利用谷歌地球引擎平台在圣达菲进行洪水监测

Diana Carolina Fonnegra Mora, Elisabet Walker, V. Venturini
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引用次数: 0

摘要

洪水给社会造成巨大损失。近几十年来,由于全球气候变化,这些事件在世界不同地区的频率一直在增加。在阿根廷,圣达菲市很容易受到两条主要河流的洪水的影响,即帕拉纳和萨拉多-朱拉曼托河。因此,本文旨在开发圣达菲大都市区的在线监测系统,以提高对水风险的响应。为此目的,这里使用了卫星信息和谷歌地球引擎(GEE)平台上提供的编程接口。利用归一化植被指数(NDVI)、水分比指数(WRI)、修正归一化差异水分指数(MNDWI)和哨兵1号雷达信号阈值技术对水分过剩进行监测。分析了2016-2021年期间(包括2016年帕拉纳河洪水)指标的时空行为,以确定所研究指标的监测能力。结果表明,所提出的一套光学指标和哨兵1号雷达信号的阈值可以近实时地监测圣达菲市影响区域内洪涝区的演变。
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Flood monitoring in Santa Fe using the Google Earth Engine platform
Floods cause large losses for society. The frequency of these events has been increasing in recent decades in different regions of the world as a consequence of the global climate change. In Argentina, Santa Fe city is vulnerable to the flooding of two major rivers, i.e. the Paraná and the Salado-Juramento. For this reason, this paper aims to develop an online monitoring system for the metropolitan area of Santa Fe, in order to improve the response to a water risk. For this purpose, satellite information and the programming interface available on the Google Earth Engine (GEE) platform, were used here. The following indicators were evaluated to monitoring water excess: the normalized difference vegetation index (NDVI), the water ratio index (WRI), the modified normalized difference water index (MNDWI) and the radar signal thresholding technique of the Sentinel 1 mission. The spatial-temporal behaviour of the indicators was analysed for the period 2016-2021, including the 2016 Paraná River flood, to determine the monitoring capacity of the indicators studied. The results presented suggest that the proposed set of optical indices and the thresholding of the Sentinel 1 radar signal allow monitoring the evolution of flooded zones in the area of influence of the city of Santa Fe in near-real time.
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