Toward to Information Security of AI-Enhanced Weapons

V. Gribunin, S. Kondakov
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Abstract

Purpose of the article: Analysis of intellectualized weapons using machine learning from the point of view of information security. Development of proposals for the deployment of work in the field of information security in similar products. Research method: System analysis of machine learning systems as objects of protection. Determination on the basis of the analysis of rational priority directions for improving these systems in terms of ensuring information security. Obtained result: New threats to information security arising from the use of weapons and military equipment with elements of artificial intelligence are presented. Machine learning systems are considered by the authors as an object of protection, which made it possible to determine the protected assets of such systems, their vulnerabilities, threats and possible attacks on them. The article analyzes the measures to neutralize the identified threats based on the taxonomy proposed by the US National Institute of Standards and Technology. The insufficiency of the existing regulatory methodological framework in the field of information protection to ensure the security of machine learning systems has been determined. An approach is proposed that should be used in the development and security assessment of systems using machine learning. Proposals for the deployment of work in the field of ensuring the security of intelligent weapons using machine learning technologies are presented.
人工智能增强型武器信息安全研究
本文目的:从信息安全的角度分析使用机器学习的智能化武器。为在类似产品中部署信息安全领域的工作提出建议。研究方法:系统分析机器学习系统作为保护对象。在分析的基础上,确定从保障信息安全的角度出发,完善这些系统的合理优先方向。获得的结果:提出了使用具有人工智能元素的武器和军事装备对信息安全造成的新威胁。机器学习系统被作者认为是一个保护对象,这使得确定这些系统的受保护资产、它们的漏洞、威胁和可能的攻击成为可能。本文根据美国国家标准与技术研究所提出的分类,分析了消除已识别威胁的措施。现有的监管方法框架在信息保护领域的不足,以确保机器学习系统的安全性已经确定。提出了一种应该用于使用机器学习的系统的开发和安全评估的方法。提出了在使用机器学习技术确保智能武器安全领域开展工作的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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