高原积雪观测系统的操作和实验:2017-2020年数据

M. Warscher, T. Marke, U. Strasser
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引用次数: 1

摘要

摘要根据ESSD的实时数据过程,本出版物介绍了Rofental几个研究站点(1891-3772 m a.s.l)的综合水文气象和冰川学数据集的扩展。(Ötztal阿尔卑斯山,奥地利)。虽然原始数据集已于2018年以第一个原始版本发布(https://doi.org/10.5194/essd-10-151-2018),但这里展示的新时间序列来自2017年至2020年收集的气象和雪水记录。一些数据集代表现有地点时间序列的延续,其他数据集来自补充研究集水区科学监测基础设施的新装置。主要的扩建部分是一个设备齐全的自动天气和积雪监测站,以及大量的额外设施,以便持续观测积雪特性。安装在三个高山地区的集水区,这些包括自动测量雪深,雪水当量,体积固体和液态水含量,雪密度,分层雪温度剖面和雪表面温度。一个观测站通过特别安排两个雪深和水当量记录装置来扩展,以观察和量化风驱动的雪再分布。它们被安装在附近迎风和避风的地方,并辅以一个基于声学的雪漂传感器。这些数据集代表了一个独特的高海拔山区积雪和气象观测的时间序列。本文介绍了三年来三个气象站的温度、降水、湿度、风速和辐射通量数据。通过对气象和积雪资料的综合分析,探讨了连续积雪测量方法,以显示典型的季节性积雪特征。通过2019年12月在该站附近发生悲惨雪崩事故时测量的风速、雪漂率和重新分配的雪量的例子,证明了雪漂观测的潜力。所有新的数据集都根据知识共享署名许可协议,通过PANGAEA知识库(https://www.pangaea.de/?q=%40ref104365)提供给科学界。
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Operational and experimental snow observation systems in the upper Rofental: data from 2017–2020
Abstract. According to the living data process in ESSD, this publication presents extensions of a comprehensive hydrometeorological and glaciological data set for several research sites in the Rofental (1891–3772 m a.s.l., Ötztal Alps, Austria). Whereas the original dataset has been published in a first original version in 2018 (https://doi.org/10.5194/essd-10-151-2018), the new time series presented here originate from meteorological and snow-hydrological recordings that have been collected from 2017 to 2020. Some data sets represent continuations of time series at existing locations, others come from new installations complementing the scientific monitoring infrastructure in the research catchment. Main extensions are a fully equipped automatic weather and snow monitoring station, as well as extensive additional installations to enable continuous observation of snow cover properties. Installed at three high Alpine locations in the catchment, these include automatic measurements of snow depth, snow water equivalent, volumetric solid and liquid water content, snow density, layered snow temperature profiles, and snow surface temperature. One station is extended by a particular arrangement of two snow depth and water equivalent recording devices to observe and quantify wind-driven snow redistribution. They are installed at nearby wind-exposed and sheltered locations and are complemented by an acoustic-based snow drift sensor. The data sets represent a unique time series of high-altitude mountain snow and meteorology observations. We present three years of data for temperature, precipitation, humidity, wind speed, and radiation fluxes from three meteorological stations. The continuous snow measurements are explored by combined analyses of meteorological and snow data to show typical seasonal snow cover characteristics. The potential of the snow drift observations are demonstrated with examples of measured wind speeds, snow drift rates and redistributed snow amounts in December 2019 when a tragic avalanche accident occurred in the vicinity of the station. All new data sets are provided to the scientific community according to the Creative Commons Attribution License by means of the PANGAEA repository (https://www.pangaea.de/?q=%40ref104365).
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