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Unmanned Aerial Vehicle (UAV) has extended the freedom to operate
and monitor the activities from remote locations. It has advantages
of flying at low altitude, small size, high resolution,
lightweight, and portability. UAV and artificial intelligence have
started gaining attentions of academic and industrial research. UAV
along with machine learning has immense scope in scientific
research and has resulted in fast and reliable outputs. Deep
learning-based UAV has helped in real time monitoring, data
collection and processing, and prediction in the computer/wireless
networks, smart cities, military, agriculture and mining. This book
covers artificial techniques, pattern recognition, machine and deep
learning - based methods and techniques applied to different real
time applications of UAV. The main aim is to synthesize the scope
and importance of machine learning and deep learning models in
enhancing UAV capabilities, solutions to problems and numerous
application areas. This book is ideal for researchers, scientists,
engineers and designers in academia and industry working in the
fields of computer science, computer vision, pattern recognition,
machine learning, imaging, feature engineering, UAV and sensing.
This book provides information on interdependencies of medicine and
telecommunications engineering and how the two must rely on
each other to effectively function in this era. The book discusses
new techniques for medical service improvisation such as
clear-cut views on medical technologies. The authors provide
chapters on communication essentiality in healthcare, processing of
medical amenities using medical images, the importance of data and
information technology in medicine, and machine learning and
artificial intelligence in healthcare.  Authors include
researchers, academics, and professionals in the field.
Convolutional neural networks (CNNs), a type of deep neural network
that has become dominant in a variety of computer vision tasks, in
recent few years has attracted interest across a variety of domains
due to their high efficiency at extracting meaningful information
from visual imagery. Convolutional neural networks (CNNs) excel at
a wide range of machine learning and deep learning tasks. As
sensor-enabled internet of things (IoT) devices pervade every
aspect of modern life, it is becoming increasingly critical to run
CNN inference, a computationally intensive application, on
resource-constrained devices. Through this edited volume we aim to
provide a structured presentation of CNN enabled IoT applications
in vision, speech, and natural language processing. This book
discusses a variety of CNN techniques and applications, including
but not limited to, IoT enabled CNN for speech de-noising, a smart
app for visually impaired people, disease detection, ECG signal
analysis, weather monitoring, texture analysis, etc. Unlike other
books on the market, this book covers the tools, techniques, and
challenges associated with the implementation of CNN algorithms,
computation time, and the complexity associated with reasoning and
modelling various types of data. We have included CNN's current
research trends and future directions.
Provides an overview of the role engineering plays in climate
change and environmental pollution Presents an updated overview of
Green Engineering focusing on green technology Innovations Explores
energy management strategies Discusses green communication
technologies, green computing technologies, green smart buildings,
green smart lighting, green smart mobility management,
fuel-efficient transportation, paperless offices, energy efficiency
measures, waste recycling, etc. Identifies the development of
sustainable plans and programs at the urban level within the
current legislative framework
Blockchain: Principles and Applications in IoT covers all the
aspects of Blockchain and its application in IOT. The book focuses
on Blockchain, its features, and the core technologies that are
used to build the Blockchain network. The gradual flow of chapters
traces the history of blockchain from cryptocurrencies to
blockchain technology platforms and applications that are adopted
by mainstream financial and industrial domains worldwide due to
their ease of use, increased security and transparency. * Focuses
on application of Blockchain on IoT domain * Focuses on Blockchain
as a data repository * Most books on Blockchain cover bitcoins and
crypto currency. This book will also cover blockchain in other
areas like healthcare, supply chain management, etc * Covers
consensus algorithms like PAROX, RAFT etc. and its applications
This book is primarily aimed at graduates and researchers in
computer science and IT.
