April 30, 2019
Journal Article

Predictability of tropical vegetation greenness using sea surface temperatures

Abstract

Much research has examined the sensitivity of tropical terrestrial ecosystems to various environmental drivers. The predictability of tropical vegetation greenness based on sea surface temperatures (SSTs), however, has not been well explored. This study employed fine spatial resolution remotely-sensed Enhanced Vegetation Index (EVI) and SST indices from tropical ocean basins to investigate the predictability of tropical vegetation greenness in response to SSTs and established empirical models with optimal parameters for hindcast predictions. Three evaluation metrics were used to assess the model performance, i.e., correlations between historical observed and predicted values, percentage of correctly predicted signs of EVI anomalies, and percentage of correct signs for extreme EVI anomalies. Our findings reveal that the pan-tropical EVI was tightly connected to the SSTs over tropical ocean basins. The strongest impacts of SSTs on EVI were identified mainly over the arid or semi-arid tropical regions. The spatially-averaged correlation between historical observed and predicted EVI time series was 0.30 with its maximum value reaching up to 0.84. Vegetated areas across South America (25.76%), Africa (33.13%), and Southeast Asia (39.94%) were diagnosed to be associated with significant SST-EVI correlations (p

Revised: June 17, 2020 | Published: April 30, 2019

Citation

Yan B., J. Mao, X. Shi, F.M. Hoffman, M. Notaro, T. Zhou, and N.G. McDowell, et al. 2019. Predictability of tropical vegetation greenness using sea surface temperatures. Environmental Research Communications 1, no. 3:Article No. 031003. PNNL-SA-142768. doi:10.1088/2515-7620/ab178a