MoMA Algorithm: A Bottom-Up Modeling Procedure for a Modular System under Environmental Conditions
Metadatos
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MDPI
Materia
Modular systems Markovian arrival process Phase-type distribution Shock models Reliability analysis Maintenance Matrix-analytic methods
Date
2022-09-27Referencia bibliográfica
Gámiz, M.L... [et al.]. MoMA Algorithm: A Bottom-UpModeling Procedure for a Modular System under Environmental Conditions. Mathematics 2022, 10, 3521. [https://doi.org/10.3390/math10193521]
Patrocinador
Spanish Ministry of Science and Innovation-State Research Agency PID2020-120217RB-I00 PID2021-123737NB-I00; Junta de Andalucia B-FQM-284-UGR20 CEX2020-001105-/AEI/10.13039/501100011033Résumé
The functioning of complex systems relies on subsystems (modules) that in turn are
composed of multiple units. In this paper, we focus on modular systems that might fail due to wear
on their units or environmental conditions (shocks). The lifetimes of the units follow a phase-type
distribution, while shocks follow a Markovian Arrival Process. The use of Matrix-Analytic methods
and a bottom-up approach for constructing the system generator is proposed. The use of modular
structures, as well as its implementation by the Modular Matrix-Analytic (MoMA) algorithm, make
our methodology flexible in adapting to physical changes in the system, e.g., incorporation of new
modules into the current model. After the model for the system is built, the modules are seen as a
‘black box’, i.e., only the contribution of the module as a whole to system performance is considered.
However, if required, our method is able to keep track of the events within the module, making
it possible to identify the state of individual units. Compact expressions for different reliability
measures are obtained with the proposed description, optimal maintenance strategies based on
critical operative states are suggested, and a numerical application based on a k-out-of-n structure
is developed.