- K. Boopathi Raja
- N. Bhuvaneshwari
- V. Saravanan
- K. Prakalathan
- M. Saraswathi
- G. Selvakiruthika
- S. Priyatharshini
- K. L. Chugh
- P. Ram Mohan Rao
- Guddakesh Kumar Chandan
- Brajesh Kumar Kanchan
- R. Premkumar
- Ramya Ranjan Behera
- Munmun Mohapatra
- Chandan Kumar Maity
- Ranajit Bera
- Deepak Panda
- Diganta Panda
- Sukanya Borkataki
- Rashmi Ranjan Behera
- Sribas Patra
- Nishikanta Kumar
- Diptimayee Naik
A B C D E F G H I J K L M N O P Q R S T U V W X Y Z All
Karthik, R.
- Spectrum Estimation and Adaptive Denoising of Fetal Electrocardiographic Signal
Authors
1 Department of ECE, SNS College of Technology, IN
Source
Digital Signal Processing, Vol 7, No 2 (2015), Pagination: 48-49Abstract
Fetal monitoring during pregnancy is important to support medical decision making. The fetal electrocardiogram (fECG) is a valuable signal to diagnose fetal well-being. Noninvasive recording of the fECG is performed by positioning electrodes on the maternal abdomen. A method of time-varying parametric spectrum estimation from ECG sequences is presented. Model parameters are estimated by extracting the time varying parameters and state variables of an ECG sequence. We consider the noisy time sequence generated by nonlinear autoregression, when the observations of the series contain measurement noise in addition to the signal. The spectrum estimates for each time instant then are obtained from the estimated model parameters.- A Web Based System for ECG Data Transfer Using ZIGBEE/IEEE Technology
Authors
1 Dr. N.G.P. Institute of Technology, Coimbatore, IN
Source
Digital Signal Processing, Vol 3, No 5 (2011), Pagination: 234-238Abstract
This paper specifies the development of a remote monitoring system for ECG signals. The system provides remote monitoring of several patients wearing a portable device equipped with ZigBee/IEEE RF module connective based on wireless sensor networks. We have designed to record on-line database, server computer used to analyze ECG signals and detect serious heart anomalies in time sent alarm to authorized medical staffs or physician through telecommunication network. The main advantages of the proposed framework are (1) The ability to detect signals wirelessly within a Body Area Network (BAN) (2) Low-power and reliable data sensing through ZigBee network nodes and (3) Optimized analysis of data through an adaptive tiered architecture that maximizes the utility of processing and computational capacity at each of three stages. We are currently building a prototype of the proposed system using in-house ECG probes and ZigBee radio modules.Keywords
Zigbee-Ieee 802.15.4 Standard, Wireless ECG Monitoring System, Mysql Database and Php Language.- Intellectual Gateway for Automatic Residence Appliances and Systems
Authors
1 P.A. College of Engineering and Technology, IN
Source
Automation and Autonomous Systems, Vol 7, No 1 (2015), Pagination: 4-6Abstract
Internet of Things (IoTs) is a unique identifier to transfer the data over a network without human-to-human or human-to-machine interaction. It was evolved from the convergence of Wireless technologies, Micro Electro-Mechanical System (MEMS) and the internet. Intellectual gateway is used to control home appliances with the help of any internet based devices through web page. To integrate the real-world devices to the web, so they can be easily allow to combined with other virtual and physical resources and creates a novel, standalone, flexible monitoring system. The home automation system differs from other system by allowing the user to operate the system from anywhere around the world through internet connection. The proposed system presents a low cost and flexible home control and monitoring system using an embedded web server, with IP connectivity for accessing and controlling devices and appliances remotely using a web based application. It can be expanded to communication between things them self or device to device communication with the help of novel concept.Keywords
Internet of Things, Smart Home, Bluetooth, Home Automation, Arduino Based Gateway.- Performance Based Incentive for Research Publications-A Best Practice
Authors
1 Department of CSE, MLR Institute of Technology, Hyderabad – 500043, IN
Source
Journal of Engineering Education Transformations, Vol 30, No 3 (2017), Pagination: 23-27Abstract
National Institutional Ranking Framework (NIRF) has been developed by Ministry of Human Resource and Development (MHRD), Govt. of India. The NIRF has been drafted to provide an Indian context to educational aspiration and needs for two categories of institutions viz category 'A' mainly research and category 'B' mainly teaching. The NIRF provides for ranking of institutions under five broad generic parameters namely: i)Teaching, Learning and Resources; ii) Research, Professional Practice and Collaborative Performance; iii) Graduation Outcomes; iv) Outreach and inclusively and v) Perception.
The importance of quality publications is highlighted in Research Publication metrics, which forms an important component of Research, Professional Practice and collaboration performance parameter. In Outcome Based Education, every faculty is required to contribute towards Research Publications. The institutions need to motivate the faculty to understand the importance of Research Publications in the context of National Institutional Ranking.
