DeepPhenoMem V1.0: deep learning modelling of canopy greenness dynamics accounting for multi-variate meteorological memory effects on vegetation phenology

被引:0
|
作者
Liu, Guohua [1 ,2 ]
Migliavacca, Mirco [3 ]
Reimers, Christian [1 ]
Kraft, Basil
Reichstein, Markus [1 ]
Richardson, Andrew D. [4 ,5 ]
Wingate, Lisa [6 ]
Delpierre, Nicolas [7 ]
Yang, Hui [1 ]
Winkler, Alexander J. [1 ]
机构
[1] Max Planck Inst Biogeochem, Dept Biogeochem Integrat, D-07745 Jena, Germany
[2] Nanjing Univ Informat Sci & Technol, Jiangsu Key Lab Agr Meteorol, Nanjing 210044, Peoples R China
[3] European Commiss Joint Res Ctr, Via Enr Fermi, I-21027 Ispra, VA, Italy
[4] No Arizona Univ, Sch Informat Comp & Cyber Syst, Soc, Flagstaff, AZ 86011 USA
[5] No Arizona Univ, Ctr Ecosyst Sci & Soc, Flagstaff, AZ 86011 USA
[6] UMR ISPA, Bordeaux Sci Agro, INRAE, F-33140 Villenave Dornon, France
[7] Univ Paris Saclay, AgroParisTech, Ecol Systemat & Evolut, CNRS, F-91190 Gif Sur Yvette, France
基金
美国农业部; 欧洲研究理事会; 美国国家科学基金会;
关键词
CLIMATE-CHANGE; ECOSYSTEM RESPIRATION; TREE PHENOLOGY; PLANT; RESPONSES; CARBON; WATER; FEEDBACKS; SATELLITE; DROUGHT;
D O I
10.5194/gmd-17-6683-2024
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
Vegetation phenology plays a key role in controlling the seasonality of ecosystem processes that modulate carbon, water and energy fluxes between the biosphere and atmosphere. Accurate modelling of vegetation phenology in the interplay of Earth's surface and the atmosphere is thus crucial to understand how the coupled system will respond to and shape climatic changes. Phenology is controlled by meteorological conditions at different timescales: on the one hand, changes in key meteorological variables (temperature, water, radiation) can have immediate effects on the vegetation development; on the other hand, phenological changes can be driven by past environmental conditions, known as memory effects. However, the processes governing meteorological memory effects on phenology are not completely understood, resulting in their limited performance of vegetation phenology represented in land surface models. A deep learning model, specifically a long short-term memory network (LSTM), has the potential to capture and model the meteorological memory effects on vegetation phenology. Here, we apply the LSTM to model the vegetation phenology using meteorological drivers and high-temporal-resolution canopy greenness observations through digital repeat photography by the PhenoCam network. We compare a multiple linear regression model, a no-memory-effect LSTM model and a full-memory-effect LSTM model to predict the whole seasonal greenness trajectory and the corresponding phenological transition dates across 50 sites and 317 site years during 2009-2018, covering deciduous broadleaf forests, evergreen needleleaf forests and grasslands. Results show that the deep learning model outperforms the multiple linear regression model, and the full-memory-effect LSTM model performs better than the no-memory-effect model for all three plant function types (median R-2 of 0.878, 0.957 and 0.955 for broadleaf forests, evergreen needleleaf forests and grasslands). We also find that the full-memory-effect LSTM model is capable of predicting the seasonal dynamic variations of canopy greenness and reproducing trends in shifting phenological transition dates. We also performed a sensitivity analysis of the full-memory-effect LSTM model to assess its plausibility, revealing its coherence with established knowledge of vegetation phenology sensitivity to meteorological conditions, particularly changes in temperature. Our study highlights that (1) multi-variate meteorological memory effects play a crucial role in vegetation phenology, and (2) deep learning opens up new avenues for improving the representation of vegetation phenological processes in land surface models via a hybrid modelling approach.
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页码:6683 / 6701
页数:19
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