Reliability Analysis and Optimization of Systems Containing Multi-Functional Entities

Enabling more than one function in an entity provides a new cost-effective way to develop a highly reliable system. In this dissertation, we study the reliability of systems containing multi-functional entities. We derive the expressions for reliability of one-shot systems and reliability of each fu...

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Main Author: Xu, Yiwen
Other Authors: Liao, Haitao
Language:en_US
Published: The University of Arizona. 2015
Subjects:
Online Access:http://hdl.handle.net/10150/594927
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spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-5949272016-01-28T03:00:38Z Reliability Analysis and Optimization of Systems Containing Multi-Functional Entities Xu, Yiwen Liao, Haitao Liao, Haitao Fan, Neng Liu, Jian operations research phase-type distribution probabilistic site-selection problem reliability Systems & Industrial Engineering multi-functional entity Enabling more than one function in an entity provides a new cost-effective way to develop a highly reliable system. In this dissertation, we study the reliability of systems containing multi-functional entities. We derive the expressions for reliability of one-shot systems and reliability of each function. A step further, a redundancy allocation problem (RAP) with the objective of maximizing system reliability is formulated. Unlike constructing a system with only single-functional entities, the number of copies of a specific function to be included in each multi-functional entity (i.e., functional redundancy) needs to be determined as part of the design. Moreover, a start-up strategy for turning on specific functions in these components must be decided prior to system operation. We develop a heuristic algorithm and include it in a two-stage Genetic Algorithm (GA) to solve the new RAP. We also apply a modified Tabu search (TS) method for solving such NP-hard problems. Our numerical studies illustrate that the two-stage GA and the TS method are quite effective in searching for high quality solutions. The concept of multi-functional entities can be also applied in probabilistic site selection problem (PSSP). Unlike traditional PSSP with failures either at nodes or on edges, we consider a more general problem, in which both nodes and edges could fail and the edge-level redundancy is included. We formulate the problem as an integer programming optimization problem. To reduce the searching space, two corresponding simplified models formulated as integer linear programming problems are solved for providing a lower bound to the primal problem. Finally, a big challenge in reliability analysis is how to determine the failure distribution of components. This is especially significant for multi-functional entities as more levels of redundancy are considered. We provide an automated model-selection method to construct the best phase-type (PH) distribution for a given data set in terms of the model complexity and the adequacy of statistical fitting. To efficiently utilize the Akaike Information Criterion for balancing the likelihood value and the number of free parameters, the proposed method is carried out in two stages. The detailed subproblems and the related solution procedures are developed and illustrated through numerical studies. The results verify the effectiveness of the proposed model-selection method in constructing PH distributions. 2015 text Electronic Dissertation http://hdl.handle.net/10150/594927 en_US Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction or presentation (such as public display or performance) of protected items is prohibited except with permission of the author. The University of Arizona.
collection NDLTD
language en_US
sources NDLTD
topic operations research
phase-type distribution
probabilistic site-selection problem
reliability
Systems & Industrial Engineering
multi-functional entity
spellingShingle operations research
phase-type distribution
probabilistic site-selection problem
reliability
Systems & Industrial Engineering
multi-functional entity
Xu, Yiwen
Reliability Analysis and Optimization of Systems Containing Multi-Functional Entities
description Enabling more than one function in an entity provides a new cost-effective way to develop a highly reliable system. In this dissertation, we study the reliability of systems containing multi-functional entities. We derive the expressions for reliability of one-shot systems and reliability of each function. A step further, a redundancy allocation problem (RAP) with the objective of maximizing system reliability is formulated. Unlike constructing a system with only single-functional entities, the number of copies of a specific function to be included in each multi-functional entity (i.e., functional redundancy) needs to be determined as part of the design. Moreover, a start-up strategy for turning on specific functions in these components must be decided prior to system operation. We develop a heuristic algorithm and include it in a two-stage Genetic Algorithm (GA) to solve the new RAP. We also apply a modified Tabu search (TS) method for solving such NP-hard problems. Our numerical studies illustrate that the two-stage GA and the TS method are quite effective in searching for high quality solutions. The concept of multi-functional entities can be also applied in probabilistic site selection problem (PSSP). Unlike traditional PSSP with failures either at nodes or on edges, we consider a more general problem, in which both nodes and edges could fail and the edge-level redundancy is included. We formulate the problem as an integer programming optimization problem. To reduce the searching space, two corresponding simplified models formulated as integer linear programming problems are solved for providing a lower bound to the primal problem. Finally, a big challenge in reliability analysis is how to determine the failure distribution of components. This is especially significant for multi-functional entities as more levels of redundancy are considered. We provide an automated model-selection method to construct the best phase-type (PH) distribution for a given data set in terms of the model complexity and the adequacy of statistical fitting. To efficiently utilize the Akaike Information Criterion for balancing the likelihood value and the number of free parameters, the proposed method is carried out in two stages. The detailed subproblems and the related solution procedures are developed and illustrated through numerical studies. The results verify the effectiveness of the proposed model-selection method in constructing PH distributions.
author2 Liao, Haitao
author_facet Liao, Haitao
Xu, Yiwen
author Xu, Yiwen
author_sort Xu, Yiwen
title Reliability Analysis and Optimization of Systems Containing Multi-Functional Entities
title_short Reliability Analysis and Optimization of Systems Containing Multi-Functional Entities
title_full Reliability Analysis and Optimization of Systems Containing Multi-Functional Entities
title_fullStr Reliability Analysis and Optimization of Systems Containing Multi-Functional Entities
title_full_unstemmed Reliability Analysis and Optimization of Systems Containing Multi-Functional Entities
title_sort reliability analysis and optimization of systems containing multi-functional entities
publisher The University of Arizona.
publishDate 2015
url http://hdl.handle.net/10150/594927
work_keys_str_mv AT xuyiwen reliabilityanalysisandoptimizationofsystemscontainingmultifunctionalentities
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