Preface
Page: ii-iv (3)
Author: Biswadip Basu Mallik, Gunjan Mukherjee, Rahul Kar, Ashok Kumar Shaw and Anandarup Mukherjee
DOI: 10.2174/9789815223255124010002
Advanced Rival Combatant Identification with Hybrid Machine Learning Techniques in War Field
Page: 1-15 (15)
Author: Charanarur Panem, Srinivasa Rao Gundu*, S. Satheesh, Kashinath K. Chandelkar and J. Vijaylaxmi
DOI: 10.2174/9789815223255124010004
PDF Price: $15
Abstract
This research shows how Hybrid Machine Learning (HML) techniques may
be used in real-time to identify an Army’s personal fighting zone or any other specified
location in order to reduce safety risks via the detection of an invasion or enemies.
Deep Learning (DL) techniques, such as Faster R-CNN, YOLO, and DenseNet, were
used to find employees, categorize objects, and detect subtle characteristics in a variety
of datasets. Testing showed that a 95% recall rate and a 90% precision rate were
possible. This indicates high detection. A cleanness of 85 percent and a correctness of
80 percent were achieved in a real-world construction site application. To some things
up: The recommended approach may enhance current safety management methods in
conflict zones, borders, and beyond.
An IoT Based Battery Condition Monitoring System for Electric Vehicles
Page: 16-34 (19)
Author: Suman Haldar, Arindam Mondal*, Supratim Mondal and Rajib Banerjee
DOI: 10.2174/9789815223255124010005
PDF Price: $15
Abstract
A brushless DC (BLDC) motor-based three-wheeled vehicle, known as
three-wheeled battery-operated vehicles (TWBOVs), is a suitable alternate to public
transportation. The TWBoVs are not only providing efficient short-distance
transportation but also are a source of employment generation since 2008 in rural India.
The TWBoVs operate mainly through the flooded lead-acid battery. To get the full
benefit of lower operating costs, the life, and efficiency of the battery are important
aspects. In such a scenario, battery monitoring and management for battery-operated
vehicles are a prime aspect. Proper battery management and monitoring enhance the
durability of the lead-acid battery in TWBoVs. In this chapter, the monitoring and
management of Lead-acid batteries using the Internet of Things (IoT) is capitalized.
Depending on the survey in rural Bengal, it is observed that the battery life cycle
depreciation process needs to be decreased by properly monitoring the condition of
drive-train of TWBoVs and the lead-acid battery ampere-hour discharge in the random
drive cycle. A newly applicable design regarding the state of charge (SOC) estimation
of the batteries along with terminal voltage and current measurement under different
depths of discharge phase has been implemented through IoT-based real-time
monitoring system. This developed system relates the distance traveled (in kilometers)
by the TWBoVs with the condition of the battery concerning its SOC on an online
basis via a Wireless battery management system (WBMS). Experimental analysis
through hardware setup and simulation proves the feasibility of the approach in terms
of battery utilization and monitoring.
IoT Covid Patient Health Monitoring System
Page: 35-45 (11)
Author: Akalya C., Aleena A. S., Athira R., Hamsavarthini I. I. and Shijitha R.*
DOI: 10.2174/9789815223255124010006
PDF Price: $15
Abstract
Lack of healthcare or inaccessibility of doctors and caregivers is a major
concern. The increase in COVID-19 patients is putting tremendous pressure on hospital
management in urban areas. Therefore, the development of IoT (Internet of Things)
based patient monitoring systems allows doctors to obtain patient data from remote
locations. The Internet of Things is an evolving technology that takes healthcare to the
next level by providing affordable, reliable, and convenient devices that can be carried
or embedded with patients. There is a growing interest in wearable sensors and medical
devices. Therefore, wearable monitoring systems will take patient monitoring to a new
level. The IoT allows various devices to be connected over the Internet. Data is
collected using sensors and sent to the cloud via IoT channels, where both patients and
doctors can access the data (real-time and historical) through a variety of devices. Any
deviations from the norm will result in alerts being sent to both doctors and patients.
