Book Volume 3
Preface
Page: i-v (5)
Author: S. Kannadhasan, R. Nagarajan, Alagar Karthick, K. K. Saravanan and Kaushik Pal
DOI: 10.2174/9789815196269124030001
A Fuzzy Based High-Performance DecisionMaking Model for Signal Detection in Smart Antenna Through Preference Leveled Evaluation Functions
Page: 1-19 (19)
Author: Seema Khanum, M. Gunasekaran, Rajiga S. V. and Firos A.*
DOI: 10.2174/9789815196269124030003
PDF Price: $15
Abstract
In a densely populated area with many users, adding a new wireless access
point may not necessarily improve Wi-Fi performance. There are times when students
must deal with poor download rates even with Access Points (AP) in every classroom.
Cochannel interference is the root cause of several typical Wi-Fi issues. A discussion
may be compared to Wi-Fi communication. The capacity to communicate and listen
properly are both essential for effective communication. When two speakers are
speaking in a similar tone, the conversational uncertainty is exacerbated. Wi-Fi
broadcasts are the same way. The interference and drag performance might be
worsened by two or more nearby APs using the same channel. This study suggests a
smart antenna technology. When a smart antenna AP finds a nearby AP signal, it will
automatically alter its pattern to minimise interference and provide quick and reliable
transmission. The same principle applies when we cup our hands over our lips or ears
to enable us to yell or listen more clearly. There are a lot of false positives in the typical
approaches for WLAN node signal recognition. The optimal signal for a WLAN node
is therefore identified using this study's proposed BPNN model, which uses the
PFMDMM system for signal classification. This Decision-Making Model Using
Parameterized Fuzzy Measures has been shown via experiments. A WLAN node's
optimal signal may be more accurately predicted using a decision-making model based
on preference-leveled evaluation functions. The precision of the signal identification
and the anticipated findings were found to be almost identical to those obtained from
real ground measurements. The test team mimicked cochannel interference, which
would occur in a setting with plenty of APs, such as a workplace, hotel, or airport. The
suggested smart antenna AP regularly outperformed other apps by an average of 75%
greater coverage and unmatched performance.
Multimodal Biometric Authentication Using Watermarking
Page: 20-34 (15)
Author: Shargunam S.*, Mallika Pandeeswari R., Ravi R., Praywin Samson E., Samuel M. and Preethi Sharon
DOI: 10.2174/9789815196269124030004
PDF Price: $15
Abstract
The primary goal of this study is to provide a robust validation for biometric
systems. When compared to unimodal biometrics, which use just one biometric feature,
such as a unique finger print, facial feature, or palm print, multimodal validation
provides a higher level of confirmation. In this paper, we use an individual's distinctive
fingerprint as a watermark that is installed in the desired locations of the facial image
of that individual that is captured with the aid of using a camera. This is accomplished
by using a technique known as the Discrete Wavelet Transform (DWT). Between
unwatermarked and watermarked face images, there is a significant serious level of
visual relationship. Peak Signal-to-Noise Ratio (PSNR) and Mean Squared Error
(MSE) procedures have been compared to and evaluated by the proposed watermarking
strategy.
Underwater AUV Localization with Optimal Cardinal Selection Using Dynamic Positioning Parameters
Page: 35-49 (15)
Author: Prashanth N. A. and Prasanth Venkatareddy*
DOI: 10.2174/9789815196269124030005
PDF Price: $15
Abstract
Today, underwater communication has become a hot issue in research on
both undersea and deep-sea navigation, as well as in autonomous underwater vehicle
management, and acoustic communication has been accounted for due to its flexibility
and lower degree of attenuation. However, owing to influencing elements such as
channel time changing circumstances, bandwidth measurements, longer propagations
delay and the greatest degree of Doppler spread, pressure conditions, and salinity level,
establishing acoustic communication in real-time is much more difficult.
With a new monitoring era of global physical entities, a new agent-based multipath
routing protocol has been proposed in this work including underwater sensor nodes and
underwater gateways with an autonomous underwater vehicle (AUV). The clustering
head in the impacted region of sensor nodes will gather and aggregate data using
mobile agent-initiated routing algorithms for identifying numerous pathways, as well as
parameters including hope counting, delay propagation, nodal energy, and channel
quality. In this paper, an agent-based dynamic AUV traversal method is developed for
increasing the network's dependability and connection while reorienting the AUV's
movement direction.
