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基于遥感数据的植被干旱脆弱性概率评估。

Probability assessment of vegetation vulnerability to drought based on remote sensing data.

机构信息

Department of Arid and Mountainous Reclamation Region, Faculty of Natural Resources, University of Tehran, Tehran, Iran.

出版信息

Environ Monit Assess. 2018 Nov 8;190(12):702. doi: 10.1007/s10661-018-7089-1.

Abstract

Drought is one of the important factors causing vegetation degradation. Determination of areas with vegetation more sensitive to drought can be effective in drought risk management. Considering the ability to describe vegetation conditions, vegetation health index (VHI) was used to determine the probability of vegetation vulnerability to drought and to provide the map of Iran showing sensitive areas to drought. This study tries to express the probability of vegetation vulnerability to drought in four main climatic classes including hyper-arid, arid, semi-arid and semi-humid, and humid in Iran. Temperature condition index (TCI) and vegetation condition index (VCI) were calculated using land surface temperature (LST) derived from the MOD11A2 product and normalized different vegetation index (NDVI) obtained from MOD13A2 product, MODIS sensor. Combining these two indices, VHI was calculated for late of March, April, May, and June during 2000-2017. VHI was classified into five classes representing the drought intensity. Then, the probability of occurrence (%) of each class was calculated and multiplied with weight of each class, varying from 0 to 40 based on drought intensity. Finally, probability of vegetation vulnerability index (PVVI) was calculated by summing of the values obtained for each class. The results showed that PVVI was higher in arid and hyper-arid areas than that in other areas in the four studied periods. The highest mean values of PVVI in humid as well as semi-arid and semi-humid classes were found in April as 59.87 and 62.4, respectively, while the highest mean values of PVVI in arid and hyper-arid classes were observed in May as 70.98 and 68.13, respectively. In total, our results showed that PVVI is affected by different climatic and topographic conditions, and it suggested that this index be used to determine the probability of vegetation vulnerability.

摘要

干旱是导致植被退化的重要因素之一。确定对干旱更为敏感的植被区域对于干旱风险管理非常有效。考虑到描述植被状况的能力,使用植被健康指数(VHI)来确定植被对干旱的脆弱性概率,并提供伊朗显示对干旱敏感的区域的地图。本研究试图在伊朗的四个主要气候类别(包括超干旱、干旱、半干旱和半湿润以及湿润)中表达植被对干旱的脆弱性概率。使用来自 MOD11A2 产品的地表温度(LST)和从 MOD13A2 产品、MODIS 传感器获得的归一化植被指数(NDVI)计算温度条件指数(TCI)和植被条件指数(VCI)。将这两个指数结合起来,在 2000-2017 年的 3 月下旬、4 月、5 月和 6 月计算 VHI。将 VHI 分为五个代表干旱强度的等级。然后,计算每个等级的出现概率(%),并根据干旱强度将每个等级的权重乘以 0 到 40 之间的数值。最后,通过对每个等级的值求和计算植被脆弱性概率指数(PVVI)。结果表明,在四个研究期间,干旱和超干旱地区的 PVVI 高于其他地区。在 4 月,湿润以及半干旱和半湿润地区的 PVVI 平均值最高,分别为 59.87 和 62.4,而在 5 月,干旱和超干旱地区的 PVVI 平均值最高,分别为 70.98 和 68.13。总的来说,我们的结果表明,PVVI 受不同的气候和地形条件的影响,建议使用该指数来确定植被脆弱性的概率。

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