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首页> 外文期刊>Geoderma: An International Journal of Soil Science >A plant ecology approach to digital soil mapping, improving the prediction of soil organic carbon content in alpine grasslands.
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A plant ecology approach to digital soil mapping, improving the prediction of soil organic carbon content in alpine grasslands.

机译:一种用于数字土壤测绘的植物生态学方法,可提高对高寒草原土壤有机碳含量的预测。

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The influence of organisms on pedogenesis is acknowledged in the scorpan model; however organisms, plants in particular, might be seen in a different light within the scorpan model. In fact, in minimally managed terrestrial ecosystems, biota coexists with soil as part of a feedback system, in which the biota not only influences soil development, but is also in turn influenced by it. This means that in natural environments a particular soil is usually associated with a typical combination of plant species which thrive in the biotope defined by the soil physical and chemical properties. Changes in soil features will favor certain species over others, thus modifying the structure of the resident plant communities. This makes plant communities very effective proxies of soil properties, effectively acting as widespread biological sensors. In this paper we will show how plant communities can be utilized to improve the quality of digital soil maps, effectively reducing the amount of field work needed by soil surveys, through a combination of relatively swifter and cheaper vegetation surveys and remote sensing data. The approach we propose is based on the spectral and textural properties of plant communities which can be summarized from high resolution remotely sensed images and LIDAR data through the use of geostatistical, spectral and geomorphometric descriptors. These descriptors are then associated with the scores obtained from the ordination of the plant communities' relative coverage. Ordination projects the high dimensional plant cover data into a lesser dimensional space, thus making easier to establish a relation between ecological space and geostatistical descriptors. Once established this relation can be exploited through the use of regression techniques in a regression kriging framework. In this case study, we applied the proposed model to the prediction of soil organic carbon content in an alpine grassland. The use of plant communities cover almost doubled the predictive power of the model from an R2 of 0.32 to an R2 of 0.66 in cross-validation, a result which strongly advocates for the efficiency of the proposed approach.
机译:在天蝎模型中,人们认识到生物对成虫的影响。但是在 scorpan 模型中,可能会以不同的视角看到生物,尤其是植物。实际上,在最低限度管理的陆地生态系统中,生物群与土壤共存,作为反馈系统的一部分,其中生物群不仅影响土壤发育,而且反过来也受到土壤影响。这意味着在自然环境中,特定的土壤通常与典型的植物物种组合相关联,这些物种在由土壤物理和化学特性定义的生物群落中生长。土壤特征的变化将有利于某些物种而不是其他物种,从而改变常驻植物群落的结构。这使得植物群落非常有效地替代了土壤特性,有效地充当了广泛的生物传感器。在本文中,我们将展示如何结合相对较快和较便宜的植被调查以及遥感数据,利用植物群落来改善数字土壤图的质量,有效减少土壤调查所需的野外工作量。我们提出的方法基于植物群落的光谱和纹理特性,可以通过使用地统计,光谱和地貌描述子从高分辨率的遥感图像和LIDAR数据中总结出来。然后将这些描述符与从植物群落相对覆盖度的排序获得的分数相关联。协调将高维植物覆盖数据投影到较小维空间中,从而使建立生态空间与地统计描述符之间的关系更加容易。一旦建立了这种关系,就可以通过在回归克里金框架中使用回归技术来利用这种关系。在本案例研究中,我们将提出的模型应用于预测高寒草原土壤有机碳含量。植物群落的使用几乎使模型的预测能力翻了一番,从 R 2 的0.32到 R 2 0.66,这一结果强烈提倡所提出方法的效率。

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