A trait-based modelling approach towards dynamic predictions of understorey communities in temperate forests

IF 2.6 3区 环境科学与生态学 Q2 ECOLOGY Ecological Modelling Pub Date : 2024-09-16 DOI:10.1016/j.ecolmodel.2024.110873
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Abstract

Understorey communities in temperate forests have often been ignored in the study of the dynamics of forest structure and function, while evidence for the importance of this biotic layer is accumulating. Scarcity in understorey data with a high temporal resolution, and understorey data types that do not match popular vegetation modelling concepts, have limited previous modelling attempts to empirical models that are hard to extrapolate to new environmental conditions. Here we introduce a new process-based modelling approach designed specifically for understorey communities, whose dynamics are generally characterised by changes in (species-specific) cover data, while species characterisation is largely based on plant functional trait measurements. By confronting the model to data gathered in a large understorey mesocosm experiment, we show that our model concept is promising, and is able to predict performance differences within a species. Predictions across species were found to be more challenging, and will likely require new data on understorey traits and processes. In particular, new data on understorey carbon assimilation rates, vegetative phenology, plant architecture and belowground processes, are needed to advance the field of process-based understorey modelling.

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在研究森林结构和功能的动态过程中,温带森林的林下群落常常被忽视,而这一生物层重要性的证据却在不断积累。由于缺乏高时间分辨率的林下数据,以及林下数据类型与流行的植被建模概念不符,以往的建模尝试只能局限于经验模型,很难推断出新的环境条件。在这里,我们介绍一种新的基于过程的建模方法,这种方法专门针对林下群落设计,林下群落的动态特征一般由(物种特定的)覆盖数据的变化来描述,而物种特征则主要基于植物功能性状的测量。通过将模型与大型林下中观试验中收集的数据进行对比,我们发现我们的模型概念很有前途,能够预测物种内部的表现差异。跨物种预测更具挑战性,可能需要有关林下特征和过程的新数据。特别是需要有关林下碳同化率、植被物候、植物结构和地下过程的新数据,以推动基于过程的林下建模领域的发展。
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来源期刊
Ecological Modelling
Ecological Modelling 环境科学-生态学
CiteScore
5.60
自引率
6.50%
发文量
259
审稿时长
69 days
期刊介绍: The journal is concerned with the use of mathematical models and systems analysis for the description of ecological processes and for the sustainable management of resources. Human activity and well-being are dependent on and integrated with the functioning of ecosystems and the services they provide. We aim to understand these basic ecosystem functions using mathematical and conceptual modelling, systems analysis, thermodynamics, computer simulations, and ecological theory. This leads to a preference for process-based models embedded in theory with explicit causative agents as opposed to strictly statistical or correlative descriptions. These modelling methods can be applied to a wide spectrum of issues ranging from basic ecology to human ecology to socio-ecological systems. The journal welcomes research articles, short communications, review articles, letters to the editor, book reviews, and other communications. The journal also supports the activities of the [International Society of Ecological Modelling (ISEM)](http://www.isemna.org/).
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