Soil texture fractions modeling and mapping using LS-SVR algorithm

Desert Pub Date : 2020-12-01 DOI:10.22059/JDESERT.2020.79252
Mehrdad Jeihouni, S. K. Alavipanah, A. Toomanian, A. Jafarzadeh
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引用次数: 1

Abstract

Soil texture is variable through space and controls most of the soil’s Physico-chemical, biological and hydrological characteristics and governs agricultural production and yield. Therefore, determining its variability and generating accurate soil texture maps have a key role in soil management and sustainable agriculture. The purpose of this study is to introduce a numerical algorithm named Least Square Support Vector Machine for Regression (LS-SVR) as a predictive model in Digital Soil Mapping (DSM) of soil texture fractions and evaluating its performances based on modeling evaluation criteria. In this study, the soil texture data of 49 soil profiles in Tabriz plain, Iran, was used. The important covariates were selected using Genetic Algorithm (GA). The model evaluation results based on ME, MAE, RMSE, and R2 indicate the high performance of LS-SVR in predicting soil texture components. The prediction RMSE for sand, silt, and clay was 6.82, 5.08 and 6.06, respectively. Silt prediction had the highest ME and the lowest MAE and RSME values. The algorithm simulated the complex spatial patterns of soil texture fractions and provided high accuracy predictions and maps. Therefore, the LS-SVR algorithm has the capability to be used as predictive models in soil texture digital mapping. This study highlighted the potential of the LS-SVR algorithm in high precision soil mapping. The generated maps can be used as basic information for environmental management and modeling.
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基于LS-SVR算法的土壤纹理组分建模与制图
土壤质地在空间上是可变的,控制着土壤的大部分物理化学、生物和水文特征,并控制着农业生产和产量。因此,确定其变异性并生成准确的土壤质地图在土壤管理和可持续农业中具有关键作用。本研究的目的是介绍一种名为最小二乘回归支持向量机(LS-SVR)的数值算法,作为土壤质地分数数字土壤制图(DSM)的预测模型,并根据建模评估标准评估其性能。本研究采用了伊朗大不里士平原49个土壤剖面的土壤质地数据。使用遗传算法(GA)选择重要的协变量。基于ME、MAE、RMSE和R2的模型评估结果表明,LS-SVR在预测土壤质地成分方面具有较高的性能。砂、粉土和粘土的预测均方根误差分别为6.82、5.08和6.06。淤泥预测的ME值最高,MAE和RSME值最低。该算法模拟了土壤质地分数的复杂空间模式,并提供了高精度的预测和地图。因此,LS-SVR算法具有作为土壤纹理数字制图预测模型的能力。本研究强调了LS-SVR算法在高精度土壤测绘中的潜力。生成的地图可以用作环境管理和建模的基本信息。
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