2021
DOI: 10.3390/rs13214474
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Resilience of the Central Indian Forest Ecosystem to Rainfall Variability in the Context of a Changing Climate

Abstract: Understanding the spatio-temporal pattern of natural vegetation helps decoding the responses to climate change and interpretation on forest resilience. Satellite remote sensing based data products, by virtue of their synoptic and repetitive coverage, offer to study the correlation and lag effects of rainfall on forest growth in a relatively longer time scale. We selected central India as the study site. It accommodates tropical natural vegetation of varied forest types such as moist and dry deciduous and everg… Show more

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Cited by 8 publications
(2 citation statements)
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“…Remote sensing-based NDVI data revealed greening trends across the globe (Zhu et al 2016;Chen et al 2019) and over central India Singh et al (2021) which is expected to increase ET over the study area and, hence, increase rainfall intensity. Knox et al (2011) conducted a similar study to the present one to characterize the variability in precipitation over forest areas, non-forest areas and forest edges in the Amazon.…”
Section: Discussionmentioning
confidence: 96%
See 1 more Smart Citation
“…Remote sensing-based NDVI data revealed greening trends across the globe (Zhu et al 2016;Chen et al 2019) and over central India Singh et al (2021) which is expected to increase ET over the study area and, hence, increase rainfall intensity. Knox et al (2011) conducted a similar study to the present one to characterize the variability in precipitation over forest areas, non-forest areas and forest edges in the Amazon.…”
Section: Discussionmentioning
confidence: 96%
“…Then the grids having >20% of forest were considered as forest mask at 5km (Tier-2). The smoothed NDVI data were upscaled from 250 m to 5 km using mean aggregation (Singh et al, 2021). Then, aggregated NDVI values falling within the 5 km forested mask were extracted for further area analysis with rainfall to investigate inter-annual rainfall variability inside and outside forests.…”
Section: Modis Data and Its Pre-processingmentioning
confidence: 99%