ECOSENSE - 通过智能自主传感器网络对生态系统过程的时空动态进行多尺度量化和建模

Christiane Werner, Ulrike Wallrabe, Andreas Christen, L. Comella, Carsten Dormann, Anna Göritz, Rüdiger Grote, S. Haberstroh, M. Jouda, Ralf Kiese, Barbara Koch, Jan Korvink, Jürgen Kreuzwieser, Friederike Lang, Julian Müller, Oswald Prucker, Alexander Reiterer, Jürgen Rühe, Stefan Rupitsch, H. Schack-Kirchner, Katrin Schmitt, Nina Stobbe, Markus Weiler, Peter Woias, Jürgen Wöllenstein
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Legacy effects, for example, altered response after previous stress and retarded recovery of forests after climate extremes, are not captured in state-of-the-art models. Currently, we are lacking the appropriate and interconnected measurement, data assimilation and modelling tools allowing for a comprehensive, real-time quantification of key processes at high spatio-temporal coverage in heterogeneous environments. Moreover, since climate impacts are highly unpredictable with respect to timing and location, future research will require novel mobile, easily deployable and cost-efficient approaches. ECOSENSE, therefore, assembles expertise from environmental and engineering sciences, both being excellently paired at the University of Freiburg.\n Our interdisciplinary research project will investigate all relevant scales in a next-generation ecosystem research assessment (ECOSENSE). 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引用次数: 0

