A Cloud Based Framework for Identification of IoT Devices at Smart Home Using Supervised Machine Intelligence Model

Sourav Kumar Bhoi, K. K
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Abstract

Purpose: Identification of Internet of Thing (IoT) devices in smart home is the most important function for a local server/controller to administer and control the home smoothly. The IoT devices continuously send and receive requests, acknowledgments, packets, etc. for efficient data communication and these communication patterns need to be classified. Design/Methodology/Approach: Therefore, to run the smart home smoothly, in this work a framework using cloud computing is proposed to identify the correct IoT device communicating with the local server based on supervised machine learning. The best supervised machine intelligence model will be installed at the local server to classify the devices on the basis of data communication patterns. Findings/Result: Simulation is performed using Orange 3.26 data analytics tool by considering an IoT devices data communication dataset collected from Kaggle data repository. From the simulation results it is observed that Random Forest (RF) shows better performance than existing supervised machine learning models in terms of classification accuracy (CA) to classify the IoT devices with high accuracy. Originality/Value: A cloud based framework is proposed for a smart home to identify the correct IoT device communicating with the local server based on supervised machine learning. Based on the data communication pattern of the IoT devices, an IoT device is accurately identified. Paper Type: Methodology Paper.
使用监督机器智能模型识别智能家居物联网设备的基于云的框架
目的:识别智能家居中的物联网(IoT)设备是本地服务器/控制器顺利管理和控制家庭的最重要功能。物联网设备不断发送和接收请求、确认、数据包等,以实现高效的数据通信,这些通信模式需要分类。设计/方法/方法:因此,为了平稳运行智能家居,在本工作中提出了一个使用云计算的框架,以识别基于监督机器学习的与本地服务器通信的正确物联网设备。在本地服务器上安装最好的监督机器智能模型,根据数据通信模式对设备进行分类。发现/结果:通过考虑从Kaggle数据存储库收集的物联网设备数据通信数据集,使用Orange 3.26数据分析工具进行仿真。从仿真结果可以看出,随机森林(Random Forest, RF)在分类精度(CA)方面比现有的有监督机器学习模型表现出更好的性能,可以对物联网设备进行高精度的分类。独创性/价值:提出了一种基于云的框架,用于智能家居识别基于监督机器学习的与本地服务器通信的正确物联网设备。根据物联网设备的数据通信模式,准确识别物联网设备。论文类型:方法论论文。
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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