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A Parallel Forecasting Approach Using Incremental K-means Clustering Technique

机译:使用增量k均值聚类技术的并行预测方法

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A parallel forecasting approach used in weather prediction which has important aspect of the modern society, especially with the realization of modern smart cities. A new approach is considering here which will provide excellent result for large semi-structured data. Thus, it is very important to analyze weather data keeping in mind the enormity of the available data sizes. Here it is presented a methodology for weather data analysis keeping in mind the big-data nature of the data sizes pertaining to weather data. Here also it has been taken date-wise atmospheric conditions collected of decade. The traditional k-means clustering is used to form clusters which represents association in between related dates of current year's and previous year's weather data. Such associations predict atmospheric conditions of one year's weather condition on the bases of previous data. Incremental k-means clustering algorithm is used to process current year's weather parameters as new data and it shows that the calculated weather condition falls under one of the existing clusters to represent similar atmospheric conditions. The total work has been divided by two parts: first, Storing NCDC semi-structured data on hadoop cluster and second, fitting a clustering methodology for predicting weather conditions.
机译:天气预报中具有现代社会重要方面的平行预测方法,特别是实现现代智能城市的实现。在此考虑一种新方法,这将为大型半结构化数据提供出色的结果。因此,分析天气数据非常重要,以记住可用数据尺寸的巨大。在这里介绍了天气数据分析的方法,请牢记与天气数据有关的数据尺寸的大数据性质。在这里,它也被收集了十年的日期明智的大气条件。传统的K-means群集用于形成群集群,该集群代表当年和前一年的天气数据的相关日期之间的关联。此类关联预测了在以前数据的基础上的一年天气状况的大气条件。增量K-means聚类算法用于处理当前年的天气参数作为新数据,并且它表明计算的天气状况下降到现有的群集中,以表示类似的大气条件。总工作已分为两部分:首先,将NCDC半结构化数据存储在Hadoop集群中,并将其拟合用于预测天气状况的聚类方法。

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