基于AHP和BP神经网络的网络安全评估模型研究

Jingfeng Zhu
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引用次数: 0

摘要

互联网的共享性和开放性使信息交互更容易受到安全风险的影响。因此,对计算机网络系统的安全性进行综合评估已成为预防各种网络安全问题的更有效手段。近年来,针对这一问题提出了许多网络安全评估方法,但并非所有方法都有效。因此,本文在分析现有网络安全评估方法的基础上,提出了一种基于BP神经网络和层次分析法的网络安全评估新模型。该模型结合了BP神经网络和层次分析法(AHP)的优点,能够对网络安全进行全面、准确的评估。采用BP神经网络评价各安全因子的风险等级,采用层次分析法计算各安全因子的权重。权重反映了决定网络整体安全级别的各个因素的相对重要性。为了验证所提模型的适用性,进行了实证研究。结果表明,该模型能有效地对网络安全进行综合评估。该模型的准确性和有效性使其成为评估计算机网络系统安全性的一种很有前途的方法。此外,它还可以通过识别潜在漏洞和评估所实施安全措施的有效性来帮助制定加强网络安全的战略。总之,该模型为组织有效地管理网络安全提供了一个有用的工具。
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Research on Network Security Evaluation Model Based on AHP and BP Neural Network
The Internet's sharing and openness have made information interaction more vulnerable to security risks. As a result, a comprehensive evaluation of the security of computer network systems has become a more effective means of preventing various network security problems. In recent years, there have been many network security evaluation methods proposed to address this issue, but not all of them are effective. Therefore, this paper analyzes existing network security evaluation methods and proposes a new model based on BP neural network and AHP jointly. The proposed model combines the advantages of BP neural network and hierarchical analysis (AHP) to provide a comprehensive and accurate evaluation of network security. The BP neural network is used to evaluate the risk level of each security factor, while AHP is used to calculate the weights of each security factor. The weights reflect the relative importance of each factor in determining the overall security level of the network. To verify the applicability of the proposed model, empirical research is conducted. The results demonstrate that the model can effectively evaluate network security comprehensively. The model's accuracy and effectiveness make it a promising approach to evaluate the security of computer network systems. Additionally, it can help in developing strategies to enhance network security by identifying potential vulnerabilities and assessing the effectiveness of security measures implemented. In conclusion, the model provides a useful tool for organizations to manage network security effectively.
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