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This book introduces data-driven remaining useful life prognosis
techniques, and shows how to utilize the condition monitoring data
to predict the remaining useful life of stochastic degrading
systems and to schedule maintenance and logistics plans. It is also
the first book that describes the basic data-driven remaining
useful life prognosis theory systematically and in detail. The
emphasis of the book is on the stochastic models, methods and
applications employed in remaining useful life prognosis. It
includes a wealth of degradation monitoring experiment data,
practical prognosis methods for remaining useful life in various
cases, and a series of applications incorporated into prognostic
information in decision-making, such as maintenance-related
decisions and ordering spare parts. It also highlights the latest
advances in data-driven remaining useful life prognosis techniques,
especially in the contexts of adaptive prognosis for linear
stochastic degrading systems, nonlinear degradation modeling based
prognosis, residual storage life prognosis, and prognostic
information-based decision-making.
This book not only provides a comprehensive introduction to
neural-based PCA methods in control science, but also presents many
novel PCA algorithms and their extensions and generalizations,
e.g., dual purpose, coupled PCA, GED, neural based SVD algorithms,
etc. It also discusses in detail various analysis methods for the
convergence, stabilizing, self-stabilizing property of algorithms,
and introduces the deterministic discrete-time systems method to
analyze the convergence of PCA/MCA algorithms. Readers should be
familiar with numerical analysis and the fundamentals of
statistics, such as the basics of least squares and stochastic
algorithms. Although it focuses on neural networks, the book only
presents their learning law, which is simply an iterative
algorithm. Therefore, no a priori knowledge of neural networks is
required. This book will be of interest and serve as a reference
source to researchers and students in applied mathematics,
statistics, engineering, and other related fields.
Image denoising, image deblurring, image inpainting,
super-resolution, and compressed sensing reconstruction have
important application value in engineering practice, and they are
also the hot frontiers in the field of image processing. This book
focuses on the numerical analysis of ill condition of imaging
inverse problems and the methods of solving imaging inverse
problems based on operator splitting. Both algorithmic theory and
numerical experiments have been addressed. The book is divided into
six chapters, including preparatory knowledge, ill-condition
numerical analysis and regularization method of imaging inverse
problems, adaptive regularization parameter estimation, and
parallel solution methods of imaging inverse problem based on
operator splitting. Although the research methods in this book take
image denoising, deblurring, inpainting, and compressed sensing
reconstruction as examples, they can also be extended to image
processing problems such as image segmentation, hyperspectral
decomposition, and image compression. This book can benefit
teachers and graduate students in colleges and universities, or be
used as a reference for self-study or further study of image
processing technology engineers.
This book addresses remaining life prediction and predictive
maintenance of equipment. It systematically summarizes the key
research findings made by the author and his team and focuses on
how to create equipment performance degradation and residual life
prediction models based on the performance monitoring data produced
by currently used and historical equipment. Some of the theoretical
results covered here have been used to make remaining life
predictions and maintenance-related decisions for aerospace
products such as gyros and platforms. Given its scope, the book
offers a valuable reference guide for those pursuing theoretical or
applied research in the areas of fault diagnosis and fault-tolerant
control, remaining life prediction, and maintenance
decision-making.
This book introduces data-driven remaining useful life prognosis
techniques, and shows how to utilize the condition monitoring data
to predict the remaining useful life of stochastic degrading
systems and to schedule maintenance and logistics plans. It is also
the first book that describes the basic data-driven remaining
useful life prognosis theory systematically and in detail. The
emphasis of the book is on the stochastic models, methods and
applications employed in remaining useful life prognosis. It
includes a wealth of degradation monitoring experiment data,
practical prognosis methods for remaining useful life in various
cases, and a series of applications incorporated into prognostic
information in decision-making, such as maintenance-related
decisions and ordering spare parts. It also highlights the latest
advances in data-driven remaining useful life prognosis techniques,
especially in the contexts of adaptive prognosis for linear
stochastic degrading systems, nonlinear degradation modeling based
prognosis, residual storage life prognosis, and prognostic
information-based decision-making.
This book not only provides a comprehensive introduction to
neural-based PCA methods in control science, but also presents many
novel PCA algorithms and their extensions and generalizations,
e.g., dual purpose, coupled PCA, GED, neural based SVD algorithms,
etc. It also discusses in detail various analysis methods for the
convergence, stabilizing, self-stabilizing property of algorithms,
and introduces the deterministic discrete-time systems method to
analyze the convergence of PCA/MCA algorithms. Readers should be
familiar with numerical analysis and the fundamentals of
statistics, such as the basics of least squares and stochastic
algorithms. Although it focuses on neural networks, the book only
presents their learning law, which is simply an iterative
algorithm. Therefore, no a priori knowledge of neural networks is
required. This book will be of interest and serve as a reference
source to researchers and students in applied mathematics,
statistics, engineering, and other related fields.
This book addresses remaining life prediction and predictive
maintenance of equipment. It systematically summarizes the key
research findings made by the author and his team and focuses on
how to create equipment performance degradation and residual life
prediction models based on the performance monitoring data produced
by currently used and historical equipment. Some of the theoretical
results covered here have been used to make remaining life
predictions and maintenance-related decisions for aerospace
products such as gyros and platforms. Given its scope, the book
offers a valuable reference guide for those pursuing theoretical or
applied research in the areas of fault diagnosis and fault-tolerant
control, remaining life prediction, and maintenance
decision-making.
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