Digital mapping of soil organic carbon at multiple depths using different data mining techniques in Baneh region, Iran
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- @Article{TaghizadehMehrjardi:2016:Geoderma,
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author = "R. Taghizadeh-Mehrjardi and K. Nabiollahi and
R. Kerry",
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title = "Digital mapping of soil organic carbon at multiple
depths using different data mining techniques in Baneh
region, Iran",
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journal = "Geoderma",
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volume = "266",
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pages = "98--110",
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year = "2016",
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ISSN = "0016-7061",
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DOI = "doi:10.1016/j.geoderma.2015.12.003",
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URL = "http://www.sciencedirect.com/science/article/pii/S0016706115301543",
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abstract = "This study aimed to map SOC lateral, and vertical
variations down to 1 m depth in a semi-arid region in
Kurdistan Province, Iran. Six data mining techniques
namely; artificial neural networks, support vector
regression, k-nearest neighbour, random forests,
regression tree models, and genetic programming were
combined with equal-area smoothing splines to develop,
evaluate and compare their effectiveness in achieving
this aim. Using the conditioned Latin hypercube
sampling method, 188 soil profiles in the study area
were sampled and soil organic carbon content (SOC)
measured. Eighteen ancillary data variables derived
from a digital elevation model and Landsat 8 images
were used to represent predictive soil forming factors
in this study area. Findings showed that normalized
difference vegetation index and wetness index were the
most useful ancillary data for SOC mapping in the upper
(0-15 cm) and bottom (60-100 cm) of soil profiles,
respectively. According to 5-fold cross-validation,
artificial neural networks (ANN) showed the highest
performance for prediction of SOC in the four standard
depths compared to all other data mining techniques.
ANNs resulted in the lowest root mean square error and
highest Lin's concordance coefficient which ranged from
0.07 to 0.20 log (kg/m3) and 0.68 to 0.41,
respectively, with the first value in each range being
for the top of the profile and second for the bottom.
Furthermore, ANNs increased performance of spatial
prediction compared to the other data mining algorithms
by up to 36, 23, 21 and 13percent for each soil depth,
respectively, starting from the top of the profile.
Overall, results showed that prediction of subsurface
SOC variation needs improvement and the challenge
remains to find appropriate covariates that can explain
it.",
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keywords = "genetic algorithms, genetic programming, Artificial
neural network, Support vector regression, k-nearest
neighbour, Random forest, Regression tree model",
- }
Genetic Programming entries for
Ruhollah Taghizadeh-Mehrjardi
K Nabiollahi
R Kerry
Citations