1 / 23

Fuzzy based evaluation of dependable systems

Fuzzy based evaluation of dependable systems. Mehran Garmehi Spring 1384. Overview. Why we need evaluation of dependable systems ? How to do evaluation? Why Markov model? A simple example . Why fuzzy theory is useful? How fuzzy theory can be used in Markov model ?

fmcgee
Download Presentation

Fuzzy based evaluation of dependable systems

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Fuzzy based evaluation of dependable systems Mehran Garmehi Spring 1384

  2. Overview • Why we need evaluation of dependable systems ? • How to do evaluation? • Why Markov model? • A simple example . • Why fuzzy theory is useful? • How fuzzy theory can be used in Markov model ? • An example :Evaluation of a dependable system using Fuzzy Markov Model .

  3. Dependability (RMS) • Reliability • Maintainability • Safety • …

  4. Evaluation techniques • Fault tree • Markov model • …

  5. Pz = Pa* Pb Pz = 1- (1-Pa)(1-Pb) Fault tree model

  6. Fault tree model • Repair ? • Complexity! • Scalability!

  7. Markov model • Some states like FSM • Memory less

  8. TMR (Triple Modular Redundancy)

  9. Parameters • Failure rate λ • Coverage c • Corrective repair rateμc • Preventive repair rate μp

  10. Markov model probabilities P ( t + Δt ) = A.P(t)

  11. Why fuzzy theory is useful? • In practice λ, μp, μc and c are not crisp • Usually these values are given in a triangular manner (min , max and mid ) • These parameters may vary during the evaluation process • The matrix A can be indicated in fuzzy form

  12. Example

  13. Example • P ( t + Δt ) = A. P(t)

  14. Example P ( nΔt ) = A .P (0)

  15. Example Fuzzy parameters

  16. Example : Fuzzy equations • P̃ ( nΔt ) =Ã . P (0)

  17. Example : Fuzzy matrix

  18. Example result matrix

  19. Example: Normalization

  20. Example: α cut • R̃ ( nΔt ) = P̃10 ( nΔt )

  21. Example : Result

  22. References • Barry W. Johnson,”Design and analysis of fault–toletant digital systems”,Addison-Wesley publishing, 1989 • P.S. Cugnasca, M.T. de Andrada, J.B. Camargo, “A fuzzy based approach for the design and evaluation of dependable systems using the markov model”, Proceedings of the 1999 Pacific Rim International Symposium on Dependable Computing • H. Zimmermann,”Fuzzy set theory”, Kluwer academic publisher, 1996

More Related