山区集水区雪深和雪水当量的时空分析:现场观测和统计建模的启示

IF 3.2 3区 地球科学 Q1 Environmental Science Hydrological Processes Pub Date : 2024-08-20 DOI:10.1002/hyp.15260
Tarık Çitgez, Remzi Eker, Abdurrahim Aydın
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引用次数: 0

摘要

这项研究在土耳其西部黑海地区阿班特湖附近的山区集水区进行,旨在调查 2019 年 12 月至 2020 年 3 月整个雪季雪深(SD)和雪水当量(SWE)的时空变化,包括积雪期和融雪期。共进行了 14 次积雪调查,覆盖了 58 个用雪杖标记的永久性积雪测量点(PSMP)。采用分类和回归树(CART)方法统计分析了它们与八个变量的关系:积雪期、林冠、长势、坡度、海拔、坡位、平面和剖面曲率。经测定,SD 和 SWE 的均方根误差(RMSE)分别为 0.15 米和 46 毫米。研究结果表明,与林下地区和开阔地区相比,林间空隙的平均 SD 值和 SWE 值更高。虽然林下地区的积雪最早消失,但与林间空隙和开阔地区相比,融化速度分别慢了 43% 和 17%。风的重新分布导致积雪在西侧、上坡位置和山脊最少,而积雪在南侧、山谷和下坡位置最多。海拔较高(1580 米)的积雪融化速度较快,导致积雪提前消失。位于坡度较低(15°)斜坡上的 PSMP 的积雪较少,积雪消失也较早。根据降雪量和气温的变化,CART 模型确定雪期是预测降雪量和降雪覆盖面积的最重要因素。其他重要变量包括林冠、地势和海拔。这项研究表明,CART 方法非常适合模拟复杂的积雪动态,为了解山区降雪量和降雪覆盖面积的时空变化提供了宝贵的信息。
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Spatio-temporal analysis of snow depth and snow water equivalent in a mountainous catchment: Insights from in-situ observations and statistical modelling

This research, conducted in the mountainous catchment near Abant Lake in the Western Black Sea region of Türkiye, aimed to investigate the spatiotemporal variations of snow depth (SD) and snow water equivalent (SWE) throughout the snow season from December 2019 to March 2020, encompassing both accumulation and melting periods. In total, 14 snow surveys were conducted, covering 58 permanent snow measurement points (PSMP) marked with snow poles. The classification and regression tree (CART) method was employed to statistically analyse their relationships with eight variables: snow period, forest canopy, aspect, slope, elevation, slope position, plan and profile curvature. The root mean square error (RMSE) for SD and SWE was determined to be 0.15 m and 46 mm, respectively. The study findings revealed that mean SD and SWE values were higher in forest gaps compared with under-forest and open areas. Although the snow cover disappeared earliest in under-forest areas, the melting rate was observed to be 43% and 17% slower compared with forest gaps and open areas, respectively. Wind redistribution resulted in minimum snow accumulation on western aspects, upper slope positions and ridges, while maximum accumulation was observed on southern aspects, valleys and lower slope positions. Higher elevations (>1580 meters) experienced faster snow melting rates, leading to earlier disappearance of snow cover. PSMPs located on slopes with lower degrees (<15°) exhibited lesser accumulation and earlier snow disappearance. The CART model identified the snow period as the most significant factor in predicting SD and SWE, based on variations in snowfall and air temperature. Other significant variables included forest canopy, aspect and elevation. The study suggests that the CART method is well-suited for modelling complex snow dynamics, providing valuable insights into spatiotemporal variations in SD and SWE in mountainous regions.

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来源期刊
Hydrological Processes
Hydrological Processes 环境科学-水资源
CiteScore
6.00
自引率
12.50%
发文量
313
审稿时长
2-4 weeks
期刊介绍: Hydrological Processes is an international journal that publishes original scientific papers advancing understanding of the mechanisms underlying the movement and storage of water in the environment, and the interaction of water with geological, biogeochemical, atmospheric and ecological systems. Not all papers related to water resources are appropriate for submission to this journal; rather we seek papers that clearly articulate the role(s) of hydrological processes.
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