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Using Geotechnology to Estimate Annual Soil Loss Rate in the Brazilian Cerrado

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DOI: 10.4236/jgis.2017.94026    845 Downloads   1,541 Views   Citations


Soil erosion is a serious environmental problem that has adversely affected the world’s food production through the reduction of land productivity and water availability. The present study estimated annual soil loss rate and its spatial distribution in the most important Brazil’s agricultural region, the Brazilian Cerrado, using Revised Soil Loss Equation (RUSLE) model into Geographic Information System (GIS) framework. For this purpose, the soil erosion annual rate was determined in function of RUSLE model factors: rainfall erosivity (R), soil erodibility (K), topography (LS), crop management (C) and supporting conservation practice (P). All factors were obtained from literature. They were processed and integrated into a GIS, resulting in a map of annual soil loss rate. The methodology applied showed acceptable precision and it was possible to identify the most susceptible areas to water erosion. The average estimated rate of soil loss for the entire Cerrado was 12.8 tha−1yr−1. Large part of the Cerrado is under low soil loss zone corresponding to 79.91% of total surface area, while 15.70%, 3.74%, and 0.66% are under moderate, high, and very high, respectively. The average estimated rate of soil loss in areas used for silviculture was 52.1 tha−1yr−1. In semi-perennial, perennial, and annual crops cultivation were 29.3, 23.9, and 9.8 tha−1yr−1, respectively, while in the pasture was 13.3 tha−1yr−1. Except for annual crops, all farm and silviculture areas showed average soil loss ranging from moderate to high rate. These results suggest that the implementation of more effective management techniques and conservation practices are necessary for the Cerrado to maintain and to improve land productivity by ensuring national and international food demands.

1. Introduction

Soil erosion is a serious environmental problem that has adversely affected the world food production through the reduction of land productivity and water availability [1] . Erosion is a natural geomorphic process resulting from removal topsoil by wind and water [2] , and it can be influenced by several factors such as climate variables, slope steepness, soil physical parameters, vegetation and land use patterns [3] . Moreover, erosion process can be intensified by human intervention through inappropriate land use and land cover changes. In this context, severe soil erosion has occurred in the world’s major agricultural regions and the problem has increased as agricultural activities intensified grown in the forest fringe areas [1] .

Agricultural extensification and intensification without taking into account the bearing capacity of soils have accelerated the erosion processes in some tropical regions [4] . These areas are particularly important in the global agricultural scenario because world food projections have pointed out tropical regions as a potential source of farmland expansion to ensure food security to an additional 2.3 billion people by 2050 [5] [6] [7] . However, many of these regions have been classified as a hotspot of land degradation due to water erosion process [8] .

Brazil has become the second-largest exporter of agricultural products in the world, especially due to production expansion into soils of tropical savanna also known as Cerrado [5] . In 2009-2010, the Cerrado accounted for 70% of Brazil’s food production [9] including about 95% of cotton, 54% of soybeans, 55% of meat and 43% of sugarcane produced in Brazil [10] [11] . It is the most important country’s agricultural region and has been considered as one of the world’s great breadbaskets [12] . However, the Cerrado is highly susceptible to water erosion due to the fragility of its landscape and its climatic characteristics [13] . Agricultural expansion may be leading severe arable land erosion causing different environmental problems and loss of biodiversity [8] . Therefore, the evaluation of soil erosion in the Cerrado needs to receive major attention since Brazil is expected contribute 40% of global food demand by 2050 [14] .

However, for a successful erosion assessment inside a fragile landscape it is essential to have quantitative soil erosion data and its spatial distribution. From these data, it is possible to design and implement appropriate erosion control where conservation measures will have a great impact on reduction of soil loss and water conservation [15] . There are different methods to assess quantitative soil erosion [16] . Universal Soil Loss Equation (USLE) [17] and Revised Universal Soil Loss Equation (RUSLE) [18] are the most frequently used. Advantages of these methods are simplicity, effectiveness of the equations, and success in predicting long term average annual soil loss with acceptable accuracy [19] .