This enables doctors to monitor a large number of patients at once.
Artificial Intelligence in Healthcare
Page: 46-60 (15)
Author: Arijita Banerjee* and Sumit Kumar
DOI: 10.2174/9789815223255124010007
PDF Price: $15
Abstract
Artificial intelligence (AI) is referred to as machines that can mimic human
cognitive functions. It usually engages various digital methods starting from computer
programming to deep learning, thus making use of the enormous structured and
nonstructured healthcare data. Artificial intelligence is gradually making a change in
medical practice by using sophisticated algorithms, assisting clinicians to mitigate
diagnostic and therapeutic errors and also using data intensive analysis for early
diagnosis of various diseases.
The chapter provides us an insight into the relationship between artificial intelligence
and healthcare, origin of artificial intelligence, different categories of artificial
intelligence and its applications in our healthcare system, various diseases for screening
as well as prognostic evaluation and eventually the issues pertaining to the
implementation of AI in medical devices.
The main focus is on the two major categories of AI which includes machine learning
and natural language processing. The former analyses the structured data such as
genetic or electrophysiological data while the latter deals with unstructured data such
as medical notes. In medical practice deep learning is mainly used to explore more
complex data. Cardiovascular health, neurological deficits and cancer are the most
challenging topics in AI.
AI technologies have created a stir in medical research yet it is facing various hurdles
in the form of regulations and data exchange. Thus, ethical and legal concerns need to
be addressed before the deployment of AI in the market.
Image-Based Plant Disease Detection Using IoT and Deep Learning
Page: 61-71 (11)
Author: Vippon Preet Kour* and Sakshi Arora*
DOI: 10.2174/9789815223255124010008
PDF Price: $15
Abstract
Plant diseases act as a major threat to the both economy and food security of
any nation. Despite being of such importance, the identification of plant diseases and
approaches deployed to tackle them are mostly conventional/ traditional ones.
Incubation of technology and advancement in computer vision and deep learning
models have opened new ways for developing much better approaches to tackle such
issues. In this work, the native plants of Jammu and Kashmir are taken into
consideration. An IoT-based framework is designed for data collection and disease
diagnosis. The data involves both diseased and healthy leaf images. A hybrid deep
neural network is trained to identify the plant species as well as the diseases associated
with it. The trained model achieves an overall accuracy of 96.35%. A comparison with
other state of art approaches is also presented, along with suggestions for some related
future developments. This approach can be deployed on a global scale to tackle plant
diseases and to achieve global diagnosis.
Artificial Intelligence (AI): A Potential Technology in Healthcare Sector
Page: 72-86 (15)
Author: Alok Bharadwaj*
DOI: 10.2174/9789815223255124010009
PDF Price: $15
Abstract
In the present scenario, the contribution of Artificial intelligence (AI) has
enhanced considerably in several fields including the healthcare sector. This growing
technology has a bright future in medical research as well as in early disease diagnosis
and its treatment by minimizing the risk factors and severity. Artificial intelligence is
applied in a very smart way so as to make it a more superior and competent technology
in comparison to the human brain e.g. by using AI, a robot makes the surgery in a more
efficient way than a surgeon by reducing any possibility of failure and severity.
Nowadays, AI has evolved as the most competent technique that helps patients and
cares for them more efficiently by reducing the cost.
To work more effectively and precisely, AI requires instructions in the form of sets of
algorithms. Two major key factors required for AI include natural language processing
(NPL) and machine learning (ML). Both these techniques are required to fulfill the
various tasks and challenges in the field of the healthcare sector. In the present chapter,
an effort has been made to explore the advancements of AI in different fields of the
health care system including radiology, dermatology, designing of novel drugs, and the
early diagnosis and treatment of various deadly diseases like cancer and neurological
disorders.
