2016
DOI: 10.1590/s0100-204x2016000900036
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Mapping soil carbon, particle-size fractions, and water retention in tropical dry forest in Brazil

Abstract: -The objective of this work was to compare ordinary kriging with regression kriging to map soil properties at different depths in a tropical dry forest area in Brazil. The 11 soil properties evaluated were: organic carbon content and stock; bulk density; clay, sand, and silt contents; cation exchange capacity; pH; water retention at field capacity and at permanent wilting point; and available water. Samples were taken from 327 sites at 0.0-0.10, 0.10-0.20, and 0.20-0.40-m depths, in a tropical dry forest area … Show more

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Cited by 22 publications
(12 citation statements)
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“…Despite the aforementioned limitations, across Latin America, there is an increasing availability of relevant SOC information across site-and country-specific regions (ReyesRojas et al, 2018;Vasques et al, 2016;Angelini et al, 2017;Samuel-Rosa et al, 2015;Angelini et al, 2016;Padarian et al, 2017), which could serve for validating and calibrating global SOC estimates. Thus, regional approaches considering multiple Latin American countries and SOC models could be a valuable resource to explain discrepancies between site-or country-specific and global SOC models.…”
Section: Discussionmentioning
confidence: 99%
“…Despite the aforementioned limitations, across Latin America, there is an increasing availability of relevant SOC information across site-and country-specific regions (ReyesRojas et al, 2018;Vasques et al, 2016;Angelini et al, 2017;Samuel-Rosa et al, 2015;Angelini et al, 2016;Padarian et al, 2017), which could serve for validating and calibrating global SOC estimates. Thus, regional approaches considering multiple Latin American countries and SOC models could be a valuable resource to explain discrepancies between site-or country-specific and global SOC models.…”
Section: Discussionmentioning
confidence: 99%
“…The clay content at the subsurface was better predicted by RK than OK, with the regression model selecting relief, multispectral, and radar variables. Although this was the only soil attribute better predicted by RK, the preference of OK over RK is not unusual, and has been reported elsewhere [37][38][39][40]. Thus, there is potential to improve soil attribute predictions by adding remote sensing covariates.…”
Section: Potential Of Using Multispectral and Radar Data As Covariatesmentioning
confidence: 51%
“…In these protocols, previously acquired information such as geological, geomorphological, or pedological maps, or even property maps, on less detailed scales, can be used along with quantitative analyses (e.g. geostatistical analysis) to refine the mapping units and increase the understanding and reliability of the spatial patterns (Castrignanò et al, 2009;Cambule et al, 2013;Hengl et al, 2014Hengl et al, , 2017Vasques et al, 2016).…”
Section: Introductionmentioning
confidence: 99%
“…Measures such as the Shannon diversity index (Minasny et al, 2010) can be used as the first indication of soil pedodiversity intensity (variability) at large scales. For more detailed scales (regional or local), the study of incorporation of secondary information into geostatistical models (Castrignanò et al, 2009;Cambule et al, 2013;Vasques et al, 2016) and use of properties with potential for identifying the variation of soil formation processes (magnetic susceptibility-MS, electrical conductivity, and diffuse reflectance spectroscopy) (Bilgili et al, 2011;Siqueira et al, 2014;Mirzaeitalarposhti et al, 2017) represent an increasing research activity. However, the secondary information often used have quantitative (satellite information, electrical conductivity, and MS) (Benedetto et al, 2012) and non-qualitative or categorical nature (Castrignanò et al, 2009).…”
Section: Introductionmentioning
confidence: 99%
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