Research on Methods and Techniques for IoT Big Data Cluster Analysis

Ning Bin
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引用次数: 5

Abstract

With the rapid development of Internet of Things technology, there have been many applications related to the Internet of Things. The "Internet of Things" and "big data" have become a closely related field of application of technology. How to effectively find valuable model relationships from big data in the Internet of Things is conducive to managers making correct decisions on the company's future development trends, and at the same time it is also conducive to improving corporate profits. After introducing the concept of complex event relations, the big data processing of the Internet of Things has been transformed into the extraction and analysis of complex relationship patterns, thus providing support for simplifying the processing complexity of Internet of Things big data. The traditional K-means algorithm is optimized to make it suitable for the needs of Big Data RFID Internet of Things data. Based on the Hadoop cloud clustering platform, K-means clustering analysis is implemented. Based on the traditional clustering algorithm, the center point selection technology suitable for RFID Internet of Things data clustering is selected, so that the clustering efficiency is improved, and a design and implementation is realized.
物联网大数据聚类分析方法与技术研究
随着物联网技术的快速发展,出现了许多与物联网相关的应用。“物联网”与“大数据”已成为紧密相关的技术应用领域。如何从物联网的大数据中有效地发现有价值的模型关系,有利于管理者对公司未来发展趋势做出正确决策,同时也有利于企业利润的提升。在引入复杂事件关系概念后,物联网的大数据处理已经转化为复杂关系模式的提取和分析,从而为简化物联网大数据的处理复杂性提供支持。对传统的K-means算法进行优化,使其适合大数据RFID物联网数据的需求。基于Hadoop云聚类平台,实现K-means聚类分析。在传统聚类算法的基础上,选择了适合RFID物联网数据聚类的中心点选择技术,提高了聚类效率,并实现了设计与实现。
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