Interpolation and artificial neural network to estimate soil spatial variability affected by land use and altitude

IF 1.7 4区 地球科学 Q3 GEOSCIENCES, MULTIDISCIPLINARY
Fatemeh Taghipour, Seyed Mostafa Emadi, Majid Danesh, Mehdi Ghajar Sepanlou
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Abstract

Finding the most suitable methods, which may predict soil spatial variability is essential for proper handling of agricultural lands affected by land use types and altitude. There is not much data on the use of artificial neural network (ANN) outperforming the traditional methods such as the interpolation methods for predicting soil spatial variability. Accordingly, the interpolation methods of inverse distance weighting (IDW), kriging, and co-kriging, as well as ANN were tested to predict soil spatial variability of pH, salinity (EC), and cation exchange capacity (CEC) affected by land use type (cultivated and uncultivated lands, orchard, forestry and rangeland) and altitude (-20-0 (A1), 0–100 (A2), 100–500 (A3), and >500 m (A4)) in a 9545 km2 research area. The chemical properties of the 249 soil samples (0–15 cm) were determined. Land use type indicated pH of 6.56 (forestry) to 7.32 (cultivated land), EC of 1.10 (forestry) to 2.87 dS/m (rangeland), and CEC of 17.71 (uncultivated land) to 37.01 meq/100 g soil (forestry). Altitude resulted in pH of 6.72 (A4) to 7.35 dS/m (A2), EC of 1.31 (A4) to 1.90 (A2) dS/m, and CEC of 20.07 (A1) to 34.45 meq/100 g soil. Although cross-validation method (using mean error (ME) and root means square error (RMSE)) indicated the accuracy of interpolation methods to predict soil spatial variability, ANN was the most suitable one. The proper training of ANN may precisely predict the spatial heterogeneity of soil chemical properties affected by land use type and altitude, useful for the appropriate handling of agricultural lands.

Abstract Image

土地利用和海拔对土壤空间变异的影响
寻找最合适的方法来预测土壤空间变异性,对于合理处理受土地利用类型和海拔影响的农用地至关重要。利用人工神经网络(ANN)预测土壤空间变异性的效果优于插值等传统方法的研究并不多见。基于此,在9545 km2的研究区域内,采用逆距离加权(IDW)、克里格法(kriging)、协同克里格法(co-kriging)和人工神经网络(ANN)插值方法预测土壤pH、盐度(EC)和阳离子交换容量(CEC)受土地利用类型(耕地和荒地、果园、林业和草地)和海拔高度(-20-0 (A1)、0-100 (A2)、100-500 (A3)和>;500 m (A4))影响的空间变异。测定了249份土壤样品(0 ~ 15 cm)的化学性质。林地pH值为6.56 ~ 7.32,林地pH值为1.10 ~ 2.87 dS/m,林地pH值为17.71 ~ 37.01 meq/100 g。海拔导致pH值为6.72 (A4) ~ 7.35 dS/m (A2), EC值为1.31 (A4) ~ 1.90 (A2) dS/m, CEC值为20.07 (A1) ~ 34.45 meq/100 g土壤。交叉验证方法(使用均方根误差和均方根误差)显示了插值方法预测土壤空间变异性的准确性,但人工神经网络是最合适的插值方法。通过对人工神经网络的适当训练,可以准确预测土壤化学性质受土地利用类型和海拔影响的空间异质性,为合理处理农用地提供依据。
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来源期刊
Journal of South American Earth Sciences
Journal of South American Earth Sciences 地学-地球科学综合
CiteScore
3.70
自引率
22.20%
发文量
364
审稿时长
6-12 weeks
期刊介绍: Papers must have a regional appeal and should present work of more than local significance. Research papers dealing with the regional geology of South American cratons and mobile belts, within the following research fields: -Economic geology, metallogenesis and hydrocarbon genesis and reservoirs. -Geophysics, geochemistry, volcanology, igneous and metamorphic petrology. -Tectonics, neo- and seismotectonics and geodynamic modeling. -Geomorphology, geological hazards, environmental geology, climate change in America and Antarctica, and soil research. -Stratigraphy, sedimentology, structure and basin evolution. -Paleontology, paleoecology, paleoclimatology and Quaternary geology. New developments in already established regional projects and new initiatives dealing with the geology of the continent will be summarized and presented on a regular basis. Short notes, discussions, book reviews and conference and workshop reports will also be included when relevant.
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