These models were originally used for local conservation planning and their factors were usually estimated or calculated from field measurements [17] . Quantifying soil loss based on erosion plots cannot provide the spatial distribution of soil erosion in large and difficult access areas, as in several regions of Brazil, due to limitations in terms of cost, representativeness, and reliability of the results data [20] [21] . However, when assessment of soil erosion is integrated with a Geographical Information System (GIS) environment is possible to estimate soil erosion and its spatial distribution with a reasonable time, cost, and labor reduction and to improve accuracy in large areas [20] . This integration has been widely used, especially in developing countries, such as Brazil, India, and Turkey [20] [21] [22] [23] [24] . Thus, the main objective of the study is to estimate the spatial distribution of annual soil loss rate using RUSLE model integrated into a GIS, and investigate the relationship between farmland and forestry uses with soil loss for Brazilian Cerrado, the most important agriculture region in Brazil. In general, studies estimate annual soil loss rate in small regions [22] [25] [26] . Here, we present a spatial distribution of annual soil loss rate for the entire Brazilian Cerrado.

2. Materials and Methods

2.1. Study Area

Brazilian Cerrado (Figure 1) is one of the richest and most diverse tropical savanna in the world [27] covering approximately 2 million km2 of the Brazilian Central Plateau (24% of the whole area of the country). The region has a markedly tropical wet and dry seasons with annual precipitation varying from 800 to 1800 mm [28] . The average annual temperature varies from 20˚C to 26˚C [29] . Predominant soil types in the Cerrado area are Ferralsols (~41%), Arenosols (~15%), Acrisols (~12%), and Plinthosols (~10%) [30] based on the FAO classification [31] . The region is relatively flat with low relief and flat to gentle slopes. [32] . The four main vegetation types are grassland (campo limpo), grassland

Figure 1. Location of the study area. Brazilian Cerrado encompasses totally or partially the states of Bahia (BA), Goiás (GO), Maranhão (MA), Minas Gerais (MG), Mato Grosso do Sul (MS), Mato Grosso (MT), Piauí (PI), Paraná (PR), São Paulo (SP) and Tocantins (TO).

with scattered trees (campo sujo), savannah (cerrado in the strict sense), and woodland (cerradão) [28] [33] . The Cerrado region is considered as one of the most important and threatened ecosystems in the world [34] due to agricultural extensification and corresponds to a land degradation hotspot where large areas are being affected by erosion process [8] . In addition, the Cerrado region is home of the Brazil’s new agriculture frontier, commonly called “MATOPIBA” which is an acronym created from the first two letters of the four Brazilian states: Maranhão (MA), Tocantins (TO), Piauí (PI) and Bahia (BA). This region has been characterized by rapid changes in land cover and land use for pasture and cropland [35] .

2.2. Data Acquisition and Processing

In this study, all input data for the RUSLE model were stored, analyzed, and visualized within the ArcGIS® environment (version 10.3). The GIS database were georeferenced using World Polyconic projection and SAD 69 (South American Datum 1969). The full database (vector and raster formats) includes the following:

1) Erosivity Map (approximated scale of 1:5,000,000) obtained from [36] ;

2) Soil Map from EMBRAPA (Brazilian Agriculture Research Corporation) at the scale 1:5,000,000 [30] ;

3) Digital Elevation Model (DEM) generated from TOPODATA database provided by INPE (Brazilian Institute for Space Research) with spatial resolution of 30 m from SRTM data produced by NASA originally [32] ;

4) 2010 Land Use and Cover Map produced by IBGE (Brazilian Institute for Geography and Statistics) at the scale 1:5,000,000 [37] . This map has fourteen different land use and land cover units, which were reclassified in order to represent the classes of interest as follows:

a) Agriculture class―agriculture areas, mosaic of agricultural areas with remaining forest, mosaic of forest vegetation with agricultural areas, and mosaic of grassland with agricultural areas;

b) Pasture―planted and managed pastureland (e.g. cattle-ranching);

c) Silviculture―planted and managed forests with exotic species (e.g. eucalyptus, pines);

d) Natural vegetation―includes natural vegetation in different stages of ecological succession (e.g. forest vegetation, grassland, wetland);

e) Others―artificial areas (e.g. urbanized zones, road systems, non-agricul- tural systems), continental water bodies, coastal water bodies, and uncovered lands (e.g. rocks outcrops and sand dunes).

The Agriculture unit was split over into three classes aiming to separate agricultural areas from forest vegetation and grassland: annual (grains), semi-pe- rennial (sugarcane), and perennial (coffee and citrus). For that, Agriculture unit was multiplied by spatially explicit data of grains [38] , sugarcane [39] , coffee [40] and citrus [40] . As a result, it was obtained Annual, Semi-perennial and Perennial agricultural units while residues were reclassified as Natural vegetation. Therefore, the resulting map comprises seven land-use units: Pasture, Natural vegetation, Forestry, Annual crops, Semi-perennial crops, Perennial crops and Others.

