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Sustainability issues have gained more importance in contemporary
globalization, pushing decision makers to find a systematic
mathematical approach to conduct analyses of this real-world
problem. The growing complexity in modern social-economics or
engineering environments or systems has forced researchers to solve
complicated problems by using multi-criteria decision-making (MCDM)
approaches. However, traditional MCDM research mainly focuses on
reaching the highest economic value or efficiency, and issues
related to sustainability are still not closely explored. Advanced
Multi-Criteria Decision Making for Addressing Complex
Sustainability Issues discusses and addresses the challenges in the
implementation of decision-making models in the context of green
and sustainable engineering, criteria identification,
quantification, comparison, selection, and analysis in the context
of manufacturing, supply chain, transportation, and energy sectors.
All academic communities in the areas of management, economics,
business sciences, mechanical, and manufacturing technologies are
able to use, apply, and implement the models presented in this
book. It is intended for researchers, manufacturers, engineers,
managers, industry professionals, academicians, and students.
This book addresses reliability, maintenance, risk, and safety
issues of industrial systems with applications of the latest
decision-making techniques. Thus, this book presents chapters that
apply advanced tools, techniques, and computing models for
optimizing the performance of industrial and manufacturing systems,
along with other complex engineering equipment. Computing
techniques like data analytics, failure mode and effects analysis,
fuzzy set theory, petri-net, multi-criteria decision-making (MCDM),
and soft computing are used for solving problems of reliability,
risk, and safety related issues.
Provides real-life reliability studies on industrial operations
along with solutions Discusses modelling and optimization of
reliability and safety aspects in industry Covers reliability and
maintenance issues in process industries Presents cost optimization
and life-cycle costing analysis Offers MCDM application for risk
and Safety analysis
This book addresses the problem of waste management by using
multi-criteria decision-making (MCDM) methods. The authors discuss
how to apply MCDM, a complex decision-making tool that involves
both quantitative and qualitative factors, to develop strategies
for effective waste management using various optimization models to
rank alternatives, while also incorporating the concerns and needs
of multiple stakeholders to find the most optimal decisions for
various types of wastes. Typically, there does not exist a single
optimal solution to waste problems; with help of MCDM, far better
solutions can often be found and utilized to facilitate sustainable
waste management techniques in various industries. This book
provides unique, effective, and quick decision-making strategies
for waste management. With the ever-increasing population and
continuing human development, the problem of managing waste becomes
increasingly essential, and this volume helps lead the way to
finding sustainable solutions.
Machine Learning (ML) is a sub field of artificial intelligence
that uses soft computing and algorithms to enable computers to
learn on their own and identify patterns in observed data, build
models that explain the world, and predict things without having
explicit pre-programmed rules and models. This book discusses
various applications of ML in engineering fields and the use of ML
algorithms in solving challenging engineering problems ranging from
biomedical, transport, supply chain and logistics, to manufacturing
and industrial. Through numerous case studies, it will assist
researchers and practitioners in selecting the correct options and
strategies for managing organizational tasks.
This volume helps to address the genuine 21st century need for
advances in data science and computing technology. It provides an
abundance of new research and studies on progressive and innovative
technologies, including artificial intelligence, communication
systems, cyber security applications, data analytics, Internet of
Things (IoT), machine learning, power systems, VLSI, embedded
systems, and much more. The book presents a variety of interesting
and important aspects of data science and computing technologies
and methodologies in a wide range of applications, including deep
learning, DNA cryptography, classy fuzzy MPPT controller, driving
assistance, and safety systems. Novel algorithms and their
applications for solving cutting-edge computational and data
science problems are included also for an interdisciplinary
research perspective. The book addresses recent applications of
deep learning and ANN paradigms, the role and impact of big data in
the e-commerce and retail sectors, algorithms for load balancing in
cloud computing, advances in embedded system based applications,
optimization techniques using a MATLAB platform, and techniques for
improving information and network security. Advances in Data
Science and Computing Technology: Methodology and Applications
provides a wealth of valuable information and food for thought on
many important issues for data scientists and researchers, industry
professionals, and faculty and students in the data and computing
sciences.
