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Estimating seepage intensities from groundwater level time series by inverse modelling: A sensitivity analysis on wet meadow scenarios

机译:通过逆模型从地下水位时间序列估算渗流强度:湿草甸情景下的敏感性分析

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摘要

Mesotrophic wet meadows with an upward seepage of fresh, alkaline groundwater are famous for their high species richness. However, due to the lack of seepage data on an appropriate spatial scale, no quantitative relationships have been established as yet between seepage and the occurrence of seepage-dependent plant communities. Since there is no established method to directly measure upward seepage in the field, we investigated the possibility of inferring the seepage intensity by using measurable hydrological quantities such as ground and surface-water levels. To this end, we designed 16 representative plots of virtual hydrological situations, using known sets of geohydrological parameters. Then we applied the integrated soil-water-atmosphere-plant model SWAP to generate 'measured' time series of ground and surface-water levels for these plots. Finally, using the SCEM-UA optimisation algorithm, we calibrated parameters that affect seepage onto these time series. We analysed how the accuracy and uncertainty of calibrated seepage fluxes depend on the measurement interval of input data and on the accuracy and uncertainty of inferred local geohydrological parameters and boundary conditions. Our analysis shows that it is possible to make reliable estimates of seepage intensities from data provided by easy to place piezometers and water level gauges. For application on real datasets, the analysis gives insight into the limitations of both the approach and the data requirements. For example, data supplied every fortnight was found to be just as valuable for seepage estimation as modern high frequency measurements. When setting up a monitoring programme, our method can help to decide what and when to measure. Furthermore, our method can be used establish quantitative relationships between seepage and plant communities on an appropriate spatial scale.
机译:中等营养的湿润草地上有向上的新鲜碱性地下水渗入,以其丰富的物种而闻名。但是,由于缺乏适当空间尺度上的渗漏数据,因此在渗流与依赖渗流的植物群落的发生之间尚未建立定量关系。由于目前尚无直接测量向上渗漏的方法,因此我们研究了使用可测量的水文量(例如地下水和地表水位)来推断渗漏强度的可能性。为此,我们使用已知的水文参数集设计了16个虚拟水文情况的代表性图。然后,我们应用了集成的土壤-水-大气-植物模型SWAP来为这些样地生成“测量的”地下水和地表水平面的时间序列。最后,使用SCEM-UA优化算法,将影响渗流的参数校准到这些时间序列上。我们分析了校准渗流通量的准确性和不确定性如何取决于输入数据的测量间隔以及推断的当地地质水文参数和边界条件的准确性和不确定性。我们的分析表明,可以根据易于放置的压强计和水位计提供的数据对渗流强度进行可靠的估算。对于实际数据集的应用,分析可以洞悉方法和数据要求的局限性。例如,发现每两周提供的数据对于渗流估算与现代高频测量一样有价值。设置监控程序时,我们的方法可以帮助您确定要测量的内容和时间。此外,我们的方法可用于在适当的空间尺度上建立渗流与植物群落之间的定量关系。

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