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首页> 外文期刊>Internet of Things Journal, IEEE >Data Reduction Model for Balancing Indexing and Securing Resources in the Internet-of-Things Applications
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Data Reduction Model for Balancing Indexing and Securing Resources in the Internet-of-Things Applications

机译:用于平衡索引和保护互联网应用程序的资源的数据缩减模型

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摘要

Evolution of the Internet of Things (IoT) makes a revolution in connecting, monitoring, controlling, and managing things, objects, and almost surroundings through the Internet. To reveal the potential of IoT, rich knowledge has to be extracted, indexed, and shared securely in real time. Recent comprehensive researches on IoT spot the light on main correlative challenges, such as security, scalability, heterogeneity, and big data. Due to the heterogeneity of IoT applications that produce a large volume of a variety of data streams in real time, mining, securing, and analyzing IoT data become tedious and challenging tasks. Indexing sensory data is one of data mining techniques, which ease information retrieval. But ordinary indexing methods are not fit with such massive and dynamic data; where indexes become out-of-date once they are built. Clustering, data reduction, and summarization present promising solutions for enabling low-power security and balanced indexing. This article presents a novel method for dynamic data reduction and summarization using dynamic time warping (DTW), which also presents a balanced architecture for enabling balanced indexing based on similarity data fusion. Data reduction-based prediction models enable real-time search and secure discovery for Smart Things (SThs). The results of the proposed model were proved using real examples and data sets. Using the Szeged-weather data set similar SThs data is reduced by 95%. Thus, indexes sizes could be reduced, and using smart scheduling, crawling cycle length could be expanded.
机译:事物互联网的演变(物联网)通过互联网连接,监控,控制和管理事物,对象和几乎周围环境来革命。为了揭示物联网的潜力,必须在实时提取,索引,索引和共享丰富的知识。最近对IOT识别主要相关挑战的综合研究,如安全性,可扩展性,异质性和大数据。由于IOT应用的异质性,它实时产生大量的各种数据流,采矿,保护和分析物联网数据变得繁琐且具有挑战性的任务。索引感官数据是数据挖掘技术之一,可以缓解信息检索。但普通的索引方法不适合这种大规模和动态的数据;在构建后,索引已过时。聚类,数据减少和摘要提出了用于实现低功耗安全性和平衡索引的有希望的解决方案。本文介绍了一种用于使用动态时间翘曲(DTW)的动态数据减少和总结的新方法,这也提出了一种基于相似性数据融合实现平衡索引的平衡架构。基于数据的数据预测模型可以实时搜索和安全发现智能事物(STH)。使用真实示例和数据集证明了所提出的模型的结果。使用Szeged-天气数据设置类似的STHS数据减少了95%。因此,可以减少索引大小,并且可以使用智能调度,可以扩展爬行周期长度。

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