社会环境系统建模的升级:当前的挑战,有前途的战略和生态学的见解

G. Dressler, J. Groeneveld, Jessica Hetzer, Anja Janischewski, Henning Nolzen, E. Rödig, Nina Schwarz, Franziska Taubert, Jule Thober, Meike Will, T. Williams, S. Wirth, B. Müller
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引用次数: 1

摘要

社会环境系统(SES)的可持续性挑战本质上是多尺度的,全球层面的变化来自于跨越不同空间、时间和组织尺度的社会环境过程。因此,SES模型需要包含多个尺度,这需要在尺度之间传递信息的可靠方法。由于SES的全球连通性日益增强,升级——增加模拟研究的范围或降低分辨率——正变得越来越重要。然而,与其他领域(如生态学或水文学)相比,SES模式的升级受到的关注较少,因此仍然是一个紧迫的挑战。为了加深对SES中升级的理解,我们采取了三个步骤。首先,我们回顾了SES和其他学科现有的升级方法。其次,我们确定了与社会经济地位升级特别相关的四个主要挑战:1)异质性,2)相互作用,3)学习和适应,以及4)新兴现象。第三,我们提出了一种方法,可以促进现有的升级方法向SES的转移,并使用了生态学中的两个良好实践实例。为了描述和比较这些方法,我们提出了五种一般升级策略的方案。该方案建立并统一了现有方案,并提供了一种标准化的方法来分类和表示现有的以及新的升级方法。我们展示了该方案如何帮助透明地呈现升级方法并揭示缩放假设,以及确定升级方法转移的限制。最后,我们指出了社会服务升级的研究途径,以解决已确定的升级挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Upscaling in socio-environmental systems modelling: Current challenges, promising strategies and insights from ecology
Sustainability challenges in socio-environmental systems (SES) are inherently multiscale, with global-level changes emerging from socio-environmental processes that operate across different spatial, temporal, and organisational scales. Models of SES therefore need to incorporate multiple scales, which requires sound methodologies for transferring information between scales. Due to the increasing global connectivity of SES, upscaling – increasing the extent or decreasing the resolution of a modelling study – is becoming progressively more important. However, upscaling in SES models has received less attention than in other fields (e.g., ecology or hydrology) and therefore remains a pressing challenge. To advance the understanding of upscaling in SES, we take three steps. First, we review existing upscaling approaches in SES as well as other disciplines. Second, we identify four main challenges that are particularly relevant to upscaling in SES: 1) heterogeneity, 2) interactions, 3) learning and adaptation, and 4) emergent phenomena. Third, we present an approach that facilitates the transfer of existing upscaling methods to SES, using two good practice examples from ecology. To describe and compare these methods, we propose a scheme of five general upscaling strategies. This scheme builds upon and unifies existing schemes and provides a standardised way to classify and represent existing as well as new upscaling methods. We demonstrate how the scheme can help to transparently present upscaling methods and uncover scaling assumptions, as well as to identify limits for the transfer of upscaling methods. We finish by pointing out research avenues on upscaling in SES to address the identified upscaling challenges.
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