Precision Farming Using IoT for Smart Farming
Page: 87-93 (7)
Author: P. Trivedi* and J. Sainkhediya
DOI: 10.2174/9789815223255124010010
PDF Price: $15
Abstract
By 2050, food production is expected to expand by 70% to feed 2.3 billion
people around the world. New agricultural farming technology will be needed to feed
the growing global population with safe and healthy foods. With this, in the last few
decades, we have witnessed a lot of technological advancements in the farming
industry. Agriculture is becoming smarter than ever before thanks to the deployment of
disruptive technologies like the Internet of Things (IoT). Farmers have enhanced their
control over the process of growing crops and rearing livestock due to the many smart
farming IoT gadgets available on the market. The Internet of Things (IoT) is generating
a lot of excitement in a variety of industries, including infrastructure, automotive, and
retail. Precision agriculture is the IoT's most critical use case, yet it is not often
discussed. With our globe on the verge of a food crisis, these new technology
breakthroughs to boost harvests could prove life-saving. Precision agriculture is
gaining traction as a new farming direction through the Internet of Things. In this
chapter, we discuss the IoT technologies that are used to increase data quality, and how
they are employed in the field.
Impact of Artificial Intelligence (AI) and Internet of Things (IOT) On the Healthcare Sector: A Review
Page: 94-110 (17)
Author: Abanti Aich and Kallal Banerjee*
DOI: 10.2174/9789815223255124010011
PDF Price: $15
Abstract
Recent developments in data generation, connectivity, and technology have
caused the emergence of Internet of Things (IoT) and Artificial Intelligence (AI)
programs in different industries. Artificial intelligence and IOT are strengthening
current healthcare technologies whether they are employed to discover new
relationships between genetic codes and auto control surgical operations assisting
robots. This chapter explores and discusses the various modern-day applications of AI
within the fitness domain. This paper studies the influences of IoT and AI in
healthcare. Artificial Intelligence (AI) and the Internet of Things (IoT) can assist
additionally in replacing time-consuming information tracking techniques. The findings
also indicate that AI-assisted clinical trials are capable of managing large volumes of
facts and producing exceptionally accurate effects. AI expands systems that assist
patients at each stage. Patients’ clinical statistics are likewise analyzed by using clinical
intelligence, which gives insights to assist them in enhancing their quality of life. This
study also highlights key insights into the top technological applications, which include
connectivity, diagnosing the disease and discovering its treatment, patient care,
defining gaps and further research directions related to modeling, the technology and
regulations for data security and privacy, and also systems’ proficiency and security.
Curvelet Based Seed Point Segmentation Methodology Using Digital Biomarker for Abnormality Detection in Fetal Spine Disorder
Page: 111-124 (14)
Author: V. S. Lavanya and M. Indira*
DOI: 10.2174/9789815223255124010012
PDF Price: $15
Abstract
Objectives: The accuracy and early diagnosis of abnormalities in fetus Ultra
Sound pictures will be improved with the use of a novel automatic segmentation
technique. An essential area of study for medical AI is the real-time monitoring of
prenatal spine disorders. The Internet of Things and medical AI are directly intertwined
(IoT). The objective digital biomarker obtained by IoT devices could represent realtime data. IoT and digital biomarkers can be helpful in the spine based on the attributes.
Methods: To increase the accuracy of anomaly detection using the K-means
segmentation algorithm, the Curvelet-based Seed Point Selection (S-CSPS)
methodology was created. Through seed point evaluation, which lessens the speckle
and consequently improves the ability to detect abnormality, it is possible to accurately
identify regions for each pixel in US images that belong to the objects. Findings: The
ultrasound images of the fetal spine abnormalities dataset are used to build the
suggested S-CSPS in the MATLAB environment. As part of the performance analysis,
various fetus picture numbers are taken into consideration, along with noise levels,
segmentation accuracy, anomaly detection rate, and segmentation time. Improvement:
The findings of the simulation analysis demonstrate that, when compared to state-ofthe-art techniques, the S-CSPS method performs better with an increase in
segmentation accuracy and an increase in the rate of abnormality detection utilising
digital biomarkers.
