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Predicting the resilience and recovery of aquatic systems: A framework for model evolution within environmental observatories

机译:预测水生系统的复原力和恢复:环境观测站内模型演变的框架

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Maintaining the health of aquatic systems is an essential component of sustainable catchment management, however, degradation of water quality and aquatic habitat continues to challenge scientists and policy-makers. To support management and restoration efforts aquatic system models are required that are able to capture the often complex trajectories that these systems display in response to multiple stressors. This paper explores the abilities and limitations of current model approaches in meeting this challenge, and outlines a strategy based on integration of flexible model libraries and data from observation networks, within a learning framework, as a means to improve the accuracy and scope of model predictions. The framework is comprised of a data assimilation component that utilizes diverse data streams from sensor networks, and a second component whereby model structural evolution can occur once the model is assessed against theoretically relevant metrics of system function. Given the scale and transdisciplinary nature of the prediction challenge, network science initiatives are identified as a means to develop and integrate diverse model libraries and workflows, and to obtain consensus on diagnostic approaches to model assessment that can guide model adaptation. We outline how such a framework can help us explore the theory of how aquatic systems respond to change by bridging bottom-up and top-down lines of enquiry, and, in doing so, also advance the role of prediction in aquatic ecosystem management.
机译:维持水生系统的健康是可持续流域管理的重要组成部分,但是,水质和水生生境的退化继续挑战着科学家和决策者。为了支持管理和恢复工作,需要一种水生系统模型,该模型能够捕获这些系统响应多个压力源而显示的通常复杂的轨迹。本文探讨了当前模型方法应对这一挑战的能力和局限性,并概述了在学习框架内基于灵活模型库和观测网络数据集成的策略,以提高模型预测的准确性和范围。 。该框架包括一个利用来自传感器网络的各种数据流的数据同化组件,以及第二个组件,通过该组件,一旦根据系统功能的理论相关指标对模型进行了评估,就可以发生模型结构的演变。考虑到预测挑战的规模和跨学科性质,将网络科学计划确定为开发和集成各种模型库和工作流程,并就可指导模型适应性的模型评估诊断方法达成共识的一种手段。我们概述了这样一个框架如何通过桥接自下而上和自上而下的询问线,来帮助我们探索水生系统如何应对变化的理论,并在此过程中进一步促进了预测在水生生态系统管理中的作用。

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