| Literature DB >> 28092748 |
Fangjie Mao1, Guomo Zhou2, Pingheng Li1, Huaqiang Du1, Xiaojun Xu1, Yongjun Shi1, Lufeng Mo3, Yufeng Zhou1, Guoqing Tu4.
Abstract
The selective cutting method currently used in Moso bamboo forests has resulted in a reduction of stand productivity and carbon sequestration capacity. Given the time and labor expense involved in addressing this problem manually, simulation using an ecosystem model is the most suitable approach. The BIOME-BGC model was improved to suit managed Moso bamboo forests, which was adapted to include age structure, specific ecological processes and management measures of Moso bamboo forest. A field selective cutting experiment was done in nine plots with three cutting intensities (high-intensity, moderate-intensity and low-intensity) during 2010-2013, and biomass of these plots was measured for model validation. Then four selective cutting scenarios were simulated by the improved BIOME-BGC model to optimize the selective cutting timings, intervals, retained ages and intensities. The improved model matched the observed aboveground carbon density and yield of different plots, with a range of relative error from 9.83% to 15.74%. The results of different selective cutting scenarios suggested that the optimal selective cutting measure should be cutting 30% culms of age 6, 80% culms of age 7, and all culms thereafter (above age 8) in winter every other year. The vegetation carbon density and harvested carbon density of this selective cutting method can increase by 74.63% and 21.5%, respectively, compared with the current selective cutting measure. The optimized selective cutting measure developed in this study can significantly promote carbon density, yield, and carbon sink capacity in Moso bamboo forests.Entities:
Keywords: BIOME-BGC; Ecosystem model; Forest management; Moso bamboo forest; Optimization; Selective cutting
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Year: 2017 PMID: 28092748 DOI: 10.1016/j.jenvman.2017.01.016
Source DB: PubMed Journal: J Environ Manage ISSN: 0301-4797 Impact factor: 6.789