Coverart for item
The Resource Knowledge-driven board-level functional fault diagnosis, Fangming Ye, Zhaobo Zhang, Krishnendu Chakrabarty, Xinli Gu

Knowledge-driven board-level functional fault diagnosis, Fangming Ye, Zhaobo Zhang, Krishnendu Chakrabarty, Xinli Gu

Label
Knowledge-driven board-level functional fault diagnosis
Title
Knowledge-driven board-level functional fault diagnosis
Statement of responsibility
Fangming Ye, Zhaobo Zhang, Krishnendu Chakrabarty, Xinli Gu
Contributor
Author
Subject
Language
eng
Member of
Cataloging source
N$T
Dewey number
  • 620/.0045
  • 620
Illustrations
illustrations
Index
index present
LC call number
  • TA169.6
  • TA1-2040
Literary form
non fiction
Nature of contents
  • dictionaries
  • bibliography
http://library.link/vocab/relatedWorkOrContributorName
  • Ye, Fangming
  • Zhang, Zhaobo
  • Chakrabarty, Krishnendu
  • Gu, Xinli
http://library.link/vocab/subjectName
  • Fault location (Engineering)
  • Fault tolerance (Engineering)
Label
Knowledge-driven board-level functional fault diagnosis, Fangming Ye, Zhaobo Zhang, Krishnendu Chakrabarty, Xinli Gu
Instantiates
Publication
Copyright
Antecedent source
unknown
Bibliography note
Includes bibliographical references and index
Carrier category
online resource
Carrier category code
  • cr
Carrier MARC source
rdacarrier
Color
multicolored
Content category
text
Content type code
  • txt
Content type MARC source
rdacontent
Contents
  • Preface; Acknowledgments; Contents; 1 Introduction; 1.1 Introduction to Manufacturing Test; 1.1.1 System and Tests; 1.1.2 Testing in the Manufacturing Line; 1.2 Introduction to Board-Level Diagnosis; 1.2.1 Review of State-of-the-Art; 1.2.2 Automation in Diagnosis System; 1.2.3 New Directions Enabled by Machine Learning; 1.2.4 Challenges and Opportunities; 1.3 Outline of Book; References; 2 Diagnosis Using Support Vector Machines (SVM); 2.1 Background and Chapter Highlights; 2.2 Diagnosis Using Support Vector Machines; 2.2.1 Support Vector Machines; 2.2.2 SVM Diagnosis Flow
  • 2.3 Multi-kernel Support Vector Machines and Incremental Learning2.3.1 Multi-kernel Support Vector Machines; 2.3.2 Incremental Learning; 2.4 Results; 2.4.1 Evaluation of MK-SVM-Based Diagnosis System; 2.4.2 Evaluation of Incremental SVM-Based Diagnosis System; 2.4.3 Evaluation of Incremental MK-SVM-Based Diagnosis System; 2.5 Chapter Summary; References; 3 Diagnosis Using Multiple Classifiers and Majority-Weighted Voting (WMV); 3.1 Background and Chapter Highlights; 3.2 Artificial Neural Networks (ANN); 3.2.1 Architecture of ANNs; 3.2.2 Demonstration of ANN-Based Diagnosis System
  • 3.3 Comparison Between ANNs and SVMs3.4 Diagnosis Using Weighted-Majority Voting; 3.4.1 Weighted-Majority Voting; 3.4.2 Demonstration of WMV-Based Diagnosis System; 3.5 Results; 3.5.1 Evaluation of ANNs-Based Diagnosis System; 3.5.2 Evaluation of SVMs-Based Diagnosis System; 3.5.3 Evaluation of WMV-Based Diagnosis System; 3.6 Chapter Summary; References; 4 Adaptive Diagnosis Using Decision Trees (DT); 4.1 Background and Chapter Highlights; 4.2 Decision Trees; 4.2.1 Training of Decision Trees; 4.2.2 Example of DT-Based Training and Diagnosis; 4.3 Diagnosis Using Incremental Decision Trees
  • 4.3.1 Incremental Tree Node4.3.2 Addition of a Case; 4.3.3 Ensuring the Best Splitting; 4.3.4 Tree Transposition; 4.4 Diagnosis Flow Based on Incremental Decision Trees; 4.5 Results; 4.5.1 Evaluation of DT-Based Diagnosis System; 4.5.2 Evaluation of Incremental DT-Based Diagnosis System; 4.6 Chapter Summary; References; 5 Information-Theoretic Syndrome and Root-Cause Evaluation; 5.1 Background and Chapter Highlights; 5.2 Evaluation Methods for Diagnosis Systems; 5.2.1 Subset Selection for Syndromes Analysis; 5.2.2 Class-Relevance Statistics; 5.3 Evaluation and Enhancement Framework
  • 5.3.1 Evaluation and Enhancement Procedure5.3.2 An Example of the Proposed Framework; 5.4 Results; 5.4.1 Demonstration of Syndrome Analysis; 5.4.2 Demonstration of Root-Cause Analysis; 5.5 Chapter Summary; References; 6 Handling Missing Syndromes; 6.1 Background and Chapter Highlights; 6.2 Methods to Handle Missing Syndromes; 6.2.1 Missing-Syndrome-Tolerant Fault Diagnosis Flow; 6.2.2 Missing-Syndrome-Preprocessing Methods; 6.2.3 Feature Selection; 6.3 Results; 6.3.1 Evaluation of Label Imputation; 6.3.2 Evaluation of Feature Selection in Handling Missing Syndromes
