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Spatial rainfall variability in peninsular India: a nonlinear dynamic approach

机译:印度半岛的空间降雨变化:一种非线性动力学方法

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摘要

This study examines the spatial rainfall variability in peninsular India from a nonlinear dynamic perspective. The rainfall variability is determined by employing the false nearest neighbor (FNN) method, a nonlinear dynamic dimensionality-based method, to rainfall data across peninsular India. The implementation of the FNN method involves phase space reconstruction of the rainfall time series using a delay embedding procedure and identification of the false nearest neighbors in the reconstructed phase space using a neighbor search approach. The method is applied to monthly rainfall data over a period of 35years (January 1971-December 2005) at each of 367 grids (of 0.5 degrees x0.5 degrees in size) across nine river basins in peninsular India, and the dimensionality (i.e. FNN dimension) is determined. The influence of the delay time () on the FNN dimension estimation is also investigated by considering four different cases of separation of data in phase space reconstruction: monthly (=1) and annual (=12) as well as delay time values from the autocorrelation function method and the average mutual information method. The results indicate that, considering all the four values, the dimensionality of the 367 rainfall time series ranges from as low as 3 to as high as 20. The FNN dimension is found to generally vary, sometimes significantly, both for the same value for different grids and for the different values for the same grid. A basin-wise analysis of the dimensionality results also indicates that the Tapi basin (in the northwest part) exhibits the highest spatial rainfall variability (dimension ranging from 3 to 20), while the Vamsadhara basin (in the northeast part) exhibits the lowest rainfall variability (dimension ranging from 4 to 8). In general, rainfall in the southern and eastern basins have relatively lower dimensionality, while rainfall in the northern and western basins have relatively higher dimensionality. While there is almost no variability in the minimum FNN dimension of rainfall between the nine basins studied, there is significant variability in the maximum FNN dimension of rainfall between the basins. These results facilitate more reliable identification of rainfall spatial characteristics based on complexity and their classification and, thus, have important implications for the identification of the appropriate complexity of rainfall models for an area, rainfall interpolation/extrapolation, and basin water assessment and management.
机译:这项研究从非线性动力学的角度考察了印度半岛的空间降雨变化。降雨变异性是通过对印度半岛各地的降雨数据采用虚假最近邻(FNN)方法(一种基于非线性动态维数的方法)来确定的。 FNN方法的实现涉及使用延迟嵌入过程对降雨时间序列进行相空间重构,并使用邻居搜索方法在重构的相空间中识别错误的最近邻居。该方法适用于印度半岛9个流域的367个网格(尺寸为0.5度x0.5度)中每个网格的35年(1971年1月至2005年12月)期间的月降雨量数据,其维数(即FNN)尺寸)。还通过考虑相空间重构中数据分离的四种不同情况:每月(= 1)和每年(= 12)以及自相关的延迟时间值,研究了延迟时间()对FNN维数估计的影响。函数法和平均互信息法。结果表明,考虑到所有四个值,367个降雨时间序列的维数范围从低至3到高至20。发现FNN维数通常在不同值的相同值下通常有所变化,有时差异很大网格,以及同一网格的不同值。对量纲结果的盆地分析也表明,塔皮盆地(西北部)表现出最高的空间降雨变化(尺寸范围为3至20),而瓦姆萨达拉盆地(东北部)表现出最低的降雨可变性(尺寸范围为4到8)。通常,南部和东部流域的降雨维数相对较低,而北部和西部流域的降水维数相对较高。尽管在所研究的9个流域之间,最小FNN尺寸几乎没有变化,但流域之间的最大FNN尺寸却有很大的变化。这些结果有助于根据复杂性及其分类更可靠地识别降雨空间特征,因此,对于确定某个地区降雨模型的适当复杂性,降雨插值/外推以及流域水评估和管理具有重要意义。

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