| Literature DB >> 27278688 |
Yong Shen1, Shixiao Yu1, Juyu Lian2, Hao Shen2, Honglin Cao2, Huanping Lu3, Wanhui Ye2.
Abstract
Tropical forests play a disproportionately important role in the global carbon (C) cycle, but it remains unclear how local environments and functional diversity regulate tree aboveground C storage. We examined how three components (environments, functional dominance and diversity) affected C storage in Dinghushan 20-ha plot in China. There was large fine-scale variation in C storage. The three components significantly contributed to regulate C storage, but dominance and diversity of traits were associated with C storage in different directions. Structural equation models (SEMs) of dominance and diversity explained 34% and 32% of variation in C storage. Environments explained 26-44% of variation in dominance and diversity. Similar proportions of variation in C storage were explained by dominance and diversity in regression models, they were improved after adding environments. Diversity of maximum diameter was the best predictor of C storage. Complementarity and selection effects contributed to C storage simultaneously, and had similar importance. The SEMs disengaged the complex relationships among the three components and C storage, and established a framework to show the direct and indirect effects (via dominance and diversity) of local environments on C storage. We concluded that local environments are important for regulating functional diversity and C storage.Entities:
Year: 2016 PMID: 27278688 PMCID: PMC4899748 DOI: 10.1038/srep25304
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1C storage distribution at the scale of 20 m × 20 m in DHS plot.
C storage from 10.8 (white) to 240.7 (black) Mg C ha−1.
Pearson correlation coefficients between fine-scale environmental factors, functional dominance, functional diversity and C storage in DHS plot, significant relationships are highlighted in bold.
| Variable | Coefficients |
|---|---|
| Environments | |
| Convexity | |
| Soil PC1 | |
| Functional dominance | |
| LA.CWM | |
| LDMC.CWM | |
| SLA.CWM | |
| WD.CWM | |
| DBH.CWM | |
| Functional diversity | |
| LA.FDis | |
| LDMC.FDis | |
| SLA.FDis | |
| WD.FDis | |
| DBH.FDis | |
| Multi.FDis | |
Soil PC1, the first component of PCA on soil variables; LA, LDMC, SLA, WD, DBH and Multi are leaf area, leaf dry matter content, specific leaf area, wood density, maximum DBH and multivariate functional diversity, respectively; CWM and FDis indicate community weighted mean trait values and functional dispersion.
Pearson correlation coefficients between fine-scale environmental factors and functional dominance, diversity in DHS plot, significant relationships are highlighted in bold.
| Variable | Convexity | PC1 |
|---|---|---|
| Functional dominance | ||
| LA.CWM | ||
| LDMC.CWM | ||
| SLA.CWM | ||
| WD.CWM | ||
| DBH.CWM | ||
| Functional diversity | ||
| LA.FDis | ||
| LDMC.FDis | ||
| SLA.FDis | ||
| WD.FDis | 0.004 | |
| DBH.FDis | 0.08 | |
| Multi.FDis | ||
See Table 1 for abbreviations.
Figure 2Structural equation model relating C storage, functional dominance of leaf traits and fine-scale environmental factors in DHS plot.
Single headed arrows indicate directional relationships, while double headed arrows indicate covariances. Thicker lines correspond to stronger relationships, and numbers in brackets are R2 values. See Table 1 for abbreviations.
Figure 3Structural equation model relating C storage, functional dispersion of leaf traits and fine-scale environmental factors in DHS plot.
Single headed arrows indicate directional relationships, while double headed arrows indicate covariances. Thicker lines correspond to stronger relationships, and numbers in brackets are R2 values. See Table 1 for abbreviations.
Final models from multiple stepwise regressions between C storage and different component of variables (N = 500) in DHS plot.
| Model | R2 | AIC | |
|---|---|---|---|
| Environment | 2.43Convexity −7.73PC1 + 102.75 | 0.30 | 5014.06 |
| Dominance | −0.27LA.CWM + 336.86LDMC.CWM + 267.75WD.CWM + 3.15DBH.CWM−294.64 | 0.33 | 4990.71 |
| Diversity | −55.75LA.FDis −45.03LDMC.FDis + 91.10DBH.FDis + 71.44 | 0.34 | 4988.71 |
| Environment + Dominance | 1.73Convexity −4.21PC1 + 244.17WD.CWM + 2.92DBH.CWM −152.43 | 0.38 | 4959.26 |
| Environment + Diversity | 2.05Convexity −3.27PC1 −30.09LA.FDis + 71.27DBH.FDis + 48.83 | 0.38 | 4954.22 |
| Dominance + Diversity | 813.54LDMC.CWM + 0.52SLA.CWM + 329.70WD.CWM −36.36LA.FD is −27.64WD.FDis + 89.90DBH.FDis −529.93 | 0.39 | 4948.63 |
| All variables | 1.42Convexity −3.47PC1 + 724.05LDMC.CWM + 0.43SLA.CWM + 360.16WD.CWM +32.66LDMC.FDis −41.50WD.FDis + 70.54DBH.FDis −509.15 | 0.42 | 4927.25 |
R2 is adjusted coefficients for the regression model. AIC, Akaike Information Criterion. See Table 1 for abbreviations.
Figure 4Relative importance of each regressor and component in the final stepwise multiple regression model for all variables in the DHS plot.
See Table 1 for abbreviations.