Variation in wood density across South American tropical forests
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https://figshare.com/articles/dataset/Variation_in_wood_density_across_South_American_tropical_forests/27118437
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资源简介:
Predicted spatial variation in wood density across tropical South American forests. This data package contains map data products from the paper "Variation in wood density across South American tropical forests".Contents:Ensemble predictions.gri - Predicted wood density averaged across models. Maps shown in Fig. 3 and Fig. S2b.RF spat.gri - Predicted wood density from random forest model - spatial covariates only. Maps shown in Fig S2a.RF env.gri - Predicted wood density from random forest model - environmental covariates only. Map shown in Fig S2a.RF all.gri - Predicted wood density from random forest model - environmental and spatial covariates. Map shown in Fig S2a.GAM spat.gri - Predicted wood density from GAM - spatial covariates only. Map shown in Fig S2a.GAM env.gri - Predicted wood density from GAM - environmental covariates only. Map shown in Fig S2a.GAM all.gri - Predicted wood density from GAM - environmental and spatial covariates. Map shown in Fig S2a.SD predictions.gri - Standard deviation of model predictions. Map shown in Fig. S3.Dissimilarity index.gri - Multivariate dissimilarity index. Fig. S7b.EnvRobustSubsampling.gri - Binary variable - are environmental variables in the range where relationships were robust to subsampling data. Fig. S7c.EnvRangeTraining.gri - Binary variable - are environmental variables in the range seen in the training data. Fig. S7d.AOA1.gri - Binary variable - area of model applicability defined using spatial cross-validation. Fig. S7e.AOA2.gri - Binary variable - area of model applicability defined using non-spatial cross-validation. Fig. S7d.
创建时间:
2024-10-02