This book looks at industry change patterns and innovations (such
as artificial intelligence, machine learning, big data analysis,
and blockchain support and efficiency technology) that are speeding
up industrial transformation, industrial infrastructure,
biodiversity, and productivity. This book focuses on real-world
industrial applications and case studies to provide for a wider
knowledge of intelligent manufacturing. It also offers insights
into manufacturing, logistics, and supply chain, where systems have
undergone an industrial transformation. It discusses current
research of machine learning along with blockchain techniques that
can fill the gap between research and industrial exposure. It goes
on to cover the effects that the Fourth Industrial Revolution has
on industrial infrastructures and looks at the current industry
change patterns and innovations that are accelerating industrial
transformation activities. Researchers, scholars, and students from
different countries will appreciate this book for its real-world
applications and knowledge acquisition. This book targets
manufacturers, industry owners, product developers, scientists,
logistics, and supply chain engineers. Focuses on real-world
industrial applications and case studies to provide for a wider
knowledge of intelligent manufacturing Offers insights into
manufacturing, logistics, and supply chain where systems have
undergone an industrial transformation Discusses current research
of machine learning along with blockchain techniques that can fill
the gap between research and industrial exposure Covers the effects
that the 4th Industrial Revolution has on industrial
infrastructures Looks at industry change patterns and innovations
that are speeding up industrial transformation activities Om
Prakash Jena is currently working as an associate professor in the
Department of Computer Science, Ravenshaw University, Cuttack,
Odisha, India. Sabyasachi Pramanik is an assistant professor in the
Department of Computer Science and Engineering, Haldia Institute of
Technology, India. Ahmed A. Elngar is an associate professor in the
Faculty of Computers & Artificial Intelligence, Beni-Suef
University, Egypt. He is also an associate professor in the College
of Computer Information Technology, chair of the Scientific
Innovation Research Group (SIRG), and director of the Technological
and Informatics Studies Center (TISC), American University in the
Emirates, United Arab Emirates.
This new volume, Empowering Artificial intelligence Through Machine
Learning: New Advances and Applications, discusses various new
applications of machine learning, a subset of the field of
artificial intelligence. Artificial intelligence is considered to
be the next-big-game changer in research and technology, The volume
looks at how computing has enabled machines to learn, making
machine and tools become smarter in many sectors, including science
and engineering, healthcare, finance, education, gaming, security,
and even agriculture, plus many more areas. Topics include
techniques and methods in artificial intelligence for making
machines intelligent, machine learning in healthcare, using machine
learning for credit card fraud detection, using artificial
intelligence in education using gaming and automatization with
courses and outcomes mapping, and much more. The book will be
valuable to professionals, faculty, and students in electronics and
communication engineering, telecommunication engineering, network
engineering, computer science and information technology.
Machine Learning and Models for Optimization in Cloud's main aim is
to meet the user requirement with high quality of service, least
time for computation and high reliability. With increase in
services migrating over cloud providers, the load over the cloud
increases resulting in fault and various security failure in the
system results in decreasing reliability. To fulfill this
requirement cloud system uses intelligent metaheuristic and
prediction algorithm to provide resources to the user in an
efficient manner to manage the performance of the system and plan
for upcoming requests. Intelligent algorithm helps the system to
predict and find a suitable resource for a cloud environment in
real time with least computational complexity taking into mind the
system performance in under loaded and over loaded condition. This
book discusses the future improvements and possible intelligent
optimization models using artificial intelligence, deep learning
techniques and other hybrid models to improve the performance of
cloud. Various methods to enhance the directivity of cloud services
have been presented which would enable cloud to provide better
services, performance and quality of service to user. It talks
about the next generation intelligent optimization and fault model
to improve security and reliability of cloud. Key Features *
Comprehensive introduction to cloud architecture and its service
models. * Vulnerability and issues in cloud SAAS, PAAS and IAAS *
Fundamental issues related to optimizing the performance in Cloud
Computing using meta-heuristic, AI and ML models * Detailed study
of optimization techniques, and fault management techniques in
multi layered cloud. * Methods to improve reliability and fault in
cloud using nature inspired algorithms and artificial neural
network. * Advanced study of algorithms using artificial
intelligence for optimization in cloud * Method for power efficient
virtual machine placement using neural network in cloud * Method
for task scheduling using metaheuristic algorithms. * A study of
machine learning and deep learning inspired resource allocation
algorithm for cloud in fault aware environment. This book aims to
create a research interest & motivation for graduates degree or
post-graduates. It aims to present a study on optimization
algorithms in cloud for researchers to provide them with a glimpse
of future of cloud computing in the era of artificial intelligence.
