Data Computation: Awareness, Architecture and Applications
Page: 1-23 (23)
Author: Vani Kansal* and Sunil K. Singh
DOI: 10.2174/9789815036091122010003
PDF Price: $30
Abstract
There has been a tremendous revolution in computing technologies to handle
the vast amount of data in recent years. Big data is the large-scale complex data in
which real-time data is available and mushrooms the development of almost every
field. In recent years, the demand and requirement of big data produced an opportunity
to replace traditional data techniques due to their low efficiency and low accuracy. It
shows adequate responsiveness, absence of versatility, execution, and precision for
meeting the convolution of Big Data challenges. As an outcome, this created different
dispersions and innovations. Big data does not mean that the data is humongous but
additionally excessive in range and speed. This factor makes them tough to deal with
the usage of conventional gear and techniques. Decision-makers read the extension and
expansion of big data to understand and extract valuable information from rapidly
varying data using big data analytics. In this chapter, we can analyze big data tools and
techniques useful for big data. This chapter presents a literature survey covering
various applications and technologies that play an indispensable role in offering new
solutions dealing with large-scale, high-dimensional data. By summarizing different
available technologies in one place from 2011 to 2019, it covers highly ranked
international publications. Further, it extends in the context of computing challenges
faced by significant Data Healthcare, Clinical Research, E-Commerce, Cloud
Computing, Fog computing, Parallel Computing, Pervasive Computing,
Reconfigurable Computing, Green Computing, Embedded Computing, Blockchain,
Digital Image Processing and IoT and Computing Technology. The survey summarizes
the large-scale data computing solutions that help in directing future research in a
proper direction. This chapter shows that the popularity of data computing technology
has steeply risen in the year 2015, and before 2011, the core research was more
popular.
Different Techniques of Data Fusion in Internet of Things (IoT)
Page: 24-44 (21)
Author: Harsh Pratap Singh*, Bhaskar Singh, Rashmi Singh and Vaseem Naiyer
DOI: 10.2174/9789815036091122010004
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Abstract
An IoT (Internet of Things) technology is a dynamic area of research, which
has been growing at a remarkable rate for the last few years. The IoT is a mammoth
network of associated things and people, which accumulates and shares data about how
they are used and the environment around them. It is the discernment of connecting any
device to the internet and other associated devices. When something is associated with
the internet, it can propel or receive information, or both. This ability to propel and/or
receive information makes things smart. IoT permits businesses and people to get more
insights from the world around them and do more evocative higher-level work. Data
fusion techniques are used to extract eloquent information from dissimilar IoT data. It
ferocities dissimilar data from sensor sources to mutually find a consequence, which is
more dependable, precise, and comprehensive. This chapter briefly designates the IoT
by the characteristics of data procurement and data fusion.
Role of Artificial Intelligence in Medicine and Health Care
Page: 45-63 (19)
Author: Upasana Pandey* and Arvinda Kushwaha
DOI: 10.2174/9789815036091122010005
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Abstract
With the passing decades, Artificial Intelligence (AI) is gaining high
popularity in various domains. In this chapter, we aim to present the current scenario of
the application of AI in the field of medical science. Firstly, we will introduce the early
and basic role of AI in the medical field. We preceded the chapter with a summary of
the most current applications of AI in various areas of medicine and health care. In this
review, we have discussed the latest developments of applications of AI in biomedicine
while predicting the risk of disease. Estimating the success ratio of the therapy also
manages or reduces the severity of complications, taking care of ongoing patients,
living assistance, biomedical information processing, biomedical research, and medical
imagining. We also present a survey on AI techniques, which were used by many
authors with different objectives in medical science. Furthermore, we showcase the
effects of the usage of AI by highlighting the reduction in the rate of mortality, and fast
and accurate diagnostics which help in decreasing errors related to human fatigue and
lessening medical costs. Finally, we draw attention to some of the possible weaknesses,
apprehensions, and uncertainties in using AI in medical science. We briefly review the
efforts being made to improve the healthcare industry by offering various AI-based
healthcare products.
Threat Detection and Reporting System
Page: 64-75 (12)
Author: Devika Bihani*, Saransh Sharma and Harshit Jain
DOI: 10.2174/9789815036091122010006
PDF Price: $30
Abstract
We live in a world brimming with technology and crime. Even being in
large numbers, law enforcers lack the required presence and resources. Although there
are a lot of surveillance devices being installed in a general view of the public, most of
them require an operator to monitor them. Even if they are smart devices, they lack the
ability to cover all aspects of a situation. The proposed solution emphasizes computer
vision to develop software that leverages the widely available network of surveilling
cameras to detect criminal threats using object detection, violent activities such as
CNN, detection of a person in need of medical aid, and sending the same to ground
zero. Thus, effectively covering all 3 major aspects of a threat, namely, the crucial time
before a crime is conducted, detecting an ongoing act of violence, and finally sending
help as soon as possible to the victims in the aftermath. This would serve as an
additional eye for law enforcement and will certainly aid in reducing the response time
from authorities and mitigate most of the rising threats.
