Amazon forest resilience beyond carbon stocks: a trait-based modeling approach
The Amazon rainforest has shown signs of declining resilience, often linked to drought events and assessed primarily through carbon stocks. However, vegetation models that rely on simplified plant diversity, such as a few plant functional types (PFTs), and focus on carbon stocks alone may underestimate climate change impacts. This study explores reduced precipitation effects on the Amazon using the trait-based CAETÊ model, which incorporates functional trait variability. Comparing a PFT-based approach (three PFTs) with a trait-based approach (3,000 plant life strategies), we found that including trait variability improves accuracy in predicting net primary productivity (NPP) and carbon storage while revealing subtler responses, such as shifts in functional diversity facets and rare trait combinations. Simulating a 30% reduction in precipitation at low (every eight years) and high (every other year) frequencies showed that frequent droug
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