An Extraction Method of Situational Factors for Network Security Situational Awareness

Huiqiang Wang, Ying Liang, Haizhi Ye
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引用次数: 9

Abstract

The proposal of network security situational awareness (NSSA) research means a great breakthrough and an innovation to the traditional network security technologies, and it has become a new hot research topic in network security field. First the current research status in this field is introduced, after a summarization of the former achievements, a layered NSSA realization model is constructed, in which extraction of the situational factors is pointed out as the most basic and important step in realizing NSSA. Situational factors(SF) are defined here, and the extraction method of SF is the main research topic in this paper. Combined with evolutionary strategy and neural network, an extraction method of situational factors is proposed. Evolutionary strategy is used to optimize the parameters of neural network, and then the evolutionary neural network model is established to extract the SFs, so the foundation of realizing network security situation is established. Finally, simulation experiments are done to validate that the evolutionary neural network model can effectively extract situational factors and the model has better generalization ability, which will accelerate the realization of NSSA greatly.
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一种面向网络安全态势感知的态势因素提取方法
网络安全态势感知(NSSA)研究的提出是对传统网络安全技术的重大突破和创新,已成为网络安全领域新的研究热点。首先介绍了该领域的研究现状,在总结前人研究成果的基础上,构建了一种分层的非安全保障实现模型,并指出情境因素的提取是实现非安全保障最基础、最重要的步骤。本文对情景因素进行了定义,并对情景因素的提取方法进行了研究。将进化策略与神经网络相结合,提出了一种情景因素提取方法。采用进化策略对神经网络参数进行优化,建立进化神经网络模型提取安全状态,为实现网络安全状态奠定基础。最后,通过仿真实验验证了进化神经网络模型能够有效地提取情景因素,模型具有较好的泛化能力,将大大加快NSSA的实现。
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