Book Volume 4
Preface
Page: ii-ii (1)
Author: Parikshit N. Mahalle, Gitanjali R. Shinde and Prachi M. Joshi
DOI: 10.2174/9789815179187123040002
A Comprehensive Study of State-of-the-Art App- lications and Challenges in IoT, and Blockchain Technologies for Industry 4.0
Page: 1-21 (21)
Author: Saniya Zahoor*, Ravesa Akhter, Varad Vishwarupe, Mangesh Bedekar, Milind Pande, Vijay P. Bhatkar, Prachi M. Joshi, Vishal Pawar, Neha Mandora and Priyanka Kuklani
DOI: 10.2174/9789815179187123040004
PDF Price: $15
Abstract
The Internet of Things (IoT) is a network of smart and self-configuring
devices that exchange data by interacting with the environment to make decisions
without human intervention. Endowed to sense surrounding events, these physical
objects generate large amounts of real-time data that need an acceptable architecture
with better security to process and convert it into meaningful information.
Implementation of blockchain in IoT offers a secure, transparent and efficient
mechanism to store and manage data generated by connected IoT devices. Even though
the integration of blockchain with IoT is pretty recent, there are at present a huge
number of applications that include smart healthcare, smart homes, e-government,
automotive industry, smart education, precision agriculture etc. However, there are
several challenges encountered in Blockchain-IoT integration which include
anonymity, standardization, interoperability, heterogeneity, data privacy, smart
contracts, legal issues, transparency, storage capacity and scalability, security, etc. This
chapter presents the current state-of-the-art Blockchain-IoT integration in order to
examine how blockchain could possibly improve the IoT ecosystem catered towards
Industry 4.0. This chapter investigates the various application domains of Blockchain-IoT integration. It also discusses the main challenges faced in the adoption of
blockchain in IoT environments for I4.0
Role of Blockchain Technology in Industry 4.0
Page: 22-51 (30)
Author: Priya Shelke* and Riddhi Mirajkar
DOI: 10.2174/9789815179187123040005
PDF Price: $15
Abstract
Challenges in the industrial world are evolving rapidly. The game-changing
technologies for overcoming these challenges on the path to Industry 4.0 are
digitization and automation. We can control and improve every area of supply chain
and manufacturing processes with the aid of Industry 4.0 technologies. It offers access
to the real-time data and insights we need to run a company more profitably and
efficiently. As a result, one can make better, quicker business choices. Supply chains
and manufacturing processes may be built with the use of Blockchain technology. In
this chapter, the connection between Blockchain and Industry 4.0 is made clear. The
nine pillars of Industry 4.0 are defined as the core value drivers of the manufacturing
process. The next part provides a quick overview of the characteristics of Blockchain
technology. The final section investigates the function of Blockchain in Industry 4.0
through the use of different applications.
Adoption of Industry 4.0 in Remotely Located Industries
Page: 52-68 (17)
Author: Pratap Pandurang Halkarnikar* and Hriday Pandurang Khandagale
DOI: 10.2174/9789815179187123040006
PDF Price: $15
Abstract
The manufacturing industry is revolutionized by introducing information
and communication technology for productivity, flexibility, and agility. This Industry
4.0 has revolutionized the way companies manufacture, update and distribute their
products. Manufacturers are integrating new technologies, like the Internet of Things
(IoT), cloud computing, data analytics, and AI, into their production facilities and
business operations. This digitization of manufacturing has increased the productivity
of plants, reduced the dependency on human resources and improved logistics. This led
to a better return on investment in the manufacturing sector and started blooming again.
Many start-ups are coming up with new business ideas based on new technologies.
These ideas are now easy to integrate with Industry 4.0-ready facilities. Now it is
challenging to take advantage of this wave of new business opportunities for the
traditional manufacturing industry. These industries strive to implement this
technology for their plants, which are also located geographically remote. To sustain
these older plants to new generation competition and expectations, it is necessary to
shift and adopt the technology of Industry 4.0. Transition business models need to be
developed for shifting to a “new business model” of the company, along with the “old
business model” that is slowly “decommissioned”. In this chapter, we will discuss the
need, challenges, and advantages of integrating new technology into old manufacturing
processes for the sustainability of a business. Organizations that wish to shift to a new
paradigm face many challenges. The most challenging aspects include the skills and
qualifications of their human resource, the ability of their machines to connect and
communicate with each other, and the adoption of various new technologies.