The Effect of the Internet of Things, Artificial Intelligent and Tracking on Smart Transportation
Page: 125-143 (19)
Author: Martin Otu Offei and Lomatey Toku*
DOI: 10.2174/9789815223255124010013
PDF Price: $15
Abstract
The life of an individual, an organization, and a country depends on the
movement of products and services across international borders. International trade
follows hallowed transportation lines; any disruption to these channels costs countries,
organizations, and people millions of dollars and raises the cost of conducting business
internationally. In order to ensure smart transportation, this study examined how
artificial intelligence (AI), the Internet of things (IoT), and tracking will affect
transportation. The introduction of these technologies (AI, IoT, tracking) into the
transportation value chain will lead to smart transportation and improve efficiency in
the area where they are introduced. The application of these technologies in the private
sector of a developing market was the main topic of our study. 100 respondents were
surveyed quantitatively in the private sector. SmartPLS was employed as a technique to
clarify the ad hoc interaction between smart transportation and the independent and
dependent variables of artificial intelligence, the internet of things, and tracking. The
findings of this study indicate that tracking, the internet of things, and artificial
intelligence have a good impact on smart mobility. The results of this study provide
compelling evidence that smart technology investments are necessary if efficiency is to
continuously increase. The findings from this study should help governments and
businesses make the necessary investments in IoT and AI infrastructure to benefit from
smart transportation, as this is the path to the supply of products and services. While
considering smart transportation, it is also necessary to shield it from potential
cyberattacks.
The Influence of Artificial Intelligent, Internet of Things and Cyber Security on Supply Chain Management Performance
Page: 144-159 (16)
Author: Lomatey Toku* and Martin Otu Offei
DOI: 10.2174/9789815223255124010014
PDF Price: $15
Abstract
The enhancement of supply chain performance is a hot topic in both practice
and literature. In order to cut costs and boost efficiency, it is essential to invest in
processes that enhance supply chain performance. The interaction between other
structures and supply chain performance holds the key to releasing the hidden potential
that Supply Chain Management 4.0 holds. The diffusion of “the Internet of Things into
supply chain management” would boost productivity and facilitate the supply chain
connections that connect industrial input to client delivery of goods and services.
Artificial intelligence would improve productivity and efficiency if it were used to
supply chain operations, procedures, and activities within and between enterprises.
However, putting such devices online runs the risk of exposing performance because of
cyber security problems. This paper investigates the beneficial effects of AI and IoT on
supply chain efficiency and makes the argument that corporate failings in cyber
security might have a detrimental effect on supply chain efficiency. This study
employed a quantitative study with 91 respondents from organizations that
substantially rely on supply chain operations. To determine the arbitrary associations
between the independent and dependent variables, data were analyzed using Smart
PLS. The findings imply that while AI and IoT have a beneficial impact on supply
chain management performance, cyber security breaches are seen to have a negative
impact.
Automated Smart Prediction of Heart Disease Using Data Mining
Page: 160-175 (16)
Author: Sumita Das*, Srimanta Pal and Sayani Manna
DOI: 10.2174/9789815223255124010015
PDF Price: $15
Abstract
In our hectic lives, we usually do not have enough time to check our health
on a daily basis, and as a result, we disregard our health problems. The smart health
prediction system presented in this research uses a new method that could aid us in
taking care of ourselves. We can use the symptoms of our health problems as input to
our system to help us predict the condition, and then we can contact a medical
professional when necessary. The goal of this study is to use data mining techniques to
forecast cardiac disease. Due to its ability to effectively forecast outcomes and store
vast amounts of data, data mining is increasingly popular nowadays. Here, we examine
the information and display each aspect of the dataset. We display the male-to-female
patient ratio, the type of cardiovascular disease, type of chest discomfort, and
maximum and minimum patient ages. Then, we employ a variety of machine learning
approaches, including the Decision Tree Algorithm, Random Forest, Support Vector
Machine, Logistic Regression, KNN, and others, to forecast the disease. The majority
of the models offer us accuracy rates of over 85%. Additionally, it examines the
matrix's recall and precision. Therefore, we can infer that it provides us with a positive
outcome that will enable us to take the required precautions and lower the rate of
mortality associated with a heart disease or heart attack.
