{"title":"SatVITS‐Flood:超干旱地区的卫星植被指数时间序列洪水探测模型","authors":"Omer Burstein, T. Grodek, Y. Enzel, D. Helman","doi":"10.1029/2023WR035164","DOIUrl":null,"url":null,"abstract":"We present the satellite vegetation index time series model for detecting historical floods in ungauged hyperarid regions (SatVITS‐Flood). SatVITS‐Flood is based on observations that floods are the primary cause of local vegetation expansion in hyperarid regions. To detect such expansion, we used two time‐series metrics: (a) trend change detection from the Breaks For Additive Season and Trend and (b) a newly developed seasonal change metric based on Temporal Fourier Analysis (TFA) and the growing‐season integral anomaly (TFA‐GSIanom). The two metrics complement each other by capturing changes in perennial plant species following extreme, rare floods and ephemeral vegetation changes following more frequent floods. Metrics were derived from the time series of the normalized difference vegetation index, the modified soil‐adjusted vegetation index, and the normalized difference water index, acquired from MODIS, Landsat, and Advanced Very High‐Resolution Radiometer. The timing of the change was compared with the date of the flood and the magnitude of change with its volume and duration. We tested SatVITS‐Flood in three regions on different continents with 40‐year‐long, systematic, reliable gauge data. Our results indicate that SatVITS‐Flood can predict flood occurrence with an accuracy of 78% and precision of 67% (Recall = 0.69 and F1 = 0.68; p < 0.01), and the flood volume and duration with NSE of 0.79 (RMSE = 15.4 × 106 m3 event−1), and R2 of 0.69 (RMSE = 5.7 days), respectively. SatVITS‐Flood proved useful for detecting historical floods and may provide valuable long‐term hydrological information in poorly documented areas, which can help understand the impacts of climate change on the hydrology of hyperarid regions.","PeriodicalId":23799,"journal":{"name":"Water Resources Research","volume":" ","pages":""},"PeriodicalIF":4.6000,"publicationDate":"2023-08-30","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"SatVITS‐Flood: Satellite Vegetation Index Time Series Flood Detection Model for Hyperarid Regions\",\"authors\":\"Omer Burstein, T. Grodek, Y. Enzel, D. Helman\",\"doi\":\"10.1029/2023WR035164\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"We present the satellite vegetation index time series model for detecting historical floods in ungauged hyperarid regions (SatVITS‐Flood). 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引用次数: 0
摘要
我们提出了卫星植被指数时间序列模型,用于检测未接种疫苗的超干旱地区的历史洪水(SatVITS‐Flood)。SatVITS‐洪水是基于洪水是超干旱地区当地植被扩张的主要原因的观测结果。为了检测这种扩展,我们使用了两个时间序列度量:(a)从加性季节和趋势的中断中检测趋势变化,以及(b)基于时间傅立叶分析(TFA)和生长季节积分异常(TFA-GSIanom)的新开发的季节变化度量。这两个指标通过捕捉极端罕见洪水后多年生植物物种的变化和更频繁洪水后短暂植被的变化来相互补充。从MODIS、Landsat和Advanced Very High Resolution Radiometer获得的归一化差异植被指数、改良土壤调整植被指数和归一化差异水分指数的时间序列中得出指标。将变化的时间与洪水发生的日期进行了比较,并将变化的幅度与洪水的水量和持续时间进行了比较。我们用40年的系统可靠的测量数据在不同大陆的三个地区测试了SatVITS洪水。我们的结果表明,SatVITS‐Flood可以预测洪水发生的准确率为78%,准确率为67%(Recall=0.69和F1=0.68;p<0.01),NSE的洪水量和持续时间分别为0.79(RMSE=15.4×106 m3事件−1)和0.69(RMSE=5.7天)。SatVITS‐Flood被证明可用于探测历史洪水,并可能在记录不足的地区提供有价值的长期水文信息,这有助于了解气候变化对超干旱地区水文的影响。
SatVITS‐Flood: Satellite Vegetation Index Time Series Flood Detection Model for Hyperarid Regions
We present the satellite vegetation index time series model for detecting historical floods in ungauged hyperarid regions (SatVITS‐Flood). SatVITS‐Flood is based on observations that floods are the primary cause of local vegetation expansion in hyperarid regions. To detect such expansion, we used two time‐series metrics: (a) trend change detection from the Breaks For Additive Season and Trend and (b) a newly developed seasonal change metric based on Temporal Fourier Analysis (TFA) and the growing‐season integral anomaly (TFA‐GSIanom). The two metrics complement each other by capturing changes in perennial plant species following extreme, rare floods and ephemeral vegetation changes following more frequent floods. Metrics were derived from the time series of the normalized difference vegetation index, the modified soil‐adjusted vegetation index, and the normalized difference water index, acquired from MODIS, Landsat, and Advanced Very High‐Resolution Radiometer. The timing of the change was compared with the date of the flood and the magnitude of change with its volume and duration. We tested SatVITS‐Flood in three regions on different continents with 40‐year‐long, systematic, reliable gauge data. Our results indicate that SatVITS‐Flood can predict flood occurrence with an accuracy of 78% and precision of 67% (Recall = 0.69 and F1 = 0.68; p < 0.01), and the flood volume and duration with NSE of 0.79 (RMSE = 15.4 × 106 m3 event−1), and R2 of 0.69 (RMSE = 5.7 days), respectively. SatVITS‐Flood proved useful for detecting historical floods and may provide valuable long‐term hydrological information in poorly documented areas, which can help understand the impacts of climate change on the hydrology of hyperarid regions.
期刊介绍:
Water Resources Research (WRR) is an interdisciplinary journal that focuses on hydrology and water resources. It publishes original research in the natural and social sciences of water. It emphasizes the role of water in the Earth system, including physical, chemical, biological, and ecological processes in water resources research and management, including social, policy, and public health implications. It encompasses observational, experimental, theoretical, analytical, numerical, and data-driven approaches that advance the science of water and its management. Submissions are evaluated for their novelty, accuracy, significance, and broader implications of the findings.