Book Volume 5
A Comprehensive Study and Analysis on Prediction of Rainfall Across Multiple Countries using Machine Learning
Page: 1-27 (27)
Author: C. Kishor Kumar Reddy*, P.R. Anisha and Nguyen Gia Nhu
DOI: 10.2174/9789815079005123050003
PDF Price: $15
Abstract
Rainfall is one of the most considerable natural occurrences, which is
important for both human beings and living beings. Since the environment is changing
and there is a huge change in weather, it is noted that the rainfall cycles are also
varying and the earth’s temperature is increasing day-by-day. The changes in weather
conditions like humidity, pressure, wind speed, dew point and temperature affect the
agriculture, industry, production, and construction and also lead to floods and land-slides. Hence it is one of the important factors to be noted for human beings to keep
track of the natural occurrences in order to survive. In order to overcome these issues, a
system is required which is able to forecast and predict the rainfall using statistical
techniques which is the most popular tool in modern technology. This paper provides a
detailed survey and comparative analysis of various methodologies used in the
prediction of rainfall over multiple countries. Comparison is made in terms of various
performance measures: accuracy, precision, recall, RMSE, specificity, sensitivity,
MAE, F-Measure, ROC and RAE. Further, the drawbacks with existing approaches
applied so far in the prediction are discussed.
A Novel Approach for Clustering Large-scale Cloud Data using Computational Mechanism
Page: 28-39 (12)
Author: Zdzislaw Polkowski, Jyoti Prakash Mishra and Sambit Kumar Mishra*
DOI: 10.2174/9789815079005123050004
PDF Price: $15
Abstract
In the present situation, with the enhancement of virtualization techniques, it
is very essential to keep track of accumulated large-scaled heterogeneous data in every
respect. In addition to that, it is also necessary to prioritize the processing mechanisms
when being linked with clustered data. Sometimes it has been observed that the large
scaled datasets are too complex and therefore, the normal computation mechanisms are
not sufficient or adequate for the specific applications. But it is highly required to
observe the significance of each individual dataset and focus on the responses being
accumulated from other aspects to make a suitable decision and generation of efficient
analytical clustered data. The main aim of such applications is to apply the clustering
gaining merits from evolutionary computation to process the large-scaled data and
based on optimality, the performance of datasets can be measured.
Secure Communication Over In-Vehicle Network Using Message Authentication
Page: 40-72 (33)
Author: Manjunath Managuli*, Sudha Slake, Pankaja S. Kadalgi and Gouri C. Khadabadi
DOI: 10.2174/9789815079005123050005
PDF Price: $15
Abstract
This chapter describes the initial working plan and the project carried out,
along with their respective analyses. The project focused on implementing a
cryptographic solution in the embedded system to ensure the authentication and
integrity of CAN messages. With the rise of the autonomous driving concept in the
automotive industry, there is a growing need for digital data processing and
communication both within the vehicle and with the external world, creating a
significant challenge to protect the data from cyber-attacks during communication.
Hence, cybersecurity has become an important topic in the automotive industry. This
project was carried out to ensure the security of data during communication on the
vehicle Controller Area Network (CAN) using message authentication. The chapter
concludes by highlighting the current technology's drawbacks and discussing potential
future improvements.
A Decision Model for Reliability Analysis of Agricultural Sensor Data for Smart Irrigation 4.0
Page: 73-89 (17)
Author: Subhash Mondal, Samrat Podder and Diganta Sengupta*
DOI: 10.2174/9789815079005123050006
PDF Price: $15
Abstract
Agriculture is the backbone of an Agro-based Country's Economic System
as it employs the majority of the population. Internet-of-Things (IoT)-based intelligent
systems help reduce losses and make efficient use of available resources. This paper
aims to detect anomaly conditions that might occur in sensor nodes related to day-t-
-day smart irrigational activities in an agricultural field. IoT-based irrigation systems
being prone to unauthorized intrusion can cause damage to smart farms in terms of
crop damage and infertility of the soil. In this paper, we propose an intelligent
decision-making system that can identify Anomalous Conditions and Suspicious
Activities. The model discussed in this paper uses the idea of Gaussian distribution,
which calculates the expected probability of a given state of an agricultural field and
classifies anomalies based on what previous probabilities of an anomaly state looked
like. The approach classifies the anomalies with an accuracy of 80.79%, a precision of
0.81, and a recall of 0.54 under test conditions.
