Preface
Page: i-iii (3)
Author: Santosh Kumar Das, Soumi Majumder and Nilanjan Dey
DOI: 10.2174/9789815223491124010001
Nanorobots: Types, Principles and Applications
Page: 1-8 (8)
Author: Parkarsh Kumar and Santosh Kumar Das*
DOI: 10.2174/9789815223491124010003
PDF Price: $15
Abstract
Nanobots or Nanorobots are one of the emerging applications in both
nanotechnology and robotics. These bots are programmed to carry out specific
applications for a specific purpose. Owing to their properties such as smaller volume,
efficiency and accuracy, nanobots are being explored in different fields of study,
especially nanomedicine, automation, drug delivery, chemistry, aerospace and others.
These bots can be programmed and explored in such a way that they can be used to
repair the specific target in the body, which is impossible using bare hands. In this
chapter, we are going to explore such types of applications and their principles.
Robot Path Planning in a Dynamic Environment Using Deep Q-Learning
Page: 9-33 (25)
Author: Rifaqat Ali* and Preeti Chandrakar
DOI: 10.2174/9789815223491124010004
PDF Price: $15
Abstract
Robot path planning is a necessary requirement for today’s autonomous
industry as robots are becoming a crucial part of the industry. Planning a path in a
dynamic environment that changes over time is a difficult challenge for mobile robots.
The robot needs to continuously avoid all the obstacles in its path and plan a suitable
trajectory from the given source point to the target point within a dynamically changing
environment. In this study, we will use Deep Q-Learning (Q-Learning using neural
networks) to avoid the obstacles in the environment, which are being dynamically
created by the user. The main aim of the robot is to plan a path without any collision
with any of the obstacles. The environment is simulated in the form of a grid that
initially contains information on the starting and the target location of the robot. Robots
need to plan an obstacle-free path for the given points. The user introduces obstacles
whenever he/she wishes during the simulation to make the environment dynamic. The
accuracy of the path is judged by the path planned by the robot. Various architectures
of neural networks are compared in the study that follows. Simulation results are
analyzed for the evaluation of an optimized path, and the robot is able to plan a path in
the dynamic environment.
Seven Concerns of Innovation Design Process and Analysis of a Smart Bicycle Frame
Page: 34-42 (9)
Author: Suraj*, Arun Kumar and Tameshwer Nath
DOI: 10.2174/9789815223491124010005
PDF Price: $15
Abstract
Though we are improving our living standards with technology, we are
neither bothered about our fitness nor our environment. The article focuses on both,
this research will not only help to keep an individual fit but also help in improving air
pollution. In this article using the concept of seven concerns of the innovation process,
a customized Bicycle frame (Photo Voltaic (PV) frame) is selected after overcoming
the flaws in many designs and final conception is analyzed for maximum deformation
at different loads. In this article, five concerns out of seven are considered to achieve
the final design. Flexible Solar Cell (mentioned in a magazine created by
Massachusetts Institute of Technology, Energy Initiative) on the frame will help to
charge the battery and that battery will operate other devices like Air Purifier, Mobile
Charger, etc. that’s why this bicycle is called smart bicycle by the author. This article
only focuses on innovative design analysis of customized solar frames but not the
working of solar frames or air purifiers. This innovative design is going to change the
concept of cycling in the future.
Hybrid Optimization of Profit-Based Unit Commitment Allowing for Uncertainties of Renewable Energy Sources in Summer and Wintertime
Page: 43-63 (21)
Author: Ranadip Roy*, Ayani Nandi and Nirmalya Mallick
DOI: 10.2174/9789815223491124010006
PDF Price: $15
Abstract
Environmental issues, due to the various gases that are harmful to fossil
fuels, can cause disease and sickness worldwide. Renewable energy sources (RESs) are
a crucial solution for decreasing reliance on fossil fuels. This is because they offer
several advantages, such as significant cost reductions in operations, minimal
depreciation over time, and the ability to provide electric power for various
applications. As a result, they are highly desirable for use in the power sector. This
kind of trouble becomes excessively challenging by developing the extent of the
electric power market step by step. The authors developed a new optimization
technique by combining chaotic maps with various nature-inspired optimization
algorithms, such as the Harris hawks optimizer, sine cosine algorithm, and slime mold
algorithm. This approach allowed them to improve the performance of these
bioinspired optimization methods. The researchers evaluated an improved technique
called hCHHO-SCA and hCSMA-SCA for solving the PBUCP considering renewable
energy sources. They tested the techniques on both a 10-generating-unit system and a
100-generating-unit system. The authors were able to calculate the profit generated
from each system as a result of applying the improved techniques. The adequacy of the
analyzer is confirmed for a few benchmark issues that have been observed. The
recommended optimizer is helpful in obtaining a solution to problems related to
discrete and continuous optimization, including nonlinear types of optimization.
