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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Data mining for evolution of association rules for droughts and floods in India using climate inputs
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Data mining for evolution of association rules for droughts and floods in India using climate inputs

机译:利用气候输入数据挖掘印度干旱和洪水的关联规则

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An accurate prediction of extreme rainfall events can significantly aid in policy making and also in designing an effective risk management system. Frequent occurrences of droughts and floods in the past have severely affected the Indian economy, which depends primarily on agriculture. Data mining is a powerful new' technology which helps in extracting hidden predictive information (future trends and behaviors) from large databases and thus allowing decision makers to make proactive knowledge-driven decisions. In this study, a data-mining algorithm making use of the concepts of minimal occurrences with constraints and time lags is used to discover association rules between extreme rainfall events and climatic indices. The algorithm considers only the extreme events as the target episodes (consequents) by separating these from the normal episodes, which are quite frequent, and finds the time-lagged relationships with the climatic indices, which are treated as the antecedents. Association rules are generated for all the five homogenous regions of India and also for All India by making use of the data from 1960 to 1982. The analysis of the rules shows that strong relationships exist between the climatic indices chosen, i.e., Darwin sea level pressure, North Atlantic Oscillation, Nino 3.4 and sea surface temperature values, and the extreme rainfall events. Validation of the rules using data for the period 1983-2005 clearly shows that most of the rules are repeating, and for some rules, even if they are not exactly the same, the combinations of the indices mentioned in these rules are the same during. validation period, with slight variations in the classes taken by the indices.
机译:对极端降雨事件的准确预测可以极大地帮助制定政策和设计有效的风险管理系统。过去干旱和洪水的频繁发生严重影响了主要依赖农业的印度经济。数据挖掘是一项功能强大的新技术,可帮助从大型数据库中提取隐藏的预测信息(未来趋势和行为),从而使决策者能够主动做出以知识为导向的决策。在这项研究中,使用了一种数据挖掘算法,该算法利用具有限制和时滞的最小事件的概念来发现极端降雨事件与气候指数之间的关联规则。该算法通过将极端事件与经常发生的正常事件分离开来,仅将极端事件视为目标事件(结果),并找到与气候指数的时滞关系,将其视为先行事件。通过使用1960年至1982年的数据,为印度的所有五个同质区域以及整个印度生成了关联规则。对规则的分析表明,所选的气候指数(即达尔文海平面压力)之间存在很强的关系。 ,北大西洋涛动,Nino 3.4和海面温度值以及极端降雨事件。使用1983-2005年期间的数据对规则进行的验证清楚地表明,大多数规则是重复的,对于某些规则,即使它们不完全相同,在此期间,这些规则中提到的索引的组合也相同。验证期,索引采用的类略有不同。

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