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Analysis of aggregation and disaggregation effects for grid-based hydrological models and the development of improved precipitation disaggregation procedures for GCMs

机译:分析基于网格的水文模型的聚集和分解效果,并开发改进的GCM降水分解程序

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Appropriate representation of hydrological processes within atmospheric General Circulation Models (GCMs) is important with respect to internal model dynamics (e.g. surface feedback effects on atmospheric fluxes, continental runoff production) and to simulation of terrestrial impacts of climate change. However, at the scale of a GCM grid-square, several methodological problems arise. Spatial disaggregation of grid-square average climatological parameters is required in particular to produce appropriate point intensities from average precipitation. Conversely, aggregation of land surface heterogeneity is necessary for grid-scale or catchment scale application. The performance of grid-based hydrological models is evaluated for two large (104km2) UK catchments. Simple schemes, using sub-grid average of individual land use at 40 km scale and with no calibration, perform well at the annual time-scale and, with the addition of a (calibrated) routing component, at the daily and monthly time-scale. Decoupling of hillslope and channel routing does not necessarily improve performance or identifiability. Scale dependence is investigated through application of distribution functions for rainfall and soil moisture at 100 km scale. The results depend on climate, but show interdependence of the representation of sub-grid rainfall and soil moisture distribution. Rainfall distribution is analysed directly using radar rainfall data from the UK and the Arkansas Red River, USA. Among other properties, the scale dependence of spatial coverage upon radar pixel resolution and GCM grid-scale, as well as the serial correlation of coverages are investigated. This leads to a revised methodology for GCM application, as a simple extension of current procedures. A new location-based approach using an image processing technique is then presented, to allow for the preservation of the spatial memory of the process.
机译:在内部模型动力学(例如对大气通量,大陆径流产生的地表反馈效应)以及模拟气候变化对陆地的影响方面,在大气总循环模型(GCM)中适当地表示水文过程非常重要。但是,在GCM网格正方形的规模上,出现了一些方法上的问题。网格平方平均气候参数的空间分解尤其需要从平均降水中产生适当的点强度。相反,地表异质性的聚集对于网格规模或集水规模应用是必要的。在两个大型(10 4 km 2 )英国流域,评估了基于网格的水文模型的性能。简单的方案使用了40 km范围内的单个土地使用的子网格平均值,并且没有进行校准,因此在年度时间尺度上表现良好,并且在每日和每月的时间尺度上添加了(经过校准的)路由组件。斜坡和通道路径的解耦并不一定会改善性能或可识别性。通过应用降雨分布和土壤湿度在100 km尺度上的分布函数,研究了尺度依赖性。结果取决于气候,但显示了亚网格降雨的表示形式与土壤水分分布之间的相互依赖性。使用英国和美国阿肯色州红河的雷达降雨数据直接分析了降雨分布。除其他属性外,还研究了空间覆盖范围对雷达像素分辨率和GCM网格比例的比例依赖性,以及覆盖范围的序列相关性。这导致了对GCM应用程序的修订方法,作为当前程序的简单扩展。然后提出一种使用图像处理技术的基于位置的新方法,以允许保留该过程的空间内存。

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