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Predicting spatial and temporal patterns fo soil temperature based on topography, surface cover and air temperature

机译:基于地形,地表覆盖和气温预测土壤温度的时空格局

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摘要

Soil temperature is a variable that links surface structure to soil processes and yet its spatial prediction across landscapes with variable surface structure is poorly understood. In this study, a hybrid soil temperature model was developed to predict daily spatial patterns of soil temperature in a forested landscape by incorporating the effects of topography, canopy and ground litter. The model is based on both heat transfer physics and empirical relationship between air and soil temperature, and uses input variables that are extracted from a digital elevation model(DEM), satellite imagery, and standard weather records. Model-predicted soil temperatures fitted well with data measured at 10 cm soil depth at three sites: two hardwood forests and a bare soil area. A sensitivity analysis showed that the model was highly sensitive to leaf area index (LAI) and air temperature. When the spatial pattern of soil temperature in a forested watershed was simulated by the model, different responses of bare and canopy-closed ground to air temperature were identified, spatial distribution of daily air temperature was geostatistically interpolated from the data of weather stations adjacent to the simulated area. Spatial distribution of LAI was obtained from Landsat Thematic Mapper images. The hybrid model describes spatial variability of soil temperature across landscapes and different sensitivity to rising air temperature depending on site-specific surface structures, such as LAI and ground litter stores. In addition, the model may be beneficially incorporated into other ecosystem models requiring soil temperature as one of the input variables.
机译:土壤温度是一个将表面结构与土壤过程联系起来的变量,但是人们对具有可变表面结构的景观的空间预测了解甚少。在这项研究中,开发了一种混合土壤温度模型,通过结合地形,林冠和地面垫料的影响来预测森林景观中土壤温度的每日空间格局。该模型基于传热物理学和空气与土壤温度之间的经验关系,并使用从数字高程模型(DEM),卫星图像和标准天气记录中提取的输入变量。模型预测的土壤温度与三个地点(两个硬木森林和一块裸露的土地)在10厘米土壤深度处测得的数据非常吻合。敏感性分析表明,该模型对叶面积指数(LAI)和气温非常敏感。当通过该模型模拟森林流域土壤温度的空间格局时,识别出裸露的土地和冠层封闭的地面对气温的不同响应,并从与气象站相邻的气象站的数据进行地统计学插值模拟区域。 LAI的空间分布是从Landsat专题制图仪图像获得的。混合模型描述了土壤温度在整个景观中的空间变异性以及对气温升高的敏感性,这取决于特定地点的表面结构,例如LAI和地面垃圾存储。另外,该模型可以有益地并入需要土壤温度作为输入变量之一的其他生态系统模型。

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