Artificial Intelligence and Machine Learning in Business Management
The focus of this book is to introduce artificial intelligence (AI)
and machine learning (ML) technologies into the context of business
management. The book gives insights into the implementation and
impact of AI and ML to business leaders, managers, technology
developers, and implementers. With the maturing use of AI or ML in
the field of business intelligence, this book examines several
projects with innovative uses of AI beyond data organization and
access. It follows the Predictive Modeling Toolkit for providing
new insight on how to use improved AI tools in the field of
business. It explores cultural heritage values and risk assessments
for mitigation and conservation and discusses on-shore and
off-shore technological capabilities with spatial tools for
addressing marketing and retail strategies, and insurance and
healthcare systems. Taking a multidisciplinary approach for using
AI, this book provides a single comprehensive reference resource
for undergraduate, graduate, business professionals, and related
disciplines.
Presents the knowledge and history of Bitcoin Offers recent
Blockchain applications Discusses developing working code for
real-world Blockchain applications Includes many real-life examples
Covers going from the original bitcoin protocol to the second
generation Ethereum platform
This book presents chapters from diverse range of authors on
different aspects of how Blockchain and IoT are converging and the
impacts of these developments. The book provides an extensive
cross-sectional and multi-disciplinary look into this trend and how
it affects artificial intelligence, cyber-physical systems, and
robotics with a look at applications in aerospace, agriculture,
automotive, critical infrastructures, healthcare, manufacturing,
retail, smart transport systems, smart cities, and smart
healthcare. Cases include the impact of Blockchain for IoT
Security; decentralized access control systems in IoT; Blockchain
architecture for scalable access management in IoT; smart and
sustainable IoT applications incorporating Blockchain, and more.
The book presents contributions from international academics,
researchers, and practitioners from diverse perspectives. Presents
how Blockchain and IoT are converging and the impacts of these
developments on technology and its application; Discusses IoT and
Blockchain from cross-sectional and multi-disciplinary
perspectives; Includes contributions from researchers, academics,
and professionals from around the world.
This book seamlessly connects the topics of Industry 4.0 and cyber
security. It discusses the risks and solutions of using cyber
security techniques for Industry 4.0. Cyber Security and Operations
Management for Industry 4.0 covers the cyber security risks
involved in the integration of Industry 4.0 into businesses and
highlights the issues and solutions. The book offers the latest
theoretical and practical research in the management of cyber
security issues common in Industry 4.0 and also discusses the
ethical and legal perspectives of incorporating cyber security
techniques and applications into the day-to-day functions of an
organization. Industrial management topics related to smart
factories, operations research, and value chains are also
discussed. This book is ideal for industry professionals,
researchers, and those in academia who are interested in learning
more about how cyber security and Industry 4.0 are related and can
work together.
This book covers advances and applications of smart technologies
including the Internet of Things (IoT), artificial intelligence,
and deep learning in areas such as manufacturing, production,
renewable energy, and healthcare. It also covers wearable and
implantable biomedical devices for healthcare monitoring, smart
surveillance, and monitoring applications such as the use of an
autonomous drone for disaster management and rescue operations. It
will serve as an ideal reference text for senior undergraduate,
graduate students, and academic researchers in the areas such as
electrical engineering, electronics and communications engineering,
computer engineering, and information technology. * Covers
concepts, theories, and applications of artificial intelligence and
deep learning, from the perspective of the Internet of Things. *
Discusses powers predictive analysis, predictive maintenance, and
automated processes for making manufacturing plants more efficient,
profitable, and safe. * Explores the importance of blockchain
technology in the Internet of Things security issues. * Discusses
key deep learning concepts including trust management, identity
management, security threats, access control, and privacy. *
Showcases the importance of intelligent algorithms for cloud-based
Internet of Things applications. This text emphasizes the
importance of innovation and improving the profitability of
manufacturing plants using smart technologies such as artificial
intelligence, deep learning, and the Internet of Things. It further
discusses applications of smart technologies in diverse sectors
such as agriculture, smart home, production, manufacturing,
transport, and healthcare.
This new volume discusses the applications and challenges of deep
learning and the internet of things for applications in healthcare.
