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IoT Search Method for Entity Based on Advanced Density Clustering

机译:基于高级密度聚类的实体的IOT搜索方法

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The mass deployment of Internet of Things (IoT) entities brings great value to IoT applications and users. However, massive, heterogeneous and dynamic IoT entities make IoT search difficult. Application-oriented deployment of entities results in uneven distribution of entities, which brings challenges to IoT search. Considering the non-uniformity of IoT entity deployment, an IoT search method for entity based on advanced density clustering is proposed. This method first performs density clustering based on location, then performs k-means secondary division on large-scale entity clusters, and processes noise points, which greatly reduces the scope of entity search. Experimental results show that this method has less searching time and higher accuracy than other methods in the case of uneven distribution of entities.
机译:Internet Internet(IoT)实体的大规模部署为IoT应用程序和用户带来了很大的价值。 然而,大规模,异构和动态的物流实体使IOT搜索变得困难。 面向应用程序的实体部署导致实体的不均匀分布,这为IOT搜索带来了挑战。 考虑到IOT实体部署的不均匀性,提出了一种基于高级密度聚类的实体的IOT搜索方法。 该方法首先基于位置执行密度聚类,然后在大规模实体集群上执行k-meast次级划分,并处理噪声点,这大大减少了实体搜索的范围。 实验结果表明,在实体分布不均匀的情况下,该方法的搜索时间较小和比其他方法更高。

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