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首页> 外文期刊>European Journal of Soil Science >Using boosted regression trees to explore key factors controlling saturated and near-saturated hydraulic conductivity
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Using boosted regression trees to explore key factors controlling saturated and near-saturated hydraulic conductivity

机译:使用增强回归树探索控制饱和和近饱和水力传导率的关键因素

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Hydraulic conductivity at and near saturation is difficult to predict. We investigated, for the first time, the potential of boosted regression trees to identify the key factors that determine saturated and near-saturated hydraulic conductivities in undisturbed soils with a global meta-database of tension infiltrometer measurements. Our results demonstrate that pedotransfer functions developed from meta-databases may strongly over-estimate prediction performance unless they are validated against each individual data source separately. For such a source-wise cross-validation, we estimated the hydraulic conductivity at a tension of 10cm (K-10) and the saturated hydraulic conductivity (K-s) with coefficients of determination of 0.36 and 0.15, respectively. The most important predictors for K-10 were the average annual precipitation and temperature at the measurement location, which are key variables for pedogenesis and constrain soil management. More research is required for the in-depth interpretation of their influence on hydraulic conductivity. The soil clay and organic carbon contents were also important predictors of K-10, with hydraulic conductivity decreasing as organic carbon contents increased up to 1.5% and as clay contents increased between about 10 and 40%. The direction of the tension-sequence with which the infiltrometer data were collected was also a significant predictor. Land use and bulk density were the most important predictors for K-s. The direction of the tension-sequence and the soil texture class were also important, with both coarse and fine-textured soils generally having larger K-s values than medium-textured soils.
机译:很难预测饱和和接近饱和时的水力传导率。我们首次调查了增强回归树的潜力,以确定张力渗透仪测量的全球元数据库,从而确定了确定未扰动土壤中饱和和接近饱和水力传导率的关键因素。我们的结果表明,从元数据库开发的pedotransfer函数可能会严重高估预测性能,除非它们分别针对每个单独的数据源进行了验证。对于这种基于源的交叉验证,我们分别以0.36和0.15的确定系数估算了10cm张力下的水力传导率(K-10)和饱和水力传导率(K-s)。 K-10最重要的预测指标是测量地点的年平均降水量和温度,这是成土作用和约束土壤管理的关键变量。为了深入解释它们对水力传导率的影响,需要进行更多的研究。土壤粘土和有机碳含量也是K-10的重要预测指标,水力传导率随着有机碳含量增加至1.5%和粘土含量增加约10%至40%而下降。渗透计数据的收集顺序也很重要。土地利用和堆积密度是K-s最重要的预测指标。张力序列的方向和土壤质地类别也很重要,粗糙和细纹理土壤的K-s值通常都比中纹理土壤大。

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