3. Methods

3.1. RUSLE Model

Estimation of soil loss and its spatial distribution were obtained using RUSLE model integrated into a GIS. RUSLE is an empirical mathematical model developed to estimate soil erosion water [18] . The evolution and the improvement over the USLE lead to the RUSLE computer program. In the same way as its predecessor, the model does not estimate sediment deposition on the slope [41] , but only establishes an estimate of the average annual soil loss caused by rill and interril erosion [42] . As a result, the RUSLE model estimates the potential soil loss rates, which indicate the intensity of the erosion processes. The model is a product of five factors, according to Equation (1):


Figure 2. Flowchart of the methodology to estimate averaged rate of soil loss and its spatial distribution for Brazilian Cerrado using RUSLE model integrated into a GIS.

3.2. Rainfall-Runoff Erosivity Factor (R)

Erosivity factor (R) represents the erosive power of precipitation in a given soil, regolith or other weathered material. Precipitation is the driving force of erosion and has a direct effect on different phases of the erosional processes including the detachment of soils particles, the breakdown of aggregates and the transport of eroded material by runoff. The R-factor is the kinetic energy of raindrops that fall onto the ground and is affected by rainfall intensity and raindrop size [17] . Figure 3 shows rainfall-runoff erosivity factor map.

3.3. Erodibility Factor (K)

The soil erodibility factor (K) is a property that depends upon two factors; the first one is the infiltration capacity to resist the detachment and transportation by rainfall and the second one is the runoff process [43] . Therefore, K values reflect the rate of soil loss per rainfall-runnoff erosivity (R) index for a specific soil [18] . The K-factor varies from zero to one, in which zero refers to soils with less susceptibility to water erosion while one refers to soils higher susceptible [44] . The K-factor map was produced based on soil map and erodibility values published from several studies conducted in different areas of Brazil for the same soil types. The K values for each soil type of Brazilian Cerrado can be observed in Table 1.

Figure 3. Rainfall-runoff erosivity factor (R) map of the study area [36] . Brazilian Cerrado states are: Bahia (BA), Goiás (GO), Maranhão (MA), Minas Gerais (MG), Mato Grosso do Sul (MS), Mato Grosso (MT), Piauí (PI), Paraná (PR), São Paulo (SP) and Tocantins (TO).

Table 1. Soil classification on the Brazilian Cerrado and soil erodibility (K) values and their respectives sources.

aWater, rocks, and dunes.

3.4. Topographic Factor (LS)

The topographic factor represents the influence of the relief on the erosion process [18] . The LS-factor depends on the slope steepness (S) and slope length (L) factors considering slopes as uniform profiles. In general, soil erosion increases as the slope steepness increases due to increased runoff flow velocity. As well as, soil erosion increases as slope length increases because of rising accumulation of runoff in down slope [17] [44] . Maximum slope length are seldom longer than 600 ft or shorter than 15 - 20 ft [52] . Both are obtained from Digital Elevation Model (DEM) considering different approaches and methods [22] [53] . This study was based on [53] that calculated L-factor using as reference the upslope contributing area of each cell according to Equation (2):


where Li,j is the slope length factor for grid cell with coordinates (i,j). Ai,j-in is the contributing area at the inlet of grid cell with coordinates (i,j) (m2); D is the grid cell size (m); m is a dimensionless exponent that depends on slope steepness (S); xi,j is flow direction value for the grid cell with coordinate (i,j). The exponent m was calculated according to [17] being S < 1%, m = 0.2; 1% ≤ S ≤ 3%, m = 0.3; 3% < S ≤ 5%, m = 0.4; and S > 5%, m = 0.5.

The S factor was calculated based on [54] , according to Equations (3) and (4):



where θ is the slope angle (˚). Slope steepness was divided into six categories based on [55] as depicted in Table 2.

3.5. Cover and Management Factor (C)

The cover and management factor (C) represents an integration of several factors that affect erosion, including vegetative cover, plant litter, soil surface and land management [17] [18] [52] . This is the second most important factor in RUSLE, only after topography, since it represents the conditions that can be easily changed to reduce overland flow and soil erosion [22] [44] . Although treated as an independent variable in the equation, this factor depends upon other factors. The C-factor varies from near zero (for a good erosion protection) to one (for a poor erosion protection) [56] . As mentioned before, in this work was considered seven land use classes for Brazilian Cerrado: Pasture, Natural vegetation, Silviculture, Annual crops, Semi-perennial crops, Perennial crops and Others. The C-factor values extracted from literature and percentage of the area to each land use are presented in Table 3.

