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首页> 外文期刊>Hydrology and Earth System Sciences >Parameter optimisation for a better representation of drought by LSMs: inverse modelling vs. sequential data assimilation
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Parameter optimisation for a better representation of drought by LSMs: inverse modelling vs. sequential data assimilation

机译:LSMS更好地表示的参数优化:逆建模与顺序数据同化

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摘要

Soil maximum available water content (Max-AWC) is a key parameter in land surface models (LSMs). However, being difficult to measure, this parameter is usually uncertain. This study assesses the feasibility of using a 15-year (1999-2013) time series of satellite-derived lowresolution observations of leaf area index (LAI) to estimate MaxAWC for rainfed croplands over France. LAI interannual variability is simulated using the CO2-responsive version of the Interactions between Soil, Biosphere and Atmosphere (ISBA) LSM for various values of MaxAWC. Optimal value is then selected by using (1) a simple inverse modelling technique, comparing simulated and observed LAI and (2) a more complex method consisting in integrating observed LAI in ISBA through a land data assimilation system (LDAS) and minimising LAI analysis increments. The evaluation of the MaxAWC estimates from both methods is done using simulated annual maximum above-ground biomass (B_(ag)) and straw cereal grain yield (GY) values from the Agreste French agricultural statistics portal, for 45 administrative units presenting a high proportion of straw cereals. Significant correlations (p value < 0.01) between B_(ag) and GY are found for up to 36 and 53 % of the administrative units for the inverse modelling and LDAS tuning methods, respectively. It is found that the LDAS tuning experiment gives more realistic values of MaxAWC and maximum B_(ag) than the inverse modelling experiment. Using undisaggregated LAI observations leads to an underestimation of MaxAWC and maximum B_(ag) in both experiments. Median annual maximum values of disaggregated LAI observations are found to correlate very well with MaxAWC.
机译:土壤最大可用含水量(MAX-AWC)是陆地型号(LSM)的关键参数。然而,难以测量,这个参数通常不确定。本研究评估了使用15年(1999-2013)时间序列的卫星衍生的低度研究结果的可行性叶面指数(LAI)来估算法国雨量农田的Maxawc。利用土壤,生物圈和大气(ISBA)LSM之间的相互作用的CO2响应版本模拟LAI续际变异性。然后通过使用(1)简单的逆建模技术选择最佳值,比较模拟和观察到的LAI和(2)通过土地数据同化系统(LDA)集成ISBA中观察到的LAI,并最大限度地减少LAI分析增量的更复杂方法。 。两种方法的MaxAWC估计的评价是使用模拟的年度最大地上生物量(B_(AG))和来自Agreste法国农业统计门户网站的稻草谷物产量(GY)价值,为45个行政单位呈现出高比例的行政单位稻草谷物。 B_(AG)和GY之间的显着相关性(P值<0.01)分别为逆建模和LDA调整方法的高达36和53%的行政单位。发现LDA调谐实验提供了比逆建模实验更具现实的MaxAWC和最大B_(AG)的逼真。使用不可分辨率的LAI观察结果导致在两个实验中低估MaxAWC和最大B_(AG)。发现中位数的分类莱观察结果的年度最大值与maxawc相互作用。

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