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Long-term Satellite NDVI Data Sets: Evaluating Their Ability to Detect Ecosystem Functional Changes in South America

机译:长期卫星NDVI数据集:评估其检测南美生态系统功能变化的能力

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In the last decades, South American ecosystems underwent important functional modifications due to climate alterations and direct human intervention on land use and land cover. Among remotely sensed data sets, NOAA-AVHRR “Normalized Difference Vegetation Index” (NDVI) represents one of the most powerful tools to evaluate these changes thanks to their extended temporal coverage. In this paper we explored the possibilities and limitations of three commonly used NOAA-AVHRR NDVI series (PAL, GIMMS and FASIR) to detect ecosystem functional changes in the South American continent. We performed pixel-based linear regressions for four NDVI variables (average annual, maximum annual, minimum annual and intra-annual coefficient of variation) for the 1982-1999 period and (1) analyzed the convergences and divergences of significant multi-annual trends identified across all series, (2) explored the degree of aggregation of the trends using the O-ring statistic, and (3) evaluated observed trends using independent information on ecosystem functional changes in five focal regions. Several differences arose in terms of the patterns of change (the sign, localization and total number of pixels with changes). FASIR presented the highest proportion of changing pixels (32.7%) and GIMMS the lowest (16.2%). PAL and FASIR data sets showed the highest agreement, with a convergence of detected trends on 71.2% of the pixels. Even though positive and negative changes showed substantial spatial aggregation, important differences in the scale of aggregation emerged among the series, with GIMMS showing the smaller scale (≤11 pixels). The independent evaluations suggest higher accuracy in the detection of ecosystem changes among PAL and FASIR series than with GIMMS, as they detected trends that match expected shifts. In fact, this last series eliminated most of the long term patterns over the continent. For example, in the “Eastern Paraguay” and “Uruguay River margins” focal regions, the extensive changes due to land use and land cover change expansion were detected by PAL and FASIR, but completely ignored by GIMMS. Although the technical explanation of the differences remains unclear and needs further exploration, we found that the evaluation of this type of remote sensing tools should not only be focused at the level of assumptions (i.e. physical or mathematical aspects of image processing), but also at the level of results (i.e. contrasting observed patterns with independent proofs of change). We finally present the online collaborative initiative “Land ecosystem change utility for South America”, which facilitates this type of evaluations and helps to identify the most important functional changes of the continent.
机译:在过去的几十年中,由于气候变化以及人类对土地利用和土地覆盖的直接干预,南美生态系统进行了重要的功能修改。在遥感数据集中,NOAA-AVHRR“归一化植被指数”(NDVI)代表了评估这些变化的最强大工具之一,这要归功于其扩展的时间范围。在本文中,我们探索了三种常用的NOAA-AVHRR NDVI系列(PAL,GIMMS和FASIR)来检测南美大陆生态系统功能变化的可能性和局限性。我们对1982-1999年期间的四个NDVI变量(平均年,最大年,最小年和年内变异系数)进行了基于像素的线性回归,并且(1)分析了已确定的重大多年趋势的收敛性和差异性。在所有系列中,(2)使用O环统计数据探索趋势的聚集程度,(3)使用关于五个重点区域生态系统功能变化的独立信息评估观察到的趋势。在变化模式方面(符号,位置和变化的像素总数)出现了一些差异。 FASIR的像素变化比例最高(32.7%),而GIMMS的像素变化比例最低(16.2%)。 PAL和FASIR数据集显示出最高的一致性,在71.2%的像素上检测到趋势趋同。即使正面和负面的变化都显示出明显的空间聚集,但该系列之间的聚集规模却出现了重要差异,GIMMS的规模较小(≤11个像素)。独立评估表明,PAL和FASIR系列中生态系统变化的检测准确性高于GIMMS,因为它们检测到的趋势与预期变化相符。实际上,最后一个系列消除了非洲大陆的大部分长期格局。例如,在“东部巴拉圭”和“乌拉圭河边缘”重点地区,PAL和FASIR发现了由于土地利用和土地覆被变化扩展而引起的广泛变化,但被GIMMS完全忽略了。尽管对差异的技术解释尚不清楚,需要进一步探讨,但我们发现,对这类遥感工具的评估不仅应侧重于假设的水平(即图像处理的物理或数学方面),而且还应着重于结果的水平(即将观察到的模式与独立的变化证据进行对比)。我们最终提出了在线协作计划“南美土地生态系统变化效用”,该方法有助于进行这种类型的评估并帮助确定该大陆最重要的功能变化。

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