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Uncertainty assessment of a dominant-process catchment model of dissolved phosphorus transfer

机译:溶解态磷迁移的主要过程集水模型的不确定度评估

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We developed a parsimonious topography-based hydrologic model coupled with a soil biogeochemistry sub-model in order to improve understanding and prediction of soluble reactive phosphorus?(SRP) transfer in agricultural headwater catchments. The model structure aims to capture the dominant hydrological and biogeochemical processes identified from multiscale observations in a research catchment (Kervidy–Naizin, 5?kmsup2/sup). Groundwater fluctuations, responsible for the connection of soil SRP production zones to the stream, were simulated with a fully distributed hydrologic model at 20?m resolution. The spatial variability of the soil phosphorus content and the temporal variability of soil moisture and temperature, which had previously been identified as key controlling factors of SRP solubilization in soils, were included as part of an empirical soil biogeochemistry sub-model. The modelling approach included an analysis of the information contained in the calibration data and propagation of uncertainty in model predictions using a generalized likelihood uncertainty estimation?(GLUE) "limits of acceptability" framework. Overall, the model appeared to perform well given the uncertainty in the observational data, with a Nash–Sutcliffe efficiency on daily SRP loads between 0.1 and 0.8 for acceptable models. The role of hydrological connectivity via groundwater fluctuation and the role of increased SRP solubilization following dry/hot periods were captured well. We conclude that in the absence of near-continuous monitoring, the amount of information contained in the data is limited; hence, parsimonious models are more relevant than highly parameterized models. An analysis of uncertainty in the data is recommended for model calibration in order to provide reliable predictions.
机译:我们开发了基于简约地形的水文模型,并结合了土壤生物地球化学子模型,以增进对农业源水区可溶性反应性磷?(SRP)转移的理解和预测。该模型结构旨在捕获研究集水区(Kervidy–Naizin,5?km 2 )中从多尺度观测中识别出的主要水文和生物地球化学过程。利用全分布水文模型以20?m分辨率模拟了造成土壤SRP生产区与河流联系的地下水波动。土壤磷含量的空间变异性和土壤水分和温度的时间变异性已被确定为土壤生物地球化学经验模型的一部分,先前已将其确定为土壤中SRP增溶的关键控制因素。建模方法包括使用广义似然不确定性估计(GLUE)“可接受极限”框架分析校准数据中包含的信息以及不确定性在模型预测中的传播。总体而言,考虑到观测数据的不确定性,该模型似乎表现良好,对于可接受模型,日SRP负荷的纳什-萨特克利夫效率为0.1至0.8。很好地捕捉了通过地下水波动产生的水文连通性的作用以及干旱/炎热期后SRP增溶作用的增加。我们得出的结论是,在缺乏近乎连续的监视的情况下,数据中包含的信息量是有限的。因此,简约模型比高度参数化模型更相关。建议对数据进行不确定性分析以进行模型校准,以提供可靠的预测。

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