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Mapping Soil Properties of Africa at 250 m Resolution: Random Forests Significantly Improve Current Predictions

机译:以250 m分辨率绘制非洲土壤特性图:随机森林显着改善了当前的预报

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摘要

80% of arable land in Africa has low soil fertility and suffers from physical soil problems. Additionally, significant amounts of nutrients are lost every year due to unsustainable soil management practices. This is partially the result of insufficient use of soil management knowledge. To help bridge the soil information gap in Africa, the Africa Soil Information Service (AfSIS) project was established in 2008. Over the period 2008–2014, the AfSIS project compiled two point data sets: the Africa Soil Profiles (legacy) database and the AfSIS Sentinel Site database. These data sets contain over 28 thousand sampling locations and represent the most comprehensive soil sample data sets of the African continent to date. Utilizing these point data sets in combination with a large number of covariates, we have generated a series of spatial predictions of soil properties relevant to the agricultural management—organic carbon, pH, sand, silt and clay fractions, bulk density, cation-exchange capacity, total nitrogen, exchangeable acidity, Al content and exchangeable bases (Ca, K, Mg, Na). We specifically investigate differences between two predictive approaches: random forests and linear regression. Results of 5-fold cross-validation demonstrate that the random forests algorithm consistently outperforms the linear regression algorithm, with average decreases of 15–75% in Root Mean Squared Error (RMSE) across soil properties and depths. Fitting and running random forests models takes an order of magnitude more time and the modelling success is sensitive to artifacts in the input data, but as long as quality-controlled point data are provided, an increase in soil mapping accuracy can be expected. Results also indicate that globally predicted soil classes (USDA Soil Taxonomy, especially Alfisols and Mollisols) help improve continental scale soil property mapping, and are among the most important predictors. This indicates a promising potential for transferring pedological knowledge from data rich countries to countries with limited soil data.
机译:非洲80%的耕地土壤肥力低下,并遭受土壤物理问题的困扰。此外,由于不可持续的土壤管理做法,每年还会损失大量养分。部分原因是土壤管理知识使用不足。为了帮助弥合非洲的土壤信息鸿沟,2008年成立了非洲土壤信息服务(AfSIS)项目。在2008-2014年期间,AfSIS项目编辑了两点数据集:非洲土壤概况(旧版)数据库和AfSIS前哨站点数据库。这些数据集包含超过28,000个采样点,代表了迄今为止非洲大陆最全面的土壤采样数据集。通过将这些点数据集与大量协变量结合使用,我们生成了一系列与农业经营相关的土壤特性的空间预测,包括有机碳,pH,沙子,淤泥和粘土分数,堆积密度,阳离子交换能力,总氮,可交换酸度,Al含量和可交换碱(Ca,K,Mg,Na)。我们专门研究两种预测方法之间的差异:随机森林和线性回归。 5倍交叉验证的结果表明,随机森林算法始终优于线性回归算法,在整个土壤属性和深度范围内,均方根误差(RMSE)的平均降低幅度为15–75%。拟合和运行随机森林模型要花费更多的时间,并且建模成功对输入数据中的伪影很敏感,但是只要提供了质量控制的点数据,就可以期望提高土壤测绘精度。结果还表明,全球预测的土壤类别(USDA土壤分类法,尤其是铝溶胶和Mollisols)有助于改善大陆规模的土壤特性图谱,并且是最重要的预测因子之一。这表明将有学问的潜力从数据丰富的国家转移到土壤数据有限的国家。

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