Data from: Biodiversity forecasting in natural plankton communities reveals temperature and biotic interactions as key predictors
收藏DataCite Commons2026-03-05 更新2025-06-15 收录
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https://datadryad.org/dataset/doi:10.5061/dryad.0zpc86775
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资源简介:
As natural ecosystems face unprecedented human-made degradation, it is
urgent to provide quantitative forecasts of changes in biodiversity and
identify relevant biotic and abiotic predictors. Forecasting natural
ecosystems has proven challenging due to their complexity, chaotic
nonlinear nature, and lack of adequate data. In this study, we investigate
the predictability of lake plankton biodiversity using four years of daily
data of environmental predictors and community metrics derived from
state-dependent models. Our findings show that presence-absence-based
biodiversity metrics are more predictable than abundance-based metrics.
For short-term forecasts, the most significant predictor of species
richness is prior richness, while the key predictors for Jaccard
dissimilarity are prior richness and prior Jaccard dissimilarity. In
long-term forecasts of both metrics, water temperature emerges as the
primary predictor, with community connectance (number of interactions)
also contributing to improved predictions. We found that richness,
connectance, and water temperature can interact in nonlinear and
synergistic ways depending on the forecast horizon, enhancing each
other's effects on richness and Jaccard dissimilarity. These results
underscore the challenges of forecasting biodiversity in natural
ecosystems and highlight the importance of monitoring key community
metrics and abiotic predictors to anticipate long-term changes.
提供机构:
Dryad
创建时间:
2025-06-11



