工业控制系统资产的威胁归因与推理

Q3 Computer Science
Shuqin Zhang, Peiyu Shi, Tianhui Du, Xinyu Su, Yunfei Han
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引用次数: 0

摘要

随着工业物联网的广泛应用,工业控制系统正逐步向智能化和信息化转型。为了提高工业控制系统的安全性,本文基于工业控制系统资产,提供了一种威胁建模、归因和推理的方法。首先,该方法通过构建基于资产结构的资产安全本体来描述工业控制系统的资产威胁。其次,该方法利用机器学习来识别资产,并对攻击者的攻击路径进行归因。随后,设计推理规则来复制攻击者的攻击路径,从而缩短安全人员对威胁的响应时间,并加强工业控制系统内资产安全之间的语义关系。最后,在基于电网的模拟环境和真实案例场景中使用该流程,对资产和攻击进行映射。推导出实际攻击路径,证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Threat Attribution and Reasoning for Industrial Control System Asset
Due to the widespread use of the industrial internet of things, the industrial control system has steadily transformed into an intelligent and informational one. To increase the industrial control system's security, based on industrial control system assets, this paper provides a method of threat modeling, attributing, and reasoning. First, this method characterizes the asset threat of an industrial control system by constructing an asset security ontology based on the asset structure. Second, this approach makes use of machine learning to identify assets and attribute the attacker's attack path. Subsequently, inference rules are devised to replicate the attacker's attack path, thereby reducing the response time of security personnel to threats and strengthening the semantic relationship between asset security within industrial control systems. Finally, the process is used in the simulation environment and real case scenario based on the power grid, where the assets and attacks are mapped. The actual attack path is deduced, and it demonstrates the approach's effectiveness.
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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
30
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