基于机器学习的普适计算设备分类上下文管理

N. Mhetre, A. V. Deshpande, P. Mahalle
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引用次数: 0

摘要

普适计算包括网络、网络中的设备和软件组件频繁交换的场景。市场需求和成本效益迫使设备制造商推出新时代的设备。此外,物联网(IoT)正在迅速从物联网向万物互联(IoE)过渡。由于这种巨大的规模,对这些设备的有效管理对于支持值得信赖和高质量的应用程序变得至关重要。物联网设备管理的关键挑战之一是使用逻辑语义类型进行主动设备分类,并将其用作设备上下文管理的参数。这将使智能安全解决方案成为可能。本文提出了一种基于无监督机器学习的设备分类方法,用于无处不在设备的上下文管理。为了对未知设备进行分类并对其进行逻辑标记,使用k-Means聚类算法构建了一个主动设备分类模型。为了对设备进行分组,它使用网络参数的信息,如接收信号强度指标(rssi),packet_size,网络中节点的数量,吞吐量等。实验分析表明,集群的格式良好性可以用来派生集群标签作为逻辑语义设备类型,这将是资源管理和资源授权的上下文。
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Device Classification-Based Context Management for Ubiquitous Computing using Machine Learning
Ubiquitous computing comprises scenarios where networks, devices within the network, and software components change frequently. Market demand and cost-effectiveness are forcing device manufacturers to introduce new-age devices. Also, the Internet of Things (IoT) is transitioning rapidly from the IoT to the Internet of Everything (IoE). Due to this enormous scale, effective management of these devices becomes vital to support trustworthy and high-quality applications. One of the key challenges of IoT device management is proactive device classification with the logically semantic type and using that as a parameter for device context management. This would enable smart security solutions. In this paper, a device classification approach is proposed for the context management of ubiquitous devices based on unsupervised machine learning. To classify unknown devices and to label them logically, a proactive device classification model is framed using a k-Means clustering algorithm. To group devices, it uses the information of network parameters such as Received Signal Strength Indicator (rssi), packet_size, number_of_nodes in the network, throughput, etc. Experimental analysis suggests that the well-formedness of clusters can be used to derive cluster labels as a logically semantic device type which would be a context for resource management and authorization of resources.
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