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Performance Analysis and Comparison of Anomaly-based Intrusion Detection in Vehicular Ad hoc Networks

机译:车辆临时网络中基于异常的入侵检测的性能分析与比较

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Security and safety applications of Vehicular Ad hoc Networks (VANETs) are developed to improve the traffic flow. While safety applications in VANETs provide warnings and information for the vehicle and other units in the area, malicious behaviors can render this very purpose meaningless. Intrusion Detection Systems (IDSs) are key features for identifying the presence of faulty or malicious behaviors. Support Vector Machine (SVM) is an efficient tool for anomaly detection and it can be employed for intrusion detection based on the metrics of a known attack or normal behavior. Dropping and or delaying network packets are two of the most common variants among other methods in Denial of Service (DoS) attacks. Hence an IDS which can detect both variants can detect similar types of DoS attacks. The result of the study is obtained by designing and implementing an SVM detection module into computer-generated simulation, which depicts a successful outcome in detection of mentioned DoS attack variants.
机译:开发了车辆临时网络(VANET)的安全性和安全应用以提高交通流量。虽然VANETS中的安全应用提供了车辆的警告和信息和该地区的其他单位,但恶意行为可以使这个目的是毫无意义的。入侵检测系统(IDS)是用于识别错误或恶意行为的关键特征。支持向量机(SVM)是用于异常检测的有效工具,可用于基于已知攻击或正常行为的度量来用于入侵检测。丢弃和或延迟网络数据包是拒绝服务(DOS)攻击的其他方法中最常见的两个变体。因此,可以检测到两个变体的ID可以检测类似类型的DOS攻击。通过将SVM检测模块设计和实施到计算机生成的模拟中,可以获得该研究的结果,其描绘了检测中提到的DOS攻击变体的成功结果。

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