基于深度学习模型的人工大猩猩部队优化器DDoS攻击检测

S. Govindaraju, Rajrupa Metia, P. Girija, K. Baranitharan, M. Indirani, M. R.
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摘要

随着物联网(IoT)服务的采用,安全的重要性急剧上升。软件定义网络(sdn)提供了一种安全管理物联网设备的方法,这些设备暴露在当前的分布式拒绝服务(DDoS)攻击中。许多物联网设备在不知不觉中促成了DDoS攻击。DDoS攻击是最常见的网络攻击类型之一,尤其有害,因为它们可以削弱网络的功能,并使用户无法访问其许多服务。本研究使用优化的基于深度学习的模型来检测SDN中的DDoS。首先,从SDN采集数据集的正常和DDoS攻击流量特征。在使用NSL-KDD数据集进行特征选择方法时,建议模型更简单,更易于阅读,并且具有更短的训练周期。本研究提出了一种基于长短期记忆(LS TM)模型的SDN实时DDoS攻击检测方法。利用人工大猩猩群体优化器来选择NSL-KDD的特征,实现了较高的分类精度。使用较少的时间和材料,所提出的IDS能够达到97.59%的检测精度。这些发现提供了令人鼓舞的证据,表明SDN中的DDoS攻击检测可以从使用深度学习和特征选择技术中受益,这可以显着减少处理负载和运行时间。
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Detection of DDoS Attacks using Artificial Gorilla Troops Optimizer based Deep Learning Model
The importance of security has skyrocketed alongside the adoption of Internet of Things (IoT) services. Software-defined networking (S DN) provides a means of securely managing IoT devices, which were exposed in a current distributed denial-of-service (DDoS) attack. Many IoT devices unwittingly contributed to the DDoS attack. DDoS attacks, one of the most common types of cyberattack, are particularly pernicious since they can cripple a network’s ability to function and render many of its services inaccessible to users. This research used optimised deep learning-based models to detect DDoS in SDN. At first, the dataset’s normal and DDoS attack traffic characteristics were gathered from the SDN. The models are recommended to be simpler, easier to read, and to have a shorter training period when using an NSL-KDD dataset for feature selection approaches. Real-time DDoS attack detection in SDN is proposed in this research using an Long Short-Term Memory (LS TM) models. High accuracy in classification is achieved by utilising an artificial gorilla troop optimizer to pick the features of NSL-KDD. Using less time and material, the proposed IDS was able to achieve a detection accuracy of 97.59%. These findings provide encouraging evidence that DDoS attack detection in SDN could benefit from the use of deep learning and feature selection techniques, which could significantly reduce processing loads and runtimes.
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