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首页> 外文期刊>Advances in Water Resources >Assessing The Impact Of Land Use Change On Hydrologyby Ensemble Modelling (luchem) Ⅳ: Model Sensitivity To Data Aggregation And Spatial (re-)distribution
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Assessing The Impact Of Land Use Change On Hydrologyby Ensemble Modelling (luchem) Ⅳ: Model Sensitivity To Data Aggregation And Spatial (re-)distribution

机译:通过集成模型(luchem)评估土地利用变化对水文学的影响Ⅳ:模型对数据聚合和空间(重新)分布的敏感性

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This paper analyses the effect of spatial resolution and distribution of model input data on the results of regional-scale land use scenarios using three different hydrological catchment models. A 25 m resolution data set of a mesoscale catchment and three land use scenarios are used. Data are systematically aggregated to resolutions up to 2 km. Land use scenarios are spatially redistributed, both randomly and topography based. Using these data, water fluxes are calculated on a daily time step for a 16 year time period without further calibration. Simulation results are used to identify grid size, distribution and model dependent scenario effects. In the case of data aggregation, all applied models react sensitively to grid size. WASIM and TOPLATS simulate constant water balances for grid sizes from 50 m to 300-500 m, SWAT is more sensitive to input data aggregation, simulating constant water balances between 50 m and 200 m grid size. The calculation of scenario effects is less robust to data aggregation. The maximum acceptable grid size reduces to 200-300 m for TOPLATS and WASIM. In case of spatial distribution, SWAT and TOPLATS are slightly sensitive to a redistribution of land use (below 1.5% for water balance terms), whereas WASIM shows almost no reaction. Because the aggregation effects were stronger than the redistribution effects, it is concluded that spatial discretisation is more important than spatial distribution. As the aggregation effect was mainly associated with a change in land use fraction, it is concluded that accuracy of data sets is much more important than a high spatial resolution.
机译:本文使用三种不同的水文集水模型分析了空间分辨率和模型输入数据的分布对区域​​规模土地利用情景结果的影响。使用中尺度流域的25 m分辨率数据集和三种土地利用情景。系统会将数据汇总到最高分辨率为2 km。土地使用场景是在空间上重新分布的,既基于随机分布又基于地形。使用这些数据,可以在16年时间段的每天时间步长上计算水通量,而无需进一步校准。仿真结果用于识别网格大小,分布和模型相关的方案效果。在数据聚合的情况下,所有应用的模型都对网格大小敏感地做出反应。 WASIM和TOPLATS在50 m至300-500 m的网格范围内模拟恒定的水平衡,而SWAT对输入数据聚合更为敏感,在50 m至200 m的网格范围内模拟恒定的水平衡。方案效果的计算对数据聚合的鲁棒性较差。 TOPLATS和WASIM的最大可接受网格尺寸减小到200-300 m。在空间分布的情况下,SWAT和TOPLATS对土地使用的重新分配较为敏感(水平衡条款低于1.5%),而WASIM几乎没有反应。由于聚集效应比重新分布效应更强,因此可以得出结论,空间离散比空间分布更重要。由于聚集效应主要与土地利用比例的变化有关,因此可以得出结论,数据集的准确性比高空间分辨率更为重要。

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