Biodiversity-carbon sink relationships vary along elevation across planted and natural subtropical forests in southeastern China
Maochou Liu , Wenxiang Wu , Dan Zhao , Xueqin Zhang , Yuan Wang , Ke Wang , Xinshuai Ren , Jiahui Cheng
Journal of Forestry Research ›› 2026, Vol. 37 ›› Issue (1) : 63
Biodiversity-carbon sink relationships vary along elevation across planted and natural subtropical forests in southeastern China
Forests play a critical role in global carbon sequestration, however the mechanisms linking biodiversity to carbon sinks across environmental gradients remain poorly understood. Using 735 permanent plots across subtropical China’s Zhejiang and Fujian provinces, we investigated how elevation mediates biodiversity-carbon relationships (BCRs) in natural forests compared to plantations. Our results show that natural forests maintained 16% higher carbon sequestration and had 23% lower mortality than plantations, with peak productivity at mid-elevations (400–800 m). Community-weighted specific leaf area (CWMSLA) and tree size inequality (Gini coefficient) explained 43.6% of the carbon sink variation, while Shannon diversity showed negligible effects (P>0.05). Structural equation modeling revealed that initial carbon stocks mediated BCRs, particularly in natural forests, with plantations showing significant carbon-mortality trade-offs at low and mid- elevations. Significant BCRs were only at low elevations, where CWMSLA and Gini coefficients negatively affected carbon sinks, providing no support for consistently positive BCRs across elevation zones. To optimize forest carbon sequestration, we suggest species selection based on complementary functional traits, increasing the complexity of stand structure in medium and high elevation areas, and planting stress-resistant genotypes at low elevations to reduce mortality. This study provides insight for optimizing carbon-biodiversity co-benefits in subtropical forest restoration.
Biodiversity-carbon sink relationships / Elevation gradients / Tree carbon sink / Natural and planted forests / Forest management / Biodiversity indicators
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Northeast Forestry University
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