were structured considering the increase in grasslands (S<subscript>1</subscript>: 50% over the native forest; S<subscript>2</subscript>: 100% over the native forest) and soybean plantations (S<subscript>3</subscript>: 50% over the native forest; S<subscript>4</subscript>: 100% over native forest). Average hydrographs were simulated, and the frequency duration curves (FDC) and average annual values of the main hydrological components for each scenario were compared. The results showed that, in general, changes in land use based on deforestation in the XRB would lead to an increase in flood streamflow and a reduction in baseflow. The increases in direct surface runoff varied from 4.4% for S<subscript>1</subscript> to 29.8% for S<subscript>4</subscript> scenarios. The reduction in baseflow varied from −1.6% for S<subscript>1</subscript> to −4.9% for S<subscript>2</subscript>. These changes were reduced when the entire XRB was analyzed, but notable for the sub-basins in its headwater region, where the scenarios were more effective. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
2073445X
Volume :
12
Issue :
7
Database :
Complementary Index
Journal :
Land (2012)
Publication Type :
Academic Journal
Accession number :
169331404
Full Text :
https://doi.org/10.3390/land12071422