|
|
Showing 1 - 18 of
18 matches in All Departments
Novel AI and Data Science Advancements for Sustainability in the
Era of COVID-19 discusses how the role of recent technologies
applied to health settings can help fight virus outbreaks.
Moreover, it provides guidelines on how governments and
institutions should prepare and quickly respond to drastic
situations using technology to support their communities in order
to maintain life and functional as efficiently as possible. The
book discusses topics such as AI-driven histopathology analysis for
COVID-19 diagnosis, bioinformatics for subtype rational drug
design, deep learning-based treatment evaluation and outcome
prediction, sensor informatics for monitoring infected patients,
and machine learning for tracking and prediction models. In
addition, the book presents AI solutions for hospital management
during an epidemic or pandemic, along with real-world solutions and
case studies of successful measures to support different types of
communities. This is a valuable source for medical informaticians,
bioinformaticians, clinicians and other healthcare workers and
researchers who are interested in learning more on how recently
developed technologies can help us fight and minimize the effects
of global pandemics.
Multi-Criteria Decision-Making for Renewable Energy: Methods,
Applications, and Challenges brings together the latest fuzzy and
soft computing methods, models, and algorithms as applied to the
field of renewable energy and supported by specific application
examples and case studies. The book begins by approaching renewable
energy sources, challenges and factors that affect their
development, as well as green renewable energy sites and the
utilization of fuzzy multi-criteria decision-making (MCDM)
techniques in these broad contexts, as well as utilization in
addressing the various environmental, economic, and social barriers
to ensuring the sustainability of energy resources. Detailed
chapters focus on the application of multi-criteria decision-making
methods for planning, modeling and prioritization in specific areas
of renewable energy, including solar energy, wind farms,
solar-powered hydrogen production plants, biofuel production,
energy storage, hydropower, and marine energy. Finally, future
opportunities and research directions are explored.
In information technology, the concepts of cost, time, delivery,
space, quality, durability, and price have gained greater
importance in solving managerial decision-making problems in supply
chain models, transportation problems, and inventory control
problems. Moreover, competition is becoming tougher in imprecise
environments. Neutrosophic sets and logic are gaining significant
attention in solving real-life problems that involve uncertainty,
impreciseness, vagueness, incompleteness, inconsistency, and
indeterminacy. Neutrosophic Sets in Decision Analysis and
Operations Research is a critical, scholarly publication that
examines various aspects of organizational research through
mathematical equations and algorithms and presents neutrosophic
theories and their applications in various optimization fields.
Featuring a wide range of topics such as information retrieval,
decision making, and matrices, this book is ideal for engineers,
technicians, designers, mathematicians, practitioners of
mathematics in economy and technology, scientists, academicians,
professionals, managers, researchers, and students.
This book addresses new concepts, methods, algorithms, modeling,
and applications of green supply chain, inventory control problems,
assignment problems, transportation problem, linear problems and
new information related to optimization for the topic from the
theoretical and applied viewpoints of neutrosophic sets and logic.
The book is an innovatory of new tools and procedures, such as:
Neutrosophic Statistical Tests and Dependent State Samplings,
Neutrosophic Probabilistic Expert Systems, Neutrosophic HyperSoft
Set, Quadripartitioned Neutrosophic Cross-Entropy, Octagonal and
Spherical and Cubic Neutrosophic Numbers used in machine learning.
It highlights the process of neutrosofication {which means to split
the universe into three parts, two opposite ones (Truth and
Falsehood), and an Indeterminate or neutral one (I) in between
them}. It explains Three-Ways Decision, how the universe set is
split into three different distinct areas, in regard to the
decision process, representing: Acceptance, Noncommitment, and
Rejection, respectively. The Three-Way Decision is used in the
Neutrosophic Linguistic Rough Set, which has never been done
before.
This volume discusses recent advances in Artificial Intelligence
(AI) applications in smart, internet-connected societies,
highlighting three key focus areas. The first focus is on
intelligent sensing applications. This section details the
integration of Wireless Sensing Networks (WSN) and the use of
intelligent platforms for WSN applications in urban
infrastructures, and discusses AI techniques on hardware and
software systems such as machine learning, pattern recognition,
expert systems, neural networks, genetic algorithms, and
intelligent control in transportation and communications systems.
The second focus is on AI-based Internet of Things (IoT) systems,
which addresses applications in traffic management, medical health,
smart homes and energy. Readers will also learn about how AI can
extract useful information from Big Data in IoT systems. The third
focus is on crowdsourcing (CS) and computing for smart cities. this
section discusses how CS via GPS devices, GIS tools, traffic
cameras, smart cards, smart phones and road deceleration devices
enables citizens to collect and share data to make cities smart,
and how these data can be applied to address urban issues including
pollution, traffic congestion, public safety and increased energy
consumption. This book will of interest to academics, researchers
and students studying AI, cloud computing, IoT and crowdsourcing in
urban applications.
