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首页> 外文期刊>Hydrology and Earth System Sciences Discussions >Adaptive clustering: reducing the computational costs of distributed (hydrological) modelling by exploiting time-variable similarity among model elements
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Adaptive clustering: reducing the computational costs of distributed (hydrological) modelling by exploiting time-variable similarity among model elements

机译:自适应聚类:通过利用模型元素之间的时间可变相似性来降低分布式(水文)建模的计算成本

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In this paper we propose adaptive clustering as a new method for reducing the computational efforts of distributed modelling. It consists of identifying similar-acting model elements during runtime, clustering them, running the model for just a few representatives per cluster, and mapping their results to the remaining model elements in the cluster. Key requirements for the application of adaptive clustering are the existence of (i)?many model elements with (ii)?comparable structural and functional properties and (iii)?only weak interaction (e.g.?hill slopes, subcatchments, or surface grid elements in hydrological and land surface models). The clustering of model elements must not only consider their time-invariant structural and functional properties but also their current state and forcing, as all these aspects influence their current functioning. Joining model elements into clusters is therefore a continuous task during model execution rather than a one-time exercise that can be done beforehand. Adaptive clustering takes this into account by continuously checking the clustering and re-clustering when necessary. We explain the steps of adaptive clustering and provide a proof of concept at the example of a distributed, conceptual hydrological model fit to the Attert basin in Luxembourg. The clustering is done based on normalised and binned transformations of model element states and fluxes. Analysing a 5-year time series of these transformed states and fluxes revealed that many model elements act very similarly, and the degree of similarity varies strongly with time, indicating the potential for adaptive clustering to save computation time. Compared to a standard, full-resolution model run used as a virtual reality “truth”, adaptive clustering indeed reduced computation time by 75%, while modelling quality, expressed as the Nash–Sutcliffe efficiency of subcatchment runoff, declined from?1 to?0.84. Based on this proof-of-concept application, we believe that adaptive clustering is a promising tool for reducing the computation time of distributed models. Being adaptive, it integrates and enhances existing methods of static grouping of model elements, such as lumping or grouped response units?(GRUs). It is compatible with existing dynamical methods such as adaptive time stepping or adaptive gridding and, unlike the latter, does not require adjacency of the model elements to be joined. As a welcome side effect, adaptive clustering can be used for system analysis; in our case, analysing the space–time patterns of clustered model elements confirmed that the hydrological functioning of the Attert catchment is mainly controlled by the spatial patterns of geology and precipitation.
机译:本文提出了自适应聚类作为降低分布式建模计算工作的新方法。它包括在运行时,群集它们期间识别类似于相似的模型元素,以每群集的几个代表运行模型,并将其结果映射到群集中的剩余模型元素。适应性聚类应用的关键要求是(i)的存在?许多具有(ii)的模型元素?相当的结构和功能特性和(iii)?仅弱相互作用(例如?山坡,子舱,或曲面栅格元件水文和陆地表面模型)。模型元素的群集不仅必须考虑其时间不变的结构和功能性,而且还要考虑它们的当前状态和强制,因为所有这些方面都会影响其当前的功能。因此,将模型元素进入集群是模型执行期间的连续任务,而不是预先完成的一次性锻炼。 Adaptive Clustering通过在必要时连续检查群集和重新群集来考虑这一点。我们解释了自适应聚类的步骤,并在分布式概念水文模型的示例下提供了卢森堡的Attert盆地的概念证明。群集是基于模型元素状态和助熔剂的标准化和漏分转换完成的。分析了这些转化状态的5年时间序列和助势显示,许多模型元素的作用非常类似,相似度随时间变化强烈,指示自适应聚类以节省计算时间的可能性。与标准,全分辨率模型运行用作虚拟现实“真相”,自适应聚类确实减少了计算时间75%,而建模质量,表示为纳米划分径流的纳什·苏克利ffe效率,从?1拒绝到? 0.84。基于此概念验证应用程序,我们认为自适应聚类是减少分布式模型计算时间的有希望的工具。适应性,它集成并增强了模型元素的静态分组的现有方法,例如集合或分组的响应单元?(Grus)。它与现有的动态方法兼容,例如自适应时间踩踏或自适应网格,并且与后者不同,不需要待邻接要元素的邻接。作为欢迎副作用,可用于系统分析的自适应聚类;在我们的情况下,分析集群模型元素的时空模式证实,图特特集水区的水文功能主要由地质和沉淀的空间模式控制。

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