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Robustness for Smart Cyber Physical Systems and Internet-of-Things: From Adaptive Robustness Methods to Reliability and Security for Machine Learning

机译:智能网络物理系统和物联网的鲁棒性:从自适应鲁棒性方法到机器学习的可靠性和安全性

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In recent years, the exponential growth of internet of things (IoT) and cyber physical systems (CPS) in safety critical applications has imposed severe reliability and security challenges. This is due to the heterogeneity and complex connectivity of the CPS components as well as error-prone and vulnerable nature of the underlying devices, harsh operating environments, and escalating security attacks. Different reliability threats (like soft errors, process variation and the temperature-induced dark silicon problem) have posed diverse challenges, which led to the development of various mitigation techniques on different layers of the CPS/IoT stack. Similarly, security threats (like manipulation of communication channels, hardware components and associated software) led to the development of different detection and protection techniques on different layers of the CPS/IoT stack, e.g., cross-layer and intra-layer connectivity. Towards this, the associated costs and overhead as well as potentially conflicting goals are important to be considered, e.g., most of the soft error mitigation techniques are based on redundancy and most of the security-related techniques require continuous runtime monitoring, obfuscation, attestation, and trusted execution environments. This paper first discusses different existing options for approaching this problem at different system layers, i.e., adaptive reliability and security management. These different solutions will provide a wide variety of options to choose from, as a basis for selection and adaptation, to solve reliability-related problems at design-time and run-time. Due to the exponential increase in the complexity and functional requirements, there is a trend towards employing Machine Learning in CPSs and IoT systems. Therefore, we will show how systems can be protected against different security and reliability threats when Machine Learning sub-systems are employed in CPS/IoT.
机译:近年来,安全关键型应用中的物联网(IoT)和网络物理系统(CPS)呈指数级增长,给可靠性和安全性带来了严峻挑战。这是由于CPS组件的异构性和复杂的连接性以及底层设备容易出错和易受攻击的特性,恶劣的操作环境以及不断升级的安全攻击所致。不同的可靠性威胁(例如软错误,工艺变化和温度引起的黑硅问题)提出了各种挑战,从而导致在CPS / IoT堆栈的不同层上开发了各种缓解技术。同样,安全威胁(例如对通信通道,硬件组件和相关软件的操纵)导致在CPS / IoT堆栈的不同层上开发不同的检测和保护技术,例如跨层和层内连接。为此,必须考虑相关的成本和开销以及可能有冲突的目标,例如,大多数软错误缓解技术都基于冗余,并且大多数与安全性相关的技术都需要持续的运行时监视,混淆,证明,和受信任的执行环境。本文首先讨论了在不同系统层上解决此问题的不同现有选项,即自适应可靠性和安全性管理。这些不同的解决方案将提供多种选择,作为选择和调整的基础,以解决设计时和运行时与可靠性相关的问题。由于复杂性和功能要求的指数级增长,趋势是在CPS和IoT系统中采用机器学习的趋势。因此,我们将展示当在CPS / IoT中采用机器学习子系统时,如何保护系统免受不同的安全性和可靠性威胁。

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