Table 2. Slope steepness categories for Brazilian Cerrado by [55] .

Table 3. Values of the cover management factor (C) for each land use cover class of the Brazilian Cerrado.

3.6. Supporting Practice Factor (P)

The effect of erosion control practice (P) represents the relationship between soil loss with a specific support practice and the corresponding loss with up-down slope cultivation [64] . P-factor varies according to soil conservation practices and, thus, it has a strong influence on soil loss [22] . Practices characterized by P include strip-cropping and terraces and are not applicable to most forested region. Since the soil conservation practices for each system cannot be known for entire Brazilian Cerrado, where about 880,000 km2 are occupied by farmlands, the values for P-factor were determined according to [65] that calculated this factor based on slope angle (α). Thus, the P was 0.6 for 0 ≤ α ≤ 5%, 0.69947 − 0.08991 α + 0.01184 α2 − 0.00035 α3 for 5% < α ≤ 20% and 1.0 for α > 20%.

4. Results and Discussion

The spatial distribution of all RUSLE’s factor (K, C, LS and P) can be observed in the Figures 4-7, respectively. The variety of soil types produced a large spatial variability (Figure 4) where 56.35% of total area has K-factor higher than 0.03 t∙h∙MJ−1∙mm−1 (Table 1). These results indicates that more than half of the soils in the Cerrado show high susceptibility to water erosion [22] . Arenosols, Acrisols, Plintosols, Cambisols and Leptosols represent soils with higher potential for erosion with large amount of particles (sand and silt) that are easily detached and carried away. One the other hand, soils with low susceptibility comprises

Figure 4. Soil erodibility factor (K) map of the study area. Brazilian Cerrado states are: Bahia (BA), Goiás (GO), Maranhão (MA), Minas Gerais (MG), Mato Grosso do Sul (MS), Mato Grosso (MT), Piauí (PI), Paraná (PR), São Paulo (SP) and Tocantins (TO).

Figure 5. Soil topographic factor (LS) map of the study area. Brazilian Cerrado states are: Bahia (BA), Goiás (GO), Maranhão (MA), Minas Gerais (MG), Mato Grosso do Sul (MS), Mato Grosso (MT), Piauí (PI), Paraná (PR), São Paulo (SP) and Tocantins (TO).

Figure 6. Soil cover and management factor (C) map of the study area. Brazilian Cerrado states are: Bahia (BA), Goiás (GO), Maranhão (MA), Minas Gerais (MG), Mato Grosso do Sul (MS), Mato Grosso (MT), Piauí (PI), Paraná (PR), São Paulo (SP) and Tocantins (TO).

Figure 7. Soil supporting practice factor (P) map of the study area. Brazilian Cerrado states are: Bahia (BA), Goiás (GO), Maranhão (MA), Minas Gerais (MG), Mato Grosso do Sul (MS), Mato Grosso (MT), Piauí (PI), Paraná (PR), São Paulo (SP) and Tocantins (TO).

43.09% of total area. These soils are represented by Ferralsols, Gleysols, Chernosols and Nitisols which have lower erodibility due to higher relative content of clay and organic matter. Despite of large spatial variability of K-factor, it is possible to observe where the more susceptible areas to very rate erosion are concentrated. They comprise the Maranhão (MA), Piauí (PI), Bahia (BA) and part of Tocantins (TO) states (Figure 3). The soil erosion fragility in these parts of Cerrado shows how important are the effective land management practices. This is a very important point because the Brazilian’s largest changes in land-use and land-cover have been occurring exactly in this region (MATOPIBA) where soils prone to higher erosion rates are predominant.

LS-factor is very important in RUSLE since the topography affects the runoff characteristics and sediment transport [64] . The Table 4 presents the area distribution of each LS-factor intervals. About 93% of total area of Cerrado has a LS values above 5, which refers to moderate vulnerability to water erosion [22] , while only 2.69% of its total area has LS-factor greater than 10, indicating high vulnerability to water erosion [22] . Figure 5 shows spatial distribution of LS-factor; the highest values are concentrated in regions with undulating and strongly undulating topography where runoff flow velocity are higher, especially in the Goiás (GO), Minas Gerais (MG), and Mato Grosso (MT) states.

