老王论坛

旧版入口
|
English
科研动态
王楠楠(博士生)、刘耀林等的论文在AGRICULTURAL AND FOREST METEOROLOGY刊出
发布时间:2025-09-15     发布者:易真         审核者:任福     浏览次数:

标题: Variability and uncertainty in net ecosystem carbon exchange modeling: Systematic estimates at global flux sites via ensemble machine learning

作者: Wang, NN (Wang, Nannan); Yue, ZJ (Yue, Zijian); Liu, YL (Liu, Yaolin); Tong, ZM (Tong, Zhaomin); Liu, YF (Liu, Yanfang); Lu, YC (Lu, Yanchi); Shi, YG (Shi, Yongge)

来源出版物: AGRICULTURAL AND FOREST METEOROLOGY : 374 文献号: 110784 DOI: 10.1016/j.agrformet.2025.110784 Early Access Date: AUG 2025 Published Date: 2025 NOV 15

摘要: Predicting net ecosystem carbon exchange (NEE) is crucial for understanding carbon dynamics. Machine learning (ML) has become pivotal for site-level modeling and spatial upscaling for NEE, yet spatiotemporal variability and uncertainty challenge its reliability and universality. Systematically quantifying variability and uncertainty sources in NEE modeling remains lacking due to the scale-dependent nature of carbon flux variations. Thus, this study established a systematic framework to evaluate how model construction choices and environmental predictors could impact ML-based NEE modeling across timescales with multifaceted evaluation criteria. Using observations from FLUXNET 2015, AmeriFlux, and ICOS, alongside multi-source data, this study conducted separate models for each combination of four timescales (daily, weekly, monthly, and yearly), four tree-based ensemble algorithms, and three data-splitting rules. Multi-faceted assessment included overall, across-site, seasonal, and anomaly perspectives. Key findings include: (1) Model construction. Boosting (LightGBM, XGBoost, and CatBoost) excelled in capturing temporal variability and anomaly, whereas bagging (Random Forest) was effective for spatial variability. Complete-random data splitting increased overfitting risks and should be avoided. (2) Predictors. Environmental controls on accuracy varied with timescales, data situations, and ambient conditions. Predictors for NEE modeling should be selected based on their causal importance (e.g., evapotranspiration, vapor pressure deficit, and air temperature) and statistical relationships (e.g., leaf area index, elevation, and precipitation) with NEE, tailored to specific ambient conditions. Excessive predictors may degrade NEE prediction accuracy, particularly at large scales or in regions with high environment like arid areas. (3) Evaluation criteria. Rigorous multi-metric accuracy assessments proved essential, as reliance on single metrics or overall accuracy could yield contradictory results. For instance, daily models achieved higher anomaly NSE (0.33 vs. 0.25) but lower overall NSE (0.54 vs. 0.59) than monthly models. NEE predictions exhibited greater challenges in accounting for spatial than temporal variability, resulting in lower accuracy for inter-annual than intraannual predictions. This study advances ML-driven carbon flux modeling with actionable insights.

作者关键词: Net ecosystem exchange; FLUXNET; Tree-based ensemble machine learning; Eddy covariance flux measurements; Model variability and uncertainty; Carbon cycle

KeyWords Plus: INTERANNUAL VARIABILITY; TERRESTRIAL CARBON; KM RESOLUTION; DATASET; FOREST; RADIATION; PRODUCTS; DIOXIDE; NETWORK; CO2

地址: [Wang, Nannan; Liu, Yaolin; Tong, Zhaomin; Liu, Yanfang; Lu, Yanchi] Wuhan Univ, Sch Resource & Environm Sci, 129 Luoyu Rd, Wuhan 430079, Hubei, Peoples R China.

[Yue, Zijian] Chinese Acad Sci & Minist Water Resources, Inst Soil & Water Conservat, State Key Lab Soil Eros & Dryland Farming Loess P, Yangling 712100, Shaanxi, Peoples R China.

[Yue, Zijian] Chinese Acad Sci, China Univ Chinese Acad Sci, Beijing 100049, Peoples R China.

[Liu, Yaolin] Duke Kunshan Univ, 8 Duke Ave, Kunshan 215316, Jiangsu, Peoples R China.

[Shi, Yongge] Spatial Planning Inst Hubei Prov, 50 Zhongnan Rd, Wuhan 430000, Hubei, Peoples R China.

通讯作者地址: Liu, YL (通讯作者)Wuhan Univ, Sch Resource & Environm Sci, 129 Luoyu Rd, Wuhan 430079, Hubei, Peoples R China.

Liu, YL (通讯作者)Duke Kunshan Univ, 8 Duke Ave, Kunshan 215316, Jiangsu, Peoples R China.

电子邮件地址: [email protected]; [email protected]

影响因子:5.7