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Annual runoff prediction using a nearest-neighbour method based on cosine angle distance for similarity estimation

机译:基于余弦角距离的最近邻近相似性估计的年径流预测

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The Nearest Neighbour Method (NNM) is a data-driven and non-parametric scheme established on the similarity characteristics of hydrological phenomena. One of the important parts of NNM is to choose a proper distance measure. The Euclidean distance (EUD) is a commonly used distance measure, which represents the absolute distance of a spatial point and is directly related to the coordinate of the point, but is not sensitive to the direction of the feature vector. This paper used the cosine angle distance (CAD) for the similarity measure, which reflects more differences in the direction, and compared it to EUD. This technique is applied to annual runoff at YiChang station on the Yangtze River. The results show the NNM with CAD has a better performance than that of EUD.
机译:最近的邻邻方法(NNM)是在水文现象的相似性特征上建立的数据驱动和非参数方案。 NNM的重要部分之一是选择适当的距离测量。欧几里德距离(EUD)是一种常用的距离测量,其表示空间点的绝对距离并且与点的坐标直接相关,但对特征向量的方向不敏感。本文使用了相似度量的余弦角距(CAD),这反映了朝向方向的更多差异,并将其与EUD相比。该技术适用于长江宜昌站的年径流。结果显示与CAD的NNM具有比EUD更好的性能。

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