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首页> 外文期刊>Geologia Croatica: a journal of the Institute of Geology Zagreb and Croatian Geological Society >The role of geology in the spatial prediction of soil properties in the watershed of Lake Balaton, Hungary
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The role of geology in the spatial prediction of soil properties in the watershed of Lake Balaton, Hungary

机译:地质学在匈牙利巴拉顿湖流域土壤特性空间预测中的作用

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摘要

There is no standard methodology which allows the incorporation of geological information into digital soil mapping (DSM) despite the great potential of geology as environmental covariate in DSM. To fill this gap, in this study, a geochemical parent material classification scheme was tested on the watershed area of Lake Balaton, for which soil maps at a finer scale have not yet been created. A parent material map was prepared on the basis of a 1:100 000 surface geology map in order to make the incorporation of soil modelling and mapping possible. Legacy data of 12400 soil sample points was used in order to examine the role of geology in the quantitative distribution of some soil properties and element content (liquid limit, soil organic carbon, pH(KCL), CaCO3, Mg, Cu, Zn, Mn). Results confirm that the SiO2 content of the parent material influences the properties of the derived soils. In the second part of the study Random Forest models were developed for three major soil properties (liquid limit, soil organic carbon, pH) with the use of additional environmental covariates: elevation, slope, aspect, curvature, topographic position index (TPI), annual average temperature, annual average precipitation, remote sensing based normalized difference vegetation index (NDVI) and land cover information. The performance and accuracy of the models were evaluated on the basis of the coefficient of determination (R2) and root mean square error (RMSE), calculated on a randomly selected validation dataset (20% of the database). The models performed with R2 values of 0.72, 0.6 and 0.68 for liquid limit, soil organic carbon and pH respectively. The importance of variables was also examined in the RF models, and this demonstrated that while geology is among the best-performing predictors, in neither case is it the most important variable. Ninety metre resolution maps of the three major soil properties were compiled by making spatial predictions with the RF models developed here. For validation of the maps, an independent soil database was used, which showed that the prediction performed well on the cultivated area where the concordance correlation coefficients (CCC) were 0.73, 0.73 and 0.69 for liquid limit, pH and soil organic carbon respectively.
机译:尽管存在地质学作为DSM中环境协变量的巨大潜力,但尚无标准方法可将地质信息纳入数字土壤制图(DSM)。为了填补这一空白,在这项研究中,对巴拉顿湖流域地区的地球化学母体材料分类方案进行了测试,该方案尚未创建更精细规模的土壤图。在1:100 000表面地质图的基础上准备了母体材料图,以使合并土壤模型和绘图成为可能。为了研究地质在某些土壤特性和元素含量(液体限量,土壤有机碳,pH(KCL),CaCO3,Mg,Cu,Zn,Mn,Mn )。结果证实,母体材料中的SiO2含量会影响衍生土壤的特性。在研究的第二部分中,使用其他环境协变量开发了针对三种主要土壤特性(液体极限,土壤有机碳,pH)的随机森林模型:海拔,坡度,纵横比,曲率,地形位置指数(TPI),年平均温度,年平均降水量,基于遥感的归一化植被指数(NDVI)和土地覆盖信息。根据确定系数(R2)和均方根误差(RMSE)对模型的性能和准确性进行评估,该系数是在随机选择的验证数据集(数据库的20%)上计算得出的。该模型分别以液体极限,土壤有机碳和pH的R2值为0.72、0.6和0.68执行。在RF模型中还检查了变量的重要性,这表明虽然地质学是表现最好的预测因素之一,但在任何情况下都不是最重要的变量。通过使用此处开发的RF模型进行空间预测,编制了三种主要土壤特性的90米分辨率图。为了验证图谱,使用了一个独立的土壤数据库,该数据表明,在耕地液位,pH和土壤有机碳的协调相关系数(CCC)分别为0.73、0.73和0.69的情况下,预测效果很好。

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