Offbeat Load Balancing Machine Learning based Algorithm for Job Scheduling
Page: 76-93 (18)
Author: Anand Singh Rajawat*, Kanishk Barhanpurkar and Romil Rawat
DOI: 10.2174/9789815036091122010007
PDF Price: $30
Abstract
In cloud computing environments, parallel processing is required for largescale computing tasks. Two different tasks are taken, and these tasks are independent of each other. These tasks are independently applied to Virtual Machines (VM). We proposed Offbeat Load Balancing (LB) Machine Learning algorithm using a task scheduling algorithm in Cloud Computing (CC) environments to reduce execution time. In this paper, the proposed algorithm is based on the concept of Random Forest Classifier and Genetic Algorithm and K-Means clustering algorithm for optimized load. The proposed algorithm shows that the average execution time of 3.5104 seconds (20 jobs, 5 Machines) and 15.85 seconds (20 jobs, 10 machines) is based on a study of load balancing algorithms that needs less execution time than other algorithms.
A Pattern Optimization for Novel Class in Multi Class Miner for Stream Data Classification
Page: 94-103 (10)
Author: Harsh Pratap Singh*, Vinay Singh, Divakar Singh and Rashmi Singh
DOI: 10.2174/9789815036091122010008
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Abstract
Stream data classification involves a predicament of new class generation
through pattern evaluation. The evaluation process of the pattern raised new ways of
data classification. The evolving decoration discrepancies dispensed the session for
rivulet data arrangement. Now, the twisted pattern fashions innovative classes for
cataloging progression. For this method of regulation, multi-class sapper method is
used. A catastrophic spread of new decorating appraisal methods for multiclass mine
workers is used nowadays. We cast off the pattern optimization performance using a
transmissible algorithm aiming at the group of patterns and their heightened process for
instructing multiclass. The enhanced pattern stables the new class while enhancing the
successful multiclass miners. For the empirical appraisal, we used health care data such
as cancer and some other deride for the evolutionary progression of the pattern
optimization process.
Artificial Intelligence in Healthcare: on the Verge of Major Shift with Opportunities and Challenges
Page: 104-117 (14)
Author: Nahid Sami* and Asfia Aziz
DOI: 10.2174/9789815036091122010009
PDF Price: $30
Abstract
In the last few decades, artificial intelligence (AI) has shown rapid growth in
medicine with the evolution of computer vision, robotics, natural language processing,
and deep neural networks. The technology has also been applied to healthcare with an
inexact thought that AI will replace the workforce. AI works as a helping hand for
human clinicians because a machine can never replace a human brain. Present
healthcare systems can implement AI technology for diagnosing patients and their
treatments, drug invention, prediction of disease outbreaks, real-time monitoring of
critical patients, radiology, and many more. The latest achievements by Google for the
diagnosis of cancer, and diabetic retinopathy by JAMA using deep learning algorithms
and surgical robots show substantial shifts in medicine. A simple assessment of
electronic health records (EHR) provides more opportunities for the medical experts
during the invention and application of improving medicines. The coming future of
health care depends on the advancement of AI. However, with ease comes difficulty,
such as the privacy of data and causality problems which should be considered when
deploying such strategies.
A Review on Automatic Plant Species Recognition System by Leaf Image Using Machine Learning in Indian Ecological System
Page: 118-141 (24)
Author: Sugandha Chakraverti, Ashish Kumar Chakraverti*, Jyoti Kumar, Piyush Bhushan Singh and Rakesh Ranjan
DOI: 10.2174/9789815036091122010010
PDF Price: $30
Abstract
India is the land of agriculture with many varieties of plant species. These
species have different uses in the medical, food, and harvesting industries. Despite
having such a large collection of plants and agricultural assets, most of the Indian
population is not aware of the goodness and properties of these precious plants except
the usual ones. In this chapter, discussion and possibilities in this area are given and
explored for the awareness of Indian people regarding the Indian plants. In this area,
artificial intelligence and machine learning will likely develop an automated detecting
machine that can classify and describe the plants by their images of leaves, bark,
flowers, and stems. Looking forward in this direction, this chapter discusses an AI and
ML based technique to recognize vegetation by the image of its leaves. In this
approach, SIFT and ORB-based technique removes leaf image features and then tests
the data set to match with a trained data set. The system is trained with 32 plant leaves.
