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Integrating models with data in ecology and palaeoecology: Advances towards a model-data fusion approach

机译:在生态学和古生态学中将模型与数据集成:迈向模型-数据融合方法

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摘要

It is increasingly being recognized that global ecological research requires novel methods and strategies in which to combine process-based ecological models and data in cohesive, systematic ways. Model-data fusion (MDF) is an emerging area of research in ecology and palaeoecology. It provides a new quantitative approach that offers a high level of empirical constraint over model predictions based on observations using inverse modelling and data assimilation (DA) techniques. Increasing demands to integrate model and data methods in the past decade has led to MDF utilization in palaeoecology, ecology and earth system sciences. This paper reviews key features and principles of MDF and highlights different approaches with regards to DA. After providing a critical evaluation of the numerous benefits of MDF and its current applications in palaeoecology (i.e. palaeoclimatic reconstruction, palaeovegetation and palaeocarbon storage) and ecology (i.e. parameter and uncertainty estimation, model error identification, remote sensing and ecological forecasting), the paper discusses method limitations, current challenges and future research direction. In the ongoing data-rich era of today's world, MDF could become an important diagnostic and prognostic tool in which to improve our understanding of ecological processes while testing ecological theory and hypotheses and forecasting changes in ecosystem structure, function and services.
机译:人们日益认识到,全球生态研究需要新颖的方法和策略,在这些方法和策略中,必须以有凝聚力的系统方式将基于过程的生态模型和数据结合起来。模型数据融合(MDF)是生态学和古生态学研究的一个新兴领域。它提供了一种新的定量方法,该方法基于使用逆建模和数据同化(DA)技术的观察结果,对模型预测提供了高水平的经验约束。在过去的十年中,集成模型和数据方法的需求不断增长,导致中密度纤维板在古生态学,生态学和地球系统科学中的应用。本文回顾了MDF的主要功能和原理,并重点介绍了有关DA的不同方法。在对中密度纤维板的众多优点及其在古生态学(即古气候重建,古植被和古碳储量)和生态学(即参数和不确定性估计,模型误差识别,遥感和生态预测)中的当前应用进行了重要评估之后,本文讨论了方法的局限性,当前的挑战和未来的研究方向。在当今世界不断发展的数据丰富的时代,MDF可以成为重要的诊断和预测工具,在其中我们可以通过测试生态理论和假设并预测生态系统结构,功能和服务的变化来增进我们对生态过程的理解。

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