2010
DOI: 10.1016/s1002-0160(10)60049-5
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Comparing Ordinary Kriging and Regression Kriging for Soil Properties in Contrasting Landscapes

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Cited by 189 publications
(94 citation statements)
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“…bras., Brasília, v.51, n.9, p.1371-1385, set. 2016 DOI: 10.1590/S0100-204X2016000900036 Previous studies have also shown little or no improvement of RK over OK, at plot (Kravchenko & Robertson, 2007), farm/catchment (Zhu & Lin, 2010), or watershed scale (Vasques et al, 2010). Kravchenko & Robertson (2007) found that RK produced only a modest improvement in accuracy compared to OK and performed poorly in data sets with strong spatial correlation in the target variable, even when the regression model was relatively strong.…”
Section: Resultsmentioning
confidence: 98%
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“…bras., Brasília, v.51, n.9, p.1371-1385, set. 2016 DOI: 10.1590/S0100-204X2016000900036 Previous studies have also shown little or no improvement of RK over OK, at plot (Kravchenko & Robertson, 2007), farm/catchment (Zhu & Lin, 2010), or watershed scale (Vasques et al, 2010). Kravchenko & Robertson (2007) found that RK produced only a modest improvement in accuracy compared to OK and performed poorly in data sets with strong spatial correlation in the target variable, even when the regression model was relatively strong.…”
Section: Resultsmentioning
confidence: 98%
“…The same behavior was observed in the present study. In two contrasting landscapes (agricultural versus forested) in the United States, RK was superior to OK only when the spatial structure could not be well captured by point-based observations or when a strong relationship existed between the target soil property and the covariates (Zhu & Lin, 2010). In the same country, in Florida, Vasques et al (2010) observed that the preference for RK over OK depended on the depth of the measurement and on the regression method used to estimate soil total carbon in a 3,585-km 2 watershed.…”
Section: Resultsmentioning
confidence: 99%
“…Such models are divided into data-driven (Pedometric approach) and knowledge-driven (Shi et al, 2009). The pedometric approach (statistic and geostatistic) gives a predictive accuracy that is generally related to a dense sampling scheme, which is not always feasible due to cost and time constraints (Zhu and Lin, 2010). Zhu and Band (1994) and Zhu (1997) presented an alternative approach based on limited observations per soil class, using fuzzy logic and similarity vectors, in an expert system.…”
Section: Introductionmentioning
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%