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Parameter estimation for a simple two-source evapotranspiration model using Bayesian inference and its application to remotely sensed estimations of latent heat flux at the regional scale

机译:基于贝叶斯推论的简单两源蒸散模型参数估计及其在区域尺度潜热通量遥感估计中的应用

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A simple two-source evapotranspiration (ET) model was applied to the Yingke and Daman irrigation districts of the Zhangye Oasis, which is located in the middle reaches of the Heihe River, China. The ET model was composed of two parts, including an evaporation (E) sub-model and a transpiration (T) sub-model. A separated parameter estimation scheme was conducted using Bayesian inference. First, an empirical multiplier was estimated for an E sub-model using observations that were collected after crop harvests. The empirical multiplier was then assigned to the most-likely value in the simple two-source ET model. Second, a global sensitivity analysis was performed to identify the key parameters that were responsible for most of the variability in the lambda ET results within the T sub-model. To avoid equifinality or over-parameterization, Bayesian inference was applied to estimate the key parameters that induced the most variability in the first set. A second set of Bayesian inference was then performed by fixing the most-likely values of these parameters, and the other parameters were defined one-by-one as Bayesian parameters. These parameters were estimated for seven sites. The coefficient of determination for the modeled lambda ET and the observed values exceeded 0.9. Next, a cluster analysis was conducted using the canopy height, leaf area index (LAI) and soil moisture content to classify the fields with the highest similarities and then to distribute the same parameter values to similar fields. Finally, lambda ET Was estimated using the most-likely values of the parameters at the regional scale. The root-mean-square error of the remotely sensed estimates was less than 20W m(-2), the mean absolute percent error did not exceed 4%, and the correlation coefficient was greater than 0.97. The validation was conducted for both the modeled lambda ET at the point scale and for the remotely sensed lambda ET at the satellite pixel scale. The results demonstrate that the separated parameter estimation scheme using Bayesian inference yields reasonable parameter values; using cluster analysis, the most-likely values of the parameters can be effectively applied to estimate remotely sensed lambda ET. (C) 2016 Elsevier B.V. All rights reserved.
机译:在中国黑河中游张(绿洲的英科和达曼灌区,采用了简单的两源蒸散模型。 ET模型由两部分组成,包括蒸发(E)子模型和蒸腾(T)子模型。使用贝叶斯推断进行了分离的参数估计方案。首先,使用作物收成后收集到的观测值,估算E子模型的经验乘数。然后,将经验乘数分配给简单的两源ET模型中最可能的值。其次,进行了全局敏感性分析,以找出导致T子模型中λET结果的大部分变异的关键参数。为了避免等价性或过度参数化,贝叶斯推断被用来估计在第一组中引起最大可变性的关键参数。然后,通过固定这些参数最可能的值来执行第二组贝叶斯推断,并将其他参数一对一定义为贝叶斯参数。估计了七个地点的这些参数。建模的λET和观测值的确定系数超过0.9。接下来,使用树冠高度,叶面积指数(LAI)和土壤水分含量进行聚类分析,以对相似度最高的田地进行分类,然后将相同的参数值分配给相似的田地。最后,使用区域范围内最可能的参数值估算了λET。遥感估计的均方根误差小于20W m(-2),平均绝对百分比误差不超过4%,相关系数大于0.97。对模拟的Lambda ET进行了点规模验证,并对卫星lambda ET进行了验证。结果表明,采用贝叶斯推断的分离参数估计方案可以得到合理的参数值。使用聚类分析,可以将最可能的参数值有效地应用于估算遥感λET。 (C)2016 Elsevier B.V.保留所有权利。

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