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This book tackles important problems of anomaly detection and
health status analysis in complex core router systems, integral to
today's Internet Protocol (IP) networks. The techniques described
provide the first comprehensive set of data-driven resiliency
solutions for core router systems. The authors present an anomaly
detector for core router systems using correlation-based time
series analysis, which monitors a set of features of a complex core
router system. They also describe the design of a changepoint-based
anomaly detector such that anomaly detection can be adaptive to
changes in the statistical features of data streams. The
presentation also includes a symbol-based health status analyzer
that first encodes, as a symbol sequence, the long-term complex
time series collected from a number of core routers, and then
utilizes the symbol sequence for health analysis. Finally, the
authors describe an iterative, self-learning procedure for
assessing the health status. Enables Accurate Anomaly Detection
Using Correlation-Based Time-Series Analysis; Presents the design
of a changepoint-based anomaly detector; Includes Hierarchical
Symbol-based Health-Status Analysis; Describes an iterative,
self-learning procedure for assessing the health status.
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.
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.
This book tackles important problems of anomaly detection and
health status analysis in complex core router systems, integral to
today's Internet Protocol (IP) networks. The techniques described
provide the first comprehensive set of data-driven resiliency
solutions for core router systems. The authors present an anomaly
detector for core router systems using correlation-based time
series analysis, which monitors a set of features of a complex core
router system. They also describe the design of a changepoint-based
anomaly detector such that anomaly detection can be adaptive to
changes in the statistical features of data streams. The
presentation also includes a symbol-based health status analyzer
that first encodes, as a symbol sequence, the long-term complex
time series collected from a number of core routers, and then
utilizes the symbol sequence for health analysis. Finally, the
authors describe an iterative, self-learning procedure for
assessing the health status. Enables Accurate Anomaly Detection
Using Correlation-Based Time-Series Analysis; Presents the design
of a changepoint-based anomaly detector; Includes Hierarchical
Symbol-based Health-Status Analysis; Describes an iterative,
self-learning procedure for assessing the health status.
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