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Predicting forest site productivity in temperate lowland from forest floor, soil and litterfall characteristics using boosted regression trees

机译:使用增强回归树从林地,土壤和凋落物特征预测温带低地的林地生产力

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The aim of this study is on the one hand to identify the most determining variables predicting the site productivity of pedunculate oak, common beech and Scots pine in temperate lowland forests of Flanders; and on the other hand to test whether the accuracy of site productivity models based exclusively on soil or forest floor predictor variables is similar to the accuracy achieved by full ecosystem models, combining all soil, vegetation, humus and litterfall composition related variables. Boosted Regression Trees (BRT) were used to model in a climatically homogeneous region the relationship between environmental variables and site productivity. A distinction was made between soil (soil physical and chemical), forest floor (vegetation and humus) and ecosystem (soil, forest floor and litterfall composition jointly) predictors. Our results have illustrated the strength of BRT to model the non-linear behaviour of ecological processes. The ecosystem models, based on all collected variables, explained most of the variability and were more accurate than those limited to either soil or forest floor variables. Nevertheless, both the soil and forest floor models can serve as good predictive models for many forest management practices. Soil granulometric fractions and litterfall nitrogen concentrations were the most effective predictors of forest site productivity in Flanders. Although many studies revealed a fertilising effect of increased nitrogen deposition, nitrogen saturation seemed to reduce species' productivity in this region.
机译:这项研究的目的是一方面确定最有决定性的变量,这些变量预测法兰德温带低地森林中有花梗的橡木,山毛榉和苏格兰松的现场生产力;另一方面,仅结合土壤,植被,腐殖质和凋落物组成相关变量,测试仅基于土壤或林地预测变量的站点生产力模型的准确性是否类似于通过完整生态系统模型获得的准确性。增强回归树(BRT)用于在气候均质的区域中模拟环境变量与站点生产力之间的关系。对土壤(土壤物理和化学),林底(植被和腐殖质)和生态系统(土壤,林底和凋落物组成共同)的预测因子进行了区分。我们的结果说明了BRT能够模拟生态过程的非线性行为。基于所有收集到的变量的生态系统模型可以解释大多数的变异性,并且比限于土壤或林底变量的模型更为准确。然而,土壤和森林底栖动物模型都可以作为许多森林管理实践的良好预测模型。土壤粒度分数和凋落物氮浓度是法兰德斯森林站点生产力的最有效预测指标。尽管许多研究表明氮肥沉积增加了肥力,但氮饱和似乎降低了该地区物种的生产力。

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