It describes deep learning techniques in conjunction with IoT used
by practitioners and researchers worldwide. The authors explore the
convergence of IoT and deep learning to enable things to
communicate, share information, and coordinate decisions. The book
includes deep feedforward networks, regularization, optimization
algorithms, convolutional networks, sequence modeling, and
practical methodology. Chapters look at assistive devices in
healthcare, alerting and detection devices, energy efficiency in
using IoT, data mining for gathering health information for
individuals with autism, IoT for mobile applications, and more. The
text also offers mathematical and conceptual background that
presents the latest technology as well as a selection of case
studies.
This book presents chapters from diverse range of authors on
different aspects of how Blockchain and IoT are converging and the
impacts of these developments. The book provides an extensive
cross-sectional and multi-disciplinary look into this trend and how
it affects artificial intelligence, cyber-physical systems, and
robotics with a look at applications in aerospace, agriculture,
automotive, critical infrastructures, healthcare, manufacturing,
retail, smart transport systems, smart cities, and smart
healthcare. Cases include the impact of Blockchain for IoT
Security; decentralized access control systems in IoT; Blockchain
architecture for scalable access management in IoT; smart and
sustainable IoT applications incorporating Blockchain, and more.
The book presents contributions from international academics,
researchers, and practitioners from diverse perspectives. Presents
how Blockchain and IoT are converging and the impacts of these
developments on technology and its application; Discusses IoT and
Blockchain from cross-sectional and multi-disciplinary
perspectives; Includes contributions from researchers, academics,
and professionals from around the world.
Machine Learning and the Internet of Medical Things in Healthcare
discusses the applications and challenges of machine learning for
healthcare applications. The book provides a platform for
presenting machine learning-enabled healthcare techniques and
offers a mathematical and conceptual background of the latest
technology. It describes machine learning techniques along with the
emerging platform of the Internet of Medical Things used by
practitioners and researchers worldwide. The book includes deep
feed forward networks, regularization, optimization algorithms,
convolutional networks, sequence modeling, and practical
methodology. It also presents the concepts of the Internet of
Things, the set of technologies that develops traditional devices
into smart devices. Finally, the book offers research perspectives,
covering the convergence of machine learning and IoT. It also
presents the application of these technologies in the development
of healthcare frameworks.
Applications of Computational Intelligence in Multi-Disciplinary
Research provides the readers with a comprehensive handbook for
applying the powerful principles, concepts, and algorithms of
computational intelligence to a wide spectrum of research cases.
The book covers the main approaches used in computational
intelligence, including fuzzy logic, neural networks, evolutionary
computation, learning theory, and probabilistic methods, all of
which can be collectively viewed as soft computing. Other key
approaches included are swarm intelligence and artificial immune
systems. These approaches provide researchers with powerful tools
for analysis and problem-solving when data is incomplete and when
the problem under consideration is too complex for standard
mathematics and the crisp logic approach of Boolean computing.
Unmanned aerial vehicles (UAVs) and artificial intelligence (AI)
are gaining the attention of academic and industrial researchers
due to the freedoms that UAVs afford when operating and monitoring
activities remotely. Applying machine learning and deep learning
techniques can result in fast and reliable outputs and have helped
in real-time monitoring, data collection and processing, and
prediction. UAVs utilizing these techniques can become instrumental
tools for computer/wireless networks, smart cities, military
applications, agricultural sectors, and mining. Unmanned Aerial
Vehicles and Multidisciplinary Applications Using AI Techniques is
an essential reference source that covers pattern recognition,
machine and deep learning-based methods, and other AI techniques
and the impact they have when applied to different real-time
applications of UAVs. It synthesizes the scope and importance of
machine learning and deep learning models in enhancing UAV
capabilities, solutions to problems, and numerous application
areas. Covering topics such as vehicular surveillance systems,
yield prediction, and human activity recognition, this premier
reference source is a comprehensive resource for computer
scientists; AI engineers; data scientists; agriculturalists;
government officials; military leaders; business managers and
leaders; students and faculty of higher education; academic
libraries; academicians; and researchers in computer science,
computer vision, pattern recognition, imaging, and engineering.
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