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首页> 外文期刊>Journal of Hydrology >Multisite stochastic weather generation using cluster analysis and k-nearest neighbor time series resampling
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Multisite stochastic weather generation using cluster analysis and k-nearest neighbor time series resampling

机译:使用聚类分析和k最近邻时间序列重采样的多站点随机天气生成

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摘要

We offer a multisite stochastic weather generator which is an enhancement to the traditional K-nearest neighbor resampling approach. The proposed weather generator consists of three main components: (i) Clustering of spatial locations into homogeneous regions based on a selected attribute (precipitation), (ii) Markov transition probabilities (either on individual clusters or) over all eight wet/dry states of the threecluster system to model the spatial precipitation occurrence, and (iii) the traditional K-NN weather generator applied to each cluster-averaged weather time series to generate weather sequences at all the desired locations. The weather generator is also adapted to conditional simulation based on seasonal forecasts involving modification of the third component. We demonstrate the utility of this approach by simulating daily weather sequences at 66 locations in the 25,000 sq. mile San Juan River watershed, a tributary of the Colorado River, USA. As the classic K-NN approach involves sampling from a domainaveraged feature vector, all daily weather is simulated across all locations simultaneously. While this preserves the joint statistics, it tends to be biased to the extremes on any given day. Our cluster-based approach offers the ability to account for regional persistence and spatial non-stationarities. In our comparison of the methods, the cluster-based approach demonstrates some improvement over the classic approach, particularly when modeling winter precipitation, reproducing spells, and in dry years. While this particular application shows only marginal improvement, we offer cluster-based resampling as a novel methodological contribution.
机译:我们提供了一个多站点随机天气生成器,它是对传统的K近邻重采样方法的增强。拟议的天气发生器由三个主要部分组成:(i)根据选定的属性(降水)将空间位置聚类为均质区域;(ii)在所有八个湿/干状态下的马尔可夫转变概率(在单个聚类上或在单个聚类上)三集群系统对空间降水发生进行建模,以及(iii)将传统的K-NN天气生成器应用于每个集群平均天气时间序列,以在所有所需位置生成天气序列。天气发生器还适用于基于季节预报的条件模拟,其中涉及对第三部分的修改。我们通过模拟25,000平方英里的圣胡安河流域(美国科罗拉多河的支流)中66个地点的每日天气序列,证明了该方法的实用性。由于经典的K-NN方法涉及从域平均特征向量中进行采样,因此将同时模拟所有位置的所有每日天气。尽管这保留了联合统计信息,但在任何给定的日期它都倾向于偏向极端。我们基于集群的方法提供了解决区域持久性和空间非平稳性的能力。在我们对这些方法的比较中,基于聚类的方法显示出比经典方法有所改进,尤其是在模拟冬季降水,繁殖季节和干旱年份时。尽管此特定应用程序仅显示出少量改进,但我们提供基于聚类的重采样作为一种新的方法论贡献。

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