Deep Learning-Based Detection of Defects from Images
Page: 176-182 (7)
Author: Srimanta Pal*, Sumita Das and Sayani Manna
DOI: 10.2174/9789815223255124010016
PDF Price: $15
Abstract
Crack detection has vital importance for monitoring and inspection of
buildings. It has great significance for structural safety. This is a challenging task for
computer vision and machine learning, as cracks only have low-level features for
detection. Convolutional Neural Networks (CNN) is a very promising framework for
crack detection from images with high accuracy and precision. This paper is based on a
deep-learning methodology to detect and recognize structural defects. The dataset is
split into training and testing data which is used to train the model. Then this trained
model is used to recognize and classify cracks in images. The dataset consists of
concrete crack images. The data set used has two categories, images with cracks and
without cracks. A Convolutional Neural Network model using Pytorch will be fit to
predict the images if the images have any cracks or not. This paper compares the
accuracy of various models.
Deploying XAI with IoT for the Protection of Endangered Species
Page: 183-198 (16)
Author: Manas Kumar Yogi*, P. Satya Prasad, Chaganti Saraswathi Satya Swetha and Kotha Naga Sri Lakshmi
DOI: 10.2174/9789815223255124010017
PDF Price: $15
Abstract
As the modern world is progressing towards technological advancements
year by year, the human species is endangering other species in land, water, and air.
The very existing industrial advancement is focusing on human needs only and now the
situation is worsening due to the natural impacts of animal species. Due to these
compelling reasons, the Internet of Things has come to the rescue of endangered
species. We are replacing IoT with explainable artificial intelligence due to the fact that
XAI will address the black box problem of AI. In our paper, we incorporate the specific
robust elements of XAI to provide a framework that will give results that are useful for
researchers who are responsible for protecting endangered species. The XAI model has
higher accuracy and is cost-effective during deployment which makes the proposed
approach even more promising.
Application of Machine Learning Approaches in Crop Management
Page: 199-210 (12)
Author: V. Harsha Vardhan*, M. Lavanya and M. Sowmyavani*
DOI: 10.2174/9789815223255124010018
PDF Price: $15
Abstract
Agriculture is considered one of the evergreen and blooming sectors which
is continuously addressing the needs of the growing population around the world. In a
country like India with hundred crore population, 37 million to 118 million still depend
on farming. The use of machinery and modern practices in agriculture is still not
followed by the majority of farmers. Adoption of modern farm practices can result in
increased yield of the crop, reduction in pollution, less water consumption, effective
pest management and pesticide usage. There is a need for a lot of research on new
inventions that help farmers to overcome these challenges. Artificial intelligence and
machine learning are two domains that need to be utilized to address the challenges.
Even though many researchers have focused on these issues, it is still way war far
behind. In this paper, I would like to propose some of the approaches of Artificial
Intelligence and Machine Learning that address the challenges faced by farmers.
AI and IoT-Enabled solutions for Protection of Species on Earth
Page: 211-225 (15)
Author: Poornima G. Patil* and Malini M. Patil
DOI: 10.2174/9789815223255124010019
PDF Price: $15
Abstract
Ecological balance is a term describing the co-existence of species with
other species and also with the environment ensuring the organization of ecosystems in
a state of stability. Each species has a contribution to maintaining the ecological
balance. Major disturbances of ecological balance are due to careless activities by
human beings like faulty usage of land, soil, water, and forest resources, and industrial
and vehicle pollution. The proposed study focuses on two major resources namely soil
and water which affect human, animal and plant lives both terrestrial and aquatic to a
very large extent. Soil degradation is the loss of soil quality that diminishes yield.
