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Knowledge-driven board-level functional fault diagnosis

This book provides a comprehensive set of characterization, prediction, optimization, evaluation, and evolution techniques for a diagnosis system for fault isolation in large electronic systems. Readers with a background in electronics design or system engineering can use this book as a reference to...

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Detalles Bibliográficos
Autores principales: Ye, Fangming, Zhang, Zhaobo, Chakrabarty, Krishnendu, Gu, Xinli
Lenguaje:eng
Publicado: Springer 2017
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-3-319-40210-9
http://cds.cern.ch/record/2240386
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author Ye, Fangming
Zhang, Zhaobo
Chakrabarty, Krishnendu
Gu, Xinli
author_facet Ye, Fangming
Zhang, Zhaobo
Chakrabarty, Krishnendu
Gu, Xinli
author_sort Ye, Fangming
collection CERN
description This book provides a comprehensive set of characterization, prediction, optimization, evaluation, and evolution techniques for a diagnosis system for fault isolation in large electronic systems. Readers with a background in electronics design or system engineering can use this book as a reference to derive insightful knowledge from data analysis and use this knowledge as guidance for designing reasoning-based diagnosis systems. Moreover, readers with a background in statistics or data analytics can use this book as a practical case study for adapting data mining and machine learning techniques to electronic system design and diagnosis. This book identifies the key challenges in reasoning-based, board-level diagnosis system design and presents the solutions and corresponding results that have emerged from leading-edge research in this domain. It covers topics ranging from highly accurate fault isolation, adaptive fault isolation, diagnosis-system robustness assessment, to system performance analysis and evaluation, knowledge discovery and knowledge transfer. With its emphasis on the above topics, the book provides an in-depth and broad view of reasoning-based fault diagnosis system design. • Explains and applies optimized techniques from the machine-learning domain to solve the fault diagnosis problem in the realm of electronic system design and manufacturing; • Demonstrates techniques based on industrial data and feedback from an actual manufacturing line; • Discusses practical problems, including diagnosis accuracy, diagnosis time cost, evaluation of diagnosis system, handling of missing syndromes in diagnosis, and need for fast diagnosis-system development.
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spelling cern-22403862021-04-21T19:24:24Zdoi:10.1007/978-3-319-40210-9http://cds.cern.ch/record/2240386engYe, FangmingZhang, ZhaoboChakrabarty, KrishnenduGu, XinliKnowledge-driven board-level functional fault diagnosisEngineeringThis book provides a comprehensive set of characterization, prediction, optimization, evaluation, and evolution techniques for a diagnosis system for fault isolation in large electronic systems. Readers with a background in electronics design or system engineering can use this book as a reference to derive insightful knowledge from data analysis and use this knowledge as guidance for designing reasoning-based diagnosis systems. Moreover, readers with a background in statistics or data analytics can use this book as a practical case study for adapting data mining and machine learning techniques to electronic system design and diagnosis. This book identifies the key challenges in reasoning-based, board-level diagnosis system design and presents the solutions and corresponding results that have emerged from leading-edge research in this domain. It covers topics ranging from highly accurate fault isolation, adaptive fault isolation, diagnosis-system robustness assessment, to system performance analysis and evaluation, knowledge discovery and knowledge transfer. With its emphasis on the above topics, the book provides an in-depth and broad view of reasoning-based fault diagnosis system design. • Explains and applies optimized techniques from the machine-learning domain to solve the fault diagnosis problem in the realm of electronic system design and manufacturing; • Demonstrates techniques based on industrial data and feedback from an actual manufacturing line; • Discusses practical problems, including diagnosis accuracy, diagnosis time cost, evaluation of diagnosis system, handling of missing syndromes in diagnosis, and need for fast diagnosis-system development.Springeroai:cds.cern.ch:22403862017
spellingShingle Engineering
Ye, Fangming
Zhang, Zhaobo
Chakrabarty, Krishnendu
Gu, Xinli
Knowledge-driven board-level functional fault diagnosis
title Knowledge-driven board-level functional fault diagnosis
title_full Knowledge-driven board-level functional fault diagnosis
title_fullStr Knowledge-driven board-level functional fault diagnosis
title_full_unstemmed Knowledge-driven board-level functional fault diagnosis
title_short Knowledge-driven board-level functional fault diagnosis
title_sort knowledge-driven board-level functional fault diagnosis
topic Engineering
url https://dx.doi.org/10.1007/978-3-319-40210-9
http://cds.cern.ch/record/2240386
work_keys_str_mv AT yefangming knowledgedrivenboardlevelfunctionalfaultdiagnosis
AT zhangzhaobo knowledgedrivenboardlevelfunctionalfaultdiagnosis
AT chakrabartykrishnendu knowledgedrivenboardlevelfunctionalfaultdiagnosis
AT guxinli knowledgedrivenboardlevelfunctionalfaultdiagnosis