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Obtaining sub-daily new snow density from automated measurements in high mountain regions

机译:通过高山地区的自动测量获得次日的新雪密度

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The density of new snow is operationally monitored by meteorological or hydrological services at daily time intervals, or occasionally measured in local field studies. However, meteorological conditions and thus settling of the freshly deposited snow rapidly alter the new snow density until measurement. Physically based snow models and nowcasting applications make use of hourly weather data to determine the water equivalent of the snowfall and snow depth. In previous studies, a number of empirical parameterizations were developed to approximate the new snow density by meteorological parameters. These parameterizations are largely based on new snow measurements derived from local in situ measurements. In this study a data set of automated snow measurements at four stations located in the European Alps is analysed for several winter seasons. Hourly new snow densities are calculated from the height of new snow and the water equivalent of snowfall. Considering the settling of the new snow and the old snowpack, the average hourly new snow density is 68?kg?msup?3/sup, with a standard deviation of 9?kg?msup?3/sup. Seven existing parameterizations for estimating new snow densities were tested against these data, and most calculations overestimate the hourly automated measurements. Two of the tested parameterizations were capable of simulating low new snow densities observed at sheltered inner-alpine stations. The observed variability in new snow density from the automated measurements could not be described with satisfactory statistical significance by any of the investigated parameterizations. Applying simple linear regressions between new snow density and wet bulb temperature based on the measurements' data resulted in significant relationships (rsup2/sup??0.5 and p ≤ 0.05) for single periods at individual stations only. Higher new snow density was calculated for the highest elevated and most wind-exposed station location. Whereas snow measurements using ultrasonic devices and snow pillows are appropriate for calculating station mean new snow densities, we recommend instruments with higher accuracy e.g. optical devices for more reliable investigations of the variability of new snow densities at sub-daily intervals.
机译:每天由气象或水文部门对新雪的密度进行操作性监测,或偶尔在当地野外研究中进行测量。然而,气象条件以及因此新沉积的雪的沉降迅速改变了新的雪密度,直到进行测量。基于物理的降雪模型和临近预报应用程序利用每小时的天气数据来确定降雪量和降雪深度的水当量。在先前的研究中,已开发了许多经验参数化方法,以通过气象参数来估算新的积雪密度。这些参数化很大程度上基于从本地原位测量得出的新降雪测量。在这项研究中,分析了几个欧洲冬季位于欧洲阿尔卑斯山四个站点的自动降雪数据集。每小时的新雪密度是根据新雪的高度和降雪的水当量来计算的。考虑到新雪和旧雪堆的沉降,平均每小时新雪密度为68?kg?m ?3 ,标准偏差为9?kg?m ?3 < / sup>。针对这些数据测试了七个用于估计新雪密度的现有参数设置,并且大多数计算都高估了每小时的自动测量值。测试的两个参数设置能够模拟在有遮盖的内部高山站观测到的低新雪密度。通过任何调查的参数设置,都无法以令人满意的统计意义描述从自动测量中观测到的新雪密度的变化。根据测量数据在新雪密度和湿球温度之间进行简单的线性回归,得出的结果仅在单个站点的单个时段具有显着的关系(r 2 ?>?0.5和p≤0.05)。对于最高的高架和受风最大的站点,计算出了更高的新雪密度。尽管使用超声波设备和雪枕进行降雪测量适合计算站点平均新雪密度,但我们建议使用精度更高的仪器,例如光学设备,可以更可靠地研究次日间隔内新雪密度的变化。

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