The importance of cybersecurity frameworks to regulate emergent AI technologies for space applications

IF 1 Q3 ENGINEERING, AEROSPACE
Antonio Carlo , Nebile Pelin Mantı , Bintang Alam Semesta W.A.M , Francesca Casamassima , Nicolò Boschetti , Paola Breda , Tobias Rahloff
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引用次数: 0

Abstract

Over the past decades, industries and governments have progressively been relying upon space data-centric and data-dependant systems. This led to the emergence of malicious activities, also known as cyber-threats, targeting such systems. To counter these threats, new technologies such as Artificial Intelligence (AI) have been implemented and deployed. Today, AI is highly capable of delivering fast, precise, and reliable command-and-control decision-making, as well as providing reliable vulnerability analysis using well-proven cutting-edge techniques, at least when applied to terrestrial applications. In fact, this might not yet be the case when used for space applications. AI can also play a transformative and important role in the future of space cybersecurity, and it poses questions on what to expect in the near-term future.

Challenges and opportunities deriving from the adoption of AI-based solutions to achieve cybersecurity and later cyber defence objectives in both civil and military operations require rethinking of a new framework and new ethical requirements. In fact, most of these technologies are not designed to be used or to overcome challenges in space. Because of the highly contested and congested environment, as well as the highly interdisciplinary nature of threats to AI and Machine Learning (ML) technologies, including cybersecurity issues, a solid and open understanding of the technology itself is required, as well as an understanding of its multidimensional uses and approaches. This includes the definition of legal and technical frameworks, ethical dimensions and other concerns such as mission safety, national security, and technology development for future uses.

The continuous endeavours to create a framework and regulate interdependent uses of combined technologies such as AI and cybersecurity to counter “new” threats require the investigation and development of “living concepts” to determine in advance the vulnerabilities of networks and AI.

This paper defines a cybersecurity risk and vulnerability taxonomy to enable the future application of AI in the space security field. Moreover, it assesses to what extent a network digital twins’ simulation can still protect networks against relentless cyber-attacks in space against users and ground segments. Both concepts are applied to the case study of Earth Observation (EO) operations, which allows for conclusions to be drawn based on the business impact (reputational, environmental, and social) of a cyber malicious activity. Since AI technologies are developing on a daily basis, a regulatory framework is proposed using ethical and technical approaches for this technology and its use in space.

网络安全框架对规范空间应用中的新兴人工智能技术的重要性
在过去的几十年里,工业和政府逐渐依赖于以空间数据为中心和数据依赖的系统。这导致了针对这些系统的恶意活动的出现,也被称为网络威胁。为了应对这些威胁,人工智能(AI)等新技术已经得到实施和部署。今天,人工智能能够提供快速、精确、可靠的指挥和控制决策,并使用经过验证的尖端技术提供可靠的漏洞分析,至少在应用于地面应用时是这样。事实上,在用于空间应用时,情况可能还不是这样。人工智能还可以在未来的空间网络安全中发挥变革性和重要的作用,并对近期的预期提出了问题。在民用和军事行动中,采用基于人工智能的解决方案来实现网络安全和后来的网络防御目标所带来的挑战和机遇需要重新思考新的框架和新的道德要求。事实上,这些技术中的大多数并不是为了在太空中使用或克服挑战而设计的。由于竞争激烈和拥挤的环境,以及对人工智能和机器学习(ML)技术的威胁的高度跨学科性质,包括网络安全问题,需要对技术本身有一个坚实和开放的理解,以及对其多维用途和方法的理解。这包括法律和技术框架的定义、道德层面和其他问题,如任务安全、国家安全和未来使用的技术发展。不断努力创建框架并规范人工智能和网络安全等组合技术的相互使用,以应对“新”威胁,需要调查和开发“活概念”,以提前确定网络和人工智能的脆弱性。本文定义了网络安全风险和漏洞分类,以实现人工智能在空间安全领域的未来应用。此外,它还评估了网络数字双胞胎的模拟在多大程度上仍然可以保护网络免受来自空间的针对用户和地面部分的无情网络攻击。这两个概念都适用于地球观测(EO)操作的案例研究,可以根据网络恶意活动的业务影响(声誉、环境和社会)得出结论。由于人工智能技术每天都在发展,因此建议采用道德和技术方法为该技术及其在空间中的使用建立一个监管框架。
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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来源期刊
Journal of Space Safety Engineering
Journal of Space Safety Engineering Engineering-Safety, Risk, Reliability and Quality
CiteScore
2.50
自引率
0.00%
发文量
80
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