An architecture to analyze big data in the Internet of Things

Sadia Din, H. Ghayvat, Anand Paul, Awais Ahmad, M. Rathore, I. Shafi
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引用次数: 22

Abstract

Internet of Things (IoT) is nowadays increasingly becoming a worldwide network of interconnected devices uniquely addressable, via a standard communication protocol. Such devices generate a massive volume of heterogeneous data, which lead a system towards a major computational challenges, such as aggregation, storing, and processing. Also, a major problem arises when there is a need to extract useful information from this massive volume of data. Therefore, to address these needs, this paper proposes an architecture to analyze big data in the IoT. The basic concept involves the partitioning of dynamic data, i.e., big data with the complex magnitude is divided into subsets. These subsets are based on the theoretical model of data fusion, which works in the Hadoop processing server to enhance the computational efficiency. The proposed architecture is tested by analyzing healthcare data sets, mainly comprises of activities including walking, running, ECG. The feasibility and efficiency of the proposed architecture are implemented on Hadoop single node setup on UBUNTU 14.04 LTS core™i5 machine with 3.2 GHz processor and 4 GB memory. The results show that the proposed architecture efficiently analyze the massive volume of data with a maximum throughput.
一种分析物联网大数据的架构
如今,物联网(IoT)正日益成为一个由可通过标准通信协议唯一寻址的互联设备组成的全球网络。这样的设备会产生大量的异构数据,这给系统带来了巨大的计算挑战,比如聚合、存储和处理。此外,当需要从大量数据中提取有用信息时,会出现一个主要问题。因此,为了满足这些需求,本文提出了一种分析物联网大数据的架构。其基本概念涉及到动态数据的划分,即将具有复杂量级的大数据划分为子集。这些子集基于数据融合的理论模型,在Hadoop处理服务器上工作,以提高计算效率。通过分析医疗数据集对所提出的体系结构进行了测试,主要包括步行、跑步、心电图等活动。在3.2 GHz处理器和4gb内存的UBUNTU 14.04 LTS core™i5机器上,在Hadoop单节点设置上实现了该架构的可行性和效率。结果表明,该架构能够以最大的吞吐量高效地分析海量数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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