Cyber-Physical Specification Mismatches

Author:

Nguyen Luan V.1,Hoque Khaza Anuarul2ORCID,Bak Stanley3,Drager Steven3,Johnson Taylor T.4

Affiliation:

1. University of Texas at Arlington, Philadelphia, PA

2. University of Oxford, Naka Hall, Columbia, MO

3. Air Force Research Laboratory, Rome, NY

4. Vanderbilt University, Nashville, TN

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 toward 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. Another case study of an automotive control system is also introduced to illustrate the power of Hynger and Daikon in automatically identifying cyber-physical specification mismatches.

Funder

Air Force Office of Scientific Research (AFOSR) through AFOSR's Summer Faculty Fellowship Program

Air Force Research Laboratory (AFRL) through the AFRL's Visiting Faculty Research Program

National Science Foundation

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Control and Optimization,Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

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1. Testing Abstractions for Cyber-Physical Control Systems;ACM Transactions on Software Engineering and Methodology;2023-11-23

2. Data-Driven Parameterized Corner Synthesis for Efficient Validation of Perception Systems for Autonomous Driving;ACM Transactions on Cyber-Physical Systems;2023-04-19

3. Application of Digital Twin Technology in the Field of Autonomous Driving Test;2022 Third International Conference on Latest trends in Electrical Engineering and Computing Technologies (INTELLECT);2022-11-16

4. A Framework for Identification and Validation of Affine Hybrid Automata from Input-Output Traces;ACM Transactions on Cyber-Physical Systems;2022-04-11

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