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首页> 外文期刊>Hydrology and Earth System Sciences >Regional evapotranspiration from an image-based implementation of the Surface Temperature Initiated Closure (STIC1.2) model and its validation across an aridity gradient in the conterminous US
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Regional evapotranspiration from an image-based implementation of the Surface Temperature Initiated Closure (STIC1.2) model and its validation across an aridity gradient in the conterminous US

机译:从基于图像的表面温度的实施的区域蒸发蒸馏出来的闭合(STIC1.2)模型及其在孔雀嘴中的干旱梯度上的验证

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Recent studies have highlighted the need for improved characterizations of aerodynamic conductance and temperature (g(Lambda) and T-0) in thermal remote-sensing-based surface energy balance (SEB) models to reduce uncertainties in regional-scale evapotranspiration (ET) mapping. By integrating radiometric surface temperature (T-R) into the Penman-Monteith (PM) equation and finding analytical solutions of g(Lambda) and T-0, this need was recently addressed by the Surface Temperature Initiated Closure (STIC) model. However, previous implementations of STIC were confined to the ecosystem-scale using flux tower observations of infrared temperature. This study demonstrates the first regional-scale implementation of the most recent version of the STIC model (STIC1.2) that integrates the Moderate Resolution Imaging Spectroradiometer (MODIS) derived T-R and ancillary land surface variables in conjunction with NLDAS (North American Land Data Assimilation System) atmospheric variables into a combined structure of the PM and Shuttleworth-Wallace (SW) framework for estimating ET at 1 km x 1 km spatial resolution. Evaluation of STIC1.2 at 13 core AmeriFlux sites covering a broad spectrum of climates and biomes across an aridity gradient in the conterminous US suggests that STIC1.2 can provide spatially explicit ET maps with reliable accuracies from dry to wet extremes. When observed ET from one wet, one dry, and one normal precipitation year from all sites were combined, STIC1.2 explained 66% of the variability in observed 8-day cumulative ET with a root mean square error (RMSE) of 7.4 mm/8-day, mean absolute error (MAE) of 5 mm/8-day, and percent bias (PBIAS) of -4%. These error statistics showed relatively better accuracies than a widely used but previous version of the SEB-based Surface Energy Balance System (SEBS) model, which utilized a simple NDVI-based parameterization of surface roughness (zOM), and the PM-based MOD16 ET. SEBS was found to overestimate (PBIAS = 28 %) and M
机译:最近的研究突出了在基于热遥感的表面能平衡(SEB)模型中改进的空气动力测量和温度(G(Lambda)和T-0)的特性,以减少区域规模蒸散(ET)绘图中的不确定性。通过将辐射表面温度(T-R)集成到Penman-Monteith(PM)方程中并找到G(Lambda)和T-0的分析溶液,最近通过表面温度引发的闭合(STIC)模型来解决这种需求。然而,使用红外温度的通量塔观测,先前的STIC实现被限制在生态系统规模。本研究展示了第一个区域规模的STIC模型(STIC1.2)的区域规模实施,它与NLDAS结合结合NLDAS(北美土地数据同化系统)大气变量进入PM和ShuttleWorth-Wallace(SW)框架的组合结构,用于估计ET,估计ET,以1公里的空间分辨率。 STIC1.2的评价在覆盖阴部的充满活力梯度的覆盖覆盖广谱的13个核心Ameriflux站点,表明STIC1.2可以提供空间显式等映射,可从干燥到湿极端的可靠精度。当从一个湿时观察到的ET,一个干燥和从所有地点的一个正常沉淀年份组合时,STIC1.2解释了66%的观察到8天累积等的变异性,具有7.4毫米/的根均线误差(RMSE)/ 8天,平均误差(MAE)为5 mm / 8天,偏差百分比(pbias)为-4%。这些误差统计数据显示出比广泛使用的,但先前版本的基于SEB的表面能量平衡系统(SEBS)模型的误差统计数据相对较好,其利用了基于简单的基于NDVI的参数化的表面粗糙度(ZOM)和基于PM的MOD16 ET 。发现SEBS估计(pbias = 28%)和m

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