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Resilient Machine Learning for Networked Cyber Physical Systems: A Survey for Machine Learning Security to Securing Machine Learning for CPS

机译:网络网络物理系统的弹性机器学习:机器学习安全对CPS机器学习的机器学习安全调查

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Cyber Physical Systems (CPS) are characterized by their ability to integrate the physical and information or cyber worlds. Their deployment in critical infrastructure have demonstrated a potential to transform the world. However, harnessing this potential is limited by their critical nature and the far reaching effects of cyber attacks on human, infrastructure and the environment. An attraction for cyber concerns in CPS rises from the process of sending information from sensors to actuators over the wireless communication medium, thereby widening the attack surface. Traditionally, CPS security has been investigated from the perspective of preventing intruders from gaining access to the system using cryptography and other access control techniques. Most research work have therefore focused on the detection of attacks in CPS. However, in a world of increasing adversaries, it is becoming more difficult to totally prevent CPS from adversarial attacks, hence the need to focus on making CPS resilient. Resilient CPS are designed to withstand disruptions and remain functional despite the operation of adversaries. One of the dominant methodologies explored for building resilient CPS is dependent on machine learning (ML) algorithms. However, rising from recent research in adversarial ML, we posit that ML algorithms for securing CPS must themselves be resilient. This article is therefore aimed at comprehensively surveying the interactions between resilient CPS using ML and resilient ML when applied in CPS. The paper concludes with a number of research trends and promising future research directions. Furthermore, with this article, readers can have a thorough understanding of recent advances on ML-based security and securing ML for CPS and countermeasures, as well as research trends in this active research area.
机译:网络物理系统(CPS)的特点是它们能够整合物理和信息或网络世界。他们在关键基础设施中的部署已经表现出了改变世界的潜力。然而,利用这一潜力受到他们批判性质的限制,网络攻击对人,基础设施和环境的深远影响。 CP中Cyber​​问题的吸引力从从传感器发送到致动器的信息通过无线通信介质的过程升高,从而加宽了攻击表面。传统上,已经从防止入侵者获得使用密码和其他访问控制技术的访问的角度来调查CPS安全性。因此,大多数研究工作都集中在检测到CPS中的攻击。然而,在越来越多的对手的世界中,完全阻止来自对抗性袭击的CPS变得越来越困难,因此需要专注于制作CPS弹性。尽管对对手的运作,弹性CPS旨在承受干扰,并且仍然存在功能。为构建弹性CPS探索的主要方法之一取决于机器学习(ML)算法。然而,从最近的逆势ML的研究中升起,我们为确保CPS的ML算法不一致,本身必须是有弹性的。因此,本文旨在全面地测量在CPS中使用mL和弹性ML的弹性CPS之间的相互作用。本文以多种研究趋势结束,未来的未来研究方向。此外,在本文中,读者可以彻底了解近期基于ML的安全性和用于CP和对策的预付款,以及该活性研究区域的研究趋势。

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