Optimization Theory Based on Neutrosophic and Plithogenic Sets
presents the state-of-the-art research on neutrosophic and
plithogenic theories and their applications in various optimization
fields. Its table of contents covers new concepts, methods,
algorithms, modelling, and applications of green supply chain,
inventory control problems, assignment problems, transportation
problem, nonlinear problems and new information related to
optimization for the topic from the theoretical and applied
viewpoints in neutrosophic sets and logic.
More frequent and complex cyber threats require robust, automated
and rapid responses from cyber security specialists. This book
offers a complete study in the area of graph learning in cyber,
emphasising graph neural networks (GNNs) and their cyber security
applications. Three parts examine the basics; methods and
practices; and advanced topics. The first part presents a grounding
in graph data structures and graph embedding and gives a taxonomic
view of GNNs and cyber security applications. Part two explains
three different categories of graph learning including
deterministic, generative and reinforcement learning and how they
can be used for developing cyber defence models. The discussion of
each category covers the applicability of simple and complex
graphs, scalability, representative algorithms and technical
details. Undergraduate students, graduate students, researchers,
cyber analysts, and AI engineers looking to understand practical
deep learning methods will find this book an invaluable resource.
More frequent and complex cyber threats require robust, automated
and rapid responses from cyber security specialists. This book
offers a complete study in the area of graph learning in cyber,
emphasising graph neural networks (GNNs) and their cyber security
applications. Three parts examine the basics; methods and
practices; and advanced topics. The first part presents a grounding
in graph data structures and graph embedding and gives a taxonomic
view of GNNs and cyber security applications. Part two explains
three different categories of graph learning including
deterministic, generative and reinforcement learning and how they
can be used for developing cyber defence models. The discussion of
each category covers the applicability of simple and complex
graphs, scalability, representative algorithms and technical
details. Undergraduate students, graduate students, researchers,
cyber analysts, and AI engineers looking to understand practical
deep learning methods will find this book an invaluable resource.
This book applies both industrial engineering and computational
intelligence to demonstrate intelligent machines that solve
real-world problems in various smart environments. The title
presents fundamental concepts and the latest advances in
Multi-Criteria Decision Making (MCDM) techniques and their
application to smart environments. Though managers and engineers
often use multi-criteria analysis in making complex decisions, many
core problems are too difficult to model mathematically or have
simply not yet been modelled. In response, as well as AI-based
approaches, this book covers various optimization techniques,
decision analytics and data science in applying soft computing
techniques to a defined set of smart environments, including smart
and sustainable cities, disaster response systems and smart
campuses. This state-of-the-art book will be essential reading for
both undergraduate and graduate students, researchers,
practitioners and decision makers interested in advanced MCDM
techniques for management and engineering in relation to smart
environments.
Highlights the contributions of different optimization techniques,
decision analytics (predictive, prescriptive, and descriptive),
multi-criteria decision making "Helps develop intelligent machines
to provide solutions to real-world problems, which are not modelled
or are too difficult to model mathematically in hospital management
systems " Discusses machine learning-based analytics such as GAN
networks, autoencoders, computational imaging, quantum computing
will be rigorously applied to smart cloud computing Explores
evolutionary algorithms that demonstrate their ability as robust
approaches to cope with the fundamental steps of image processing,
image analysis, and computer vision pipeline (e.g., restoration,
segmentation, registration, classification, reconstruction, or
tracking), Creates a bridge between Industrial Engineering concepts
and Computational Intelligence for designing complex and convoluted
hospital management problems
Introduces different optimization algorithms together to solve
complex combinatorial optimization problems related to hospital
management system or healthcare Applies machine learning-based
analytics such as GAN networks, autoencoders, computational
imaging, and quantum computing to authentic hospital management
problems Discusses metaheuristic algorithms such as evolutionary
algorithms to cope with the fundamental steps of image processing,
image analysis, and computer vision pipeline (e.g., restoration,
segmentation, registration, classification, reconstruction, or
tracking) Creates a bridge between Computational Intelligence and
Industrial Engineering towards designing complex and convoluted
hospital management problems
Artificial Intelligence Techniques in IoT Sensor Networks is a
technical book which can be read by researchers, academicians,
students and professionals interested in artificial intelligence
(AI), sensor networks and Internet of Things (IoT). This book is
intended to develop a shared understanding of applications of AI
techniques in the present and near term. The book maps the
technical impacts of AI technologies, applications and their
implications on the design of solutions for sensor networks. This
text introduces researchers and aspiring academicians to the latest
developments and trends in AI applications for sensor networks in a
clear and well-organized manner. It is mainly useful for research
scholars in sensor networks and AI techniques. In addition,
professionals and practitioners working on the design of real-time
applications for sensor networks may benefit directly from this
book. Moreover, graduate and master's students of any departments
related to AI, IoT and sensor networks can find this book
fascinating for developing expert systems or real-time
applications. This book is written in a simple and easy language,
discussing the fundamentals, which relieves the requirement of
having early backgrounds in the field. From this expectation and
experience, many libraries will be interested in owning copies of
this work.