Water degradation refers to the quality of water being degraded with the introduction of
unwanted chemicals and making it unsuitable for use. The world is surely going to
suffer from the problem of hunger if man does not make efforts to conserve the soil and
water. The need of the hour is to devise technological solutions that can measure,
predict, and analyze the degradation, recommend suitable procedures either to prevent
the damage, or control the damage, and suggest the means to achieve better crop
productivity. The concept of Precision agriculture using IoT and AI can help in
measuring, and analyzing the soil conditions, the requirements of temperature, water,
pesticides, and fertilizers and provide guidance on soil management, crop rotation, and
optimal planting and harvesting schedules in order to reap better yield and satisfy the
food requirements of all species on Earth.
Air Pollution Detection in Covid-19 Ward: An Artificial Intelligence Approach
Page: 226-237 (12)
Author: S. R. Reeja*
DOI: 10.2174/9789815223255124010020
PDF Price: $15
Abstract
The world has faced a pandemic situation due to COVID-19. The dearth of
understanding of germs, the scope of the phenomena, and the rapidity of contamination
highlight many points in the new techniques for studying these events. Artificial
intelligence approaches could be helpful in assessing data from virus-affected
locations. The goal of this research is to look into any links between air quality and
pandemic propagation. We also assess how well machine learning algorithms perform
when it comes to anticipating new cases. We present a cross-correlation analysis of
everyday COVID-19 instances and ecological parameters such as heat, humidification,
and contaminants in the atmosphere. Our research reveals a strong link between several
environmental factors and the propagation of germs. An intelligent trained model using
ecological characteristics may be able to forecast the number of infected cases
accurately. This technique may be beneficial in assisting organizations in taking
appropriate action about inhabitants’ protection and prevalent response. Temperature
and ozone are adversely connected with confirmed cases whereas air particulate matter
and nitrogen dioxide are positively correlated. We created and tested three separate
predictive models to see if these technologies can be used to forecast the pandemic's
progression.
Subject Index
Page: 238-243 (6)
Author: Biswadip Basu Mallik, Gunjan Mukherjee, Rahul Kar, Ashok Kumar Shaw and Anandarup Mukherjee
DOI: 10.2174/9789815223255124010021
Introduction
This book explores the intersection of the Internet of Things (IoT) and Artificial Intelligence (AI) in sustaining a green environment, sustainable societies, and thriving industries. It offers a comprehensive exploration of how these technologies intersect and transform various sectors to enhance environmental conservation, societal well-being, and industrial progress. The book features a diverse array of case studies, methodologies, and notes on technological advancements. Readers will gain valuable insights into the impact of AI and IoT on sustainable initiatives through real-world examples, research findings, and discussions on future directions. Key themes AI in complex and versatile scenarios: Chapters 1 and 4 explore AI applications in combatant identification and COVID-19 monitoring IoT for efficiency and data-driven decision-making: Chapters 2, 3, and 7 focus on IoT implementations in battery monitoring for electric vehicles, healthcare systems, and precision farming AI for diagnostics and computer vision: Chapters 5, 9, and 13 highlight AI-driven solutions for plant disease detection, fetal spine disorder detection, and defect detection Industry applications: Chapters 6, 8, 10, 11, 12, 14, 15, 16, and 17 cover AI and IoT in healthcare, transportation, supply chain management, endangered species protection, crop management, and pollution detection, showcasing their transformative potential across various domains. This book is ideal for readers with multidisciplinary backgrounds, including researchers, academics, professionals, and students interested in IoT, AI, environmental sustainability, healthcare, agriculture, smart technologies, and industrial innovation.