A hybrid approach for data analytics for internet of things

Badraddin Alturki, S. Reiff-Marganiec, Charith Perera
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引用次数: 32

Abstract

The vision of the Internet of Things is to allow currently unconnected physical objects to be connected to the internet. There will be an extremely large number of internet connected devices that will be much more than the number of human being in the world all producing data. These data will be collected and delivered to the cloud for processing, especially with a view of finding meaningful information to then take action. However, ideally the data needs to be analysed locally to increase privacy, give quick responses to people and to reduce use of network and storage resources. To tackle these problems, distributed data analytics can be proposed to collect and analyse the data either in the edge or fog devices. In this paper, we explore a hybrid approach which means that both in-network level and cloud level processing should work together to build effective IoT data analytics in order to overcome their respective weaknesses and use their specific strengths. Specifically, we collected raw data locally and extracted features by applying data fusion techniques on the data on resource constrained devices to reduce the data and then send the extracted features to the cloud for processing. We evaluated the accuracy and data consumption over network and thus show that it is feasible to increase privacy and maintain accuracy while reducing data communication demands.
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物联网数据分析的混合方法
物联网的愿景是允许目前未连接的物理对象连接到互联网。将会有大量的互联网连接设备,其数量将远远超过世界上所有产生数据的人口数量。这些数据将被收集并传送到云端进行处理,特别是为了找到有意义的信息,然后采取行动。然而,理想情况下,数据需要在本地进行分析,以增加隐私,对人们做出快速反应,并减少网络和存储资源的使用。为了解决这些问题,可以提出分布式数据分析来收集和分析边缘或雾设备中的数据。在本文中,我们探索了一种混合方法,这意味着网络级和云级处理应该一起工作,以建立有效的物联网数据分析,以克服各自的弱点并利用其特定的优势。具体而言,我们在本地收集原始数据,并在资源受限的设备上应用数据融合技术对数据进行特征提取,减少数据,然后将提取的特征发送到云端进行处理。我们评估了准确度和网络上的数据消耗,从而表明在减少数据通信需求的同时增加隐私和保持准确性是可行的。
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