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Spatio-Temporal Mining of Core Regions: Study of Rainfall Patterns in Monsoonal India

机译:核心区域的时空开采:季风印度的降雨模式研究

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Natural events like climate, disease, etc., and man-made events like theft have a great impact in the regions where they occur. Hence, there is a need to assess the behavior of these events -- regions where they occur, the patterns they exhibit etc., to help manage them suitably. In addition, events that are dynamic in nature make it even more difficult to extract or understand such behavior. Our work here, proposes a method to achieve this goal of detecting the regions, called Core regions or Cores, influenced by an event over a time period by using a combination of watershed delineation, neighborhood analysis and frequent item mining. The method involves both a spatial analysis step to detect focal points and a spatio-temporal analysis over the entire data time period T to identify core regions. Further, the cores are classified as Cores with Contiguous points (CC) and Cores with defined Radius (CR) based on the type of neighborhood, and Cores with Highly Dominating points (CHD), Cores with Less Dominating points (CLD) and Cores with No Dominating points (CND) based on frequency of occurrences. The frequent/predominantly occurring focal points capture the localized behavior of an event whereas the neighborhood constraints capture the nature (dynamicon-dynamic) of the event. In this work, core regions of monsoonal rainfall are detected over a total period of 56 years (1951-2006). Due to the dynamic nature of rainfall, it is observed that CR shows better results than CC. Also, out of the seven CR detected in Central & Peninsular India, three of them exhibit CHD (highly localized behavior).
机译:气候,疾病等自然事件以及盗窃等人为事件在其发生区域具有重大影响。因此,有必要评估这些事件的行为-它们发生的区域,它们所呈现的模式等,以帮助适当地管理它们。另外,本质上是动态的事件使提取或理解此类行为变得更加困难。我们在这里的工作提出了一种方法,该方法通过使用分水岭划定,邻域分析和频繁项挖掘的组合,来实现检测受一段时间内事件影响的区域(称为核心区域或核心)的方法。该方法既涉及空间分析步骤以检测焦点,也涉及整个数据时间段T的时空分析以识别核心区域。此外,根据邻域的类型,将核心分为具有连续点(CC)的核心和具有定义半径(CR)的核心,以及具有高支配点(CHD)的核心,具有较少支配点的核心(CLD)和具有高支配点的核心(CLD)。没有基于发生频率的控制点(CND)。频繁/主要发生的焦点捕获事件的局部行为,而邻域约束捕获事件的性质(动态/非动态)。在这项工作中,共检测了56年(1951-2006年)的季风降雨核心区域。由于降雨的动态性质,因此观察到CR表现出比CC更好的结果。另外,在印度中部和半岛发现的7个CR中,有3个具有CHD(高度局部化的行为)。

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