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Exploring the Individualized Effect of Climatic Drivers on MODIS Net Primary Productivity through an Explainable Machine Learning Framework
by
Cai, Xitian
, Zeng, Zhenzhong
, Zhang, Guo
, Duan, Kai
, Liu, Bingjun
, Li, Luyi
in
Amazon
/ Amazonia
/ Carbon dioxide
/ Carbon dioxide concentration
/ Carbon sequestration
/ climate
/ Climate change
/ climatic drivers
/ Datasets
/ ecoregions
/ Ecosystems
/ Forests
/ Humidity
/ Learning algorithms
/ Machine learning
/ MODIS
/ Moisture content
/ Moisture effects
/ Net Primary Productivity
/ Precipitation
/ Productivity
/ Radiation
/ Rainforests
/ Remote sensing
/ Respiration
/ Spectroradiometers
/ temperature
/ Vegetation
/ vegetation response
/ Wind speed
2022
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Exploring the Individualized Effect of Climatic Drivers on MODIS Net Primary Productivity through an Explainable Machine Learning Framework
by
Cai, Xitian
, Zeng, Zhenzhong
, Zhang, Guo
, Duan, Kai
, Liu, Bingjun
, Li, Luyi
in
Amazon
/ Amazonia
/ Carbon dioxide
/ Carbon dioxide concentration
/ Carbon sequestration
/ climate
/ Climate change
/ climatic drivers
/ Datasets
/ ecoregions
/ Ecosystems
/ Forests
/ Humidity
/ Learning algorithms
/ Machine learning
/ MODIS
/ Moisture content
/ Moisture effects
/ Net Primary Productivity
/ Precipitation
/ Productivity
/ Radiation
/ Rainforests
/ Remote sensing
/ Respiration
/ Spectroradiometers
/ temperature
/ Vegetation
/ vegetation response
/ Wind speed
2022
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Do you wish to request the book?
Exploring the Individualized Effect of Climatic Drivers on MODIS Net Primary Productivity through an Explainable Machine Learning Framework
by
Cai, Xitian
, Zeng, Zhenzhong
, Zhang, Guo
, Duan, Kai
, Liu, Bingjun
, Li, Luyi
in
Amazon
/ Amazonia
/ Carbon dioxide
/ Carbon dioxide concentration
/ Carbon sequestration
/ climate
/ Climate change
/ climatic drivers
/ Datasets
/ ecoregions
/ Ecosystems
/ Forests
/ Humidity
/ Learning algorithms
/ Machine learning
/ MODIS
/ Moisture content
/ Moisture effects
/ Net Primary Productivity
/ Precipitation
/ Productivity
/ Radiation
/ Rainforests
/ Remote sensing
/ Respiration
/ Spectroradiometers
/ temperature
/ Vegetation
/ vegetation response
/ Wind speed
2022
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Exploring the Individualized Effect of Climatic Drivers on MODIS Net Primary Productivity through an Explainable Machine Learning Framework
Journal Article
Exploring the Individualized Effect of Climatic Drivers on MODIS Net Primary Productivity through an Explainable Machine Learning Framework
2022
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Overview
Along with the development of remote sensing technology, the spatial–temporal variability of vegetation productivity has been well observed. However, the drivers controlling the variation in vegetation under various climate gradients remain poorly understood. Identifying and quantifying the independent effects of driving factors on a natural process is challenging. In this study, we adopted a potent machine learning (ML) model and an ML interpretation technique with high fidelity to disentangle the effects of climatic variables on the long-term averaged net primary productivity (NPP) across the Amazon rainforests. Specifically, the eXtreme Gradient Boosting (XGBoost) model was employed to model the Moderate-resolution Imaging Spectroradiometer (MODIS) NPP data, and the Shapley addictive explanation (SHAP) method was introduced to account for nonlinear relationships between variables identified by the model. Results showed that the dominant driver of NPP across the Amazon forests varied in different regions, with temperature dominating the most considerable portion of the ecoregion with a high importance score. In addition, light augmentation, increased CO2 concentration, and decreased precipitation positively contributed to Amazonia NPP. The wind speed for most vegetated areas was under the optimum, which benefits NPP, while sustained high wind speed would bring substantial NPP loss. We also found a non-monotonic response of Amazonia NPP to VPD and attributed this relationship to the moisture load in Amazon forests. Our application of the explainable machine learning framework to identify the underlying physical mechanism behind NPP could be a reference for identifying relationships between components in natural processes.
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