摘要

全球气候变化威胁着世界各地的生态系统功能。森林生态系统对于碳固存尤为重要,可缓冲气候变化并提供社会经济服务。然而,热浪、干旱和洪水等经常性压力会影响森林,对其碳汇能力、抗旱能力和可持续性产生潜在的连带影响。在这些复杂的森林系统中,人们普遍缺乏有关压力对土壤-植物-大气相互作用的多种驱动过程的影响的知识,而且未来变化的不确定性极高。因此,要预测森林对气候变化的反应,就必须大大提高对碳和水循环过程的认识,这些过程涉及不同的时间(分钟到季节)和空间(叶片到生态系统)尺度,涵盖大气圈、生物圈、土壤圈和水圈等组成部分。许多控制碳和水交换的相关过程都发生在小尺度上(如根瘤层、单片叶片),具有很高的空间和时间变异性,对其限制较少。然而,相互作用和反馈回路可能是放大或抑制系统对压力反应的关键因素。此外,在结构和功能多样化的生态系统中,这些非线性过程的时空比例规则尚不清楚。最先进的模型也无法捕捉到遗留效应,例如,之前的应激反应会改变,极端气候后森林的恢复速度会减慢。目前,我们缺乏适当的、相互关联的测量、数据同化和建模工具,无法对异质环境中高时空覆盖率的关键过程进行全面、实时的量化。此外,由于气候影响在时间和地点方面极难预测,未来的研究将需要新颖的、可移动的、易于部署的和具有成本效益的方法。因此,ECOSENSE 项目汇集了弗莱堡大学环境科学和工程科学领域的专业人才。我们的跨学科研究项目将在下一代生态系统研究评估(ECOSENSE)中对所有相关尺度进行研究。我们的愿景是在了解分级过程相互作用的基础上,检测和预测生态系统功能的关键变化。在第一阶段,ECOSENSE 将通过调查水和碳的汇集和通量,即二氧化碳交换、同位素鉴别和挥发性有机化合物 (VOC),以及通过遥感和现场叶绿素荧光检测压力指标,来探索这些过程的相互作用。为了完成这些研究任务,ECOSENSE 将开发、实施和测试一个分布式自主智能传感器网络,该网络以新型微型传感器为基础,可满足偏远和恶劣森林环境的特定需求。它们将测量自然复杂结构森林系统中生态系统池和通量的时空动态,并将生理影响降至最低。测量数据将实时传输到一个复杂的数据库中,该数据库将通过人工智能进行过程分析,并建立基于过程的实时生态系统模型,用于现在和预测应用。因此,ECOSENSE 将:i) 通过确定森林碳和水交换的非生物和生理过程的层次和相互作用,为综合生态系统研究开辟新天地;ii) 深入了解复杂的生态系统对环境压力因素的反应;iii) 能够预测生态系统功能和可持续性中基于过程的变化。我们新颖的 ECOSENSE 工具包已在受控极端气候实验和我们的 ECOSENSE 森林中进行了测试和验证,将为在广阔和偏远的生态系统中进行快速评估开辟新天地。因此,ECOSENSE 将为数据采集提供一个独特的途径,从而为前所未有的跨越尺度的生态系统理解和建模提供可能。
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ECOSENSE - Multi-scale quantification and modelling of spatio-temporal dynamics of ecosystem processes by smart autonomous sensor networks
Global climate change threatens ecosystem functioning worldwide. Forest ecosystems are particularly important for carbon sequestration, thereby buffering climate change and providing socio-economic services. However, recurrent stresses, such as heat waves, droughts and floods can affect forests with potential cascading effects on their carbon sink capacity, drought resilience and sustainability. Knowledge about the stress impact on the multitude of processes driving soil-plant-atmosphere interactions within these complex forest systems is widely lacking and uncertainty about future changes extremely high. Thus, forecasting forest response to climate change will require a dramatically improved process understanding of carbon and water cycling across various temporal (minutes to seasons) and spatial (leaf to ecosystem) scales covering atmosphere, biosphere, pedosphere and hydrosphere components. Many relevant processes controlling carbon and water exchange occur at small scales (e.g. rhizosphere, single leaf) with a high spatial and temporal variability, which is poorly constrained. However, interactions and feedback loops can be key players that amplify or dampen a system’s response to stress. Moreover, spatial and temporal scaling rules for these non-linear processes in structurally and functionally diverse ecosystems are unknown. Legacy effects, for example, altered response after previous stress and retarded recovery of forests after climate extremes, are not captured in state-of-the-art models. Currently, we are lacking the appropriate and interconnected measurement, data assimilation and modelling tools allowing for a comprehensive, real-time quantification of key processes at high spatio-temporal coverage in heterogeneous environments. Moreover, since climate impacts are highly unpredictable with respect to timing and location, future research will require novel mobile, easily deployable and cost-efficient approaches. ECOSENSE, therefore, assembles expertise from environmental and engineering sciences, both being excellently paired at the University of Freiburg. Our interdisciplinary research project will investigate all relevant scales in a next-generation ecosystem research assessment (ECOSENSE). Our vision is to detect and forecast critical changes in ecosystem functioning, based on the understanding of hierarchical process interaction. In the first phase, ECOSENSE will explore these process interactions by investigating pools and fluxes of water and carbon, i.e. CO2 exchange, isotope discrimination and volatile organic compounds (VOC), as well as stress indicators by remotely and in situ sensed chlorophyll fluorescence. To address these research tasks, ECOSENSE will develop, implement and test a distributed, autonomous, intelligent sensor network, based on novel microsensors tailored to the specific needs in remote and harsh forest environments. They will measure the spatio-temporal dynamics of ecosystem pools and fluxes in a naturally complex structured forest system with minimal physiological impact. Measured data will be transferred in real-time into a sophisticated database, which will be explored for process analysis, conducted by Artificial Intelligence and close to real-time process-based ecosystem models for now- and forecasting applications. Thereby, ECOSENSE will: i) break new ground for integrative ecosystem research by identifying hierarchies and interactions of abiotic and physiological processes of forest carbon and water exchange, ii) provide a profound understanding of complex ecosystem responses to environmental stressors and iii) enable the prediction of process-based alterations in ecosystem functioning and sustainability. Our novel ECOSENSE toolkit, tested and validated in controlled climate extreme experiments and our ECOSENSE Forest, will open new horizons for rapid assessment in vast and remote ecosystems. Thereby, ECOSENSE will allow for a unique avenue of data acquisition and, consequently, for unprecedented scale-crossing ecosystem understanding and modelling.
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