The C-factor corresponding to Crop/Vegetation and Management Factor ranged from 0.001 to 0.3066 (Figure 6). As mentioned before, values closer to

Table 4. Categories of topographic factor (LS) for the Brazilian Cerrado.

zero are indicates of very good protected soils; in contrast, values closer to one indicate very poor protection [53] . The highest C-factor values (~0.30) for Brazilian Cerrado were associated to semi-perennial crops and silviculture. These systems are located especially in the states of São Paulo (SP), Minas Gerais (MG), Mato Grosso do Sul (MS) and Goiás (GO) (Figure 6). Areas with C-fac- tor of 0.10 are also found in Minas Gerais and São Paulo occupied by perennial crops. In general, conventional tillage, with plowing and disking, is adopted in most of agricultural systems in Brazil, which favors the erosion processes [66] . In many silviculture systems, conventional tillage also is employed [60] . In addition, depending on the silviculture development phase, soil cover varies from zero to ninety percent. C-factor values of 0.90 are attributed to planting phase (0% of cover soil), 0.28 to intermediate phase (60% of cover soil), and 0.05 to final phase (90% of cover soil) [67] . Taking into account that silviculture development phase cannot be known for the entire Brazilian Cerrado area, we adopted C-factor of 0.30. Annual crops have a lower C-factor value (0.08) because more than 50% of its area is managed using conservation tillage practices, which significantly decreases soil losses [68] . With regard to pasture, it was estimated, from experimental data, C-factor values of 0.061 and 0.007 for highly degraded and not degraded pastures respectively for Cerrado [57] . Considering that approximately 80% of pasture in Cerrado has already some degree of degradation [58] , we adopted a C-factor value of 0.05 for all pasture area. Vast areas with C-factor between 0.08 and 0.05 are located in practically all states covered by the Cerrado (Figure 6). Natural vegetation has the lowest C-factor values indicating very good soil protection; most of these lands are in the MATOPIBA region which is situated in North of Cerrado biome.

The P-factor varies according to soil conservation practices. In this study P-factor was based on slope values to define conservation practices and the values varied from 0.6 to 1 (Figure 7). Values closer to 0.6 indicates most efficient conservation practices, while values closer to 1 indicates less appropriate conservation practices. In general, P-factor was closer to 1 in most steep areas (undulating and strongly undulating relief).

Revised Universal Soil Loss Equation was originally used for estimating average annual soil loss based on sample plot data [17] [20] . However, RUSLE and GIS integration allowed quantifying soil loss rates in a spatially explicit approach producing interpretative maps and a final map of average annual soil loss for Brazilian Cerrado, based on 2010 land-use map. The use of GIS allowed managing and analyzing data from different formats, qualities, projections and spatial resolutions. However, uncertainties about data sources can be introduced in soil erosion estimates, and combined with low resolution dataset, can make difficult to get better erosion estimates. A 2822 m-resolution was used to calculate all RUSLE factors, which may underestimate the values of these parameters. Therefore, data with better resolutions would be preferable if were available. Unfortunately in Brazil, high resolution R-factor for large areas are scarce; this type of resolution is only available in smaller areas.

In summary, this study provides a potential estimate of soil loss in the Brazilian Cerrado based on the combination of RUSLE and GIS, and these results can provide support to establish environmental conservation plan where crop farms and silviculture operations may become active agents of soil erosion.

In general, the average estimated rate of soil loss for the Cerrado was 12.8 t∙ha−1∙yr−1, which may be considered as moderate soil loss [69] . The values estimated in our analyses are consistent with those observed by [26] , who estimated average rate of soil loss rate of 12.5 t∙ha−1∙yr−1 for a watershed with different land uses (crops, pasture, and natural vegetation) within the Cerrado region. Figure 8 shows the Map of Average Soil Loss, considering 2010 as reference year, which identifies the most vulnerable areas to high rates of soil erosion. These areas occur mainly in São Paulo (SP), Minas Gerais (MG), Goiás (GO), Mato Grosso do Sul (MS) and Mato Grosso (MT) states. As expected, the areas with very high

Figure 8. Map of average soil loss in 2010 of the study area. Brazilian Cerrado states are: Bahia (BA), Goiás (GO), Maranhão (MA), Minas Gerais (MG), Mato Grosso do Sul (MS), Mato Grosso (MT), Piauí (PI), Paraná (PR), São Paulo (SP) and Tocantins (TO).

annual soil loss (> 50 t∙ha−1∙yr−1) are concentrated in regions with steep slopes and some regions with predominance of pasture, crops, and forestry.