This book states that the major aim audience are people who have
some familiarity with Internet of things (IoT) but interested to
get a comprehensive interpretation of the role of deep Learning in
maintaining the security and privacy of IoT. A reader should be
friendly with Python and the basics of machine learning and deep
learning. Interpretation of statistics and probability theory will
be a plus but is not certainly vital for identifying most of the
book's material.
Artificial Intelligence Techniques in IoT Sensor Networks is a
technical book which can be read by researchers, academicians,
students and professionals interested in artificial intelligence
(AI), sensor networks and Internet of Things (IoT). This book is
intended to develop a shared understanding of applications of AI
techniques in the present and near term. The book maps the
technical impacts of AI technologies, applications and their
implications on the design of solutions for sensor networks. This
text introduces researchers and aspiring academicians to the latest
developments and trends in AI applications for sensor networks in a
clear and well-organized manner. It is mainly useful for research
scholars in sensor networks and AI techniques. In addition,
professionals and practitioners working on the design of real-time
applications for sensor networks may benefit directly from this
book. Moreover, graduate and master's students of any departments
related to AI, IoT and sensor networks can find this book
fascinating for developing expert systems or real-time
applications. This book is written in a simple and easy language,
discussing the fundamentals, which relieves the requirement of
having early backgrounds in the field. From this expectation and
experience, many libraries will be interested in owning copies of
this work.
This book states that the major aim audience are people who have
some familiarity with Internet of things (IoT) but interested to
get a comprehensive interpretation of the role of deep Learning in
maintaining the security and privacy of IoT. A reader should be
friendly with Python and the basics of machine learning and deep
learning. Interpretation of statistics and probability theory will
be a plus but is not certainly vital for identifying most of the
book's material.
This book addresses new concepts, methods, algorithms, modeling,
and applications of green supply chain, inventory control problems,
assignment problems, transportation problem, linear problems and
new information related to optimization for the topic from the
theoretical and applied viewpoints of neutrosophic sets and logic.
The book is an innovatory of new tools and procedures, such as:
Neutrosophic Statistical Tests and Dependent State Samplings,
Neutrosophic Probabilistic Expert Systems, Neutrosophic HyperSoft
Set, Quadripartitioned Neutrosophic Cross-Entropy, Octagonal and
Spherical and Cubic Neutrosophic Numbers used in machine learning.
It highlights the process of neutrosofication {which means to split
the universe into three parts, two opposite ones (Truth and
Falsehood), and an Indeterminate or neutral one (I) in between
them}. It explains Three-Ways Decision, how the universe set is
split into three different distinct areas, in regard to the
decision process, representing: Acceptance, Noncommitment, and
Rejection, respectively. The Three-Way Decision is used in the
Neutrosophic Linguistic Rough Set, which has never been done
before.
This volume discusses recent advances in Artificial Intelligence
(AI) applications in smart, internet-connected societies,
highlighting three key focus areas. The first focus is on
intelligent sensing applications. This section details the
integration of Wireless Sensing Networks (WSN) and the use of
intelligent platforms for WSN applications in urban
infrastructures, and discusses AI techniques on hardware and
software systems such as machine learning, pattern recognition,
expert systems, neural networks, genetic algorithms, and
intelligent control in transportation and communications systems.
The second focus is on AI-based Internet of Things (IoT) systems,
which addresses applications in traffic management, medical health,
smart homes and energy. Readers will also learn about how AI can
extract useful information from Big Data in IoT systems. The third
focus is on crowdsourcing (CS) and computing for smart cities. this
section discusses how CS via GPS devices, GIS tools, traffic
cameras, smart cards, smart phones and road deceleration devices
enables citizens to collect and share data to make cities smart,
and how these data can be applied to address urban issues including
pollution, traffic congestion, public safety and increased energy
consumption. This book will of interest to academics, researchers
and students studying AI, cloud computing, IoT and crowdsourcing in
urban applications.
In information technology, the concepts of cost, time, delivery,
space, quality, durability, and price have gained greater
importance in solving managerial decision-making problems in supply
chain models, transportation problems, and inventory control
problems. Moreover, competition is becoming tougher in imprecise
environments. Neutrosophic sets and logic are gaining significant
attention in solving real-life problems that involve uncertainty,
impreciseness, vagueness, incompleteness, inconsistency, and
indeterminacy. Neutrosophic Sets in Decision Analysis and
Operations Research is a critical, scholarly publication that
examines various aspects of organizational research through
mathematical equations and algorithms and presents neutrosophic
theories and their applications in various optimization fields.
Featuring a wide range of topics such as information retrieval,
decision making, and matrices, this book is ideal for engineers,
technicians, designers, mathematicians, practitioners of
mathematics in economy and technology, scientists, academicians,
professionals, managers, researchers, and students.
|
|