Predictive Analytics Algorithm for Early Prevention of Brain Tumor using Explainable Artificial Intelligence (XAI): A Systematic Review of the State-of- the-Art
Page: 69-83 (15)
Author: Prasad Raghunath Mutkule*, Nilesh P. Sable, Parikshit N. Mahalle and Gitanjali R. Shinde
DOI: 10.2174/9789815179187123040007
PDF Price: $15
Abstract
Advancement in the medical field promotes the diagnosis of disease through
automation methods and prediction of the brain tumor also plays an important role due
to the fact that millions of people are affected by brain tumor and the rate of affected
people is increasing every year randomly. Hence, in saving the lives of many
individuals, the early detection of the disease plays an important role. Using the MRI
Images, it’s easy to find the location and existence of the tumor. Expert manual
diagnosis is playing a vital role in detecting the information about the tumor and its
type. Though there are various models that can detect tumor location with the help of
ML models in the medical field, somewhere there is a lag in the success of these
models. Deep learning is one of the widely used approaches for the same. But the
black-box nature of these machine-learning models has somewhat limited their clinical
use. Explanations are essential for users to know, trust, and well manage these models.
The chapter proposes dual-weighted deep CNN classifiers for early prediction of the
presence of brain tumor along with the explanation-driven DL models such as Local
Interpretable Model-agnostic Explanations (LIME) and SHapley Additive explanation
(SHAP). The performance and accuracy of the planned model are assessed and relate
with the existing models and it is expected that it will produce high sensitivity as well
as specificity. It is also expected to perform well by means of precision and accuracy.
Designing a Human-centered AI-based Cognitive Learning Model for Industry 4.0 Applications
Page: 84-95 (12)
Author: Varad Vishwarupe*, Saniya Zahoor, Ravesa Akhter, Vijay P. Bhatkar, Mangesh Bedekar, Milind Pande, Prachi M. Joshi, Avinash Patil, Vishal Pawar and Neha Mandora
DOI: 10.2174/9789815179187123040008
PDF Price: $15
Abstract
The aim of this chapter is to focus on the status of data mining approaches
for e-learning and identify the gaps in them. It is seen that a predominant work has
been done in e-learning through data mining techniques such as educational
recommenders, association rules, clustering, profile-based approaches, personalization,
prediction techniques, and decision support systems. However limited work is done on
e-learning from a cognitive science perspective, which gives us the motivation to work
in this field. The proposed work aims at proposing a cognitive model for e-learning
systems using data mining for Industry 4.0 applications which shall usher in a new
datum for e-learning in cyber-physical systems.
Integrating Internet of Things (IoT), Machine Learning (ML), and the Cloud Infrastructure to Monitor Driving Behavior for Usage-based Insurance in the Indian Context
Page: 96-106 (11)
Author: Pawan S. Wawage* and Yogesh D. Deshpande
DOI: 10.2174/9789815179187123040009
PDF Price: $15
Abstract
Although Usage-Based-Insurance has a wide range of applications, it is
practically nonexistent in India. We have done research to help design a system that
combines IoT, ML, and cloud to help us overcome this problem as a next step. The
goal is to create a machine learning model for the cloud that will allow us to calculate
driver and customer safety scores based on where and how the car has been driven. We
were able to do this by evaluating information from our smartphone's sensors. Utilizing
this data and classification system, problems like Usage-Based-Insurance can
subsequently be resolved in the real world (UBI). Usage-based insurance has proven to
be efficient and appealing to both insurers and the ones insured in a wide range of
countries. The use of this method is sparse to nonexistent in India, but it is on the
horizon. As a result, there is a lot of potential for our research and suggested works on
UBI in India.
