4.7 Article

Comparison of Machine Learning Methods to Up-Scale Gross Primary Production

Journal

REMOTE SENSING
Volume 13, Issue 13, Pages -

Publisher

MDPI
DOI: 10.3390/rs13132448

Keywords

GPP; up-scaling; machine learning; validation

Funding

  1. National Key R&D Program of China [2016YFB0501502, 2017YFA0603002]
  2. National Natural Science Foundation of China [41531174]
  3. Fundamental Research Funds of CAF [CAFYBB2021SY009]

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This study successfully upscaled ground eddy covariance systems' gross primary production (GPP) to a regional scale using machine learning methods, with random forest achieving the highest accuracy in the validation process.
Eddy covariance observation is an applicable way to obtain accurate and continuous carbon flux at flux tower sites, while remote sensing technology could estimate carbon exchange and carbon storage at regional and global scales effectively. However, it is still challenging to up-scale the field-observed carbon flux to a regional scale, due to the heterogeneity and the unstable air conditions at the land surface. In this paper, gross primary production (GPP) from ground eddy covariance systems were up-scaled to a regional scale by using five machine learning methods (Cubist regression tree, random forest, support vector machine, artificial neural network, and deep belief network). Then, the up-scaled GPP were validated using GPP at flux tower sites, weighted GPP in the footprint, and MODIS GPP products. At last, the sensitivity of the input data (normalized difference vegetation index, fractional vegetation cover, shortwave radiation, relative humidity and air temperature) to the precision of up-scaled GPP was analyzed, and the uncertainty of the machine learning methods was discussed. The results of this paper indicated that machine learning methods had a great potential in up-scaling GPP at flux tower sites. The validation of up-scaled GPP, using five machine learning methods, demonstrated that up-scaled GPP using random forest obtained the highest accuracy.

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