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Quantification of uncertainties in snow accumulation, snowmelt, and snow disappearance dates.

机译:量化积雪,融雪和失雪日期的不确定性。

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摘要

Seasonal mountain snowpack holds hydrologic and ecologic significance worldwide. However, observation networks in complex terrain are typically sparse and provide minimal information about prevailing conditions. Snow patterns and processes in this data sparse environment can be characterized with numerical models and satellite-based remote sensing, and thus it is essential to understand their reliability. This research quantifies model and remote sensing uncertainties in snow accumulation, snowmelt, and snow disappearance as revealed through comparisons with unique ground-based measurements.;The relationship between snow accumulation uncertainty and model configuration is assessed through a controlled experiment at 154 snow pillow sites in the western United States. To simulate snow water equivalent (SWE), the National Weather Service SNOW-17 model is tested as (1) a traditional "forward" model based primarily on precipitation, (2) a reconstruction model based on total snowmelt before the snow disappearance date, and (3) a combination of (1) and (2). For peak SWE estimation, the reliability of the parent models was indistinguishable, while the combined model was most reliable. A sensitivity analysis demonstrated that the parent models had opposite sensitivities to temperature that tended to cancel in the combined model.;Uncertainty in model forcing and parameters significantly controlled model accuracy. Uncertainty in remotely sensed snow cover and snow disappearance in forested areas is enhanced by canopy obstruction but has been ill-quantified due to the lack of sub-canopy observations. To better quantify this uncertainty, dense networks of near-surface temperature sensors were installed at four study areas (≤ 1 km2) with varying forest cover in the Sierra Nevada, California. Snow presence at each sensor was detected during periods when temperature was damped, which resulted from snow cover insulation. This methodology was verified using time-lapse analysis and high resolution (15m) remote sensing, and then used to test daily 500 m canopy-adjusted MODIS snow cover data. Relative to the ground sensors, MODIS underestimated snow cover by 10-20% in meadows and 10-40% in forests, and showed snow disappearing 12 to 30 days too early in the forested sites. These errors were not detected with operational snow sensors, which have seen frequent use in MODIS validation studies.;The link between model forcing and snow model uncertainty is assessed in two studies using measurements at energy balance stations in different snow climates. First, representation of snow surface temperature (T s) with temperature and humidity is examined because Ts tracks variations in the snowmelt energy balance. At all sites analyzed, the dew point temperature (Td) represented Ts with lower bias than the dry and wet-bulb temperatures. The potential usefulness of this approximation was demonstrated in a case study where detection of model bias was achieved by comparing daily Tdand modeled Ts. Second, the impact of forcing data availability and empirical data estimation is addressed to understand which types of data most impact physically-based snow modeling and need improved representation. An experiment is conducted at four well-instrumented sites with a series of hypothetical weather stations to determine which measurements (beyond temperature and precipitation) most impact snow model behavior. Radiative forcings had the largest impact on model behavior, but these are typically the least often measured.
机译:季节性高山积雪在全球范围内具有重要的水文和生态意义。但是,复杂地形中的观测网络通常比较稀疏,几乎无法提供有关主要情况的信息。可以通过数值模型和基于卫星的遥感来表征这种数据稀疏环境中的积雪模式和过程,因此了解其可靠性至关重要。通过与独特的地面测量结果进行比较,本研究量化了积雪,融雪和积雪消失的模型和遥感不确定性;通过在154个雪枕位点进行的对照实验评估了积雪不确定性与模型配置之间的关系。美国西部。为了模拟雪水当量(SWE),我们对国家气象局SNOW-17模型进行了以下测试:(1)传统的基于降水的“前向”模型;(2)基于失雪日期之前的总融雪的重建模型, (3)(1)和(2)的组合。对于峰值SWE估计,父模型的可靠性无法区分,而组合模型最可靠。敏感性分析表明,父模型对温度的敏感性相反,在组合模型中往往会抵消。;模型强迫的不确定性和参数显着控制了模型的准确性。林冠的阻塞加剧了森林积雪的遥感不确定性和雪消失的不确定性,但由于缺乏亚树冠的观测,其不确定性得到了量化。为了更好地量化这种不确定性,在加利福尼亚内华达山脉的四个研究区域(≤1 km2)安装了密集的近地表温度传感器网络,森林覆盖率各不相同。在降温期间,每个传感器都检测到积雪,这是由于积雪的绝缘导致的。该方法已通过时移分析和高分辨率(15m)遥感进行了验证,然后用于测试每天500 m机盖调整后的MODIS雪盖数据。相对于地面传感器,MODIS低估了草甸的积雪10-20%和森林的积雪10-40%,并显示积雪在森林覆盖的区域过早消失12至30天。使用MODIS验证研究中经常使用的可操作降雪传感器无法检测到这些错误。在两个研究中,使用在不同降雪气候下的能量平衡站进行的测量,评估了模型强迫与降雪模型不确定性之间的联系。首先,检查了雪表面温度(T s)与温度和湿度的关系,因为Ts跟踪融雪能量平衡的变化。在所有被分析的位置,露点温度(Td)表示的Ts低于干球和湿球温度。在一个案例研究中证明了这种近似方法的潜在有用性,该案例研究通过比较每日Td和建模的Ts实现了模型偏差的检测。其次,解决了强制数据可用性和经验数据估计的影响,以了解哪种数据类型对基于物理的雪建模影响最大,并且需要改进表示形式。在四个仪器良好的地点进行了一个实验,并建立了一系列假设的气象站,以确定哪些测量值(温度和降水以外)对雪模型行为的影响最大。辐射强迫对模型行为的影响最大,但通常测量最少。

著录项

  • 作者

    Raleigh, Mark S.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Engineering Civil.;Hydrology.;Meteorology.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 206 p.
  • 总页数 206
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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