• DocumentCode
    2178285
  • Title

    Probabilistic Modeling of Failure Dependencies Using Markov Logic Networks

  • Author

    Ghosh, Sudip ; Steiner, Wilfried ; Denker, Grit ; Lincoln, Peter

  • Author_Institution
    Comput. Sci. Lab., SRI Int., Menlo Park, CA, USA
  • fYear
    2013
  • fDate
    2-4 Dec. 2013
  • Firstpage
    162
  • Lastpage
    171
  • Abstract
    We present a methodology for the probabilistic modeling of failure dependencies in large, complex systems using Markov Logic Networks (MLNs), a state-of-the-art probabilistic relational modeling technique in machine learning. We illustrate this modeling methodology on example system architectures, and show how the the Probabilistic Consistency Engine (PCE) tool can create and analyze failure-dependency models. We compare MLN-based analysis with analytical symbolic analysis to validate our approach. The latter method yields bounds on the expected system behaviors for different component-failure probabilities, but it requires closed-form representations and is therefore often an impractical approach for complex system analysis. The MLN-based method facilitates techniques of early design analysis for reliability (e.g., probabilistic sensitivity analysis). We analyze two examples - a portion of the Time-Triggered Ethernet (TTEthernet) communication platform used in space, and an architecture based on Honeywell´s Cabin Air Compressor(CAC) - that highlight the value of the MLN-based approach for analyzing failure dependencies in complex cyber-physical systems.
  • Keywords
    Markov processes; inference mechanisms; learning (artificial intelligence); local area networks; probability; software reliability; system recovery; systems analysis; Honeywell CAC; Honeywell Cabin Air Compressor; MLN-based analysis; Markov logic networks; PCE tool; TTEthernet communication platform; analytical symbolic analysis; complex cyber-physical systems; component-failure probability; early design analysis; failure-dependency model analysis; inference tool; large complex systems; machine learning; probabilistic consistency engine; probabilistic modeling; probabilistic relational modeling technique; probabilistic sensitivity analysis; reliability; system architecture; system behavior; time-triggered Ethernet; Analytical models; Computational modeling; Equations; Load modeling; Markov processes; Mathematical model; Probabilistic logic; Failure dependency modeling; Markov Logic Networks; Probabilistic Relational Models; Probabilistic fault analysis;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Dependable Computing (PRDC), 2013 IEEE 19th Pacific Rim International Symposium on
  • Conference_Location
    Vancouver, BC
  • Type

    conf

  • DOI
    10.1109/PRDC.2013.35
  • Filename
    6820861