Improving Phenology Representation of Deciduous Forests in the Community Land Model: Evaluation and Modification Using Long‐Term Observations in China

Author:

Lv Yan123,Zhang Li124ORCID,Li Pan5,He Honglin124ORCID,Ren Xiaoli124,Xie Zongqiang6ORCID,Wang Yang6,Wang Anzhi7,Shi FuSun8,Chang Ruiying9ORCID,Xiao Jingfeng10ORCID,Wang Xufeng11ORCID

Affiliation:

1. Key Laboratory of Ecosystem Network Observation and Modeling Institute of Geographic Sciences and Natural Resources Research Chinese Academy of Sciences Beijing China

2. National Ecosystem Science Data Center Institute of Geographic Sciences and Natural Resources Research Chinese Academy of Sciences Beijing China

3. University of Chinese Academy of Sciences Beijing China

4. College of Resources and Environment University of Chinese Academy of Sciences Beijing China

5. School of Earth System Science Tianjin University Tianjin China

6. Institute of Botany Chinese Academy of Sciences Beijing China

7. Institute of Applied Ecology Chinese Academy of Sciences Shenyang China

8. Chengdu Institute of Biology Chinese Academy of Sciences Chengdu China

9. Institute of Mountain Hazards and Environment Chinese Academy of Sciences Chengdu China

10. Earth Systems Research Center Institute for the Study of Earth, Oceans, and Space University of New Hampshire Durham NH USA

11. Key Laboratory of Remote Sensing of Gansu Province Heihe Remote Sensing Experimental Research Station Northwest Institute of Eco‐Environment and Resources Chinese Academy of Sciences Lanzhou China

Abstract

AbstractPhenology is an important factor indicating environmental changes and regulates the variations of carbon, water, and energy exchange. However, phenology models exhibit large uncertainties due to limited understanding of its mechanisms. In this study, we modified deciduous phenology scheme based on the evaluation of different phenological models using long‐term observations at Chinese Ecosystem Research Network with CLM4.5. The alternating leaf unfolding model and summer‐influenced autumn leaf falling model that we proposed, performed best in simulating leaf‐unfolding and leaf‐falling. Compared with the observed and remote‐sensed phenology, the modified model could better simulate the phenological dates at the site and regional scale. Moreover, the modified model improved the simulation of gross primary productivity (GPP) by decreasing the errors of modeled carbon uptake duration and amplitude. Furthermore, the advance in leaf‐unfolding slowed down from 0.20 days/year during 1981–2015 to 0.11 days/year during 2016–2100 under RCP4.5 because of the slowdown of climate warming, but the delay in leaf‐falling changed little. By the last decade of the twenty‐first century, the leaf‐unfolding would advance (8 days) and leaf‐falling would delay (16 days). The subtropical region had large interannual variation (IAV) in leaf‐unfolding because of the high sensitivity to temperature. The phenological dates IAV in the cold temperate region increased due to enhanced temperature IAV. We suggest that the deciduous phenology models, especially the leaf‐falling process, used in Community Land Model need to be improved to reduce the errors in predicting phenology and carbon flux in the future.

Funder

National Natural Science Foundation of China

Publisher

American Geophysical Union (AGU)

Subject

General Earth and Planetary Sciences,Environmental Chemistry,Global and Planetary Change

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