Academic Emotion Prediction in Online Learning Utilizing Deep Learning Approach
Page: 107-120 (14)
Author: Snehal Rathi*, Yogesh D. Deshpande, Pranali Chavhan and Priyanka More
DOI: 10.2174/9789815179187123040010
PDF Price: $15
Abstract
As the world is progressing more towards new technology, more and more
people are getting close to computers to perform their tasks. Computers have become
an integral part of life. In recent years, web-based education has been perceived as a
support tool for instructors as it gives the comfort of use at any time, and any place. In
this situation, recognizing the user’s engagement with the system is important to make
human-computer interaction more effective. Recognizing user engagement and
emotions can play a crucial role in several applications including advertising,
healthcare, autonomous vehicles, and e-learning. We focus on understanding the
academic emotions of students during an online learning process. Four academic
emotions namely, confusion, boredom, engagement, and frustration are considered
here. Based on the academic emotions of students, we can incrementally improve the
learning experience. In this paper, we have developed a system for identifying and
monitoring the emotions of the scholar in an online learning platform and supplying
personalized feedback to reinforce the online learning process.
To achieve this, we have extracted images from the videos of the DAiSEE dataset and
performed pre-processing steps like convert it into greyscale, detect a face from that
image using OpenCV, change the size of the image, and then save it. Then labeling of
the emotions is done and the model is trained using a convolution neural network
(CNN) on the said images. In this way, the neural network is trained and can predict
the emotion.
Implementation of Fruit Quality Management and Grading System using Image Processing and ARM7 Platform
Page: 121-131 (11)
Author: Yuvraj V. Parkale*
DOI: 10.2174/9789815179187123040011
PDF Price: $15
Abstract
Throughout the history of the industry, producers and retailers have focused
on fruit quality as a major concern. Over the past ten years, the market for high-quality
fruit has expanded quickly, raising the price of the upscale item. However, the state-of-the-art methods have some major drawbacks such as the mechanical systems are bulky,
require more manpower to operate the system, are less accurate, slow, expensive and
with more chances of human mistakes. In this paper, we have addressed these
drawbacks and proposed systems for the management of the fruit quality and grading
of fruits in different categories. These fruits can be sorted automatically depending
upon their different characteristics such as color, size, shape, weight, specific gravity,
sugar contents, and ph. In this paper, we have selected three characteristics of fruit
namely color, size, and weight for measuring the quality of fruit and grading them
accordingly. The result shows that the proposed system has successfully implemented
fruit quality management and grading. The system is automatic and results in
lightweight, simple and inexpensive hardware, increased speed of operation and
reduces manpower, and mistakes.
Internet of Things-based Smart Sensing Mechanism for Mining Applications
Page: 132-149 (18)
Author: Nilesh P. Sable*, Vijay U. Rathod, Parikshit N. Mahalle, Jayashri Bagade and Rajesh Phursule
DOI: 10.2174/9789815179187123040012
PDF Price: $15
Abstract
According to the English lexicon, mining is the extraction of coal or other
natural minerals from a mine. Extracting these natural minerals is extremely risky, and
employees' lives are at stake. Mining workers are exposed to a dangerous underground
environment that can cause harm or even death. Some of these injuries or fatalities can
be traced back to human error. However, several physical factors or reasons for such a
subterranean environment might be blamed for these mishaps. It is not easy to monitor
without endangering someone's life. Previously, companies depended on manual
processes where an individual would physically inspect the situation, make
observations, and submit a report. This technique was too hazardous since the person
monitoring a specific threat may be harmed by the same hazard. As a result, this has
been the mining industry's most serious challenge for a long time. A smart system can
detect problems and communicate information to the relevant authorities before
anything hazardous occurs due to this procedure. This smart network system uses
wireless sensors and an IoT platform. Gas, temperature, humidity, and vibration
sensors are the various types of sensors used to detect the presence of any toxic gas,
monitor the temperature, identify the amount of humidity in the air, and monitor
subsurface tremors, respectively. All of these sensors are linked together, and the data
collected by these sensors is subsequently sent to the cloud for processing. This
analysis will assist the system in understanding subsurface behavioural changes, and as
a result, it will be able to provide warnings of impending dangerous circumstances. The
Raspberry Pi and the Raspberries operating system are used for data analysis. This
smart system intends to lower the risk of accidents and infections, benefiting workers
and the company's economy.Such IoT architecture in the mining industry, which combines operational technology (OT) and information technology (IT), provides a safer mine site for workers, reliable
mining operations, a highly integrated environment for both traditional and innovative
sensors and equipment, automation that can reduce human intervention and covert
surveillance. This research aims to increase IoT adoption in the mining sector by
combining a high-level architecture, complying with all industry standards and
guidelines, and addressing the mining industry's specific challenges.
