Articles | Volume 12, issue 1
https://doi.org/10.5194/essd-12-21-2020
https://doi.org/10.5194/essd-12-21-2020
Data description paper
 | 
03 Jan 2020
Data description paper |  | 03 Jan 2020

A review of biomass equations for China's tree species

Yunjian Luo, Xiaoke Wang, Zhiyun Ouyang, Fei Lu, Liguo Feng, and Jun Tao

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Cited articles

Anitha, K., Verchot, L. V., Joseph, S., Herold, M., Manuri, S., and Avitabile, V.: A review of forest and tree plantation biomass equations in Indonesia, Ann. Forest Sci., 72, 981–997, 2015. 
Baskerville, G. L.: Use of logarithmic regression in the estimation of plant biomass, Can. J. Forest Res., 2, 49–53, 1972. 
Bustamante, M., Robledo-Abad, C., Harper, R., Mbow, C., Ravindranat, N. H., Sperling, F., Haberl, H., Pinto, A. D. S., and Smith, P.: Co-benefits, trade-offs, barriers and policies for greenhouse gas mitigation in the agriculture, forestry and other land use (AFOLU) sector, Global Change Biol., 20, 3270–3290, 2014. 
Chen, C. G. and Zhu, J. F.: Manual on Biomass Equations of Major Tree Species in Northeast China, China Forestry Publishing House, Beijing, China, 1989 (in Chinese). 
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Short summary
How to accurately estimate tree and forest biomass a concern worldwide. Biomass equations are the most commonly used method. China is one of the most important ecoregions of the world. Here, we develop a tree biomass equation dataset for China via literature retrieval. This dataset consists of 5924 equations for nearly 200 tree species, showing sound geographical, climatic and forest coverage across China. Furthermore, multiple potential avenues for future research are identified.