Intelligent Feature Subset Selection with Machine Learning Based Detection and Mitigation of DDoS Attacks in 5G Environment

A. G. Nagesha, G. Mahesh, Gowrishankar
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Abstract

The fifth-generation (5G) technology is anticipated to permit connectivity to billions of devices, called the Internet of Things (IoT). The primary benefit of 5G is that it has maximum bandwidth and can drastically expand service beyond cell phones to standard internet service for conventionally fixed connectivity to homes, offices, factories, etc. But IoT devices will unavoidably be the primary target of diverse kinds of cyberattacks, notably distributed denial of service (DDoS) attacks. Since the conventional DDoS mitigation techniques are ineffective for 5G networks, machine learning (ML) approaches find helpful to accomplish better security. With this motivation, this study resolves the network security issues posed by network devices in the 5G networks and mitigates the harmful effects of DDoS attacks. This paper presents a new pigeon-inspired optimization-based feature selection with optimal functional link neural network (FLNN), PIOFS-OFLNN model for mitigating DDoS attacks in the 5G environment. The proposed PIOFS-OFLNN model aims to detect DDoS attacks with the inclusion of feature selection and classification processes. The proposed PIOFS-OFLNN model incorporates different techniques such as pre-processing, feature selection, classification, and parameter tuning. In addition, the PIOFS algorithm is employed to choose an optimal subset of features from the pre-processed data. Besides, the OFLNN based classification model is applied to determine DDoS attacks where the Rat Swarm Optimizer (RSO) parameter tuning takes place to adjust the parameters involved in the FLNN model optimally. FLNN is a low computational interconnectivity higher cognitive neural network. There are still no hidden layers. FLNN’s input vector is operationally enlarged to produce non-linear remedies. More details can be accessed application of Nature-Inspired Method to Odia Written by hand Number system Recognition. To validate the improved DDoS detection performance of the proposed model, a benchmark dataset is used.
5G环境下基于机器学习的DDoS攻击检测与缓解智能特征子集选择
预计第五代(5G)技术将允许连接数十亿台设备,称为物联网(IoT)。5G的主要好处是它具有最大的带宽,可以将服务从手机扩展到标准互联网服务,用于家庭、办公室、工厂等的传统固定连接。但物联网设备将不可避免地成为各种网络攻击的主要目标,尤其是分布式拒绝服务(DDoS)攻击。由于传统的DDoS缓解技术对5G网络无效,机器学习(ML)方法有助于实现更好的安全性。基于此动机,本研究解决了5G网络中网络设备带来的网络安全问题,减轻了DDoS攻击的有害影响。针对5G环境下的DDoS攻击,提出了一种基于最优功能链路神经网络(FLNN)、PIOFS-OFLNN模型的基于鸽子启发优化的特征选择方法。提出的PIOFS-OFLNN模型旨在通过包含特征选择和分类过程来检测DDoS攻击。提出的PIOFS-OFLNN模型结合了预处理、特征选择、分类和参数调优等不同的技术。此外,采用PIOFS算法从预处理数据中选择最优特征子集。此外,将基于OFLNN的分类模型应用于DDoS攻击的判断,并通过RSO (Rat Swarm Optimizer)参数调优,对FLNN模型中涉及的参数进行最优调整。FLNN是一种低计算互联性的高级认知神经网络。仍然没有隐藏层。FLNN的输入向量在操作上被放大以产生非线性补救。更多的细节可以访问自然启发法在Odia手写数字系统识别中的应用。为了验证该模型改进后的DDoS检测性能,使用了一个基准数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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