GSTDTAP  > 气候变化
DOI10.1111/gcb.14845
Gap-filling approaches for eddy covariance methane fluxes: A comparison of three machine learning algorithms and a traditional method with principal component analysis
Kim, Yeonuk1; Johnson, Mark S.1,2; Knox, Sara H.3; Black, T. Andrew4; Dalmagro, Higo J.5; Kang, Minseok6; Kim, Joon6,7,8; Baldocchi, Dennis9
2019-10-21
发表期刊GLOBAL CHANGE BIOLOGY
ISSN1354-1013
EISSN1365-2486
出版年2019
文章类型Article;Early Access
语种英语
国家Canada; Brazil; South Korea; USA
英文摘要

Methane flux (FCH4) measurements using the eddy covariance technique have increased over the past decade. FCH4 measurements commonly include data gaps, as is the case with CO2 and energy fluxes. However, gap-filling FCH4 data are more challenging than other fluxes due to its unique characteristics including multidriver dependency, variabilities across multiple timescales, nonstationarity, spatial heterogeneity of flux footprints, and lagged influence of biophysical drivers. Some researchers have applied a marginal distribution sampling (MDS) algorithm, a standard gap-filling method for other fluxes, to FCH4 datasets, and others have applied artificial neural networks (ANN) to resolve the challenging characteristics of FCH4. However, there is still no consensus regarding FCH4 gap-filling methods due to limited comparative research. We are not aware of the applications of machine learning (ML) algorithms beyond ANN to FCH4 datasets. Here, we compare the performance of MDS and three ML algorithms (ANN, random forest [RF], and support vector machine [SVM]) using multiple combinations of ancillary variables. In addition, we applied principal component analysis (PCA) as an input to the algorithms to address multidriver dependency of FCH4 and reduce the internal complexity of the algorithmic structures. We applied this approach to five benchmark FCH4 datasets from both natural and managed systems located in temperate and tropical wetlands and rice paddies. Results indicate that PCA improved the performance of MDS compared to traditional inputs. ML algorithms performed better when using all available biophysical variables compared to using PCA-derived inputs. Overall, RF was found to outperform other techniques for all sites. We found gap-filling uncertainty is much larger than measurement uncertainty in accumulated CH4 budget. Therefore, the approach used for FCH4 gap filling can have important implications for characterizing annual ecosystem-scale methane budgets, the accuracy of which is important for evaluating natural and managed systems and their interactions with global change processes.


英文关键词artificial neural network comparison of gap-filling techniques eddy covariance machine learning marginal distribution sampling methane flux random forest support vector machine
领域气候变化 ; 资源环境
收录类别SCI-E
WOS记录号WOS:000491675100001
WOS关键词NET ECOSYSTEM EXCHANGE ; CARBON-DIOXIDE ; RICE FIELDS ; CH4 FLUXES ; SCALE ; CO2 ; UNCERTAINTY ; VARIABILITY ; ATMOSPHERE ; EMISSION
WOS类目Biodiversity Conservation ; Ecology ; Environmental Sciences
WOS研究方向Biodiversity & Conservation ; Environmental Sciences & Ecology
引用统计
文献类型期刊论文
条目标识符http://119.78.100.173/C666/handle/2XK7JSWQ/187739
专题气候变化
资源环境科学
作者单位1.Univ British Columbia, Inst Resources Environm & Sustainabil, Vancouver, BC, Canada;
2.Univ British Columbia, Dept Earth Ocean & Atmospher Sci, Vancouver, BC, Canada;
3.Univ British Columbia, Dept Geog, Vancouver, BC, Canada;
4.Univ British Columbia, Fac Land & Food Syst, Vancouver, BC, Canada;
5.Univ Cuiaba, Environm Sci Grad Program, Cuiaba, Brazil;
6.Natl Ctr AgroMeteorol, Seoul, South Korea;
7.Seoul Natl Univ, Dept Landscape Architecture & Rural Syst Engn, Seoul, South Korea;
8.Seoul Natl Univ, Interdisciplinary Program Agr & Forest Meteorol, Seoul, South Korea;
9.Univ Calif Berkeley, Dept Environm Sci Policy & Management, Berkeley, CA 94720 USA
推荐引用方式
GB/T 7714
Kim, Yeonuk,Johnson, Mark S.,Knox, Sara H.,et al. Gap-filling approaches for eddy covariance methane fluxes: A comparison of three machine learning algorithms and a traditional method with principal component analysis[J]. GLOBAL CHANGE BIOLOGY,2019.
APA Kim, Yeonuk.,Johnson, Mark S..,Knox, Sara H..,Black, T. Andrew.,Dalmagro, Higo J..,...&Baldocchi, Dennis.(2019).Gap-filling approaches for eddy covariance methane fluxes: A comparison of three machine learning algorithms and a traditional method with principal component analysis.GLOBAL CHANGE BIOLOGY.
MLA Kim, Yeonuk,et al."Gap-filling approaches for eddy covariance methane fluxes: A comparison of three machine learning algorithms and a traditional method with principal component analysis".GLOBAL CHANGE BIOLOGY (2019).
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