Exploring the potential of proximal soil sensing for predicting soil fertility parameters

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Date
2016-11-05
Authors
Palihakkara, P.D.B.J.
Vitharana, U.W.A.
Wijesekara, A.
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University of Peradeniya
Abstract
Proximal soil sensing is an emerging technique having a potential to generate covariates for the digital soil mapping over time in a cost effective manner. This study investigates the potential of DUALEM-1S electromagnetic induction based proximal soil sensor to predict fertility determining soil properties in a Rhodustalf. The apparent electrical conductivity (ECa) survey was performed in a commercial banana cultivation (4 ha) in Pelwehera (DL1b) using a DUALEM-1S sensor. The survey resulted in 8507 measurements of horizontal and perpendicular coplanar (HCP-subsoil and PRP-topsoil sensitive, respectively) ECa measurements. Topsoil (0-30 cm) samples were collected from 43 locations. Soil samples were analyzed for texture, organic carbon, plant available (Av.) nutrients: N, K, P, Ca, Mg, Zn, Cu, Fe, Mn, pH, effective cation exchange capacity (ECEC) and electrical conductivity (EC). ECaHCP and ECaPRP data showed a high correlation (r = 0.9) indicating comparable top and subsoil properties. ECaPRP measurements showed strong correlations with clay % (r = 0.6), sand % (r = -0.6), Av. Mg (r = 0.7) and Ca (r = 0.7). Spatial variability of properties was investigated using variogram analysis. Available Mg, N, Fe, Mn, P, K and Ca in the topsoil showed a strong spatial dependence with a relative nugget effect less than 25%. Principal component analysis (PCA) was used to assess the potential of ECa to serve as a covariate to predict other soil physiochemical properties. The PCA reduced the dimensionality of the data set into five principal components (PC). PC1 attributed 32% of the variability which highlighted the relationships among ECaHCP, ECaPRP, sand, clay, ECEC, Av.Ca and Mg. PC2 attributed 19% of the variability highlighting the relationships among Av. Zn, P, Cu, Fe and EC. This study revealed a strong spatially structured variability of soil fertility parameters which can be used to optimize soil management practices. Proximal soil sensing can be used as a promising tool to predict a majority of soil properties: sand, clay, organic matter, Av. Mg, Ca, Fe, P, Cu and Zn in Rhodustalf, the most prevalent soil great group in the dry zone.
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Keywords
proximal soil sensing , soil fertility parameters , soil management practices
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