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首页> 外文期刊>Journal of hydrometeorology >Measuring Changes in Snowpack SWE Continuously on a Landscape Scale Using Lake Water Pressure
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Measuring Changes in Snowpack SWE Continuously on a Landscape Scale Using Lake Water Pressure

机译:使用湖水压力,在景观量表上不断测量雪橇大赦的变化

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The seasonal snowpack is a globally important water resource that is notoriously difficult to measure. Existing instruments make measurements of falling or accumulating snow water equivalent (SWE) that are susceptible to bias, and most represent only a point in the landscape. Furthermore, the global array of SWE sensors is too sparse and too poorly distributed adequately to constrain snow in weather and climate models. We present a new approach to monitoring snowpack SWE from time series of lake water pressure. We tested our method in the lowland Finnish Arctic and in an alpine valley and high-mountain cirque in Switzerland and found that we could measure changes in SWE and their uncertainty through snowfalls with little bias and with an uncertainty comparable to or better than that achievable by other instruments. More importantly, our method inherently senses change over the whole lake surface, an area in this study up to 10.95 km(2), or 274 million times larger than the nearest pluviometer. This large scale makes our measurements directly comparable to the grid cells of weather and climate models. We find, for example, snowfall biases of up to 100% in operational forecast models AROME-Arctic and COSMO-1. Seasonally frozen lakes are widely distributed at high latitudes and are particularly common in mountain ranges, hence our new method is particularly well suited to the widespread, autonomous monitoring of snow-water resources in remote areas that are largely unmonitored today. This is potentially transformative in reducing uncertainty in regional precipitation and runoff in seasonally cold climates.
机译:季节性积雪是全球重要的水资源,众所周知难以测量。现有的仪器对易受偏差影响的下降或积累的雪水当量(SWE)进行测量,大多数仪器仅代表景观中的一个点。此外,SWE传感器的全球阵列太稀疏,分布也太差,无法在天气和气候模型中充分限制降雪。我们提出了一种从湖水压力时间序列监测积雪SWE的新方法。我们在芬兰的北极低地和瑞士的阿尔卑斯山谷和高山冰斗中测试了我们的方法,发现我们可以通过降雪测量SWE的变化及其不确定性,且偏差很小,不确定性可与其他仪器相比或更好。更重要的是,我们的方法固有地感知整个湖泊表面的变化,在本研究中,该区域高达10.95公里(2),或比最近的雨量计大2.74亿倍。如此大的比例尺使我们的测量与天气和气候模型的网格单元直接可比。例如,我们发现Arom Arctic和COSMO-1运营预测模型中的降雪偏差高达100%。季节性冰冻湖泊广泛分布在高纬度地区,在山脉中尤为常见,因此我们的新方法特别适合于在今天基本不受监控的偏远地区对雪水资源进行广泛、自主的监测。这在减少季节性寒冷气候下区域降水和径流的不确定性方面具有潜在的变革性。

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