4.8 Article

Trade-offs between carbon stocks and timber recovery in tropical forests are mediated by logging intensity

期刊

GLOBAL CHANGE BIOLOGY
卷 24, 期 7, 页码 2862-2874

出版社

WILEY
DOI: 10.1111/gcb.14155

关键词

carbon stocks; climate change mitigation; forest degradation; piecewise regression; REDD; sustainable forest management; tropical forestry

资金

  1. WWF-Guianas Program
  2. WWF
  3. NSF
  4. Direct For Social, Behav & Economic Scie [1744643] Funding Source: National Science Foundation

向作者/读者索取更多资源

Forest degradation accounts for 70% of total carbon losses from tropical forests. Substantial emissions are from selective logging, a land-use activity that decreases forest carbon density. To maintain carbon values in selectively logged forests, climate change mitigation policies and government agencies promote the adoption of reduced-impact logging (RIL) practices. However, whether RIL will maintain both carbon and timber values in managed tropical forests over time remains uncertain. In this study, we quantify the recovery of timber stocks and aboveground carbon at an experimental site where forests were subjected to different intensities of RIL (4, 8, and 16trees/ha). Our census data span 20years postlogging and 17years after the liberation of future crop trees from competition in a tropical forest on the Guiana Shield, a globally important forest carbon reservoir. We model recovery of timber and carbon with a breakpoint regression that allowed us to capture elevated tree mortality immediately after logging. Recovery rates of timber and carbon were governed by the presence of residual trees (i.e., trees that persisted through the first harvest). The liberation treatment stimulated faster recovery of timber albeit at a carbon cost. Model results suggest a threshold logging intensity beyond which forests managed for timber and carbon derive few benefits from RIL, with recruitment and residual growth not sufficient to offset losses. Inclusion of the breakpoint at which carbon and timber gains outpaced postlogging mortality led to high predictive accuracy, including out-of-sample R-2 values >90%, and enabled inference on demographic changes postlogging. Our modeling framework is broadly applicable to studies that aim to quantify impacts of logging on forest recovery. Overall, we demonstrate that initial mortality drives variation in recovery rates, that the second harvest depends on old growth wood, and that timber intensification lowers carbon stocks.

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