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Automatic modulation recognition is a rapidly evolving area of
signal analysis. In recent years, interest from the academic and
military research institutes has focused around the research and
development of modulation recognition algorithms. Any communication
intelligence (COMINT) system comprises three main blocks: receiver
front-end, modulation recogniser and output stage. Considerable
work has been done in the area of receiver front-ends. The work at
the output stage is concerned with information extraction,
recording and exploitation and begins with signal demodulation,
that requires accurate knowledge about the signal modulation type.
There are, however, two main reasons for knowing the current
modulation type of a signal; to preserve the signal information
content and to decide upon the suitable counter action, such as
jamming. Automatic Modulation Recognition of Communications Signals
describes in depth this modulation recognition process. Drawing on
several years of research, the authors provide a critical review of
automatic modulation recognition. This includes techniques for
recognising digitally modulated signals. The book also gives
comprehensive treatment of using artificial neural networks for
recognising modulation types. Automatic Modulation Recognition of
Communications Signals is the first comprehensive book on automatic
modulation recognition. It is essential reading for researchers and
practising engineers in the field. It is also a valuable text for
an advanced course on the subject.
Automatic Modulation Classification (AMC) has been a key technology
in many military, security, and civilian telecommunication
applications for decades. In military and security applications,
modulation often serves as another level of encryption; in modern
civilian applications, multiple modulation types can be employed by
a signal transmitter to control the data rate and link reliability.
This book offers comprehensive documentation of AMC models,
algorithms and implementations for successful modulation
recognition. It provides an invaluable theoretical and numerical
comparison of AMC algorithms, as well as guidance on
state-of-the-art classification designs with specific military and
civilian applications in mind. Key Features: * Provides an
important collection of AMC algorithms in five major categories,
from likelihood-based classifiers and distribution-test-based
classifiers to feature-based classifiers, machine learning assisted
classifiers and blind modulation classifiers * Lists detailed
implementation for each algorithm based on a unified theoretical
background and a comprehensive theoretical and numerical
performance comparison * Gives clear guidance for the design of
specific automatic modulation classifiers for different practical
applications in both civilian and military communication systems *
Includes a MATLAB toolbox on a companion website offering the
implementation of a selection of methods discussed in the book
Automatic modulation recognition is a rapidly evolving area of
signal analysis. In recent years, interest from the academic and
military research institutes has focused around the research and
development of modulation recognition algorithms. Any communication
intelligence (COMINT) system comprises three main blocks: receiver
front-end, modulation recogniser and output stage. Considerable
work has been done in the area of receiver front-ends. The work at
the output stage is concerned with information extraction,
recording and exploitation and begins with signal demodulation,
that requires accurate knowledge about the signal modulation type.
There are, however, two main reasons for knowing the current
modulation type of a signal; to preserve the signal information
content and to decide upon the suitable counter action, such as
jamming. Automatic Modulation Recognition of Communications Signals
describes in depth this modulation recognition process. Drawing on
several years of research, the authors provide a critical review of
automatic modulation recognition. This includes techniques for
recognising digitally modulated signals. The book also gives
comprehensive treatment of using artificial neural networks for
recognising modulation types. Automatic Modulation Recognition of
Communications Signals is the first comprehensive book on automatic
modulation recognition. It is essential reading for researchers and
practising engineers in the field. It is also a valuable text for
an advanced course on the subject.
Provides an extensive, up-to-date treatment of techniques used for
machine condition monitoring Clear and concise throughout, this
accessible book is the first to be wholly devoted to the field of
condition monitoring for rotating machines using vibration signals.
It covers various feature extraction, feature selection, and
classification methods as well as their applications to machine
vibration datasets. It also presents new methods including machine
learning and compressive sampling, which help to improve safety,
reliability, and performance. Condition Monitoring with Vibration
Signals: Compressive Sampling and Learning Algorithms for Rotating
Machines starts by introducing readers to Vibration Analysis
Techniques and Machine Condition Monitoring (MCM). It then offers
readers sections covering: Rotating Machine Condition Monitoring
using Learning Algorithms; Classification Algorithms; and New Fault
Diagnosis Frameworks designed for MCM. Readers will learn signal
processing in the time-frequency domain, methods for linear
subspace learning, and the basic principles of the learning method
Artificial Neural Network (ANN). They will also discover recent
trends of deep learning in the field of machine condition
monitoring, new feature learning frameworks based on compressive
sampling, subspace learning techniques for machine condition
monitoring, and much more. Covers the fundamental as well as the
state-of-the-art approaches to machine condition monitoring guiding
readers from the basics of rotating machines to the generation of
knowledge using vibration signals Provides new methods, including
machine learning and compressive sampling, which offer significant
improvements in accuracy with reduced computational costs Features
learning algorithms that can be used for fault diagnosis and
prognosis Includes previously and recently developed dimensionality
reduction techniques and classification algorithms Condition
Monitoring with Vibration Signals: Compressive Sampling and
Learning Algorithms for Rotating Machines is an excellent book for
research students, postgraduate students, industrial practitioners,
and researchers.
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