网络异常流量检测数据处理技术

Kun Wang , Yu Fu , Xueyuan Duan , Jianqiao Xu , Taotao Liu
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引用次数: 0

摘要

当前,网络安全面临的威胁也在不断增加,其中异常流量检测是确保网络安全的关键环节。传统的基于特征码或阈值的检测方法往往难以适应日益复杂的网络环境和新的攻击手段。因此,本文对数据处理技术进行了优化和改进,提出了一种基于粒子群优化(PSO)算法的网络异常流量检测方法,并从流量数据采集与预处理、异常流量特征识别、PSO 算法应用、实时监控与响应机制等方面进行了详细探讨。两组仿真实验结果如下:与传统模型相比,改进算法的 ATD 准确率平均提高了 7.2%,检测时间平均缩短了 7.35s。这种方法不仅增强了模型对新攻击的适应性,还提高了检测的自动化程度。
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Data Processing Technology for Network Abnormal Traffic Detection
At present, the threats to network security are also increasing, among which abnormal traffic detection is the key link to ensure network security. Traditional detection methods based on signature or threshold are often difficult to adapt to the increasingly complex network environment and new attack methods. Therefore, this paper optimizes and improves the data processing technology, proposes a network ATD method based on particle swarm optimization (PSO) algorithm, and explores in detail the traffic data collection and pre-processing, the feature recognition of abnormal traffic, the application of PSO algorithm, real-time monitoring and response mechanism. The results of two sets of simulation experiments are as follows: compared with the traditional model, the accuracy rate of ATD of the improved algorithm is increased by 7.2% on average, and the detection time is reduced by 7.35s on average. This method not only enhances the adaptability of the model to new attacks, but also improves the degree of automation of detection.
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