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首页> 外文期刊>International Journal of Intelligent Information Technologies >SVM-Based Traffic Data Classification for Secured IoT-Based Road Signaling System
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SVM-Based Traffic Data Classification for Secured IoT-Based Road Signaling System

机译:基于SVM的基于IOT的道路信号系统的流量数据分类

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摘要

The traffic controlling systems at present are microcontroller-based, which is semi-automatic in nature where time is the only parameter that is considered. With the introduction of IoT in traffic signaling systems, research is being done considering density as a parameter for automating the traffic signaling system and regulate traffic dynamically. Security is a concern when sensitive data of great volume is being transmitted wirelessly. Security protocols that have been implemented for IoT networks can protect the system against attacks and are purely based on standard cryptosystem. They cannot handle heterogeneous data type. To prevent the issues on security protocols, the authors have implemented SVM machine learning algorithm for analyzing the traffic data pattern and detect anomalies. The SVM implementation has been done for the UK traffic data set between 2011-2016 for three cities. The implementation been carried out in Raspberry Pi3 processor functioning as an edge router and SVM machine learning algorithm using Python Scikit Libraries.
机译:目前的流量控制系统是基于微控制器的,其在自然中是半自动的,其中时间是唯一考虑的参数。随着IOT在交通信令系统中的引入,正在考虑密度作为用于自动化交通信令系统的参数并动态调节流量的参数进行研究。安全性是在线传输大卷的敏感数据时的担忧。已为IOT网络实施的安全协议可以保护系统免受攻击,并且纯粹基于标准密码系统。它们无法处理异构数据类型。为防止安全协议的问题,作者已经实现了SVM机器学习算法,用于分析流量数据模式并检测异常。 SVM实施已经为2011-2016到三个城市之间的英国交通数据进行了完成。使用Python Scikit库作为边缘路由器和SVM机器学习算法,在Raspberry PI3处理器中执行了该实现。

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