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As artificial intelligence (AI) processing moves from the cloud to
the edge of the network, battery-powered and deeply embedded
devices are challenged to perform AI functions such as computer
vision and voice recognition. Microchip Technology Inc., via its
Silicon Storage Technology (SST) subsidiary, is addressing this
challenge by significantly reducing power with its analog memory
technology, the memBrain Memory Solution. The memBrain solution is
being adopted by today's companies looking to advance machine
learning capacities in edge devices. Due to its ability to
significantly reduce power, this analog in-memory computer solution
is ideal for an AI application. Neuromorphic Computing Systems for
Industry 4.0 covers the available literature in the field of neural
computing-based microchip technology. It provides further research
opportunities in this dynamic field. Covering topics such as
emotion recognition, biometric authentication, and neural network
protection, this premier reference source is an essential resource
for technology developers, computer scientists, engineers, students
and educators of higher education, librarians, researchers, and
academicians.
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.
Wireless sensor networks have gained significant attention
industrially and academically due to their wide range of uses in
various fields. Because of their vast amount of applications,
wireless sensor networks are vulnerable to a variety of security
attacks. The protection of wireless sensor networks remains a
challenge due to their resource-constrained nature, which is why
researchers have begun applying several branches of artificial
intelligence to advance the security of these networks. Research is
needed on the development of security practices in wireless sensor
networks by using smart technologies. Deep Learning Strategies for
Security Enhancement in Wireless Sensor Networks provides emerging
research exploring the theoretical and practical advancements of
security protocols in wireless sensor networks using artificial
intelligence-based techniques. Featuring coverage on a broad range
of topics such as clustering protocols, intrusion detection, and
energy harvesting, this book is ideally designed for researchers,
developers, IT professionals, educators, policymakers,
practitioners, scientists, theorists, engineers, academicians, and
students seeking current research on integrating intelligent
techniques into sensor networks for more reliable security
practices.
A smart city utilizes ICT technologies to improve the working
effectiveness, share various data with the citizens, and enhance
political assistance and societal wellbeing. The fundamental needs
of a smart and sustainable city are utilizing smart technology for
enhancing municipal activities, expanding monetary development, and
improving citizens' standards of living. Data-Driven Mathematical
Modeling in Smart Cities discusses new mathematical models in smart
and sustainable cities using big data, visualization tools in
mathematical modeling, machine learning-based mathematical
modeling, and more. It further delves into privacy and ethics in
data analysis. Covering topics such as deep learning,
optimization-based data science, and smart city automation, this
premier reference source is an excellent resource for
mathematicians, statisticians, computer scientists, civil
engineers, government officials, students and educators of higher
education, librarians, researchers, and academicians.
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.
As artificial intelligence (AI) processing moves from the cloud to
the edge of the network, battery-powered and deeply embedded
devices are challenged to perform AI functions such as computer
vision and voice recognition. Microchip Technology Inc., via its
Silicon Storage Technology (SST) subsidiary, is addressing this
challenge by significantly reducing power with its analog memory
technology, the memBrain Memory Solution. The memBrain solution is
being adopted by today's companies looking to advance machine
learning capacities in edge devices. Due to its ability to
significantly reduce power, this analog in-memory computer solution
is ideal for an AI application. Neuromorphic Computing Systems for
Industry 4.0 covers the available literature in the field of neural
computing-based microchip technology. It provides further research
opportunities in this dynamic field. Covering topics such as
emotion recognition, biometric authentication, and neural network
protection, this premier reference source is an essential resource
for technology developers, computer scientists, engineers, students
and educators of higher education, librarians, researchers, and
academicians.
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.
Wireless sensor networks have gained significant attention
industrially and academically due to their wide range of uses in
various fields. Because of their vast amount of applications,
wireless sensor networks are vulnerable to a variety of security
attacks. The protection of wireless sensor networks remains a
challenge due to their resource-constrained nature, which is why
researchers have begun applying several branches of artificial
intelligence to advance the security of these networks. Research is
needed on the development of security practices in wireless sensor
networks by using smart technologies. Deep Learning Strategies for
Security Enhancement in Wireless Sensor Networks provides emerging
research exploring the theoretical and practical advancements of
security protocols in wireless sensor networks using artificial
intelligence-based techniques. Featuring coverage on a broad range
of topics such as clustering protocols, intrusion detection, and
energy harvesting, this book is ideally designed for researchers,
developers, IT professionals, educators, policymakers,
practitioners, scientists, theorists, engineers, academicians, and
students seeking current research on integrating intelligent
techniques into sensor networks for more reliable security
practices.
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