Bayesian integration of flux tower data into process-based simulator for quantifying uncertainty in simulated output
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https://phys-techsciences.datastations.nl/citation?persistentId=doi:10.17026/dans-zc7-7549
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资源简介:
This research implemented a Bayesian statistical method to calibrate a widely used process-based simulator BIOME-BGC against estimates of gross primary production (GPP) data. Six parameters of BIOME-BGC were calibrated, which were also allowed to vary month-by-month to investigate the hypothesis that the phenology exhibited a seasonal cycle that was not accurately reproduced by the simulator. Time varying parameters substantially improved the simulated GPP as compared to GPP obtained with constant parameters.
提供机构:
DANS Data Station Physical and Technical Sciences
创建时间:
2016-12-15



