Markov reward models have interesting modeling applications, particularly those addressing fault-tolerant hardware/software systems. In this paper, we consider a Markov reward model with a reward structure including only reward rates associated with states, in which both positive and negative reward rates are present and null reward rates are allowed, and develop a numerical method to compute the distribution function of the cumulative reward till exit of a subset of transient states of the model. The method combines a model transformation step with the solution of the transformed model using a randomization construction with two randomization rates. The method introduces a truncation error, but that error is strictly bounded from above by...
Abstract. Markov reward models (MRMs) are commonly used for the performance, dependability, and perf...
Reward models have become an important method for specifying performability models for many types of...
ABSTRACT A The true state of the system described here is characterized by a. probability vector. At...
Degradable fault-tolerant systems can be evaluated using rewarded continuous-time Markov chain (CTMC...
In this paper we generalize a method (called regenerative randomization) for the transient solution ...
By combining in a novel way the randomization method with the stationary detection technique, we dev...
appeared in reduced version in Communications in Statistics—Simulation and Computation Randomization...
A generally applicable discretization method for computing the transient distribution of the cumulat...
Rewarded homogeneous continuous-time Markov chain (CTMC) models can be used to analyze performance, ...
Abstract—Rewarded homogeneous continuous-time Markov chain (CTMC) models can be used to analyze perf...
Randomization is an attractive alternative for the transient analysis of continuous time Markov mod...
Costs and rewards are important ingredients for cyberphysical systems, modelling critical aspects li...
Costs and rewards are important ingredients for many types of systems, modelling critical aspects li...
In this thesis, the problem of computing the cumulative distribution function (cdf) of the random ti...
Iterative numerical methods are an important ingredient for the solution of continuous time Markov d...
Abstract. Markov reward models (MRMs) are commonly used for the performance, dependability, and perf...
Reward models have become an important method for specifying performability models for many types of...
ABSTRACT A The true state of the system described here is characterized by a. probability vector. At...
Degradable fault-tolerant systems can be evaluated using rewarded continuous-time Markov chain (CTMC...
In this paper we generalize a method (called regenerative randomization) for the transient solution ...
By combining in a novel way the randomization method with the stationary detection technique, we dev...
appeared in reduced version in Communications in Statistics—Simulation and Computation Randomization...
A generally applicable discretization method for computing the transient distribution of the cumulat...
Rewarded homogeneous continuous-time Markov chain (CTMC) models can be used to analyze performance, ...
Abstract—Rewarded homogeneous continuous-time Markov chain (CTMC) models can be used to analyze perf...
Randomization is an attractive alternative for the transient analysis of continuous time Markov mod...
Costs and rewards are important ingredients for cyberphysical systems, modelling critical aspects li...
Costs and rewards are important ingredients for many types of systems, modelling critical aspects li...
In this thesis, the problem of computing the cumulative distribution function (cdf) of the random ti...
Iterative numerical methods are an important ingredient for the solution of continuous time Markov d...
Abstract. Markov reward models (MRMs) are commonly used for the performance, dependability, and perf...
Reward models have become an important method for specifying performability models for many types of...
ABSTRACT A The true state of the system described here is characterized by a. probability vector. At...