Characterization and retrieval of snow grain size in the Bhilangana region of the Upper Himalayas using hyperspectral PRISMA data

IF 2.3 Q2 REMOTE SENSING
Manish Rawat, Ashish Pandey, Dhananjay Paswan Das, Praveen Kumar Gupta
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引用次数: 0

Abstract

Rapid urbanization processes have significantly increased freshwater consumption, prompting the need for precise predictions of snowmelt-derived streamflow in glacierized Himalayan basins, which are highly susceptible to climate change. However, understanding snow characteristics, such as snow cover and snow grain size, remains a challenge due to inaccessibility of these terrains and the limitations of in-situ data collection. Hyperspectral remote sensing datasets offer a promising solution for monitoring and retrieving snow properties at both micro and macro levels. In this study, the PRISMA hyperspectral dataset was employed to estimate snow grain sizes in the Bhilangana basin of the Upper Himalayan region through the Spectral Angle Mapper (SAM) and Snow Grain Size Index (SGSI) methods. The SGSI approach uses visible and near-infrared wavelengths to classify snow grains, while the SAM method applies endmember spectral signatures validated against the USGS spectral library. The results shows that both SGSI and SAM effectively classified snow grains into fine (< 0.5 mm), medium (0.5–1.0 mm), and coarse (1.0–2.0 mm) categories, achieving a classification accuracy of approximately 88%. The SGSI method utilized the bi-spectral reflectance ratio of PRISMA bands 6 (441.63 nm) and 69 (1028.79 nm) to classify snow grains with spatial variability. The outcomes of the study disclose the competency of PRISMA data for spatial representation of snow grain size variability. The spatial analysis shows that fine and medium grain sizes dominate the snowpack, particularly during the seasonal accumulation observed in February. The findings indicate that fine-grained snow distribution at higher altitudes is crucial for assessing avalanche risks assessment and predicting snowmelt timing. This research demonstrates PRISMA data’s effectiveness in detailed snow grain size mapping, offering valuable insights for applications in climatology, hydrology, and mountain hazard management. Enhanced snow grain size mapping contributes to improved avalanche forecasting and resource planning, ultimately supporting the safety and resilience of the Himalayan mountain regions.

Abstract Image

Abstract Image

基于PRISMA高光谱数据的喜马拉雅高原比兰加纳地区积雪粒度特征与反演
快速的城市化进程大大增加了淡水消耗,促使人们需要对喜马拉雅冰川盆地的融雪径流进行精确预测,这些盆地极易受到气候变化的影响。然而,由于这些地形难以接近和原位数据收集的限制,了解积雪特征(如积雪和雪粒度)仍然是一个挑战。高光谱遥感数据集为监测和检索微观和宏观层面的积雪特性提供了一个有前途的解决方案。利用PRISMA高光谱数据集,通过光谱角映射器(Spectral Angle Mapper, SAM)和雪粒度指数(snow grain Size Index, SGSI)方法对喜马拉雅上喜马拉雅地区比兰加纳盆地的雪粒度进行估算。SGSI方法使用可见光和近红外波长对雪粒进行分类,而SAM方法使用USGS光谱库验证的端元光谱特征。结果表明,SGSI和SAM都能有效地将雪粒分为细(0.5 mm)、中(0.5 - 1.0 mm)和粗(1.0-2.0 mm)三类,分类准确率约为88%。SGSI方法利用PRISMA波段6 (441.63 nm)和69 (1028.79 nm)的双光谱反射率对具有空间变异性的雪粒进行分类。研究结果揭示了PRISMA数据对雪粒度变异性空间表征的能力。空间分析表明,在2月份的季节积累中,以细、中粒级积雪为主。研究结果表明,高海拔地区的细粒度积雪分布对评估雪崩风险和预测融雪时间至关重要。该研究证明了PRISMA数据在详细雪粒度制图中的有效性,为气候学、水文学和山地灾害管理的应用提供了有价值的见解。增强的雪粒度测绘有助于改进雪崩预测和资源规划,最终支持喜马拉雅山区的安全和恢复能力。
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来源期刊
Applied Geomatics
Applied Geomatics REMOTE SENSING-
CiteScore
5.40
自引率
3.70%
发文量
61
期刊介绍: Applied Geomatics (AGMJ) is the official journal of SIFET the Italian Society of Photogrammetry and Topography and covers all aspects and information on scientific and technical advances in the geomatics sciences. The Journal publishes innovative contributions in geomatics applications ranging from the integration of instruments, methodologies and technologies and their use in the environmental sciences, engineering and other natural sciences. The areas of interest include many research fields such as: remote sensing, close range and videometric photogrammetry, image analysis, digital mapping, land and geographic information systems, geographic information science, integrated geodesy, spatial data analysis, heritage recording; network adjustment and numerical processes. Furthermore, Applied Geomatics is open to articles from all areas of deformation measurements and analysis, structural engineering, mechanical engineering and all trends in earth and planetary survey science and space technology. The Journal also contains notices of conferences and international workshops, industry news, and information on new products. It provides a useful forum for professional and academic scientists involved in geomatics science and technology. Information on Open Research Funding and Support may be found here: https://www.springernature.com/gp/open-research/institutional-agreements
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