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PHENOLOGY ANALYSIS OF FOREST VEGETATION TO ENVIRONMENTAL VARIABLES DURING PRE- AND POST-MONSOON SEASONS IN WESTERN HIMALAYAN REGION OF INDIA

机译:印度西部喜马拉雅地区前后季季季节森林植被的植物植被分析

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To assess the phenological changes in Moist Deciduous Forest (MDF) of western Himalayan region of India, we carried out NDVI time series analysis from 2013 to 2015 using Landsat 8 OLI data. We used the vegetation index differencing method to calculate the change in NDVI (NDVI_(change)) during pre and post monsoon seasons and these changes were used to assess the phenological behaviour of MDF by taking the effect of a set of environmental variables into account. To understand the effect of environmental variables on change in phenology, we designed a linear regression analysis with sample-based NDVI_(change) values as the response variable and elevation aspect, and Land Surface Temperature (LST) as explanatory variables. The Landsat-8 derived phenology transition stages were validated by calculating the phenology variation from Nov 2008 to April 2009 using Landsat-7 which has the same spatial resolution as Landsat-8. The Landsat-7 derived NDVI trajectories were plotted in accordance with MODIS derived phenology stages (from Nov 2008 to April 2009) of MDF. Results indicate that the Landsat -8 derived NDVI trajectories describing the phenology variation of MDF during spring, monsoon autumn and winter seasons agreed closely with Landsat-7 and MODIS derived phenology transition from Nov 2008 to April 2009. Furthermore, statistical analysis showed statistically significant correlations (p < 0.05) amongst the environmental variables and the NDVI_(change) between full greenness and maximum frequency stage of Onset of Greenness (OG) activity. The major change in NDVI was observed in medium (600 to 650 m) and maximum (650 to 750 m) elevation areas. The change in LST showed also to be highly influential. The results of this study can be used for large scale monitoring of difficult-to-reach mountainous forests, with additional implications in biodiversity assessment. By means of a sufficient amount of available cloud-free imagery, detailed phenological trends across mountainous forests could be explained.
机译:为了评估印度大喜马拉雅地区潮湿落叶林(MDF)的毒性变化,我们使用Landsat 8 Oli数据从2013年到2015年进行了NDVI时间序列分析。我们使用植被指数差异方法来计算前后季季季节内NDVI(NDVI_(变化))的变化,并且这些变化用于通过考虑一组环境变量的效果来评估MDF的候表。要了解环境变量对候选变化的影响,我们设计了与基于样本的NDVI_(变化)值的线性回归分析,作为响应变量和高度方面,以及陆地温度(LST)作为解释变量。通过使用与Landsat-8相同的空间分辨率的Landsat-7计算2008年11月至2009年4月的候选变异,验证了Landsat-8衍生的候选过渡阶段。根据MODIS衍生的候选阶段(从2008年11月至2009年4月)的MDF,绘制了Landsat-7衍生的NDVI轨迹。结果表明,在2008年11月至2009年11月至2009年11月与Landsat-7和Modis衍生的候选的MDF候选MDF候选的LANDSAT -8衍生的NDVI轨迹。此外,统计分析显示统计学上显着的相关性(P <0.05)在环境变量和NDVI_(变化)之间的全绿色和最大频率阶段的绿色(OG)活动的初始阶段之间。在培养基(600至650米)和最大(650至750米)的高度区域中观察到NDVI的主要变化。 LST的变化也显示出高度影响力。该研究的结果可用于大规模监测难以到达的山地森林,具有额外的生物多样性评估影响。通过足够量的可用无云图像,可以解释山区森林的详细候趋势。

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