Optimization of Smart Campus Cybersecurity and Student Privacy Protection Paths Based on Markov Models

Jianhua Du
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Abstract

Abstract This paper starts with the application of hyper-convergence technology, builds the framework of a university smart campus based on it, and gives the framework description of the smart campus. In order to analyze the network security for the smart campus, the Markov model is used as the basis combined with the reinforced Q learning algorithm for network node security detection, and a specific simulation analysis is given. The encryption performance and defense performance of the elliptic curve cryptosystem are analyzed through the elliptic curve cryptosystem to formulate the encryption scheme for students’ private data in the smart campus. The results indicate that the Markov model node detection combined with reinforcement Q-learning in this paper takes a maximum time of about 5.75s when the network node size reaches 150. When the number of nodes in the smart campus network is 30, under brute force attack, the whole network is captured only when the number of malicious nodes increases to more than 22, while under random attack, it takes as many as 30 malicious nodes to join before the network completely falls. This illustrates that the use of the Markov model can be realized to analyze the network security of the smart campus and that student privacy protection needs to further improve the awareness of student data privacy protection and develop the habit of assessing the privacy risk beforehand in their daily network behavior.
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基于马尔可夫模型的智慧校园网络安全和学生隐私保护路径优化
摘要:本文从超融合技术的应用入手,构建了基于超融合技术的高校智慧校园框架,并给出了智慧校园的框架描述。为了分析智慧校园的网络安全,以马尔可夫模型为基础,结合强化Q学习算法进行网络节点安全检测,并进行了具体的仿真分析。通过椭圆曲线密码系统分析椭圆曲线密码系统的加密性能和防御性能,制定智能校园中学生私有数据的加密方案。结果表明,本文结合强化q -学习的马尔可夫模型节点检测在网络节点规模达到150时,最大耗时约5.75s。当智能校园网的节点数为30时,在暴力攻击下,恶意节点数增加到22个以上时,整个网络才会被捕获,而在随机攻击下,多达30个恶意节点加入后,网络才会完全崩溃。这说明利用马尔可夫模型分析智慧校园网络安全是可以实现的,学生隐私保护需要进一步提高学生数据隐私保护意识,养成在日常网络行为中预先评估隐私风险的习惯。
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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