Sufficient conditions for existence of a fixed point in stochastic reward net-based iterative models

Abstract

Stochastic Pétri net models of large systems that are solved by generating the underlying Markov chain pose the problem of largeness of the state-space of the Markov chain. Hierarchical and iterative models of systems have been used extensively to solve this problem. A problem with models which use fixed-point iteration is the theoretical proof of existence, uniqueness, and convergence of the fixed-point equations, which still remains an "art." In this paper, we establish conditions, in terms of the net structure and the characteristics of the iterated variables, under which existence of a solution is guaranteed when fixed-point iteration is used in stochastic Petri nets. We use these conditions to establish the existence of a fixed point for a model of a priority scheduling system, at which tasks may arrive according to a Poisson process or due to spawning or conditional branching of other tasks in the system. ©1996 IEEE.

DOI
10.1109/32.541435
Year
Chicago Citation
Mainkar, V., and K. S. Trivedi. “Sufficient conditions for existence of a fixed point in stochastic reward net-based iterative models.” IEEE Transactions on Software Engineering 22, no. 9 (December 1, 1996): 640–53. https://doi.org/10.1109/32.541435.