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Impact of rainfall anomalies on Fourier parameters of NDVI time series of northwestern Argentina

机译:降雨异常对西北阿根廷NDVI时间序列傅里叶参数的影响

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This paper describes a method to detect the impact of rainfall anomalies on vegetation phenology, in terms of timing (phase) and greenness, by using Fourier series to fit a time series of Normalized Difference Vegetation Index (NDVI) observations. The study was conducted in the northern semiarid region of Argentina, where rainfall is the driving factor of vegetation phenology. A 9-year time series of monthly NDVI Global Area Coverage (GAC) images, obtained with the National Oceanic and Atmospheric Administration (NOAA) Advanced Very High Resolution Radiometer (AVHRR), was split into nine series of 12-monthly images, each corresponding to a yearly growth cycle. A Fast Fourier Transform (FFT) algorithm was applied to each cycle, and derived parameters were analysed according to rainfall anomalies for irrigated and rainfed crops, grasslands and native forest. Derived Fourier parameters were: mean NDVI, amplitude and phase. Both negative and positive rainfall anomalies had a significant impact on the Fourier parameters. Amplitude and phase were the most sensitive parameters. Droughts modified the monomodal structure of the yearly cycle by decreasing the contribution of the 12-month periodic component and increasing the contribution of the 6-month component. The impact of drought on the Fourier parameters was highest for rainfed crops. Yearly values of Fourier parameters for grasslands and native forest were affected by prevailing hydrological conditions over the previous year.
机译:本文描述了一种方法,该方法通过使用傅立叶级数拟合标准差植被指数(NDVI)观测值的时间序列,从时间(相位)和绿色度方面检测降雨异常对植被物候的影响。这项研究是在阿根廷北部半干旱地区进行的,那里的降雨是植被物候的驱动因素。使用国家海洋和大气管理局(NOAA)的超高分辨率高分辨率辐射计(AVHRR)获得的NDVI全球区域覆盖(GAC)月度图像的9年时间序列,分为9个系列,每12个月一次,每个图像对应到每年的增长周期。将快速傅立叶变换(FFT)算法应用于每个循环,并根据降雨异常对灌溉和雨养作物,草原和原生林进行分析。推导的傅立叶参数为:平均NDVI,幅度和相位。降雨的正负异常都对傅立叶参数产生重大影响。振幅和相位是最敏感的参数。干旱通过减少12个月周期成分的贡献并增加6个月成分的贡献来修改年度周期的单峰结构。干旱对雨养作物的傅立叶参数影响最大。上一年的主要水文条件影响了草原和原生林的傅立叶参数的年度值。

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