Provides a comprehensive guide about how to use machine vision for
Industry 4.0 applications like analysis of images for automated
inspections, object detection, object tracking etc. Includes case
studies of Robotics Internet of Things with its current and future
applications in Healthcare, Agriculture, Transportation, etc. It
highlights the inclusion of impaired people in industry, like
intelligent assistant that helps deaf-mute people to transmit
instructions and warnings in a manufacturing process. It examines
the significant technological advancements in machine vision for
industrial Internet of things and explores the commercial benefits
using the real world applications from healthcare to
transportation. Provides a conceptual framework of Machine vision
for the various Industrial applications. Addresses scientific
aspects for a wider audience such as senior and junior engineers,
undergraduate and post-graduate students, researchers, and anyone
else interested in the trends, development, and opportunities for
the Machine Vision for Industry 4.0 applications.
As transactions and other business functions move online and grow
more popular every year, the finance and banking industries face
increasingly complex data management and identity theft and fraud
issues. AI can bring many financial and business functions to the
next level, as systems using deep learning technologies are able to
analyze patterns and spot suspicious behavior and potential fraud.
In this volume, the focus is on the application of artificial
intelligence in finance, business, and related areas. The book
presents a selection of chapters presenting cutting-edge research
on current business practices in finance and management. Topics
cover the use of AI in e-commerce systems, financial services,
fraud prevention, identifying loan-eligible customers, online
business, Facebook social commerce, insurance industry, online
marketing, and more.
This book addresses the problem of waste management by using
multi-criteria decision-making (MCDM) methods. The authors discuss
how to apply MCDM, a complex decision-making tool that involves
both quantitative and qualitative factors, to develop strategies
for effective waste management using various optimization models to
rank alternatives, while also incorporating the concerns and needs
of multiple stakeholders to find the most optimal decisions for
various types of wastes. Typically, there does not exist a single
optimal solution to waste problems; with help of MCDM, far better
solutions can often be found and utilized to facilitate sustainable
waste management techniques in various industries. This book
provides unique, effective, and quick decision-making strategies
for waste management. With the ever-increasing population and
continuing human development, the problem of managing waste becomes
increasingly essential, and this volume helps lead the way to
finding sustainable solutions.
This new volume offers a variety of perspectives from
investigators, industry professionals, stakeholders, and economic
strategists that look at new ways of solving optimization problems
related to different industrial sectors. Case studies relay how
optimization methods deal with both real operative conditions in
process industries and in service industries. The volume also
explores emerging research areas toward the implementation of
optimization algorithms for enhancement of system performance as
well as system effectiveness. The book explores the role of
optimization methods in engineering applications in industrial and
mechanical engineering as well as in the fields of
healthcare/medicine, food production, oil, textiles, energy, and
agriculture. The volume offers new ways of solving optimization
problems related to different industrial sectors, incorporating
mathematical formulation for particular design problems and thus
aiding the selection of the optimal design among many alternatives.
It shows optimization methods that deal with actual operative
conditions both in process and in service industries. A unique
advantage of this volume is its wide range of topics in different
engineering domains using novel mathematical modeling-based
optimization methods for solving the real-life problems. The array
of examples and case studies of the effective use of optimization
in diverse areas of engineering include healthcare analysis and
monitoring (fetal phonocardiography), medical device design (3D
printing design for protheses), agriculture/farming (monitoring
climate conditions), environmental science (waste management),
automotive and aeronautic design, industrial manufacturing, solar
energy, and more. Key features: Presents case studies on
optimization problems related to industry Discusses case studies on
operations management practices optimization Provides an overview
of design optimization Highlights case studies on process
optimization Assesses different techniques for handling engineering
problems This valuable book will be useful for researchers,
scientists, faculty, and students involved or interested in the
field of optimization engineering in industrial design.
This book addresses reliability, maintenance, risk, and safety
issues of industrial systems with applications of the latest
decision-making techniques. Thus, this book presents chapters that
apply advanced tools, techniques, and computing models for
optimizing the performance of industrial and manufacturing systems,
along with other complex engineering equipment. Computing
techniques like data analytics, failure mode and effects analysis,
fuzzy set theory, petri-net, multi-criteria decision-making (MCDM),
and soft computing are used for solving problems of reliability,
risk, and safety related issues.