The Impact of Industry 4.0 on Manufacturing: Challenges and Opportunities
Page: 64-82 (19)
Author: Ramesh Chandra Goswami, Hiren Joshi and Sunil Gautam*
DOI: 10.2174/9789815223491124010007
PDF Price: $15
Abstract
The concept of Industry 4.0 emerged in Europe a decade ago, and later, it
was investigated and adopted by academics and industries throughout the world. Due to
significant technical improvements in various industries over the past few years, the
world's industrial systems have transformed. The major technologies, such as IoT and
Big Data, have a large impact on Industry 4.0. They affect each and every sector of the
economy. The main advantages include advances in productivity, efficiency, flexibility,
decision-making process, and quality of goods and services. The challenges include
analyzing the data produced and integrating new technology with the staff and
equipment that are already in place. Our goal is to summarize the potential and
challenges associated with adopting Industry 4.0 in the manufacturing sector.
Emerging Technologies in Fintech: A Case Study
Page: 83-97 (15)
Author: Keyurkumar Patel*, Pujita Sunnapu and Sunil Gautam
DOI: 10.2174/9789815223491124010008
PDF Price: $15
Abstract
The Financial Technology (FinTech) industry has been playing a pivotal role
in driving modern day’s economics, social aspects, technology, and many more areas.
FinTech is majorly inspired, motivated, and empowered by Data Science and Artificial
Intelligence Methodologies (DSAIM). With emerging technology, the smart FinTech
industry has revolutionised economic and financial businesses, service industries, and
systems. The global research communities have made significant progress in smart
FinTech for Banking Tech, Trade Tech, InsurTech, Wealth Tech, Pay Tech, Risk Tech,
Cryptocurrencies, Digital Payment Systems, and Blockchain using DSAIM. In this
review paper, we narrow down the overview of smart financial businesses, their
complex challenges, and the entire smart FinTech ecosystem. The DSAIM enables
smart FinTech and poses some research problems among global academic and
researcher communities.
Leveraging Blockchain Technologies in Healthcare Applications
Page: 98-113 (16)
Author: Manorama Patnaik*
DOI: 10.2174/9789815223491124010009
PDF Price: $15
Abstract
Blockchain innovation recently led to key innovations in the advanced
insurgency of medical care, but a few studies have shown that blockchain has the
potential to improve the medical care environment. It is prepared to change how
customary clinical frameworks and organizations have been occupied with the medical
services area throughout the previous very long while. Information and communication
technologies (ICTs) and blockchains are key empowering advancements for the
decentralization and digitalization of medical care foundations and provide current and
digitalized medical care environments to patients, similar to specialist organizations.
With regard to blockchain applications for medical service information, the board
provides utility for patients, specialists and medical care organizations through patient
record access and control, cases and installments, clinical IoT security and exploration
of information checks and trades for budgetary evaluation and straightforwardness. In
these applications, constant updates to an encoded, decentralized blockchain record are
never true, screen, or control clinical data. This likewise encourages medical service
foundations to confine unapproved individuals to obtaining sensitive data. This paper
provides insight into the blockchain methodology applied in IoT healthcare security.