Machine Learning based Smart Electricity Monitoring & Fault Detection for Smart City 4.0 Ecosystem
Page: 90-102 (13)
Author: Subhash Mondal, Suharta Banerjee, Sugata Ghosh, Adrija Dasgupta and Diganta Sengupta*
DOI: 10.2174/9789815079005123050007
PDF Price: $15
Abstract
Growing electricity needs among the vast majority of the population
seconded by a voluminous increase in electrical appliances have led to a huge surge in
electric power demands. With thediminishing unit price of electric meters and increase
of loading, it has been observed that a certain amount of electric meters generate faulty
readings after exhaustive usage. This results in erroneous meter readings thereby
affecting the billings. We propose a fault detecting learning algorithm that is trained by
early meter readings and compares the actual meter reading (AMR) with the predicted
meter reading (PMR). The decision matrix generates an alarm if |PMR-AMR|>T;
where T equals the threshold limit. T itself is decided by the learning algorithm
depending upon the meter variance. Moreover, our system also detects if there is any
power theft as such an action would result in a sudden rise in AMR. The learning
algorithm deploys six binary classifiers which reflect an accuracy of 98.24% for the
detection module and an error rate of 1.26% for the prediction module.
Investigating the Effectiveness of Mobile Learning in Higher Education
Page: 103-122 (20)
Author: V. Kalaiarasi*, D. Alamelu and N. Venugopal
DOI: 10.2174/9789815079005123050008
PDF Price: $15
Abstract
Technology is a fundamental part of the teaching-learning process which has
brought plenty of benefits during the pandemic situation. Covid 19 has adversely
affected the education system throughout the world. Due to this abrupt change, mobile
learning has occupied a dominant place in helping students to handle this unavoidable
crisis. The studies focused on online learning, e-learning and also m-learning.
However, this study focuses on the effectiveness of m-learning by understanding the
satisfaction and intention of the students towards m-learning. Mixed research method
approach is used in this study. Structural Equation Modelling (SEM) is used to validate
the proposed model. The findings revealed that the majority of the students are satisfied
with m-learning. However, there are also some students who express dissatisfaction
with learning practical courses through mobile phones, citing insufficient support from
their parents and the institution. Additionally, the satisfaction and intention of students
play a crucial role in determining the effectiveness of mobile learning (m-learning).
The study presents a comprehensive framework for understanding, explaining, and
predicting the factors that influence the effectiveness of mobile learning (m-learning)
among higher education students. The study also supports the practitioners and
educators with useful guidelines for designing a successful m-learning system,
particularly in higher education. This will also enable government to frame its the
digitized policies appropriately.
Socio-Economy of Coastal Fishing Community of Southern Coast of Odisha: A Case Study
Page: 123-148 (26)
Author: T. Padmavati*
DOI: 10.2174/9789815079005123050009
PDF Price: $15
Abstract
Many of the country's most important essential zones and urban regions are
found on the outskirts of the coastal zone. The activity or processes of socio-economic
growth among coastal areas on the usage of coastal resources are essential for
understanding the socio-economic state of a region and its long-term management.
Sustainable development shows two great notions for the protection of natural
resources: (i) environmental protection and (ii) economic development. Development
activities are allowed as long as they do not compromise people's quality of life or the
viability of the natural systems on which development is based, according to the above
two notions. Advanced scientific and technological knowledge is now helping to
improve and prevent the unsustainable exploitation of natural resources along the
Indian coast. River floods, cyclones, depressions, and, most crucially, coastal erosions
are common occurrences in the studied region. This effect can potentially change the
socio-economic situations of coastal residents and society. As a result of this
background, the author decided to quickly analyze socio-economic conditions and look
at the current state and impacts on the study area's socio-economic conditions.
Information on the above parameters was gathered to get insight into the research area's
socio-economic profile. The current project involves conducting a socio-economic
survey on Orissa's southern coast.
Filtering Techniques for Removing Noise From ECG Signals
Page: 149-171 (23)
Author: K. Manimekalai* and A. Kavitha
DOI: 10.2174/9789815079005123050010
PDF Price: $15
Abstract
Electrocardiogram (ECG) records cardiac electrical signal to check for
various heart problems. However, it can be impaired by noise. Therefore, ECG signal
denoising is a significant pre-processing step that reduces noise and emphasizes the
characteristic waves in the ECG data. The frequency range of a simple ECG is usually
between 0.5 Hz and 100 Hz. When processing the ECG signal, artifact elimination is
the most important resource since artifacts in ECG signal impede the diagnosis of
disorders. This work uses MATLAB to reduce noise by applying low pass, high pass,
and derivative pass filters. On the PTB database, the performance of these approaches
is compared using benchmark measures such as mean-square error (MSE) and signal-to-noise ratio (SNR) to compare various ECG denoising algorithms. The combination
of low pass + high pass + derivative pass filters produces low mean-square error (MSE)
and signal-to-noise ratio (SNR) values of 0.052 db and 1.185 db when compared to the
raw signal.
