基于优化循环算法的网络安全评估模型

Xingfeng Li
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引用次数: 0

摘要

随着越来越多的控制系统接入计算机网络,其相关漏洞的增加导致了网络安全评估的下降。保护计算机网络不受攻击是至关重要的。为此,本研究构建了一个基于优化循环算法的网络计算机网络安全评价模型。为了避免检测到模型参数陷入局部最优,首先基于高斯过程(GP)超参数的Corsi灰狼优化(CGWO)算法对模型进行优化。为了解决数据不平衡和GP不具有记忆能力的问题,提出了一种优化的高斯混合模型-递归神经网络(GMM-RNN)算法。攻击类型识别准确率实验结果表明,所研究的CGWO-GP算法能够跳出局部最优,准确率平均值达到98.99%。漏电率平均值为0.42%,虚警率平均值为0.11%。GMM-RNN模型对8种攻击类型的平均检测准确率为95.899%。该模型性能的最佳检测准确率为96.3948%。GMM-RNN模型的训练时间为67.96 s,测试集的检测时间为6.45 s,大大优化了实时性。GMM-RNN模型对计算机网络的安全态势预测更为有效,预测值可达97.65%。该研究模型在计算机网络安全性能和评价方面明显优于其他算法模型,具有一定的研究价值。
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An Evaluation Model for Network Security Based on an Optimized Circular Algorithm
With more and more control systems accessing computer networks, the increase in their associated vulnerabilities has led to a decreasing security evaluation of the networks. It is essential to secure computer networks from attacks. To this end, the study constructs a network of computer network security evaluation model based on an optimized circular algorithm. To avoid detecting the model’s parameters falling into the local optimum, the model is first optimized based on the Corsi grey wolf optimization (CGWO) algorithm for the hyperparameters of the Gaussian process (GP). To solve the problem of unbalanced data and the GP not having memory capability, the study proposes an optimized Gaussian Mixture Model-Recurrent neural networks (GMM-RNN) algorithm. Experimental results of attack type recognition accuracy showed that the research CGWO-GP algorithm can jump out of the local optimum, and its average value of accuracy reached 98.99%. The average value of the leakage rate was 0.42%, and the average value of the false alarm rate was 0.11%. The average detection accuracy of the GMM-RNN model for eight attack types was 95.899%. The optimal detection accuracy of this model performance was 96.3948%. The training time of the GMM-RNN model was 67.96 s, and the detection time of the test set was 6.45 s, which greatly optimized the real-time performance. The GMM-RNN model was more effective in predicting the security posture of computer networks, and the prediction value can reach 97.65%. The research model was significantly better than other algorithmic models in the performance and evaluation of computer network security and had certain research values.
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来源期刊
Journal of Cyber Security and Mobility
Journal of Cyber Security and Mobility Computer Science-Computer Networks and Communications
CiteScore
2.30
自引率
0.00%
发文量
10
期刊介绍: Journal of Cyber Security and Mobility is an international, open-access, peer reviewed journal publishing original research, review/survey, and tutorial papers on all cyber security fields including information, computer & network security, cryptography, digital forensics etc. but also interdisciplinary articles that cover privacy, ethical, legal, economical aspects of cyber security or emerging solutions drawn from other branches of science, for example, nature-inspired. The journal aims at becoming an international source of innovation and an essential reading for IT security professionals around the world by providing an in-depth and holistic view on all security spectrum and solutions ranging from practical to theoretical. Its goal is to bring together researchers and practitioners dealing with the diverse fields of cybersecurity and to cover topics that are equally valuable for professionals as well as for those new in the field from all sectors industry, commerce and academia. This journal covers diverse security issues in cyber space and solutions thereof. As cyber space has moved towards the wireless/mobile world, issues in wireless/mobile communications and those involving mobility aspects will also be published.
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