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A method to avoid spatial overfitting in estimation of grassland above-ground biomass on the Tibetan Plateau

Hui Yu, Yufeng Wu, Liting Niu, Yafan Chai, Qisheng Feng, Wei Wang, Tiangang Liang

2021Ecological Indicators76 citationsDOIOpen Access PDF

Abstract

Accurate assessments of grassland above-ground biomass (AGB) are crucial for the sustainable utilization and protection of grassland resources and the eco-environment. In this study, a random forest (RF) model combined with the forward feature selection (FFS) and leave-location-out cross-validation (LLO-CV) methods was trained to predict the dry weight (DW) of grassland AGB based on multiple factors. The final model exhibited a performance of R2 = 0.66, root mean square error (RMSE) of 503.86 kg DW/ha and mean absolute error (MAE) of 376.51 kg DW/ha. The spatial distribution of grassland AGB increased from northwest to southeast over the entire Tibetan Plateau (TP) from 2001 to 2018. Grassland AGB increased more than it decreased (70.6% vs 29.4%, respectively) during the study period. Using a combination of FFS and LLO-CV, spatial overfitting was reduced, and the predictive accuracy of the RF was improved, thus enhancing the ability to predict the AGB in unknown locations from training data. This study proposes a robust methodology with which to improve the transferability of machine learning algorithms to predict grassland AGB in unknown locations.

Topics & Concepts

GrasslandOverfittingRandom forestBiomass (ecology)Mean squared errorEnvironmental sciencePlateau (mathematics)Spatial distributionStatisticsMathematicsAgronomyComputer scienceBiologyMachine learningArtificial neural networkMathematical analysisRemote Sensing in AgricultureRemote Sensing and LiDAR ApplicationsForest ecology and management
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