• Title of article

    Passage-time computation and aggregation strategies for large semi-Markov processes

  • Author/Authors

    Guenther، نويسنده , , Marcel C. and Dingle، نويسنده , , Nicholas J. and Bradley، نويسنده , , Jeremy T. and Knottenbelt، نويسنده , , William J.، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2011
  • Pages
    16
  • From page
    221
  • To page
    236
  • Abstract
    High-level semi-Markov modelling paradigms such as semi-Markov stochastic Petri nets and process algebras are used to capture realistic performance models of computer and communication systems but often have the drawback of generating huge underlying semi-Markov processes. Extraction of performance measures such as steady-state probabilities and passage-time distributions therefore relies on sparse matrix–vector operations involving very large transition matrices. Previous studies have shown that exact state-by-state aggregation of semi-Markov processes can be applied to reduce the number of states. This can, however, lead to a dramatic increase in matrix density caused by the creation of additional transitions between remaining states. Our paper addresses this issue by presenting the concept of state space partitioning for aggregation. sent a new deterministic partitioning method which we term barrier partitioning. We show that barrier partitioning is capable of splitting very large semi-Markov models into a number of partitions such that first passage-time analysis can be performed more quickly and using up to 99% less memory than existing algorithms.
  • Keywords
    Semi-Markov processes , Aggregation , Passage-time analysis
  • Journal title
    Performance Evaluation
  • Serial Year
    2011
  • Journal title
    Performance Evaluation
  • Record number

    1570554