Detection of COVID-19 Pandemic Face Mask Using ConvNet in Busy Environments
Page: 50-66 (17)
Author: Veluchamy S., Rajeesh Kumar N.V., Srinivasan P., Nandhakumar A.* and K. G. Parthiban
DOI: 10.2174/9789815196269124030006
PDF Price: $15
Abstract
The number of people using face masks has increased on public
transportation, retail outlets, and at the workplace. All municipal entrances,
workplaces, malls, schools, and hospital gates must have temperature and mask checks
in order for people to enter. The paper's goal is to find someone who isn't wearing a
face mask in order to control COVID-19. ConvNets may be used to recognize and
classify images. The model depends on ConvNot to assess whether or not someone is
wearing a mask. It is possible to identify an image's face by utilizing a face
identification algorithm. These faces are then processed using Conv Net face mask
detection. If the model is able to extract patterns and characteristics from photographs,
it will be categorized as either “Mask” or “No Mask”. With an accuracy rate of 99.85
percent, Mobile Net V2 is the most accurate in regard to training data. MobilenetV2
correctly identifies the mask in “Mask” or “No Mask” video transmissions.
Wireless Ph Sensor Employing Zigbee 3.0 Protocol
Page: 67-77 (11)
Author: Jacob Abraham and S. Kannadhasan*
DOI: 10.2174/9789815196269124030007
PDF Price: $15
Abstract
PH plays an important role in determining product quality in industries like
various chemical, petrochemical, petroleum refineries, fertilizer, pharmaceutical, food
industries, effluent treatment, and in many other organic and inorganic plants. For
instance, in any industrial wastewater treatment plant, PH is monitored and controlled
by manipulating the acid or base stream which is a strong acid or strong base. Modern
treatment plant involves physical and chemical precipitation/flocculation along with
biological treatment in aerators/trickle filters, membranes, etc, where the control of PH
is the key factor for efficient treatment. In chemistry, PH is ameasure of the acidity or
basicity of an aqueous solution. Pure water is said to be neutral, with a PH close to 7.0
at 25 degree Celsius. Solutions with a PH less than 7 are said to be acidic and solutions
with a PH greater than 7 are basic or alkaline. PHmeasurements are important in
medicine, biology, chemistry, agriculture, forestry, etc. By PH control we mean to
maintain the PH value during continuous operation at a specific desired value through
manipulating the alkaline flow rate. Usually in most industrial applications, the desired
value is chosen to be around 7. This is the safest value for portable water, utility water
used in industry, or waste disposing water.
Identification OF Differential Pattern in ADES AL: Initiation
Page: 78-92 (15)
Author: Harishchander Anandaram*
DOI: 10.2174/9789815196269124030008
PDF Price: $15
Abstract
Aedes albopictus is considered the primary threatening vector affecting
public health. The process of identifying the specific transcripts for enhancing the
growth factor in Aedes albopictus is the initiation towards the development of a
therapeutic marker. It implicates the identification of a particular antagonist. The
approach was a reference-based analysis of the whole transcriptome to reveal the
differentially expressed pattern of transcripts. Further research requires the
mathematical modeling of gene regulation and differential expression.
Comparative Modelling and Binding Compatibility of Bi-Functional Proteins in Microcystis aeruginosa
Page: 93-102 (10)
Author: Harishchander Anandaram*
DOI: 10.2174/9789815196269124030009
PDF Price: $15
Abstract
The objective of the study was to identify a potential inhibitor for
Bifunctional Protein in Microcystisaeruginosa. The in silico modeling of the protein
using the “TBM” module of “Galaxy Seok Lab” extended the execution of virtual
screening using MTi open screen. Finally, the protein-ligand interaction was studied
using LIGPLOT software for “Bifunctional Protein” in “Microcystis aeruginosa.” The
virtual screening revealed 7176 compounds from the drug library, and the “best fit”
screening resulted in 1500 compounds. Among the 1500 compounds, the molecule
MK-3207 showed a better affinity towards the bifunctional Protein with -11.3Kcal/mol
binding energy.
