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A comparative study of multiple approaches to soil hydraulic parameter scaling applied at the hillslope scale

机译:坡面尺度土壤水力参数定标的多种方法比较研究

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摘要

Soil hydraulic parameters were upscaled from a 30 m resolution to a 1 km resolution using four different aggregation schemes across the Little Washita watershed in Oklahoma. A topography-based aggregation scheme, a simple homogenization method, a Markov chain Monte Carlo (MCMC)-based stochastic technique, and a Bayesian neural network (BNN) approach to the upscaling problem were analyzed in this study. The equivalence of the upscaled parameters was tested by simulating water flow for the watershed pixels in HYDRUS-3-D, and comparing the resultant soil moisture states with data from the electronically scanned thin array radiometer (ESTAR) airborne sensor during the SGP97 hydrology experiment. The watershed was divided into pixels of 1 km resolution and the effective soil hydraulic parameters obtained for each pixel. The domains were then simulated using the physics-based HYDRUS-3-D platform. Simulated soil moisture states were compared across scales, and the coarse scale values compared against the ESTAR soil moisture data products during the SGP97 hydrology experiment period. Results show considerable correlations between simulated and observed soil moisture states across time, topographic variations, location, elevation, and land cover for techniques that incorporate topographic information in their routines. Results show that the inclusion of topography in the hydraulic parameter scaling algorithm accounts for much of the variability. The topography-based scaling algorithm, followed by the BNN technique, were able to capture much of the variation in soil hydraulic parameters required to generate equivalent soil moisture states in a coarsened domain. The homogenization and MCMC methods, which did not account for topographic variations, performed poorly in providing effective soil hydraulic parameters at the coarse scale.
机译:使用俄克拉荷马州Little Washita流域的四种不同的聚合方案,将土壤水力参数从30 m分辨率提升到1 km分辨率。本研究分析了基于地形的聚合方案,简单的均化方法,基于马尔可夫链蒙特卡洛(MCMC)的随机技术以及贝叶斯神经网络(BNN)方法来解决放大问题。通过模拟HYDRUS-3-D中分水岭像素的水流,并在SGP97水文学实验期间将所得土壤湿度状态与电子扫描薄阵列辐射计(ESTAR)机载传感器的数据进行比较,测试了上等参数的等效性。分水岭被划分为1 km分辨率的像素,并为每个像素获得有效的土壤水力参数。然后使用基于物理学的HYDRUS-3-D平台对域进行仿真。在SGP97水文学实验期间,将模拟的土壤水分状态在各个尺度上进行了比较,并将粗尺度值与ESTAR土壤湿度数据产品进行了比较。结果表明,对于将地形信息纳入常规的技术,模拟和观察到的土壤湿度状态随时间,地形变化,位置,海拔和土地覆盖率之间存在相当大的相关性。结果表明,在水力参数缩放算法中包括地形是造成很大变化的原因。基于地形的缩放算法,再加上BNN技术,能够捕获在粗化域中生成等效土壤水分状态所需的土壤水力参数的大部分变化。不能解释地形变化的均质化和MCMC方法在提供有效的粗尺度土壤水力参数方面表现不佳。

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  • 来源
    《Water resources research》 |2012年第2期|p.W02520.1-W02520.16|共16页
  • 作者单位

    Department of Biological and Agricultural Engineering, MS 2117, Texas A&M University, College Station, TX77843, USA;

    Department of Biological and Agricultural Engineering, MS 2117, Texas A&M University, College Station, TX77843, USA;

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