Process-oriented models of autumn leaf phenology: ways to sound calibration and implications of uncertain projections

IF 4 3区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Geoscientific Model Development Pub Date : 2023-12-11 DOI:10.5194/gmd-16-7171-2023
M. Meier, C. Bigler
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引用次数: 1

Abstract

Abstract. Autumn leaf phenology marks the end of the growing season, during which trees assimilate atmospheric CO2. The length of the growing season is affected by climate change because autumn phenology responds to climatic conditions. Thus, the timing of autumn phenology is often modeled to assess possible climate change effects on future CO2-mitigating capacities and species compositions of forests. Projected trends have been mainly discussed with regards to model performance and climate change scenarios. However, there has been no systematic and thorough evaluation of how performance and projections are affected by the calibration approach. Here, we analyzed >2.3 million performances and 39 million projections across 21 process-oriented models of autumn leaf phenology, 5 optimization algorithms, ≥7 sampling procedures, and 26 climate model chains from two representative concentration pathways. Calibration and validation were based on >45 000 observations for beech, oak, and larch from 500 central European sites each. Phenology models had the largest influence on model performance. The best-performing models were (1) driven by daily temperature, day length, and partly by seasonal temperature or spring leaf phenology; (2) calibrated with the generalized simulated annealing algorithm; and (3) based on systematically balanced or stratified samples. Autumn phenology was projected to shift between −13 and +20 d by 2080–2099 compared to 1980–1999. Climate scenarios and sites explained more than 80 % of the variance in these shifts and thus had an influence 8 to 22 times greater than the phenology models. Warmer climate scenarios and better-performing models predominantly projected larger backward shifts than cooler scenarios and poorer models. Our results justify inferences from comparisons of process-oriented phenology models to phenology-driving processes, and we advocate for species-specific models for such analyses and subsequent projections. For sound calibration, we recommend a combination of cross-validations and independent tests, using randomly selected sites from stratified bins based on mean annual temperature and average autumn phenology, respectively. Poor performance and little influence of phenology models on autumn phenology projections suggest that current models are overlooking relevant drivers. While the uncertain projections indicate an extension of the growing season, further studies are needed to develop models that adequately consider the relevant processes for autumn phenology.
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以过程为导向的秋叶物候模型:健全校准的方法和不确定预测的影响
摘要秋叶物候标志着生长季节的结束,在此期间树木吸收大气中的二氧化碳。由于秋季物候期会对气候条件做出反应,因此生长季的长度会受到气候变化的影响。因此,秋季物候的时间通常会被模拟,以评估气候变化可能对未来的二氧化碳吸收能力和森林物种组成产生的影响。对预测趋势的讨论主要涉及模型性能和气候变化情景。然而,对于校准方法如何影响性能和预测,还没有系统而全面的评估。在这里,我们分析了 21 个以过程为导向的秋叶物候模型、5 种优化算法、≥7 种采样程序和 26 个气候模型链的 230 万次性能和 3,900 万次预测,这些模型来自两种具有代表性的浓度路径。校准和验证基于欧洲中部 500 个地点对山毛榉、橡树和落叶松的大于 45 000 次观测。物候模型对模型性能的影响最大。表现最好的模型是:(1) 由日温和日长驱动,部分由季节温度或春季叶片物候驱动;(2) 采用广义模拟退火算法校准;(3) 基于系统平衡或分层样本。与 1980-1999 年相比,预计到 2080-2099 年,秋季物候将在-13 至 +20 d 之间变化。气候情景和地点解释了这些变化中 80% 以上的变异,因此其影响比物候模型大 8 到 22 倍。与较冷的气候情景和较差的气候模型相比,较暖的气候情景和表现较好的气候模型主要预测了更大的后向移动。我们的结果证明了将以过程为导向的物候模式与物候驱动过程进行比较所得出的推论是正确的,我们提倡在进行此类分析和后续预测时使用特定物种的模式。为了进行合理的校准,我们建议采用交叉验证和独立测试相结合的方法,分别从基于年平均气温和秋季平均物候的分层箱中随机选择站点。物候模型对秋季物候预测的表现不佳且影响甚微,这表明当前的模型忽略了相关的驱动因素。虽然不确定的预测结果表明生长季节会延长,但仍需进一步研究,以开发能充分考虑秋季物候相关过程的模型。
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来源期刊
Geoscientific Model Development
Geoscientific Model Development GEOSCIENCES, MULTIDISCIPLINARY-
CiteScore
8.60
自引率
9.80%
发文量
352
审稿时长
6-12 weeks
期刊介绍: Geoscientific Model Development (GMD) is an international scientific journal dedicated to the publication and public discussion of the description, development, and evaluation of numerical models of the Earth system and its components. The following manuscript types can be considered for peer-reviewed publication: * geoscientific model descriptions, from statistical models to box models to GCMs; * development and technical papers, describing developments such as new parameterizations or technical aspects of running models such as the reproducibility of results; * new methods for assessment of models, including work on developing new metrics for assessing model performance and novel ways of comparing model results with observational data; * papers describing new standard experiments for assessing model performance or novel ways of comparing model results with observational data; * model experiment descriptions, including experimental details and project protocols; * full evaluations of previously published models.
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