Henceforth, this system can recognize these plants by the image of their leaves. The
uniqueness of this system is its data set. In the data set, the image of the leaf is prepared
so that both sides of a leaf can be used to recognize the plant. This increase
distinguishes the image irrespective of its color and shape. The system is still in an
evolving phase that has the target of including all rare and useful plant information in
this dataset. This system is very useful to preserve the information of all users, rare
plants and those plants that are about to be extinct.
Recognizing Rice Leaves Disorders by Applying Deep Learning
Page: 142-152 (11)
Author: Taranjeet Singh*, Krishna Kumar, S. S. Bedi and Harshit Bhadwaj
DOI: 10.2174/9789815036091122010011
PDF Price: $30
Abstract
Rice is one of the staple crops in the world, as it is a rich source of protein,
minerals, fibre, and vitamins. It is cultivated almost in every part of the world, but its
productivity decreases due to several diseases. If these diseases are identified at the
initial stages, then preventive measures can be taken, but their symptoms are quite
similar for human eyes to recognize them correctly. Therefore, there is an immense
need to apply automated techniques for recognizing rice diseases. Various Artificial
Intelligence (AI) based prototypes have been surveyed in this chapter. These
techniques were proposed by researchers for diagnosing rice disease. Here, our main
goal is to present ideas on how Pretrained Neural Networks can be used in the
recognition of rice diseases. Therefore, a brief description of AI techniques and their
comparison is also outlined.
Shallow Cloud Classification using Deep Learning and Image Segmentation
Page: 153-174 (22)
Author: Amreen Ahmad*, Chanchal Kumar, Ajay Kumar Yadav and Agnik Guha
DOI: 10.2174/9789815036091122010012
PDF Price: $30
Abstract
Shallow clouds play a significant role in the earth’s radiation balance, but
they’re still poorly represented in climatic models. Our project analyzes the cloud
images taken from satellites and attempts to build a deep learning model to classify
cloud patterns. This will help us to identify the cloud formations and help improve the
earth’s climate understanding. We will use various deep learning and image
segmentation techniques like UNet to produce a model which can classify the shallow
layers of clouds into various labels (fish, flower, gravel, and sugar). Various data
augmentation techniques are implemented to improve the proposed model.
Additionally, transfer learning is implemented by using ResNet backbones to improve
the performance of the segmentation model. This will help gain insights into the matter
of shallow cloud effects on the earth’s climate, there by helping in the development of
next-gen climate models without having to go through the tedious task of classifying
the clouds present in the images first.
Artificial Intelligence Based Lung Disease Classification By Using Evolutionary Deep Learning Paradigm
Page: 175-183 (9)
Author: Archana P. Kale*, Ankita R. Angre and Dhanashree V. Paranjape
DOI: 10.2174/9789815036091122010013
PDF Price: $30
Abstract
Pattern classification is also called pattern reorganization. The classification
of pattern is one of the critical problems in Artificial Intelligence. COVID-19 is the
most viral lung disease that has put the whole world in such a difficult situation that it
has become necessary to develop a machine-learning algorithm to classify lung disease.
This research paper is ready to propose Artificial Intelligence Intelligence-based Lung
Disease Classification by using an Evolutionary Deep Learning Paradigm to solve the
said problem. It delineates an integrated bioinformatics approach in which different
aspects of information from a continuum of structured and unstructured data sources
are put together to form user-friendly platforms for physicians and researchers. The
main objective of the proposed system is to find the probability, diagnosis, and
treatment of the COVID-19 disease. Artificial Neural Network-based tool for
challenges is associated with COVID-19. There is some specification of our platform
as it includes various forms of input data containing medical as well as clinical data.
This helps in improving the performance of the system. Experimental results are
calculated and statistically analyzed. For benchmarking, the performance of the
proposed approach is compared and statistically analyzed.
Hybrid Deep Learning Model for Sleep Disorders Detection
Page: 184-199 (16)
Author: Anand Singh Rajawat*, Kanishk Barhanpurkar and Romil Rawat
DOI: 10.2174/9789815036091122010014
PDF Price: $30
Abstract
The polysomnography test (sleep study) is used to diagnose several sleeping
disorders. Sleep study is used to detect sleep disorders such as Insomnia, REM Sleep
Behavior, Insomnia, Restless Leg Movement Syndrome, and Sleep Apnea. It measures
different parameters such as heart rate, level of oxygen in your blood, body position,
brain waves (EEG), breathing rate, eye movement, and electrical activities of muscles.
