The assessment of spatial distribution of soil salinity risk using neural network
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Date
2012-04-28
Date Issued
ISI Journal
Impact factor: 1.687 (Year: 2012)
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Citation
Akmal Akramkhanov, Paul Vlek. (28/4/2012). The assessment of spatial distribution of soil salinity risk using neural network. Environmental Monitoring and Assessment, 184 (4), pp. 2475-2485.
Abstract
Soil salinity in the Aral Sea Basin is one
of the major limiting factors of sustainable crop
production. Leaching of the salts before planting
season is usually a prerequisite for crop establishment
and predetermined water amounts are
applied uniformly to fields often without discerning
salinity levels. The use of predetermined water
amounts for leaching perhaps partly emanate
from the inability of conventional soil salinity
surveys (based on collection of soil samples, laboratory
analyses) to generate timely and highresolution
salinity maps. This paper has an objective
to estimate the spatial distribution of soil
salinity based on readily or cheaply obtainable environmental
parameters (terrain indices, remote
sensing data, distance to drains, and long-term
groundwater observation data) using a neural network
model. The farm-scale (∼15 km2) results
were used to upscale soil salinity to a district area
(∼300 km2). The use of environmental attributes
and soil salinity relationships to upscale the spatial
distribution of soil salinity from farm to district
scale resulted in the estimation of essentially similar
average soil salinity values (estimated 0.94 vs. 1.04 dS m−1). Visual comparison of the maps
suggests that the estimated map had soil salinity
that was uniform in distribution. The upscaling
proved to be satisfactory; depending on critical
salinity threshold values, around 70–90% of locations
were correctly estimated.
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Akramkhanov, Akmal https://orcid.org/0000-0002-4316-5580