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Using NDVI time series to diagnose vegetation recovery after major earthquake based on dynamic time warping and lower bound distance

机译:使用NDVI时间序列基于动态时间扭曲和下界距离诊断大地震后的植被恢复

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摘要

Major earthquake occurred in mountainous areas usually cause large number of landslides that lead to severe impact to local vegetation cover and growth. The negative influence to vegetation may last for many year and vegetation recovery may experience dynamic fluctuation. Existing methods for vegetation recovery diagnosis face difficulty in capturing the dynamic behaviours both within and between years that makes the interannual comparison impossible. This paper proposes a new method to diagnose regional vegetation recovery after a major earthquake by defining a difference measurement index (DMI) using MODIS NDVI time series at 8-day interval. This differs from many existing methods in its quantification of the difference between the studied time series and historical samples, by using a proposed algorithm consisting of lower bound distance and dynamic time warping. This algorithm can better differentiate vegetation disturbance from its natural fluctuation. Second, the method investigates relatively regional vegetation recovery via a dynamic index, the DMI. Vegetation conditions in different years can be compared with a historical benchmark and measured by DMI. This makes it possible to diagnose dynamic vegetation recovery and generate a series of interannual spatial distributions of regional vegetation state.
机译:山区发生的大地震通常会引起大量的滑坡,从而对当地的植被覆盖和生长造成严重影响。对植被的负面影响可能会持续很多年,植被恢复可能会经历动态波动。现有的植被恢复诊断方法在捕获年内和年间的动态行为方面都面临着困难,这使得无法进行年度比较。本文提出了一种新的方法,通过使用MODIS NDVI时间序列以8天为间隔定义差异测量指数(DMI),来诊断大地震后的区域植被恢复。通过使用由下限距离和动态时间扭曲组成的拟议算法,这与许多现有方法在量化研究的时间序列和历史样本之间的差异方面有所不同。该算法可以更好地区分植被扰动与自然波动。其次,该方法通过动态指数DMI调查相对区域的植被恢复。可以将不同年份的植被状况与历史基准进行比较,并通过DMI进行测量。这使得诊断动态植被恢复并生成一系列区域植被状态的年际空间分布成为可能。

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