Dolschak Klaus, Gartner Karl, Berger Torsten W
Department of Forest- and Soil Sciences, Institute of Forest Ecology, University of Natural Resources and Live Sciences (BOKU), Peter Jordan-Straße 82, 1190 Vienna, Austria.
Department of Forest Ecology and Soil, Federal Research and Training Centre for Forests, Natural Hazards and Landscape, Seckendorff-Gudent-Weg 8, 1131 Vienna, Austria.
Model Earth Syst Environ. 2015 Dec 1;1(4):32. doi: 10.1007/s40808-015-0041-2.
In this article, the setup and the application of an empirical model, based on Newton's law of cooling, capable to predict daily mean soil temperature () under vegetated surfaces, is described. The only input variable, necessary to run the model, is a time series of daily mean air temperature. The simulator employs 9 empirical parameters, which were estimated by inverse modeling. The model, which primarily addresses forested sites, incorporates the effect of snow cover and soil freezing on soil temperature. The model was applied to several temperate forest sites, managing the split between Central Europe (Austria) and the United States (Harvard Forest, Massachusetts; Hubbard Brook, New Hampshire), aiming to cover a broad range of site characteristics. Investigated stands differ fundamentally in stand composition, elevation, exposition, annual mean temperature, precipitation regime, as well as in the duration of winter snow cover. At last, to explore the limits of the formulation, the simulator was applied to non-forest sites (Illinois), where soil temperature was recorded under short cut grass. The model was parameterized, specifically to site and measurement depth. After calibration of the model, an evaluation was performed, using ~50 % of the available data. In each case, the simulator was capable to deliver a feasible prediction of soil temperature in the validation time interval. To evaluate the practical suitability of the simulator, the minimum amount of soil temperature point measurements, necessary to yield expedient model performance was determined. In the investigated case 13-20 point observations, uniformly distributed within an 11-year timeframe, have been proven sufficient to yield sound model performance (root mean square error <0.9 °C, Nash-Sutcliffe efficiency >0.97). This makes the model suitable for the application on sites, where the information on soil temperature is discontinuous or scarce.
本文描述了一种基于牛顿冷却定律的经验模型的设置和应用,该模型能够预测植被覆盖表面下的日平均土壤温度()。运行该模型所需的唯一输入变量是日平均气温的时间序列。模拟器采用了9个通过逆建模估计的经验参数。该模型主要针对森林地区,考虑了积雪和土壤冻结对土壤温度的影响。该模型应用于几个温带森林站点,涵盖了中欧(奥地利)和美国(马萨诸塞州的哈佛森林;新罕布什尔州的哈伯德布鲁克),旨在涵盖广泛的站点特征。所研究的林分在林分组成、海拔、朝向、年平均温度、降水模式以及冬季积雪持续时间等方面存在根本差异。最后,为了探索该公式的局限性,将模拟器应用于非森林站点(伊利诺伊州),在那里短草下记录了土壤温度。该模型针对特定的站点和测量深度进行了参数化。在对模型进行校准后,使用约50%的可用数据进行了评估。在每种情况下,模拟器都能够在验证时间间隔内对土壤温度做出可行的预测。为了评估模拟器的实际适用性,确定了获得便捷模型性能所需的最低土壤温度点测量数量。在所研究的案例中,已证明在11年时间范围内均匀分布的13 - 20个点观测足以产生良好的模型性能(均方根误差<0.9°C,纳什 - 萨特克利夫效率>0.97)。这使得该模型适用于土壤温度信息不连续或稀缺的站点。