Design and Development of Blockchain Integrated IoT System for Pharmaceutical Applications
Page: 114-135 (22)
Author: Jyothy S. T.* and Mrinal Sarvagya
DOI: 10.2174/9789815223491124010010
PDF Price: $15
Abstract
The integration of the Internet of Things (IoT) technology in the
pharmaceutical industry has the potential to bring about significant advancements and
improvements, particularly in areas like supply chain management, drug discovery, and
patient monitoring. By leveraging IoT technology in these ways, the pharmaceutical
industry can enhance efficiency, improve product quality, ensure patient safety, and
mitigate the risks associated with counterfeit drugs in the market. However, it was
essential to address cybersecurity concerns to safeguard sensitive data and maintain the
integrity of the IoT ecosystem in healthcare. The concept of integrating IoT with
blockchain in the pharmaceutical supply chain is indeed a powerful solution to address
the challenges faced by the industry, particularly in supply chain management and the
prevention of counterfeit drugs. Integrating IoT with blockchain technology also results
in many advantages like accurate location tracking, real-time updates and visibility,
counterfeit prevention, timely delivery to customers, environmental parameter control,
expiry date monitoring, pharmaceutical warehouse management, automated decision
making and many more. By combining the strengths of IoT and blockchain, the
pharmaceutical industry can build a robust and secure supply chain ecosystem. This
integrated approach not only enhances transparency and traceability but also addresses
critical issues such as counterfeiting by ensuring the delivery of safe and authentic
pharmaceutical products to consumers. Environmental parameters are also monitored
in a warehouse to avoid spoilage of medicines. The date of expiry of medicines and
related equipment are monitored and categorized into three levels such as discard the
medicines if expired, near to expiry if the expiry date is nearer and store in the
warehouse if the date of expiry is far, and a message is sent accordingly to the
supervisor for necessary action.
Attrition in IT Sector: Psychology Behind the Scene
Page: 136-152 (17)
Author: Abhisek Sarkar*
DOI: 10.2174/9789815223491124010011
PDF Price: $15
Abstract
Attrition is often defined as “a reduction in the number of employees as a
result of retirement, resignation or death” and also as “the rate of shrinkage in size or
number”. But the scenario is not so simple. We should always consider premature
retirement, sudden resignation and premature death, including suicide. The real
scenario is employees do leave, either because they expect extra money, dislike the
working environment, get rough behavior, non-cooperation from their coworkers, need
a change, or because their spouse gets a more robust chance in another region.
Retention is more economical than going for brand spanking new recruitment
whatsoever. Organizations should have a good retention strategy to retain their
valuable employees. Employee turnover may be viewed as the outcome of unmet
expectations and gaps between fundamental employee demands. Employees may
simply resign under a few unfavourable conditions, but more crucially, “people depart
before they leave”, according to the psychology of disengagement. It may be iterated
that as they become older, their contribution gradually decreases, much like a slowly
fading memory. This text presents a holistic view of attrition and retention of
employees based on psychological aspects in this cut-throat competitive environment
in India. Biology has a little role in management, though one cannot ignore biology in
psychology. In broader terms, attrition is somehow related to psychology, and
psychology and physiology are two sides of a coin. A new trend is to relate psychology
with physiology to reduce attrition.
Deep Learning Techniques for Predicting Changes in the Ecosystem
Page: 153-167 (15)
Author: Kruthi, Anugraha Anil kumar, Aromal A. J. and Chaya Ravindra*
DOI: 10.2174/9789815223491124010012
PDF Price: $15
Abstract
In the modern age, we depend on technology for our daily needs, from
groceries to booking tickets for rides. The technology supports us by understanding our
requirements. This is done by using Machine Learning. Machine Learning deals with
understanding human behavior and providing suggestions for our requirements. The
changes in the ecosystem affect the living creatures who depend on the ecosystem. One
of the subsets of Machine Learning that play a vital role in saving the lives of living
creatures is Deep Learning. Deep Learning is a representational learning of artificial
neural networks. Deep Learning keeps on improving so that it can imitate human
intelligence more accurately. Artificial Neural Networks is another subset of Machine
Learning and helps in the growth of Deep Learning. There are different classes of
artificial neural networks, two of the important classes are the Convolutional Neural
Network (CNN) and the Recurrent Neural Network (RNN). The patterns in images are
recognized by CNN. So, CNN majorly deals with image recognition and processing.
RNN helps recognize sequential data and uses this pattern of sequential data to predict
the likely scenarios in the ecosystem. The model, which uses the algorithm of RNN and
CNN, should be trained and tested with the data for better efficiency.
