A Discrete View of the Indian Monsoon to Identify Spatial Patterns of Rainfall

Adway Mitra, A. Apte, R. Govindarajan, V. Vasan, S. Vadlamani
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引用次数: 6

Abstract

We propose a representation of the Indian summer monsoon rainfall in terms of a probabilistic model based on a Markov Random Field, consisting of discrete state variables representing low and high rainfall at grid-scale and daily rainfall patterns across space and in time. These discrete states are conditioned on observed daily gridded rainfall data from the period 2000-2007. The model gives us a set of 10 spatial patterns of daily monsoon rainfall over India, which are robust over a range of user-chosen parameters as well as coherent in space and time. Each day in the monsoon season is assigned precisely one of the spatial patterns, that approximates the spatial distribution of rainfall on that day. Such approximations are quite accurate for nearly 95% of the days. Remarkably, these patterns are representative (with similar accuracy) of the monsoon seasons from 1901 to 2000 as well. Finally, we compare the proposed model with alternative approaches to extract spatial patterns of rainfall, using empirical orthogonal functions as well as clustering algorithms such as K-means and spectral clustering.
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印度季风的离散视图以确定降雨的空间模式
我们提出了一个基于马尔可夫随机场的概率模型来表示印度夏季季风降雨,该模型由离散状态变量组成,表示网格尺度上的低降雨和高降雨以及跨越空间和时间的日降雨模式。这些离散状态是根据2000-2007年期间观测到的逐日网格化降雨数据得出的。该模型为我们提供了印度每日季风降雨的10种空间模式,这些模式在用户选择的参数范围内是稳健的,并且在空间和时间上是一致的。季风季节的每一天都精确地分配了一种空间模式,这近似于当天降雨量的空间分布。这种近似在95%的日子里是相当准确的。值得注意的是,这些模式也具有1901年至2000年季风季节的代表性(精度相似)。最后,我们将所提出的模型与使用经验正交函数以及K-means和光谱聚类等聚类算法提取降雨空间模式的其他方法进行了比较。
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