Parallel discretization of the Markov chain approximation for the autoregressive moving average chart
Academic Article
Publication Date:
2019
Abstract:
In the Markov chain model of an autoregressive moving average chart, the post-transition states of nonzero transition probabilities are distributed along one-dimensional lines of a constant gradient over the state space. By considering this characteristic, we propose discretizing the state space parallel to the gradient of these one-dimensional lines. We demonstrate that our method substantially reduces the computational cost of the Markov chain approximation for the average run length in two- and three-dimensional state spaces. Also, we investigate the effect of these one-dimensional lines on the computational cost. Lastly, we generalize our method to state spaces larger than three dimensions.
CRIS type:
1.1 Articolo in rivista
Keywords:
ARMA chart; Average run length; Computational cost; Markov chain approximation; State Space discretization
List of contributors:
Jihn, C. -H.; Ulkhaq, M. M.
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