Tang Yuzhi, Shao Quanqin, Shi Tiezhu, Lu Zhensheng, Wu Guofeng
MNR Key Laboratory for Geo-Environmental Monitoring of Great Bay Area & Guangdong Key Laboratory of Urban Informatics & Shenzhen Key Laboratory of Spatial Smart Sensing and Services, Shenzhen University, Shenzhen, 518060, China.
School of Architecture and Urban Planning, Shenzhen University, Shenzhen, 518060, China.
Carbon Balance Manag. 2022 Jul 2;17(1):10. doi: 10.1186/s13021-022-00210-0.
Countries seeking to mitigate climate change through forests require suitable modelling approaches to predict carbon (C) budget dynamics in forests and their responses to disturbance and management. The Carbon Budget Model of the Canadian Forest Sector (CBM-CFS3) is a feasible and comprehensive tool for simulating forest C stock dynamics across broad levels, but discrepancies remain to be addressed in China. Taking Guizhou as the case study, we customised the CBM-CFS3 model according to China's context, including the modification of aboveground biomass C stock algorithm, addition of C budget accounting for bamboo forests, economic forests, and shrub forests, improvement of non-forest land belowground slow dead organic matter (DOM) pool initialisation, and other model settings.
The adequate linear relationship between the estimated and measured C densities (R = 0.967, P < 0.0001, slope = 0.904) in the model validation demonstrated the high accuracy and reliability of our customised model. We further simulated the spatiotemporal dynamics of forest C stocks and disturbance impacts in Guizhou for the period 1990-2016 using our customised model. Results shows that the total ecosystem C stock and C density, and C stocks in biomass, litter, dead wood, and soil in Guizhou increased continuously and significantly, while the soil C density decreased over the whole period, which could be attributed to deforestation history and climate change. The total ecosystem C stock increased from 1220 Tg C in 1990 to 1684 Tg C in 2016 at a rate of 18 Tg C yr, with significant enhancement in most areas, especially in the south and northwest. The total decrease in ecosystem C stock and C expenditure caused by disturbances reached 97.6 Tg C and 120.9 Tg C, respectively, but both represented significant decreasing trends owing to the decline of disturbed forest area during 1990-2016. Regeneration logging, deforestation for agriculture, and harvest logging caused the largest C stock decrease and C expenditure, while afforestation and natural expansion of forest contributed the largest increases in C stock.
The forests in Guizhou were a net carbon sink under large-scale afforestation throughout the study period; Our customised CBM-CFS3 model can serve as a more effective and accurate method for estimating forest C stock and disturbance impacts in China and further enlightens model customisation to other areas.
寻求通过森林减缓气候变化的国家需要合适的建模方法来预测森林中的碳(C)预算动态及其对干扰和管理的响应。加拿大森林部门碳预算模型(CBM-CFS3)是一种可行且全面的工具,可用于在广泛层面模拟森林碳储量动态,但在中国仍存在一些差异有待解决。以贵州为例,我们根据中国的实际情况对CBM-CFS3模型进行了定制,包括修改地上生物量碳储量算法、增加竹林、经济林和灌木林的碳预算核算、改进非林地地下慢速死亡有机物质(DOM)库初始化以及其他模型设置。
模型验证中估计的和测量的碳密度之间存在充分的线性关系(R = 0.967,P < 0.0001,斜率 = 0.904),这表明我们定制模型具有很高的准确性和可靠性。我们进一步使用定制模型模拟了1990 - 2016年期间贵州森林碳储量的时空动态和干扰影响。结果表明,贵州生态系统总碳储量、碳密度以及生物量、凋落物、枯立木和土壤中的碳储量均持续显著增加,而土壤碳密度在整个时期有所下降,这可能归因于森林砍伐历史和气候变化。生态系统总碳储量从1990年的1220 Tg C增加到2016年的1684 Tg C,增长率为18 Tg C/年,大部分地区显著增加,尤其是南部和西北部。干扰导致的生态系统碳储量和碳支出总减少量分别达到97.6 Tg C和120.9 Tg C,但由于1990 - 2016年期间受干扰森林面积的减少,两者均呈现显著下降趋势。皆伐更新、毁林开垦和采伐导致的碳储量减少和碳支出最大,而造林和森林自然扩张对碳储量增加的贡献最大。
在整个研究期间,贵州的森林在大规模造林下是一个净碳汇;我们定制的CBM-CFS3模型可以作为一种更有效、准确的方法来估算中国森林碳储量和干扰影响,并为其他地区的模型定制提供进一步的启示。