基于人工神经网络的流量异常检测的高效网络安全系统

J. Hephzipah, Ranadheer Reddy Vallem, M. Sheela, G. Dhanalakshmi
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引用次数: 2

摘要

网络安全是通过提供各种基于监控特征的支持来提高网络资源安全性的发展因素。越来越多的互联网在明确的事实中呼唤网络安全的进步需求。大多数网络攻击者通过恶意活动、虚假数据注入、黑客攻击和快速创建程序来窃取信息。在大多数情况下,网络安全之所以无法检测到恶意活动,是因为以往机器学习算法的监控特征分析无法预测结果。为了解决这一问题,提出了一种基于最小最大博弈优化人工神经网络(MMGT-ANN)的基于流量的网络安全异常检测方法。对KDD犯罪数据集进行再处理。然后应用数据驱动网络模型监测特征边界和缺陷缩放率。基于特征缩放率估计传输流缺陷率,并应用最小最大博弈论选择特征极限。然后用优化后的人工神经网络训练特征来检测犯罪率。通过对该系统的关注,与其他系统相比,该系统在精度率上实现了更高的性能,以更低的时间复杂度获得更高的检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient cyber security system based on flow-based anomaly detection using Artificial neural network
Cyber security is developing factor for protecting internet resources by handing various monitoring feature based support to improve the security. Increasing internet cries in the defined facts for need of advance met in cyber security. Most internet attacker’s theft the information through malicious activities, false data injection, hacking and make soon creating procedures. In most cases cyber sercuity failed to detect the malicious activities because the monitoring feature analyses improper to predict the result in previous machine learning algorithms. TO resolve this problem to propose an advance cyber security based on flow-based anomaly detection using Min max game theory optimized artificial neural network (MMGT-ANN). The reprocessing was carried out with KDD crime dataset. Then Data driven network model is applied to monitor the feature margins and defect scaling rate. Based on the feature scaling rate Transmission Flow defect rate is estimated and applied with Min max Game theory to select the feature limits. Then features are trained with optimized ANN to detect the crime rate. By the attention of the proposed system achieves higher performance in precision rate to attain higher detection accuracy with lower time complexity compared to the other system.
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