Multi-Level Information Aggregation for Reliability Assurance of Hierarchical Systems

Reliability assurance of hierarchical systems is crucial for their health management in many mission-critical industries. Due to the limited/absent reliability data and engineering knowledge available at the system level and the complex system structure, system-level reliability assurance is challen...

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Main Author: Li, Mingyang
Other Authors: Liu, Jian
Language:en_US
Published: The University of Arizona. 2015
Subjects:
Online Access:http://hdl.handle.net/10150/560825
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spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-5608252015-10-23T05:45:20Z Multi-Level Information Aggregation for Reliability Assurance of Hierarchical Systems Li, Mingyang Liu, Jian Liu, Jian Son, Young-Jun Liao, Haitao Zhang, Hao Systems & Industrial Engineering Reliability assurance of hierarchical systems is crucial for their health management in many mission-critical industries. Due to the limited/absent reliability data and engineering knowledge available at the system level and the complex system structure, system-level reliability assurance is challenging. To meet with these challenges, the dissertation proposes a generic, flexible and recursive multi-level information aggregation framework by systematically utilizing multi-level reliability information throughout a system structure to improve the performance of a variety of system reliability assurance tasks. Specifically, the aggregation approach is first present to aggregate complex reliability data structure (e.g., failure time data with covariates and different censoring) with less distribution assumptions to improve accuracy of system-level reliability modeling. The system structure is mainly restricted to the hierarchical series-and-parallel system with independent intra-level components and/or sub-systems. Then, the aggregation approach is extended to accommodate multi-state hierarchical system by considering both probabilistic inter-level failure relationships and cascading intra-level failure dependency. Last, the aggregation approach is incorporated into the design of system-level reliability demonstration testing to achieve the potential sample size reduction. Different demonstration testing strategies with and without information aggregation are comprehensively compared with closed-form conditions obtained. A series of case studies have also been conducted to demonstrate that the proposed aggregation methodology can successfully improve the system reliability modeling accuracy and precision, and improve the cost-effectiveness of the system reliability demonstration tests. 2015 text Electronic Dissertation http://hdl.handle.net/10150/560825 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 Systems & Industrial Engineering
spellingShingle Systems & Industrial Engineering
Li, Mingyang
Multi-Level Information Aggregation for Reliability Assurance of Hierarchical Systems
description Reliability assurance of hierarchical systems is crucial for their health management in many mission-critical industries. Due to the limited/absent reliability data and engineering knowledge available at the system level and the complex system structure, system-level reliability assurance is challenging. To meet with these challenges, the dissertation proposes a generic, flexible and recursive multi-level information aggregation framework by systematically utilizing multi-level reliability information throughout a system structure to improve the performance of a variety of system reliability assurance tasks. Specifically, the aggregation approach is first present to aggregate complex reliability data structure (e.g., failure time data with covariates and different censoring) with less distribution assumptions to improve accuracy of system-level reliability modeling. The system structure is mainly restricted to the hierarchical series-and-parallel system with independent intra-level components and/or sub-systems. Then, the aggregation approach is extended to accommodate multi-state hierarchical system by considering both probabilistic inter-level failure relationships and cascading intra-level failure dependency. Last, the aggregation approach is incorporated into the design of system-level reliability demonstration testing to achieve the potential sample size reduction. Different demonstration testing strategies with and without information aggregation are comprehensively compared with closed-form conditions obtained. A series of case studies have also been conducted to demonstrate that the proposed aggregation methodology can successfully improve the system reliability modeling accuracy and precision, and improve the cost-effectiveness of the system reliability demonstration tests.
author2 Liu, Jian
author_facet Liu, Jian
Li, Mingyang
author Li, Mingyang
author_sort Li, Mingyang
title Multi-Level Information Aggregation for Reliability Assurance of Hierarchical Systems
title_short Multi-Level Information Aggregation for Reliability Assurance of Hierarchical Systems
title_full Multi-Level Information Aggregation for Reliability Assurance of Hierarchical Systems
title_fullStr Multi-Level Information Aggregation for Reliability Assurance of Hierarchical Systems
title_full_unstemmed Multi-Level Information Aggregation for Reliability Assurance of Hierarchical Systems
title_sort multi-level information aggregation for reliability assurance of hierarchical systems
publisher The University of Arizona.
publishDate 2015
url http://hdl.handle.net/10150/560825
work_keys_str_mv AT limingyang multilevelinformationaggregationforreliabilityassuranceofhierarchicalsystems
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