This paper investigated spatiotemporal dynamic pattern of vegetation, climate factor, and their complex relationships from seasonal to inter-annual scale in China during the period 1982–1998 through wavelet transform method based on GIMMS data-sets. First, most vegetation canopies demonstrated obvious seasonality, increasing with latitudinal gradient. Second, obvious dynamic trends were observed in both vegetation and climate change, especially the positive trends. Over 70% areas were observed with obvious vegetation greening up, with vegetation degradation principally in the Pearl River Delta, Yangtze River Delta, and desert. Overall warming trend was observed across the whole country (\u3e98% area), stronger in Northern China. Although ov...
The variation in vegetation greenness provides good understanding of the sustainable management and ...
The impact of global climate change on vegetation has become increasingly prominent over the past se...
Understanding the dynamics of vegetation system change is often limited by relatively brief data seq...
This paper investigated spatiotemporal dynamic pattern of vegetation, climate factor, and their comp...
In recent decades, the monitoring of vegetation dynamics has become crucial because of its important...
AbstractIn order to explore additional distribution patterns of global change to terrestrial ecosyst...
Under the background of global warming, understanding the dynamic of vegetation plays a key role in ...
This study investigated the spatiotemporal variation of vegetation growth and the influence of clima...
In recent decades, the monitoring of vegetation dynamics has become crucial because of its important...
Global warming-related climate changes have significantly impacted the growth of terrestrial vegetat...
research grant of Key Project for the Strategic Science Plan in Institute of Geographic Sciences;Nat...
The 400 mm annual precipitation fluctuation zone (75°55′–127°6′E and 26&...
Temporal and spatial changes in vegetation and their influencing factors are of great significance f...
Understanding how the dynamics of vegetation growth respond to climate change at different temporal ...
Three methods were used to distinguish the characteristics of changes in climate variability and nor...
The variation in vegetation greenness provides good understanding of the sustainable management and ...
The impact of global climate change on vegetation has become increasingly prominent over the past se...
Understanding the dynamics of vegetation system change is often limited by relatively brief data seq...
This paper investigated spatiotemporal dynamic pattern of vegetation, climate factor, and their comp...
In recent decades, the monitoring of vegetation dynamics has become crucial because of its important...
AbstractIn order to explore additional distribution patterns of global change to terrestrial ecosyst...
Under the background of global warming, understanding the dynamic of vegetation plays a key role in ...
This study investigated the spatiotemporal variation of vegetation growth and the influence of clima...
In recent decades, the monitoring of vegetation dynamics has become crucial because of its important...
Global warming-related climate changes have significantly impacted the growth of terrestrial vegetat...
research grant of Key Project for the Strategic Science Plan in Institute of Geographic Sciences;Nat...
The 400 mm annual precipitation fluctuation zone (75°55′–127°6′E and 26&...
Temporal and spatial changes in vegetation and their influencing factors are of great significance f...
Understanding how the dynamics of vegetation growth respond to climate change at different temporal ...
Three methods were used to distinguish the characteristics of changes in climate variability and nor...
The variation in vegetation greenness provides good understanding of the sustainable management and ...
The impact of global climate change on vegetation has become increasingly prominent over the past se...
Understanding the dynamics of vegetation system change is often limited by relatively brief data seq...