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Characterization of Land Transitions Patterns from Multivariate Time Series Using Seasonal Trend Analysis and Principal Component Analysis

机译:基于季节趋势分析和主成分分析的多元时间序列土地流转格局特征分析

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Characterizing biophysical changes in land change areas over large regions with short and noisy multivariate time series and multiple temporal parameters remains a challenging task. Most studies focus on detection rather than the characterization, i.e., the manner by which surface state variables are altered by the process of changes. In this study, a procedure is presented to extract and characterize simultaneous temporal changes in MODIS multivariate times series from three surface state variables the Normalized Difference Vegetation Index (NDVI), land surface temperature (LST) and albedo (ALB). The analysis involves conducting a seasonal trend analysis (STA) to extract three seasonal shape parameters (Amplitude 0, Amplitude 1 and Amplitude 2) and using principal component analysis (PCA) to contrast trends in change and no-change areas. We illustrate the method by characterizing trends in burned and unburned pixels in Alaska over the 2001–2009 time period. Findings show consistent and meaningful extraction of temporal patterns related to fire disturbances. The first principal component (PC1) is characterized by a decrease in mean NDVI (Amplitude 0) with a concurrent increase in albedo (the mean and the annual amplitude) and an increase in LST annual variability (Amplitude 1). These results provide systematic empirical evidence of surface changes associated with one type of land change, fire disturbances, and suggest that STA with PCA may be used to characterize many other types of land transitions over large landscape areas using multivariate Earth observation time series.
机译:用短而嘈杂的多元时间序列和多个时间参数表征大区域土地变化区域的生物物理变化仍然是一项艰巨的任务。大多数研究关注检测而不是表征,即表面状态变量随变化过程而改变的方式。在这项研究中,提出了一种程序来从三个表面状态变量,归一化植被指数(NDVI),地表温度(LST)和反照率(ALB)提取和表征MODIS多元时间序列的同时时间变化。该分析包括进行季节趋势分析(STA)以提取三个季节形状参数(振幅0,振幅1和振幅2),并使用主成分分析(PCA)对比变化和不变区域的趋势。我们通过描述2001-2009年期间阿拉斯加的燃烧像素和未燃烧像素的趋势来说明该方法。研究结果表明,与火灾干扰相关的时间模式的提取是一致且有意义的。第一个主成分(PC1)的特征是平均NDVI降低(幅度0),同时反照率(平均值和年幅度)增加,而LST年变化率(幅度1)增加。这些结果为与一种类型的土地变化,火灾干扰相关的地表变化提供了系统的经验证据,并表明使用PCA的STA可使用多变量地球观测时间序列来表征大型景观区域上的许多其他类型的土地过渡。

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