Deep Learning Techniques for Biomedical Research and Significant Gene Identification using Next Generation Sequencing (NGS) Data: - A Review
Page: 172-216 (45)
Author: Debasish Swapnesh Kumar Nayak*, Jayashankar Das and Tripti Swarnkar
DOI: 10.2174/9789815079005123050011
PDF Price: $15
Abstract
In the biomedical research areas of whole genome sequence (WGS) analysis,
disease diagnosis, and medication discovery, Next Generation Sequencing (NGS) data
are the most recent and popular trend. The use of NGS data has improved the analysis
of infectious diseases, WGS, illness identification, and medication discovery. Although
the amount of NGS data is massive, researchers have worked and are continuously
working to improve its quality and precision. Modern computational techniques
increase the biological value of NGS data processing, making it more accessible to
biomedical researchers. Although the complexity of NGS and the required
computational power to analyse the data pose a significant threat to researchers, the
introduction of various branches of Artificial Intelligence (AI) such as Machine
Learning (ML) and Deep Learning (DL) has given analysis, prediction, and diagnosis a
new direction. Deep Learning's potential has been demonstrated in a variety of fields,
including biomedical research, where it has outperformed traditional methods. The
development of deep learning algorithms aids in the analysis of complicated datasets
such as NGS by giving a variety of advanced computational methodologies. Different
DL approaches are designed to manage enormous datasets and multiple jobs, and the
genetic research business could be the next industry to benefit from DL. This paper
discusses a variety of DL methods and tools for analysing NGS data in the fields of
contagious diseases, WGS analysis, disease diagnosis, and drug design.
Breast Cancer Detection Using Machine Learning Concepts
Page: 217-238 (22)
Author: Fahmina Taranum* and K. Sridevi
DOI: 10.2174/9789815079005123050012
PDF Price: $15
Abstract
Machine learning is applied in medical diagnosis to do early prediction of
diseases, for increasing the possibility of recoverability around the globe. Cancer is a
disease, which spreads quickly and would be difficult to control in advanced stages.
The idea is to diagnose the disease at an early stage, so as to increase the chances of
fast recovery. Breast cancer is common in women, and is a disease that causes the
death of women in the age of fifty years or older. The purpose is to apply machine
learning concepts to do early detection of disease. The system is fed with the images of
all stages of cancer patients and the classification tools are used to train the system with
the cases. This helps to predict the stage of cancer. After the prediction of the stage, the
patient is prescribed with the medication or other appropriate treatment processes by
the doctor. The right time diagnoses help to improve the prognosis and increase the
chances of survival. The type of the tumour, size and its re-occurring nature need to be
monitored from time to time to check it in control. The Data Mining algorithm in
collaboration with Deep learning or Machine learning concepts can be used to design a
system for early predictions. The proposal is to use the machine learning concepts to do
performance comparison using different classifiers, such as Support Vector Machine
(SVM), Decision Tree and K-Nearest Neighbour (KNN) on the Wisconsin Diagnostic
Breast Cancer (WDBC) dataset [1]. The main aim of cancer detection is to classify
tumours into malignant or benign, thus we use machine learning techniques to improve
the accuracy of diagnosis.
The main objective is to assess the efficiency, effectiveness and correctness of the
algorithm using performance metrics like Accuracy, Precision, F1 score and Recall
Experimentation is done using Jupyter Notebook.
Introduction
Data Science and Interdisciplinary Research: Recent Trends and Applications is a compelling edited volume that offers a comprehensive exploration of the latest advancements in data science and interdisciplinary research. Through a collection of 10 insightful chapters, this book showcases diverse models of machine learning, communications, signal processing, and data analysis, illustrating their relevance in various fields. Key Themes: Advanced Rainfall Prediction: Presents a machine learning model designed to tackle the challenging task of predicting rainfall across multiple countries, showcasing its potential to enhance weather forecasting. Efficient Cloud Data Clustering: Explains a novel computational approach for clustering large-scale cloud data, addressing the scalability of cloud computing and data analysis. Secure In-Vehicle Communication: Explores the critical topic of secure communication in in-vehicle networks, emphasizing message authentication and data integrity. Smart Irrigation 4.0: Details a decision model designed for smart irrigation, integrating agricultural sensor data reliability analysis to optimize water usage in precision agriculture. Smart Electricity Monitoring: Highlights machine learning-based smart electricity monitoring and fault detection systems, contributing to the development of smart cities. Enhanced Learning Environments: Investigates the effectiveness of mobile learning in higher education, shedding light on the role of technology in shaping modern learning environments. Coastal Socio-Economy Study: Presents a case study on the socio-economic conditions of coastal fishing communities, offering insights into the livelihoods and challenges they face. Signal Noise Removal: Shows filtering techniques for removing noise from ECG signals, enhancing the accuracy of medical data analysis and diagnosis. Deep Learning in Biomedical Research: Explores deep learning techniques for biomedical research, particularly in the realm of gene identification using Next Generation Sequencing (NGS) data. Medical Diagnosis through Machine Learning: Concludes with a chapter on breast cancer detection using machine learning concepts, demonstrating the potential of AI-driven diagnostics. This volume bridges the gap between data science and interdisciplinary research, making it a valuable resource for researchers, academics, and professionals seeking to leverage cutting-edge technologies for transformative applications.