Dimensions
unknown
Extent
1 online resource (xiii, 147 pages)
File format
unknown
Form of item
online
Isbn
9783319402093
Level of compression
unknown
Media category
computer
Media MARC source
rdamedia
Media type code
  • c
Other physical details
illustrations (some color)
Quality assurance targets
not applicable
Reformatting quality
unknown
Sound
unknown sound
Specific material designation
remote
System control number
ocn957156891
Label
Knowledge-driven board-level functional fault diagnosis, Fangming Ye, Zhaobo Zhang, Krishnendu Chakrabarty, Xinli Gu
Publication
Copyright
Antecedent source
unknown
Bibliography note
Includes bibliographical references and index
Carrier category
online resource
Carrier category code
  • cr
Carrier MARC source
rdacarrier
Color
multicolored
Content category
text
Content type code
  • txt
Content type MARC source
rdacontent
Contents
  • Preface; Acknowledgments; Contents; 1 Introduction; 1.1 Introduction to Manufacturing Test; 1.1.1 System and Tests; 1.1.2 Testing in the Manufacturing Line; 1.2 Introduction to Board-Level Diagnosis; 1.2.1 Review of State-of-the-Art; 1.2.2 Automation in Diagnosis System; 1.2.3 New Directions Enabled by Machine Learning; 1.2.4 Challenges and Opportunities; 1.3 Outline of Book; References; 2 Diagnosis Using Support Vector Machines (SVM); 2.1 Background and Chapter Highlights; 2.2 Diagnosis Using Support Vector Machines; 2.2.1 Support Vector Machines; 2.2.2 SVM Diagnosis Flow
  • 2.3 Multi-kernel Support Vector Machines and Incremental Learning2.3.1 Multi-kernel Support Vector Machines; 2.3.2 Incremental Learning; 2.4 Results; 2.4.1 Evaluation of MK-SVM-Based Diagnosis System; 2.4.2 Evaluation of Incremental SVM-Based Diagnosis System; 2.4.3 Evaluation of Incremental MK-SVM-Based Diagnosis System; 2.5 Chapter Summary; References; 3 Diagnosis Using Multiple Classifiers and Majority-Weighted Voting (WMV); 3.1 Background and Chapter Highlights; 3.2 Artificial Neural Networks (ANN); 3.2.1 Architecture of ANNs; 3.2.2 Demonstration of ANN-Based Diagnosis System
  • 3.3 Comparison Between ANNs and SVMs3.4 Diagnosis Using Weighted-Majority Voting; 3.4.1 Weighted-Majority Voting; 3.4.2 Demonstration of WMV-Based Diagnosis System; 3.5 Results; 3.5.1 Evaluation of ANNs-Based Diagnosis System; 3.5.2 Evaluation of SVMs-Based Diagnosis System; 3.5.3 Evaluation of WMV-Based Diagnosis System; 3.6 Chapter Summary; References; 4 Adaptive Diagnosis Using Decision Trees (DT); 4.1 Background and Chapter Highlights; 4.2 Decision Trees; 4.2.1 Training of Decision Trees; 4.2.2 Example of DT-Based Training and Diagnosis; 4.3 Diagnosis Using Incremental Decision Trees
  • 4.3.1 Incremental Tree Node4.3.2 Addition of a Case; 4.3.3 Ensuring the Best Splitting; 4.3.4 Tree Transposition; 4.4 Diagnosis Flow Based on Incremental Decision Trees; 4.5 Results; 4.5.1 Evaluation of DT-Based Diagnosis System; 4.5.2 Evaluation of Incremental DT-Based Diagnosis System; 4.6 Chapter Summary; References; 5 Information-Theoretic Syndrome and Root-Cause Evaluation; 5.1 Background and Chapter Highlights; 5.2 Evaluation Methods for Diagnosis Systems; 5.2.1 Subset Selection for Syndromes Analysis; 5.2.2 Class-Relevance Statistics; 5.3 Evaluation and Enhancement Framework
  • 5.3.1 Evaluation and Enhancement Procedure5.3.2 An Example of the Proposed Framework; 5.4 Results; 5.4.1 Demonstration of Syndrome Analysis; 5.4.2 Demonstration of Root-Cause Analysis; 5.5 Chapter Summary; References; 6 Handling Missing Syndromes; 6.1 Background and Chapter Highlights; 6.2 Methods to Handle Missing Syndromes; 6.2.1 Missing-Syndrome-Tolerant Fault Diagnosis Flow; 6.2.2 Missing-Syndrome-Preprocessing Methods; 6.2.3 Feature Selection; 6.3 Results; 6.3.1 Evaluation of Label Imputation; 6.3.2 Evaluation of Feature Selection in Handling Missing Syndromes
Dimensions
unknown
Extent
1 online resource (xiii, 147 pages)
File format
unknown
Form of item
online
Isbn
9783319402093
Level of compression
unknown
Media category
computer
Media MARC source
rdamedia
Media type code
  • c
Other physical details
illustrations (some color)
Quality assurance targets
not applicable
Reformatting quality
unknown
Sound
unknown sound
Specific material designation
remote
System control number
ocn957156891

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