Journal of Advances in Modeling Earth Systems (Jul 2024)

Solar Radiation Triggers the Bimodal Leaf Phenology of Central African Evergreen Broadleaved Forests

  • Liyang Liu,
  • Philippe Ciais,
  • Fabienne Maignan,
  • Yuan Zhang,
  • Nicolas Viovy,
  • Marc Peaucelle,
  • Elizabeth Kearsley,
  • Koen Hufkens,
  • Marijn Bauters,
  • Colin A. Chapman,
  • Zheng Fu,
  • Shangrong Lin,
  • Haibo Lu,
  • Jiashun Ren,
  • Xueqin Yang,
  • Xianjin He,
  • Xiuzhi Chen

DOI
https://doi.org/10.1029/2023MS004014
Journal volume & issue
Vol. 16, no. 7
pp. n/a – n/a

Abstract

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Abstract Central African evergreen broadleaved forests around the equator exhibit a double annual cycle for canopy phenology and carbon uptake seasonality. The underlying drivers of this behavior are poorly understood and the double seasonality is not captured by land surface models (LSM). In this study, we developed a new leaf phenology module into the ORCHIDEE LSM (hereafter ORCHIDEE‐AFP), which utilizes short‐wave incoming radiation (SWd) as the main driver of leaf shedding and partial rejuvenation of the canopy, to simulate the double seasonality of central African forests. The ORCHIDEE‐AFP model has been evaluated by using field data from two forest sites and satellite observations of the enhanced vegetation index (EVI), which is a proxy of young leaf area index (LAIYoung) with leafage less than 6 months, as well as six products of GPP or GPP proxies. Results demonstrate that ORCHIDEE‐AFP successfully reproduces observed leaf turnover (R = 0.45) and young leaf abundance (R = 0.74), and greatly improve the representation of the bimodal leaf phenology. The proportion of grid cells with a significant positive correlation between the seasonality of modeled LAIYoung and observed EVI increased from 0.2% in the standard model to 27% in the new model. For photosynthesis, the proportions of grid cells with significant positive correlations between modeled and observed seasonality range from 26% to 65% across the six GPP evaluation products. The improved performance of the ORCHIDEE‐AFP model in simulating leaf phenology and photosynthesis of central African forests will allow a more accurate assessment of the impacts of climate change in tropical forests.

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