首页> 外文期刊>Geoderma: An International Journal of Soil Science >Extrapolation at regional scale of local soil knowledge using boosted classification trees: a two-step approach. (Entering the digital era: special issue of pedometrics 2009, Beijing.)
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Extrapolation at regional scale of local soil knowledge using boosted classification trees: a two-step approach. (Entering the digital era: special issue of pedometrics 2009, Beijing.)

机译:使用增强分类树在区域范围内对当地土壤知识进行外推:两步法。 (进入数字时代:《儿童计量学专刊》 2009年,北京。)

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Digital soil mapping can be helpful in providing pedological information over wide areas where existing soil information is limited. The aim of this study was to predict soil properties at a regional scale by parametrizing soil-landscape models using a machine-learning method recently applied to soil science concerns: boosted classification and regression trees. To examine soil properties interdependence, a two-step approach was tested: first soil parent material (PM), including bedrock formations and superficial deposits, was predicted; then, predicted PM was included as a predictive variable to estimate natural soil drainage (SD). Others predictive variables included environmental data representing known soil-forming factors: terrain attributes (elevation, slope, profile and plan curvatures, sub-watershed hillslope length, hydrological distance from the nearest stream, aspect, relative elevation above the nearest stream and a Compound Index initially proposed by Beven and Kirkby (1979) and modified by Merot et al. (1995)), geological data, airborne gamma-ray spectrometry (K:Th ratio, deviation from mean K emissions of the related lithological unit) and landscape data (derived from remotely sensed data). The study area is located in Brittany (northwestern France) and covers 4645 km2. The training dataset was constructed from existing detailed soil maps (scale 1:25,000) available for 11% of the study area. An additional set of 1148 punctual soil observations spread over the study area represented an independent validation dataset. Based on 20,000 randomly selected pixels from the training area, PM and SD were predicted with overall accuracies of 73 and 70% respectively. While calculated on punctual observations, correct agreement between prediction and observation decreased to 49% for PM and 52% for SD. Predicted PM was the most influential variable for SD prediction, illustrating the relevance of the two-step approach tested. Boosted classification tree appeared to be a particularly adequate and robust procedure for predicting soil properties. Probability of occurrence of the predicted PM was demonstrated to be a relevant indication of prediction quality, allowing distinction between well-predicted and poorly-predicted situations.Digital Object Identifier http://dx.doi.org/10.1016/j.geoderma.2011.03.010
机译:数字土壤测绘有助于在现有土壤信息有限的广阔区域提供土壤学信息。这项研究的目的是通过使用最近应用于土壤科学问题的机器学习方法对土壤景观模型进行参数化来预测区域尺度的土壤特性:增强分类和回归树。为了检验土壤特性的相互依赖性,测试了两步法:预测了包括基岩地层和表层沉积物在内的第一类土壤母体材料(PM);然后,将预测的PM作为预测变量包括在内,以估算自然土壤排水量(SD)。其他预测变量包括代表已知土壤形成因子的环境数据:地形属性(高程,坡度,剖面和平面曲率,分水岭下坡长,距最近河流的水文距离,坡向,最近河流上方的相对海拔和复合指数)最初由Beven和Kirkby(1979)提出,并由Merot等人(1995)修改),地质数据,机载伽马射线能谱法(K:Th比,与相关岩性单位的平均K排放量的偏差)和景观数据(来自遥感数据)。研究区域位于法国西北部的布列塔尼,覆盖4645 km 2 。训练数据集是根据可用于研究区域11%的现有详细土壤图(比例为1:25,000)构建的。分布在研究区域的另外1148个点守时土壤观测值代表一个独立的验证数据集。根据从训练区域随机选择的20,000个像素,预测PM和SD的总体准确度分别为73%和70%。根据准时观察结果进行计算,预测和观察结果之间的正确一致性降为PM的49%和SD的52%。预测的PM是SD预测中最有影响力的变量,说明了测试的两步法的相关性。增强分类树似乎是预测土壤性质的一种特别适当且健壮的方法。事实证明,发生预测的PM的概率是预测质量的相关指标,可以区分预测良好的情况和预测不良的情况。数字对象标识符http://dx.doi.org/10.1016/j.geoderma.2011.03 .010

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