In the world, 700 million people suffer from sleeping disorders. A wide range of
sensors was attached to the body of the patient to measure the value of different
parameters. However, in 2020, due to the exponential spread of COVID-19 coronavirus
disease, the sleep study centers were closed, and it was very difficult to perform sleep
studies on patients. Therefore, we developed a hybrid model based on deep learning
techniques like Convolutional Neural Network (CNN) and Deep Belief Network
(DBN) architectures. Numerous cameras were mounted in rooms at certain angles,
which provide live surveillance data and record a patient’s movements after a short
periodic interval of time. This research paper concludes that non-contact-based hybrid
models are highly accurate in detecting sleep disorders based on polysomnography
tests.
Identification of Covid-19 Positive Cases Using Deep Learning Model and CT Scan Images
Page: 200-212 (13)
Author: I. Kumar*, S.P Singh, Shivam, N. Mohd and J. Rawat
DOI: 10.2174/9789815036091122010015
PDF Price: $30
Abstract
Today, the coronavirus has widely affected the entire world. In late 2019, a
virus with the pandemic potential was reported in the city of Wuhan, situated on the
mainland of China. In no time, the virus had spread all over the world, multiplying
from person to person. Undoubtedly, COVID-19 has become an important research
topic, and many research works are coming forward daily. Thus, COVID-19 patient’s
detection has become the most personified research for the researchers. CT scanning
has been an important and widely used approach for detecting COVID-19 patients. In
this work, the identification of COVID-19 patients is performed using two different
deep neural network methods. For the image accession, the dataset having 746 samples
was used. The entire dataset has been bifurcated into two different classes, i.e.,
COVID-19 and non-COVID-19. COVID-19 class contains samples of the COVID-19
positive cases, whereas the non-COVID-19 class contains the sample of COVID-19
negative cases. In total, 506 images are used for training purposes, whereas 240 images
are used for validation. The identification is performed using MobileNet-V2 and
Modified LeNet5 convolutional neural network (CNN) models having a fixed number
of convolutional and fully connected layers. The term modified is added before the
LeNet architecture because an extra convolutional layer was created for the experiment.
As per the details and requirements, the architecture for Modified LeNet was designed,
whereas, for the MobileNet-V2, it is imported from predefined libraries and is used
further as per the author’s need. After the successful completion of the experiment, it
has been found that the accuracy of MobileNet-V2 and Modified LeNet5 came out to
85.86%, and 84.38%, respectively.
Application of Nature Inspired Algorithms to Test Data Generation/Selection/Minimization using Mutation Testing
Page: 213-249 (37)
Author: Nishtha Jatana* and Bharti Suri
DOI: 10.2174/9789815036091122010016
PDF Price: $30
Abstract
This chapter builds the foundation of software testing techniques by
classifying the various testing approaches and testing coverage criteria. It gradually
advances in the concepts and process of Mutation Testing and its application areas.
Mutation testing has been applied at both the source code level and specification level
of the software under test. Mutation testing, when applied to the source code, is named
as Program Mutation. Similarly, when applied to the specifications, it is named as
Specification Mutation. The relevant Mutation Testing tools available for different
programming languages for both program and Specification Mutations are hereby
listed. Owing to the high cost incurred in applying Mutation Testing to industrial needs,
the on-going endeavors of the researchers in the area are elaborated here. Applying
nature-inspired algorithms along with Mutation Testing for data
generation/selection/minimization is an upcoming area of research. Search based
Mutation Testing (SBMT) applies evolutionary techniques like Genetic Algorithms or
other metaheuristic approaches for automating the tasks associated with mutation
testing, which otherwise requires a lot of human effort, thus, making it a practical
approach. This chapter concludes by giving the seminal recent advancements in the
area.
Multimodal Genetic Optimized Feature Selection for Online Sequential Extreme Learning Machine
Page: 250-260 (11)
Author: Archana P. Kale*, Shefali P. Sonavane, Shashwati P. Kale and Aditi R. Wade
DOI: 10.2174/9789815036091122010017
PDF Price: $30
Abstract
Extreme learning machine (ELM) is a rapid classifier evolved for batch
learning mode unsuitable for sequential input. Retrieving data from the new inventory
leads to a time-extended process. Therefore, online sequential extreme learning
machine (OSELM) algorithms were proposed by Liang et al.. The OSELM is able to
handle the sequential input by reading data 1 by 1 or chunk by chunk mode. The
overall system generalization performance may devalue because of the amalgamation
of the random initialization of OS-ELM and the presence of redundant and irrelevant
features. To resolve the said problem, this paper proposes a correspondence multimodal
genetic optimized feature selection paradigm for sequential input (MG-OSELM) for
radial basis function by using clinical datasets. For performance comparison, the
proposed paradigm is implemented and evaluated for ELM, multimodal genetic
optimized for ELM classifier (MG-ELM), OS-ELM, MG-OSELM. Experimental
results are calculated and analysed accordingly. The comparative results analysis
illustrates that MG-ELM provides 10.94% improved accuracy with 43.25% features
compared to ELM.
