| Literature DB >> 30019373 |
Zhongmin Hu1,2,3, Qun Guo2,3, Shenggong Li2,3, Shilong Piao4, Alan K Knapp5, Philippe Ciais6, Xinrong Li7, Guirui Yu2,3.
Abstract
Understanding ecosystem dynamics and predicting directional changes in ecosystem in response to global changes are ongoing challenges in ecology. Here we present a framework that links productivity dynamics and ecosystem state transitions based on a spatially continuous dataset of aboveground net primary productivity (ANPP) from the temperate grassland of China. Across a regional precipitation gradient, we quantified spatial patterns in ANPP dynamics (variability, asymmetry and sensitivity to rainfall) and related these to transitions from desert to semi-arid to mesic steppe. We show that these three indices of ANPP dynamics displayed distinct spatial patterns, with peaks signalling transitions between grassland types. Thus, monitoring shifts in ANPP dynamics has the potential for predicting ecosystem state transitions in the future. Current ecosystem models fail to capture these dynamics, highlighting the need to incorporate more nuanced ecological controls of productivity in models to forecast future ecosystem shifts.Keywords: Climate change; grassland; resilience; state transition; tipping point; variability
Mesh:
Year: 2018 PMID: 30019373 DOI: 10.1111/ele.13126
Source DB: PubMed Journal: Ecol Lett ISSN: 1461-023X Impact factor: 9.492