Estimating divergent forest carbon stocks and sinks via a knife set approach

被引:5
作者
Wang, Shitephen [1 ,8 ]
Kobayashi, Keito [1 ,2 ]
Takanashi, Satoru [2 ]
Liu, Chiung-Pin [3 ]
Li, Dian-Rong [4 ]
Chen, San-Wen [5 ]
Cheng, Yu-Ting [6 ]
Moriguchi, Kai [7 ]
Dannoura, Masako [1 ]
机构
[1] Kyoto Univ, Grad Sch Agr, Kyoto 6068502, Japan
[2] Forestry & Forest Prod Res Inst, Kansai Res Ctr, Kyoto 6120855, Japan
[3] Natl Chung Hsing Univ, Coll Agr & Nat Resource, Dept Forestry, Taichung 402204, Taiwan
[4] Natl Taiwan Normal Univ, Dept Elect Engn, Taipei 106308, Taiwan
[5] Natl Taiwan Univ, Dept Comp Sci & Informat Engn, Taipei 106216, Taiwan
[6] Med Sans Frontieres MSF, Greater New York City Area, New York, NY 10006 USA
[7] Kochi Univ, Fac Agr & Marine Sci, Kochi 7838502, Japan
[8] Kitashirakawa Oiwake Cho,Sakyo Ku, Kyoto 6068502, Japan
关键词
Aboveground net primary production; Belowground net primary production; Chaotic estimation; Hybrid machine learning; Phyllostachys edulis; Wandering through random forests; SOIL ORGANIC-CARBON; PHYLLOSTACHYS-PUBESCENS FORESTS; NEURAL-NETWORKS; CLIMATE-CHANGE; BAMBOO; BIOMASS; STORAGE; IMPUTATION; MODELS; GAME;
D O I
10.1016/j.jenvman.2022.117114
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Forest carbon stocks and sinks (CSSs) have been widely estimated using climate classification tables and linear regression (LR) models with common independent variables (IVs) such as the average diameter at breast height (DBH) of stems and root shoot ratio. However, this approach is relatively ineffective when the explanatory power of IVs is lower than that of unobservable variables. Various environmental and anthropogenic factors affect target variables that cause the correlation between them to be chaotic. Here, we designed a knife set (KS) approach combining LR models and the wandering through random forests (WTF) algorithm and applied it in a specific case of Phyllostachys edulis (Carrie`re) J. Houz. (P. edulis) forests, which have an irregular relationship between their belowground carbon (BGC) stocks and average DBH. We then validated the KS approach per-formed by cluster computing to estimate the aboveground carbon (AGC) and BGC stocks and the total net pri-mary production (TNPP). The estimated CSSs were compared to the benchmark of the methodology that applied Tier 1 in the Intergovernmental Panel on Climate Change (IPCC) Guidelines for National Greenhouse Gas In-ventories via 10-fold cross validation, and the KS approach significantly increased precision and accuracy of estimations. Our approach provides general insights to accurately estimate forest CSSs relying on evidence-based field data, even if some target variables are divergent in specific forest types. We also pointed out the reason why current fancy models containing machine learning (ML) or deep learning algorithms are not effective in pre-dicting the target variables of certain chaotic systems is perhaps that the total explanatory power of observable variables is less than that of the total unobservable variables. Quantifying unobservable variables into observable variables is a linchpin of future works related to chaotic system estimation.
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页数:12
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