Explainable Artificial Intelligence (XAI) for IoT
Page: 150-160 (11)
Author: Prashant C. Dhas*, Parikshit N. Mahalle and Gitanjali R. Shinde
DOI: 10.2174/9789815179187123040013
PDF Price: $15
Abstract
Artificial Intelligence and Machine Learning are the latest topics across
industries. A lot of concentration has been given to these areas and still the adoption
has been challenged by users and experts in this field in the search for some kind of
solution to be provided that the output can be trusted by all. The purpose of this paper
is to focus on the sensor data coming from various IoT devices and how the data can be
interpreted by various available algorithms. The ML algorithm is considered a black
box with a focus on providing the required output without finding the causes behind the
decision and working mechanism provided by that model. In this chapter, we tried to
explain various common techniques/models available for eXplainable Artificial
Intelligence (XAI) and how those can be used for IoT data.
Explainable AI (XAI) for Agriculture
Page: 161-176 (16)
Author: Eudes Smith M. Linheiro*, Gitanjali R. Shinde, Parikshit N. Mahalle and Riddhi Mirajkar
DOI: 10.2174/9789815179187123040014
PDF Price: $15
Abstract
In most nations, agriculture is the main industry providing employment.
Agricultural activities used to be restricted to the cultivation of food and crops, but they
have expanded over time to include the processing, production, marketing, and
distribution of crops and livestock products. Agriculture related approaches or practices
must be continuously reviewed with the goal of presenting innovative approaches to
sustaining and improving agricultural activities. Currently, agricultural activities serve
as the primary source of livelihood, increasing GDP, being one of the sources of
national trade, reducing unemployment, and providing raw materials for production in
other industries.
Inadequate soil treatment, disease and pest infestation, among other issues, are only a
few of the difficulties this industry must overcome in order to maximize productivity.
There have been some difficulties with the increased use of technology in this industry,
including the need for large amounts of data, low output, and the most obvious
difficulty, the knowledge gap between farmers and technology.
When compared to earlier more conventional methods, agricultural practices, and
activities have significantly improved since technology entered the field. Technologies
like the Internet of Things (IoT) and Artificial Intelligence (AI) have been a few of the
technologies that are widely used in these sectors with projects for improving crop
production, disease prediction, continuous monitoring, efficient supply chain
management, water waste and operational efficiency just to name a few but, this of this
project will focus more on AI, more specifically on Explainable Artificial Intelligence
(ExAI or XAI).
Subject Index
Page: 177-181 (5)
Author: Parikshit N. Mahalle, Prachi M. Joshi and Gitanjali R. Shinde
DOI: 10.2174/9789815179187123040015
Introduction
This volume showcases upcoming trends and applications that are set to redefine our technological landscape. Chapters comprise referenced reviews focused on the recent research that introduces new methods and techniques for using AI in Industry 4.0, and the integration of Internet of Things (IoT) to drive new industrial processes. The contributors have discussed challenges in industry 4.0 along with the applications and the way it is shaping different industries. Key themes: AI in Communication Media: Uncover the latest research, with insights into the challenges and adoption of AI in remote processes. New AI Techniques for Industry 4.0: Learn about technologies such as blockchains and applications of machine learning, deep learning, and image processing. IoT and AI for Smart Systems: Understand IoT with a special focus on enhancing smart systems, in different industries, including agriculture and transaction processing Explorable AI: Gain a quick understanding of Explainable AI (XAI) and its role in improving the predictability and transparency of IoT applications. Whether you're a tech enthusiast, researcher, or industry professional, this book offers a glimpse into the innovative world of Industry 4.0 and its intersection with AI, IoT, big data, and cloud computing.