基于自适应海洋捕食者优化算法(AOMA)和深度监督学习分类(DSLC)的城域网安全 IDS 框架

M. Sahaya Sheela;A. Gnana Soundari;Aditya Mudigonda;C. Kalpana;K. Suresh;K. Somasundaram;Yousef Farhaoui
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摘要

由于移动 Ad-hoc 网络(MANET)具有动态性和节点移动性,因此确保其安全性是当今一项艰巨而富有挑战性的任务。在城域网中,入侵检测系统(IDS)至关重要,因为它有助于识别和检测损害网络正常运行的恶意攻击。在传统的工作中,人们为此使用了不同的机器学习和深度学习方法,以确保提高城域网的安全性。然而,它仍然存在明显的缺陷,包括算法复杂度增加、系统性能降低和误判率较高。因此,本文的目标是创建一个智能 IDS 框架,通过使用深度学习模型来显著增强城域网的安全性。本文采用 minmax 归一化模型对给定的网络攻击数据集进行预处理,以归一化属性或字段,从而提高分类器的整体入侵检测性能。然后,采用新颖的自适应海洋捕食者优化算法(AOMA)来选择最佳特征,以提高分类器的速度和入侵检测性能。此外,还利用深度监督学习分类(DSLC)机制,在适当的学习和训练操作基础上预测和分类入侵类型。在评估过程中,使用各种性能指标和基准数据集对基于 AOMA-DSLC 的入侵检测方法的性能和结果进行了验证和比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Marine Predator Optimization Algorithm (AOMA)-Deep Supervised Learning Classification (DSLC) Based IDS Framework for MANET Security
Due to the dynamic nature and node mobility, assuring the security of Mobile Ad-hoc Networks (MANET) is one of the difficult and challenging tasks today. In MANET, the Intrusion Detection System (IDS) is crucial because it aids in the identification and detection of malicious attacks that impair the network's regular operation. Different machine learning and deep learning methodologies are used for this purpose in the conventional works to ensure increased security of MANET. However, it still has significant flaws, including increased algorithmic complexity, lower system performance, and a higher rate of misclassification. Therefore, the goal of this paper is to create an intelligent IDS framework for significantly enhancing MANET security through the use of deep learning models. Here, the minmax normalization model is applied to preprocess the given cyber-attack datasets for normalizing the attributes or fields, which increases the overall intrusion detection performance of classifier. Then, a novel Adaptive Marine Predator Optimization Algorithm (AOMA) is implemented to choose the optimal features for improving the speed and intrusion detection performance of classifier. Moreover, the Deep Supervise Learning Classification (DSLC) mechanism is utilized to predict and categorize the type of intrusion based on proper learning and training operations. During evaluation, the performance and results of the proposed AOMA-DSLC based IDS methodology is validated and compared using various performance measures and benchmarking datasets.
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