Table 5 shows the spatial distribution of different erosion classes. The major part of the Cerradois formed by soils with reduced erosion loss zone covering large areas (47.84%). It is especially associated with natural vegetation, which provides good soil protection, and low LS-factor (69.73%) related to flat and gently undulating relief. Respectively, 15.7% and 3.74% of Cerrado area can be considered as under moderate soil loss zone and high soil loss zone. The latter one are in areas where steeper slopes occur. In addition, it can be observed a significant soil loss associated with farm and silviculture land. The most critical land use and land covers units are silviculture and semi-perennial and perennial crops, that combined with the practice of conventional tillage allowed soils with very high losses. In quantitative terms, the average soil loss rate was 52.1, 29.3, 23.9 t∙ha−1∙yr−1 for forestry, semi-perennial, and perennial crops, respectively. The lowest values were obtained for annual crops with 9.8 t∙ha−1∙yr−1 mainly due to no tillage practice, followed by pasture with 13.3 t∙ha−1∙yr−1. The Table 6 shows comparative soil loss values obtained from this study and other studies performed in the different regions in Brazilian Cerrado. Soil loss values variation can be attributed to methodological differences with regard to how the models factor were obtained and the difference between C-factor adopted for each category of land use.

Table 5. Interval of the soil losses estimated for Brazilian Cerrado in 2010, according to [69] .

Table 6. Comparative soil loss values from this study and other studies performed in the Brazilian Cerrado regions.

These results can guide regional planning for soil conservation and environmental management, as well as, in the selection of control practices that are the best suit to each land use systems. With the exception of annual crops areas, all farm areas and silviculture land showed average soil loss ranging from moderate to high values. Moreover, agricultural expansion at expenses of natural vegetation and agricultural intensification towards soils more fragile can lead to the increase of soil erosion loss in the Brazilian Cerrado significantly over time, since large part of the soils are highly susceptive to erosion. This is most prominent in the North region corresponding to MATOPIBA where deforestation rates have been very high and soil are highly sandy and with high erosion potential [73] .

5. Conclusions

The methodology applied for estimating annual soil loss and its spatial distribution (RUSLE integrated into GIS framework) in the Brazilian Cerrado, showed a good precision and it was possible to identify the most susceptible areas to water erosion. It provides support to define recovery and conservation plans where agriculture and silviculture may become agents of soil erosion. Despite the good results obtained, a spatial resolution of 2822 meters used in this study can underestimates soil loss particularly in areas where gully erosions is dominant. Unfortunately input data with better resolutions are not available for large areas in the Brazilian territory particularly related to the soil erosivity.

The average estimated rate of soil loss was moderate with 12.8 t∙ha−1∙yr−1 considering the total Cerrado area. Areas most vulnerable to erosion are especially in steeper slope areas combined with pasture, crops, and silviculture land uses. Large part of the total Cerrado area is under low soil loss zone which corresponds to 79.91%, while 15.70%, 3.74%, and 0.66% are under moderate, high, and very high soil loss zones, respectively.

The average estimated rate of soil loss in areas with silviculture operation was 52.1 t∙ha−1∙yr−1. In areas with predominance of semi-perennial, perennial, and annual crops cultivation the values obtained were 29.3, 23.9, and 9.8 t∙ha−1∙yr−1, respectively, while in the pasture was 13.3 t∙ha−1∙yr−1. Except for annual crops, all farm and silviculture areas showed average soil loss ranging from moderate to high rate. Therefore, good crop management practices in regions with fragile soils, such as no-tillage, terrace, green fertilizers, and avoid removing the litter layer of the soil cover, are important factors to reduce soil loss process in the Brazilian Cerrado and to maintain and to improve land productivity by ensuring national and international food demands.


The authors would like to thank CAPES (Coordination for the Improvement for Higher Education Personnel) for Luciene Gomes scholarship. One of authors would like to thank the participation in the project “Nitrogen Cycling in Latin America: Drivers, Impacts and Vulnerabilities project (CRN3005)” and the Earth System Science Center (CCST), National Institute for Space Research (INPE) for the graduate opportunity.

Conflicts of Interest

The authors declare no conflicts of interest.

Cite this paper

Gomes, L. , Simões, S. , Forti, M. , Ometto, J. and Nora, E. (2017) Using Geotechnology to Estimate Annual Soil Loss Rate in the Brazilian Cerrado. Journal of Geographic Information System, 9, 420-439. doi: 10.4236/jgis.2017.94026.


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