Economic Consideration of an Off-Grid Hybrid Power Generation System using Renewable Energy Technologies: Case Study of an Institutional Area in the State of Rajasthan
Page: 103-117 (15)
Author: Devendra Kumar Doda*
DOI: 10.2174/9789815196269124030010
PDF Price: $15
Abstract
The focal point of this study is to recreate and plan a hybrid system
consisting of a solar photovoltaic, a battery and a diesel generator and optimize the
configuration into an off-grid hybrid structure to meet the electricity demand of an
institutional area situated in Jaipur, Rajasthan, India. Various configurations have
different specifications obtained to meet the load demand based on input parameters
which are obtained from a pilot survey and the main survey a particular location.
Various costing parameters such as per unit of cost and net present cost are estimated
with the condition of meeting the maximum load demand. The HOMER (Hybrid
Optimization Model for Electric Renewable) software is used for different simulation
processes and finally it is found that solar PV-battery-diesel generator hybrid system is
an economical system to meet the electricity demand in which the cost of energy is
obtained as ₹ 13.83 and Net Present Cost is ₹ 9.78M with initial capital and operating
costs of ₹ 4.20M and ₹ 646,319 per year, respectively. The diesel fuel cost is obtained
as ₹ 5,09,288 per year. Meanwhile, the electricity produced and consumption are also
estimated as 1,09,040 kWh/year and 81,939 kWh/year, respectively, with an unmet
load of 1.77% only.
High Optimization of Image Transmission and Object Detection Technique for Wireless Multimedia Sensor Network
Page: 118-130 (13)
Author: R. Kabilan*, Ravi R., J. Zahariya Gabrie and M. Philip Austin
DOI: 10.2174/9789815196269124030011
PDF Price: $15
Abstract
One of the most important issues in Wireless Multimedia Sensor Networks
is the energy efficiency of object detection and image transmission. In-node object
detection and tracking algorithms have been proposed in recent WMSN approaches.
However, with a little effort, the WMSN will be able to detect the presence and
absence of objects in images. For the WMSN, a new approach for the above technique
is suggested in this research. Instead of sending a whole image, this technique sends
image parts. It ensures energy saving inside the node and minimum picture content
which is transferred to the sink node. On the basis of in-node reconstructed and energy
consumption picture, it suggests that the technique is evaluated using (PSNR). In
comparison with existing state-of-the-art methodologies, simulation results
demonstrate that the suggested methodology saves 95 percent of node energy with a
received picture PSNR of 46 dB.
ANN Based Malicious IoT-BoT Traffic Detection in IoT Network
Page: 131-149 (19)
Author: R. Kabilan*, M. Philip Austin*, J. Zahariya Gabrie and Ravi R.
DOI: 10.2174/9789815196269124030012
PDF Price: $15
Abstract
The purpose of this study is to discover anomalies and malicious traffic in
the Internet of Things (IoT) network, which is critical for IoT security, as well as to
keep monitoring and stop undesired traffic flows in the IoT network. For this objective,
a number of researchers have developed several machine learning (ML) approach
models to limit fraudulent traffic flows in the Internet of Things network. On the other
side, due to poor feature selection, some machine learning algorithms are prone to
misclassifying mostly damaging traffic flows. Nonetheless, further study is needed on
the vital problem of how to choose helpful attributes for accurate malicious traffic
identification in the Internet of Things network. As a solution to the problem, an
Artificial Neural Network (ANN) model is proposed. The Area under Curve (AUC)
metric is used to employ the cross-entropy approach to effectively filter features using
the confusion matrix and identify effective features for the chosen Machine Learning
algorithm.
High-Performance Mixed Signal VLSI Design For Multimode Demodulator
Page: 150-167 (18)
Author: R. Kabilan*, J. Zahariya Gabrie, Ravi R. and M. Philip Austin
DOI: 10.2174/9789815196269124030013
PDF Price: $15
Abstract
A mixed signal quadrature demodulator was suggested in this study. In 90
nm CMOS technology, to get the desired frequency range, a quadrature VCO is
employed. The fast speed is achieved with a three-bit ADC. Unused ADC construction
components have been removed to conserve energy and space. Outputs obtained are
used to meet the power needed in the mixed signal demodulator designed for multigigabit applications. QVCO, baseband AGC, frequency synthesizers, and IQ mixers,
are all part of the demodulator. This displays the highest level of integration while
using the least amount of electricity. To sample the symbols at optimal SNR, the
baseband modem included a mixed signal timing recovery loop based on the Gardner
timing error detector.
