Design of an Advance Intrusion Detection System for IoT Networks

A. Sarwar, Salva Hasan, W. Khan, Salman Ahmed, S. N. K. Marwat
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引用次数: 7

Abstract

The Internet of Things (IoT) is advancing technology by creating smart surroundings that make it easier for humans to do their work. This technological advancement not only improves human life and expands economic opportunities, but also allows intruders or attackers to discover and exploit numerous methods in order to circumvent the security of IoT networks. Hence, security and privacy are the key concerns to the IoT networks. It is vital to protect computer and IoT networks from many sorts of anomalies and attacks. Traditional intrusion detection systems (IDS) collect and employ large amounts of data with irrelevant and inappropriate attributes to train machine learning models, resulting in long detection times and a high rate of misclassification. This research presents an advance approach for the design of IDS for IoT networks based on the Particle Swarm Optimization Algorithm (PSO) for feature selection and the Extreme Gradient Boosting (XGB) model for PSO fitness function. The classifier utilized in the intrusion detection process is Random Forest (RF). The IoTID20 is being utilized to evaluate the efficacy and robustness of our suggested strategy. The proposed system attains the following level of accuracy on the IoTID20 dataset for different levels of classification: Binary classification 98 %, multiclass classification 83 %. The results indicate that the proposed framework effectively detects cyber threats and improves the security of IoT networks.
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面向物联网网络的高级入侵检测系统设计
物联网(IoT)正在通过创造智能环境来推动技术进步,使人类更容易完成工作。这种技术进步不仅改善了人类的生活,扩大了经济机会,而且还允许入侵者或攻击者发现和利用许多方法,以绕过物联网网络的安全。因此,安全和隐私是物联网网络的关键问题。保护计算机和物联网网络免受各种异常和攻击至关重要。传统的入侵检测系统(IDS)收集和使用大量具有不相关和不适当属性的数据来训练机器学习模型,导致检测时间长,误分类率高。本文提出了一种基于粒子群优化算法(PSO)特征选择和极限梯度增强(XGB)模型的物联网网络入侵检测系统设计方法。入侵检测过程中使用的分类器是随机森林。IoTID20被用来评估我们建议的策略的有效性和稳健性。本文提出的系统在IoTID20数据集上对不同级别的分类达到以下精度水平:二元分类98%,多类分类83%。结果表明,该框架有效地检测了网络威胁,提高了物联网网络的安全性。
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