2023
DOI: 10.3390/rs15143475
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Assessment of Six Machine Learning Methods for Predicting Gross Primary Productivity in Grassland

Abstract: Grassland gross primary productivity (GPP) is an important part of global terrestrial carbon flux, and its accurate simulation and future prediction play an important role in understanding the ecosystem carbon cycle. Machine learning has potential in large-scale GPP prediction, but its application accuracy and impact factors still need further research. This paper takes the Mongolian Plateau as the research area. Six machine learning methods (multilayer perception, random forest, Adaboost, gradient boosting de… Show more

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Cited by 6 publications
(1 citation statement)
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“…The novelty of this study is integrating maize phenology (represented by NMP) and leaf photosynthetic rate factor determined by phenology (represented by SLN) into the model inputs. The selection of appropriate input variables plays a key role in GPP prediction [89]. The contribution rate of selected variables and the importance of SLN and NMP are further verified by ranking the importance of input factors in the RF method.…”
Section: Discussionmentioning
confidence: 98%
“…The novelty of this study is integrating maize phenology (represented by NMP) and leaf photosynthetic rate factor determined by phenology (represented by SLN) into the model inputs. The selection of appropriate input variables plays a key role in GPP prediction [89]. The contribution rate of selected variables and the importance of SLN and NMP are further verified by ranking the importance of input factors in the RF method.…”
Section: Discussionmentioning
confidence: 98%