Pre Placement 3D Floor planning of 3D Modules Using Vertical Constraints For 3D IC'S
Page: 168-184 (17)
Author: J. Zahariya Gabrie*, Ravi R., R. Kabilan and M. Philip Austin
DOI: 10.2174/9789815196269124030014
PDF Price: $15
Abstract
This project focuses on wire length reduction throughout the 3D floor layout
stage. The 3D cell layout stage is part of the floor planning process. Previously, it was
expected that the entire module would be placed on a single device layer. They don't
consider how a module's cells may be dispersed across many device levels to reduce
the cable length. Each of the device layers is assigned to one of the cells that make up a
module (a 2D module is converted into a 3D module). To place cells in three
dimensions, several constraints are used. The placement aware constraints are a set of
constraints that determine whether a 2D module may be turned into a 3D module. The
vertical alignment of identical submodules owing to the same planar placement
requirement is referred to as vertical constraint. The size of the solution will be reduced
as a result of this. A 3D floor design module packing method is proposed by the author.
Calculating the wire length and taking into consideration the feasibility requirement, a
smaller solution area is used to arrange the 3D cells in an initial set of floor layouts.
After finding the best floor design, the modules are packed using a packing algorithm,
and the technique is finished. A placement aware 3D floor design method is the name
of the approach, which is developed in C++ and operates on Fedora Linux.
Underwater Bio-Mimic Robotic Fish
Page: 185-193 (9)
Author: Ravi R.*, R. Tino Merlin, V. Harini Priya, T. Jerlin, U. Maheshwari, R. Indhu Rani, V. Brindha and A. Celciya Effrin
DOI: 10.2174/9789815196269124030015
PDF Price: $15
Abstract
This chapter discusses the design and fabrication of biomimetic underwater
robotic fish. A robot fish is a type of bionic robot that looks and moves like a real fish.
Two motors, an Arduino microcontroller, Bluetooth, and a pump are required to
complete the underwater robotic fish project. Motors are employed for quick forward
and rotating motion, and the pump assembly aids in deep-water diving. In addition,
sensors assist the robot in making intelligent judgments such as obstacle detection,
direction shift, and so forth. Additionally, essential information such as live streaming,
pressure, and temperature is provided. The innovative technology compromises the
agility and performance of the robot that helps to achieve the real motion of the fish,
making the robot competent for an aquatic-based design of the robot that helps to
reduce the complex structure without applications such as underwater exploration,
oceanic supervision, pollution level detection, and military detection This project is
also beneficial.
IoT-Based Automatic Irrigation System
Page: 194-202 (9)
Author: Raja M.*, N. M. Nithish, Saravana Shankar B. and Sadhurwanth D.
DOI: 10.2174/9789815196269124030016
PDF Price: $15
Abstract
Agriculture is one of the backbones of our Indian economy. India is
primarily an agricultural country. It plays an important role in the development of our
nation. This project proposes an automatic irrigation system, because it maintains the
moisture content present in the soil by automatic irrigation system. This setup uses a
capacitive soil moisture sensor v1.2 that measures the exact amount of soil moisture. It
monitors soil properties such as temperature, humidity, soil moisture, and motor status.
These parameters are measured using a soil moisture sensor, a DHT11 sensor, which is
controlled by a NodeMCU that acts both as a microprocessor and as a server. It is
possible to remotely control many farm operations from any part of the world through
IoT.
Subject Index
Page: 203-208 (6)
Author: S. Kannadhasan, R. Nagarajan, Alagar Karthick, K. K. Saravanan and Kaushik Pal
DOI: 10.2174/9789815196269124030017
Introduction
This volume explores diverse applications for automated machine learning and predictive analytics. The content provides use cases for machine learning in different industries such as healthcare, agriculture, cybersecurity, computing and transportation. Key highlights of this volume include topics on engineering for underwater navigation, and computer vision for healthcare and biometric applications. Chapters 1-4 delve into innovative signal detection, biometric authentication, underwater AUV localization, and COVID-19 face mask detection. Chapters 5-9 focus on wireless pH sensing, differential pattern identification, economic considerations in off-grid hybrid power, high optimization of image transmission, and ANN-based IoT-bot traffic detection. Chapters 10-12 cover mixed-signal VLSI design, pre-placement 3D floor planning, and bio-mimic robotic fish. Finally, Chapters 13 and 14 explore underwater robotic fish and IoT-based automatic irrigation systems, providing a comprehensive overview of cutting-edge technological advancements. The book is a resource for academics, researchers, educators and professionals in the technology sector who want to learn about current trends in intelligent technologies.