南非土壤类别的农场规模数字土壤地图

Trevan Flynn, A. Rozanov, F. Ellis, W. D. de Clercq, C. Clarke
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引用次数: 3

摘要

本研究涉及对南非西开普省Sandspruit流域农场规模数字土壤分类的评估。该研究旨在从特征选择、空间预测和样本设计等方面评估数字土壤制图(DSM)方法。结果表明,具有最小绝对收缩和选择算子(LASSO)技术的特征选择是一种稳健的方法,因为它具有较高的相对效率,并且在预测的四种土壤类别中有三种达到了最高的精度。这意味着协变量选择是农场规模DSM中最显著的方面。表现最好的预测模型在土壤协会方面取得了令人满意的结果(kappa = 0.64,精度 = 74%),存在漂白表层土(kappa = 0.64,精度 = 74%)和土壤深度(kappa = 0.48,精度 = 74%),而对于土壤质地(kappa = 0.43,精度 = 66%)。最后,专家采样位置具有更高的平均发生概率(地理和特征空间分布覆盖率),但实现了与条件拉丁超立方体采样(cLHS)相似的性能。
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Farm-scale digital soil mapping of soil classes in South Africa
This study involved the evaluation of farm-scale digital soil classification in the Sandspruit catchment of the Western Cape Province, South Africa. The study aimed to evaluate a digital soil mapping (DSM) method, from feature selection, spatial predictions and sample design. The results showed that feature selection with the least absolute shrinkage and selection operator (LASSO) technique is a robust method as it had a high relative efficiency and achieved the highest accuracy for three out of the four soil classes predicted. This implies that covariate selection is the most notable aspect in DSM at the farm-scale. The top-performing predictive models achieved satisfactory results for soil associations (kappa = 0.64, accuracy = 74%), presence of a bleached topsoil (kappa = 0.64, accuracy = 74%) and soil depth (kappa = 0.48, accuracy = 74%), whereas only moderate results were achieved for soil texture (kappa = 0.43, accuracy = 66%). Lastly, the expert sampling locations had a higher average probability of occurrence (geographic and feature space distribution coverage) yet achieved similar performance to conditioned Latin hypercube sampling (cLHS).
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来源期刊
South African Journal of Plant and Soil
South African Journal of Plant and Soil Agricultural and Biological Sciences-Plant Science
CiteScore
1.90
自引率
11.10%
发文量
32
期刊介绍: The Journal has a proud history of publishing quality papers in the fields of applied plant and soil sciences and has, since its inception, recorded a vast body of scientific information with particular reference to South Africa.
期刊最新文献
The impact of planting dates and hybrid selection on sunflower seed yield and oil content Comparison of the effectiveness of mined and by-product South African gypsums and other calcium sources for soil sodicity remediation Nutrient uptake and yield response of wheat ( Triticum spp.) to different fertiliser applications in Ethiopia Transpiration efficiency of lucerne under unlimited soil water conditions during the first growing season Digital soil mapping enables informed decision-making to conserve soils within protected areas
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