利用 GLOF 绘制可持续洪水灾害地图:谷歌地球引擎方法

Subhra Halder, Suddhasil Bose
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引用次数: 0

摘要

以锡金北部Teesta河流域Lhonak冰川湖近期发生的云暴降雨和冰湖溃决洪水(GLOF)为研究对象,评价了谷歌Earth Engine (GEE)在洪水及其灾后测绘中的应用效果。目标是利用GEE,结合Sentinel-1合成孔径雷达(SAR)数据和Landsat 9图像,进行精确的遥感分析、洪水测绘以及土地利用和土地覆盖(LULC)分类。该研究采用了GEE平台内的综合方法,包括Sentinel-1 SAR数据的采集和预处理,以创建洪水前和洪水后的图像。计算这些图像之间的差异,每隔五天生成洪水图,提供洪水范围的时间演变。此外,利用Landsat 9数据进行LULC制图,有助于了解洪水前的景观特征。结果和讨论表明,不同类型的土地利用价值均受到显著影响,其中秃岩、密中林、聚落和农用地受到显著影响。这项研究不仅增进了我们对全球灾害风险的了解,而且是为灾害管理战略提供信息的重要工具,强调了准确的危害评估的重要性和采取整体方法减轻此类事件的级联效应的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sustainable flood hazard mapping with GLOF: A Google Earth Engine approach
This study aims to evaluate the efficacy of Google Earth Engine (GEE) in mapping floods and their aftermath, focusing on the recent event caused by cloud burst rainfall and glacial lake outburst flood (GLOF) of Lhonak glacier lake in the Teesta River basin, North Sikkim. The objective is to utilize GEE, coupled with Sentinel-1 Synthetic Aperture Radar (SAR) data and Landsat 9 imagery, for precise remote sensing analysis, flood mapping, and Land Use and Land Cover (LULC) classification. The study employs a comprehensive methodology within the GEE platform, involving the acquisition and preprocessing of Sentinel-1 SAR data to create pre- and post-flood images. The difference between these images is calculated to generate flood maps at five-day intervals, providing a temporal evolution of the flood extent. Additionally, LULC mapping is conducted using Landsat 9 data, contributing to an understanding of pre-flood landscape characteristics. The results and discussion reveal significant impacts on various LULC types, with barren rocks, dense and medium forests, settlements, and agricultural lands experiencing notable effects. This research not only enhances our understanding of GLOFs but also serves as a critical tool for informing disaster management strategies, emphasizing the importance of accurate hazard assessment and the need for holistic approaches to mitigate the cascading effects of such events.
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