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ENSO- and Rainfall-Sensitive Vegetation Regions in Indonesia as Identified from Multi-Sensor Remote Sensing Data

机译:根据多传感器遥感数据识别的印度尼西亚的enso-和降雨敏感植被区

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摘要

Ongoing global warming has triggered extreme climate events of increasing magnitude and frequency. Under this effect, a series of extreme climate events such as drought and increased rainfall during the El Nino Southern Oscillation (ENSO) are expected to be amplified in the coming years. Adequate mapping of regions with climate-sensitive vegetation and its associated time lag is required for appropriate mitigation planning to avoid potential negative ecological impacts towards vegetation. In this study, ENSO and climate indicator time series data, for example, Multivariate ENSO Index (MEI) and Climate Hazards Group InfraRed Precipitation with Stations (CHIRPS) data for rainfall were linked with long-term time series vegetation proxies from remote sensing (RS proxies). ENSO- and rainfall-sensitive areas were identified from each RS proxy using the bivariate Granger test, and the areas identified by multiple RS proxies were taken to identify climate-sensitive regions in Indonesia. Of the biome types in Indonesia, savanna was the most sensitive, with approximately 53% of the total savanna area in Indonesia shown to be sensitive to ENSO and rainfall by two or more RS proxies. Rolling correlation analysis also found that the ENSO effect on the vegetation region after rainfall was positively correlated with the RS proxies with a time lag of +5 months. Therefore, rainfall can be taken as a proxy of the effects of ENSO on the temporal dynamics of sensitive vegetation regions in Indonesia.
机译:正在进行的全球变暖引发了幅度和频率的极端气候事件。在这种效果下,预计未来几年在El Nino Southern振荡(ENSO)期间的一系列极端气候事件如干旱和降雨量增加。适当的缓解计划需要充分的气候敏感植被及其相关时间滞后的地区的足够映射,以避免对植被的潜在负面生态影响。在本研究中,ENSO和气候指示器时间序列数据(例如,与远程感测的长期时间序列植被代理有关的多变量ENSO指数(MEI)和气候危险组红外降水量(Chirps)与降雨数据(RS代理)。使用双变量格子测试从每个RS代理中识别出浓密的区域,并采取多个RS代理识别的区域来识别印度尼西亚的气候敏感区域。在印度尼西亚的生物群系类型中,大草原是最敏感的,大约53%的印度尼西亚总粮草区展示对ENSO和降雨量的两个或更多RS代理敏感。滚动相关分析还发现,降雨后对植被区域的enso影响与+ 5个月的时间滞后的RS代理呈正相关。因此,降雨可以作为enso对印度尼西亚敏感植被区的时间动态的影响。

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