A Detailed Analysis of Issues with Solid-State Devices
Page: 168-188 (21)
Author: Shweta* and Hifzan Ahmad
DOI: 10.2174/9789815223491124010013
PDF Price: $15
Abstract
Non-volatile memory technologies, such as NAND flash memory, have
improved storage system performance, reliability, durability, and cost. Due to their
speed and density, solid-state devices (SSDs) that are based on flash memory are being
used as workstations, desktops, and laptops. Despite offering superior performance,
stress resistance, and energy economy as compared to mechanical hard drives, NAND
flash memory has unique features and operating limits and cannot be employed as a
perfect block device. The design of SSDs has developed over time to make use of the
benefits offered by flash memory while, at the same time, hiding their drawbacks. SSD
concurrency techniques make use of the available parallelism of flash memories. This
chapter thoroughly examines SSD subjects, ranging from the physical features of a
flash memory cell to the design of SSDs themselves. The subjects pertaining to the
flash translation layer (FTL) are described within the context of interconnected systemlevel operations. These operations include garbage collection, wear-leveling, address
mapping and bad block management. This chapter also provides a review of the most
current SSD-related studies.
Profit-Based Unit Commitment Using Local and Global Search Methods
Page: 189-211 (23)
Author: Nirmalya Mallick*, Ayani Nandi and Ranadip Roy
DOI: 10.2174/9789815223491124010014
PDF Price: $15
Abstract
The availability of clean energy is crucial for both the environment and
human health. Numerous harmful gasses released by conventional automobiles cause
illnesses and ailments in people all over the world. Nevertheless, there is growing
interest in Plug-in Electric Vehicles (PEVs) to help with the energy and climate
emergency. It has been noted that the manufacturing of PEVs has dramatically
increased over the past ten years. The PEVs may supply the power grid with electricity
while both consuming it and storing it in batteries. By effectively managing the electric
demand profile and integrating electricity from PEVs into the electric grid, operating
expenses can be reduced overall. The study recommends the course of action, which, in
this case, is to apply the chaotic mapped Sine Cosine Algorithm advancement method
and combine chaotic maps with the Harris Hawks Optimizer. It also evaluates how well
the suggested better technique is implemented while taking PEVs into account.
Classification of Deep Learning Techniques for Object Detection
Page: 212-228 (17)
Author: Aras Amruth Raj Purushotham, Manjunath Ravindra* and Chaya Ravindra
DOI: 10.2174/9789815223491124010015
PDF Price: $15
Abstract
The object detection framework recognises real-world objects within the
frame of a moving photograph or computer-generated image. The object has a location
to flow to through other objects, such as people or automobiles. Item detection is
widely used in sectors where it is necessary for an organization's security and growth.
The vast range of applications for protest detection include image recovery, security
strategy, reason for inspection, machine framework assessment, and computerised
vehicle structure. In contrast to conventional object localization techniques, machine
learning-based object identification makes use of the machine's greater capacity to
learn and represent knowledge [1]. A difficult problem in the analysis of designs and
computer frameworks is object detection. Later on, the relationship between object
detection, video analysis and image processing was developed. The complicated
structure that is now being constructed includes both fundamental and sophisticated
features, and the evaluation is carried out depending on the classifiers used. A complex
system that can accurately assess and distinguish between numerous aspects is
produced as a result of this combination. Several deep-level characteristics have been
developed as a result of machine learning advancements to address the problems in the
old design [2]. We conducted research on one-stage and two-stage object detectors,
which are further categorised into deep learning methodologies. To enhance object
detection, CNN networks employ these algorithms. An evaluation of the machine
learning method for object detection is presented in this paper [3]. The protest site's
applications have been distilled. The various methods of object localization employ
template-based, region-based, and portion-based methods.
Subject Index
Page: 229-234 (6)
Author: Santosh Kumar Das, Soumi Majumder and Nilanjan Dey
DOI: 10.2174/9789815223491124010016
Introduction
Robotics and Automation in Industry 4.0 explores the transformative role of robotics, automation, and emerging technologies in the modern industrial landscape. The book is divided into four comprehensive sections, each focusing on key areas of Industry 4.0. These are: 1) Robotics: Applications and Advancements, 2) Renewable Energy Applications, 3), FinTech, and 4) Multidisciplinary approaches. It compiles 13 chapters offering insights into the latest advancements and provides practical guidance for navigating the evolving industrial landscape.