Network Security Situation Forecast Model Based on Neural Network Algorithm Development and Verification
Title | Network Security Situation Forecast Model Based on Neural Network Algorithm Development and Verification |
Publication Type | Conference Paper |
Year of Publication | 2021 |
Authors | Diao, Weiping |
Conference Name | 2021 IEEE 4th International Conference on Automation, Electronics and Electrical Engineering (AUTEEE) |
Keywords | Analytical models, Fitting, Internet-scale Computing Security, LSTM, Metrics, Network security, Neural Network, Neural Network Security, Neural networks, NSSA, NSSF, policy-based governance, Prediction algorithms, Predictive models, pubcrawl, resilience, Resiliency, simulation |
Abstract | With the rapid development of Internet scale and technology, people pay more and more attention to network security. At present, the general method in the field of network security is to use NSS(Network Security Situation) to describe the security situation of the target network. Because NSSA (Network Security Situation Awareness) has not formed a unified optimal solution in architecture design and algorithm design, many ideas have been put forward continuously, and there is still a broad research space. In this paper, the improved LSTM(long short-term memory) neural network is used to analyze and process NSS data, and effectively utilize the attack logic contained in sequence data. Build NSSF (Network Security Situation Forecast) framework based on NAWL-ILSTM. The framework is to directly output the quantified NSS change curve after processing the input original security situation data. Modular design and dual discrimination engine reduce the complexity of implementation and improve the stability. Simulation results show that the prediction model not only improves the convergence speed of the prediction model, but also greatly reduces the prediction error of the model. |
DOI | 10.1109/AUTEEE52864.2021.9668668 |
Citation Key | diao_network_2021 |