A New Non-Stigmergic-Ant Algorithm to Make Load Balancing Resilient in Big Data Processing for Enterprises
Page: 261-296 (36)
Author: Samia Chehbi Gamoura*
DOI: 10.2174/9789815036091122010018
PDF Price: $30
Abstract
Due to the continuous evolution of the Big Data phenomenon, data processing in Business Big Data Analytics (BBDA) needs new advanced load balancing techniques. This chapter proposes a new algorithm based on a nonstigmergic approach to address these concerns. The algorithm imitates a specific species of ants that communicate by the acoustics in situations of threats. Besides, the research methodology in this study presents a methodic filtration of the relevant metrics before carrying out the benchmarking trials of several ant-colony algorithms (i.e., makespan, response time, throughput, memory and CPU utilization, etc.). The experimentations' outcomes show the effectiveness of the proposed approach that might empower the research efforts in big data analytics, business intelligence, and intelligent autonomous software agents. The main objective of this research is to contribute to reinforcing the resilience of the Big Data processing environment for enterprises.
Computational Algorithms and Study of Elastic Artery and their Applications
Page: 297-319 (23)
Author: Anil Kumar*
DOI: 10.2174/9789815036091122010019
PDF Price: $30
Abstract
The concept of computational algorithmic and sustainable elastic artery
evaluation and its impact on different variables such as structural and morphological
variations and its applications are explored in this chapter. The Crank-Nicolson
approach has solved the mathematical goal of the equation. The result is explained in
the case of blood supply in elastic vessels while the electromagnetic effect is
established. In this computational analysis, the discrepancy between the arteries and
veins attached to the elastic arteries in the blood vessel is easier than determining the
presence or absence of the elastic layer within the vessel. The obtained results in the
analysis are in relatively accurate compliance with the computational findings in this
chapter. The findings may be applicable to cases of pulmonary edema, etc.
Performance Analysis of CCS on Inclined Plane using Fuzzy-PID Controller
Page: 320-350 (31)
Author: Saty Prakash Yadav* and Amit Kumar Singh
DOI: 10.2174/9789815036091122010020
PDF Price: $30
Abstract
Nowadays, in the automation industries, the Cruise Control System (CCS) is
one of the essential aspects, and it is necessary to have a well-designed controller that
can suit a new improvement in innovation. The CCS is a very famous and important
model in control system engineering. The fundamental objective of CCS is to regulate
vehicle speed depending upon the chosen speed. The CCS is an example of a close
loop control system. Speedometer is utilized in the feedback path for measurement of
the speed. This is a simple model used to solve the many problems of drivers like road
accidents, weariness, etc. In this paper, we analyze the performance of different
controllers such as Proportional-Integral-Derivative (PID) controller, the fuzzy logic
controller (FLC) and the fuzzy-PID (F-PID) controller in the different situations on the
road, such as friction, road grad, or angle of inclination to attain the chosen speed of the
vehicles. The tuning of PID parameters is done using the method of Ziegler-Nichols,
and FLC uses the gaussian Membership Function (MF) in this paper. The MF is a
graph that lies between zero and one. It indicates the mapping of every point in the
input state and the values of MF. The mathematical model of this system is considers
the road grad and the friction. Finally, in this paper, we see the response of models with
and without a controller in different situations on the road.
Subject Index
Page: 351-364 (14)
Author: Rijwan Khan, Pawan Kumar Sharma, Sugam Sharma and Santosh Kumar
DOI: 10.2174/9789815036091122010021
Introduction
This book informs the reader about applications of Artificial Intelligence (AI) and nature-inspired algorithms in different situations. Each chapter in this book is written by topic experts on AI, nature-inspired algorithms and data science. The basic concepts relevant to these topics are explained, including evolutionary computing (EC), artificial neural networks (ANN), swarm intelligence (SI), and fuzzy systems (FS). Additionally, the book also covers optimization algorithms for data analysis. The contents include algorithms that can be used in systems designed for plant science research, load balancing, environmental analysis and healthcare. The goal of the book is to equip the reader - students and data analysts - with the information needed to apply basic AI algorithms to resolve actual problems encountered in a professional environment.