This book explores the significance, challenges and benefits of
digital twin technologies; it focuses in particular on various
architectures, applications and challenges in the implementation of
digital twins to Machine Learning and Internet of Things
capabilities. Through the analysis of smart city and smart
manufacturing case studies, the book explores the benefits of
digital technologies in the Industry 4.0 Era.
This book covers the emerging applications of different
computational and optimization techniques in order to achieve a
sustainable agriculture. A sustainable agricultural management
requires tools in providing integrated, area-specifi c, and
interpreted prediction or forecasting and guidance in every aspect
in agriculture.
Given the increasing need to optimize resources sustainably,
decision-makers face challenges in analyzing and considering the
numerous factors involved. This book makes an effort to present and
concentrate on the challenges in decision-making processes for
green and sustainable engineering. Through a collection of case
studies such as evaluation of waste assessment and drainage system,
sustainable building assessment, renewable energy selection,
materials and manufacturing process optimization, and crop pattern
influence in environmental and economic conditions, readers can
learn how to apply cutting-edge Multiple-Criteria Decision Making
(MCDM) methods in addressing complexities involved in the
decision-making process.
Sustainability issues have gained more importance in contemporary
globalization, pushing decision makers to find a systematic
mathematical approach to conduct analyses of this real-world
problem. The growing complexity in modern social-economics or
engineering environments or systems has forced researchers to solve
complicated problems by using multi-criteria decision-making (MCDM)
approaches. However, traditional MCDM research mainly focuses on
reaching the highest economic value or efficiency, and issues
related to sustainability are still not closely explored. Advanced
Multi-Criteria Decision Making for Addressing Complex
Sustainability Issues discusses and addresses the challenges in the
implementation of decision-making models in the context of green
and sustainable engineering, criteria identification,
quantification, comparison, selection, and analysis in the context
of manufacturing, supply chain, transportation, and energy sectors.
All academic communities in the areas of management, economics,
business sciences, mechanical, and manufacturing technologies are
able to use, apply, and implement the models presented in this
book. It is intended for researchers, manufacturers, engineers,
managers, industry professionals, academicians, and students.
HYBRID MICROMACHINING and MICROFABRICATION TECHNOLOGIES The book
aims to provide a thorough understanding of numerous advanced
hybrid micromachining and microfabrication techniques as well as
future directions, providing researchers and engineers who work in
hybrid micromachining with a much-appreciated orientation. The book
is dedicated to advanced hybrid micromachining and microfabrication
technologies by detailing principals, techniques, processes,
conditions, research advances, research challenges, and
opportunities for various types of advanced hybrid micromachining
and microfabrication. It discusses the mechanisms of material
removal supported by experimental validation. Constructional
features of hybrid micromachining setup suitable for industrial
micromachining applications are explained. Separate chapters are
devoted to different advanced hybrid micromachining and
microfabrication to design and development of micro-tools, which is
one of the most vital components in advanced hybrid micromachining,
and which can also be used for various micro and nano applications.
Power supply, and other major factors which influence advanced
hybrid micromachining processes, are covered and research findings
concerning the improvement of machining accuracy and efficiency are
reported.
Blockchain is new-age technology used to track every transaction
using cryptocurrency across servers linked in a peer-to-peer
network, enabling transactions to be secure, transparent and
reliable. Retaining an efficient, secure and patient-centric
healthcare industry has never been so important, especially due to
the damaging effects of the Covid-19 pandemic. The applicability of
Blockchain in the healthcare domain can be seen as a remarkable
opportunity for researchers and scientists to solve real-world
problems. This book focuses on the fundamentals of Blockchain
technology along with the methods of its integration with the
healthcare industry. It also provides an enhanced understanding of
Blockchain technology, AI and IoT across the various application
areas of the healthcare industry. Furthermore, throughout the book,
areas of relevant applications, such as patient data privacy
protection, pharmaceutical supply chains and genomics are
discussed.
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