A Lightweight DoS and DDoS Attack Detection Mechanism-Based on Deep Learning

Swati P Satpathy, S. Mohanty, Rakesh Kumar
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Abstract

Denial of Service (DOS) attacks are one of the major attacks on any network and a potential threat to internet resources and services. This threat amplifies with Distributed Denial of Service (DDoS) attacks as these attacks do not give any alert or time for the victim to act. With the increase in devices connected to the internet, the intensity and frequency of attacks are also growing daily. Existing solutions like intrusion detection systems(IDS) cannot provide better results with the complexity of DDoS attacks because their filtering criteria have been static to distinguish attack traffic from regular traffic. So, with the robustness of attacks, the solutions need to be robust enough. The proposed method here is to use the state-of-art CNN model, i.e. EfficientNet and ResNet. EfficientNet model being a lightweight model, can be integrated with any device to avoid DDoS attacks. Since the prediction time is minimal, the proposed method can pinpoint the attack to act immediately.
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基于深度学习的轻量级DoS和DDoS攻击检测机制
拒绝服务(DOS)攻击是对任何网络的主要攻击之一,是对互联网资源和服务的潜在威胁。这种威胁在分布式拒绝服务(DDoS)攻击中被放大,因为这些攻击不会给受害者任何警报或时间来采取行动。随着连接到互联网的设备越来越多,攻击的强度和频率也与日俱增。现有的解决方案,如入侵检测系统(IDS),由于其过滤标准是静态的,无法区分攻击流量和正常流量,因此无法提供更好的结果。因此,对于攻击的健壮性,解决方案也需要足够健壮。这里提出的方法是使用最先进的CNN模型,即EfficientNet和ResNet。高效网模型是一种轻量级模型,可以与任何设备集成以避免DDoS攻击。由于预测时间短,该方法可以精确定位攻击目标并立即采取行动。
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