Cyber-physical specification mismatch identification with dynamic analysis

Taylor T. Johnson, Stanley Bak, S. Drager
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引用次数: 21

Abstract

Embedded systems use increasingly complex software and are evolving into cyber-physical systems (CPS) with sophisticated interaction and coupling between physical and computational processes. Many CPS operate in safety-critical environments and have stringent certification, reliability, and correctness requirements. These systems undergo changes throughout their lifetimes, where either the software or physical hardware is updated in subsequent design iterations. One source of failure in safety-critical CPS is when there are unstated assumptions in either the physical or cyber parts of the system, and new components do not match those assumptions. In this work, we present an automated method towards identifying unstated assumptions in CPS. Dynamic specifications in the form of candidate invariants of both the software and physical components are identified using dynamic analysis (executing and/or simulating the system implementation or model thereof). A prototype tool called Hynger (for HYbrid iNvariant GEneratoR) was developed that instruments Simulink/Stateflow (SLSF) model diagrams to generate traces in the input format compatible with the Daikon invariant inference tool, which has been extensively applied to software systems. Hynger, in conjunction with Daikon, is able to detect candidate invariants of several CPS case studies. We use the running example of a DC-to-DC power converter, and demonstrate that Hynger can detect a specification mismatch where a tolerance assumed by the software is violated due to a plant change.
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基于动态分析的信息物理规格不匹配识别
嵌入式系统使用越来越复杂的软件,并正在演变为物理和计算过程之间具有复杂交互和耦合的网络物理系统(CPS)。许多CPS在安全关键环境中运行,并且有严格的认证、可靠性和正确性要求。这些系统在其整个生命周期中都会经历变化,其中软件或物理硬件在随后的设计迭代中更新。在安全关键型CPS中,故障的一个来源是系统的物理或网络部分存在未声明的假设,而新组件与这些假设不匹配。在这项工作中,我们提出了一种在CPS中识别未陈述假设的自动化方法。使用动态分析(执行和/或模拟系统实现或其模型)确定软件和物理组件候选不变量形式的动态规范。开发了一个名为Hynger (HYbrid iNvariant GEneratoR)的原型工具,该工具使用Simulink/Stateflow (SLSF)模型图来生成与Daikon不变推理工具兼容的输入格式的轨迹,该工具已广泛应用于软件系统。Hynger与Daikon合作,能够检测几个CPS案例研究的候选不变量。我们使用直流到直流电源转换器的运行示例,并证明Hynger可以检测到规格不匹配,其中由于工厂变化而违反了软件假设的公差。
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