Towards this goal, we have developed a methodology called "Performance Based Incentive for Research Publications". The incentive provides financial benefits to faculty members an amount equal to 15% of their Basic Pay during four months viz. Nov/Dec and May/June of the current academic year. The four months are the semester break months. The Performance Based Incentive is linked to both the quality and number of publications. The quality of publications is in relation to publications indexed in Scopus, Web of Science and Google scholar. The publications indexed in Scopus get maximum benefits of 15% of basic pay. The benefit gets decreased for publications indexed in Web of Sciences and Google Scholar in that order.
The application of Performance Based Incentive at author's college has resulted in increase in the number of publications which has a bearing on getting better score in the National Institutional Ranking.
Keywords
India Rankings 2016, NIRF, Outcome Based Education,Research Publications Metrics.References
- National Institutional Ranking Framework from www.nirfindia.org
- NIRF Online data submission frommhrd.gov.in>upload_file
- India Ranking 2016-MH RD from www.nirfindia.org>engg
- Design and Experimental Analysis of Gripper for Shape Memory Alloy Actuation
Authors
1 Department of Mechanical Engineering, Sri Krishna College of Engineering and Technology, IN
2 Department of Mechanical Engineering, PSG College of Technology, IN
Source
International Journal of Engineering Research, Vol 5, No 4 (2016), Pagination: 236-240Abstract
In the developing technological scenario, the researchers are looking for a material that is highly reliable and having unique property to retaining its shape in certain high and low temperature. The shape memory alloy is having prescribed qualities and one of its unique property is to recover shape upon heating can be effectively packaged into compact, light, powerful silent actuators to replace DC motors and electrical motors. The objective of the paper is to design, fabricate and analysis of gripper on the principle of slide crank mechanism, which is actuate with Shape Memory Alloy spring. The characteristics targeted in this experiment are of ensuring mechanical actions if stimulated with electrical current allows the development of simple, more compact and reliable actuators.Keywords
Shape Memory Alloy Spring, Gripper, Slide Crank Mechanism.- Gender Difference in Resilience among the Students of IIT Kharagpur
Authors
1 Doctoral Research Scholar, Indian Institute of Technology, Kharagpur, West Bengal, IN
Source
Indian Journal of Positive Psychology, Vol 11, No 2 (2020), Pagination: 146-148Abstract
Resilience is the ability to succeed despite a lot of barriers, hurdles, and obstacles that make it difficult for students to succeed in life. The resilience level of students is critical as it assists them in adjusting their life pressures, stresses, adapting to new environments and overcoming challenges. The current study aimed to investigate the gender difference in resilience among the students of IIT Kharagpur belonging to two different age groups. The sample consisted of 137 students, including 80 boys and 57 girls. The instruments used were Schutte's Emotional Intelligence Scale for emotional intelligence and the Brief Resilience Scale for resilience. Product Moment Correlation analysis was conducted to analyze the association between emotional intelligence, CGPA, and resilience. The findings revealed that female students are more resilient than male students, and there was no association between CGPA and resilience. However, there was a significant relationship between emotional intelligence and resilience. Studies on resilience could be helpful for educational psychologists, counselors, educational researchers, and curriculum developers to organize some programs to enhance the coping and resilience level of students, which may have a direct effect on students' performance and educational level.Keywords
Resilience, Age, Gender, Students Emotional Intelligence.- Status of Morbidity and Mortality in the State of Odisha, India
Authors
1 Rekhi Centre of Excellence for the Science of Happiness, Indian Institute of Technology, Kharagpur, West Bengal, IN
2 Advanced Technology Development Centre, Indian Institute of Technology, Kharagpur, West Bengal, IN
3 Department of Applied Geography, Ravenshaw University, Cuttack, Odisha, IN
4 Newcastle University, Australia, Oceania, AU
5 Assistant Teacher, Odisha Adarsha Vidyalaya, Jajpur, Odisha, IN
Source
Indian Journal of Health and Wellbeing, Vol 13, No 1 (2022), Pagination: 116-124Abstract
Mortality and morbidity are two crucial components to assess the standard of the health system of a nation. This paper examines the spatial variation in the status of morbidity and mortality in Odisha using three rounds of Annual Health Survey Data conducted from 2010-13. Chronic and acute diseases were used to analyse the status of morbidity whereas crude death rate, infant mortality rate, neonatal, post-neonatal and under-five mortality rates were used to analyse mortality status in the state of Odisha. The composite index depicted the spatial variation in morbidity and mortality across the different districts. Five dimensions were identified through Principal Component analysis which indicated the association between the selected indicators of mortality and morbidity. It was found that the developed districts reported high morbidity and underdeveloped districts reported low morbidity. On the other hand, the underdeveloped districts reported high mortality and developed districts reported low mortality. The results of the study illustrate the importance of the provision of health infrastructures, improvement in education, medical awareness, governmental policies and schemes to improve the overall health status in Odisha.Keywords
acute illness, chronic illness, morbidity, mortalityReferences
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Authors
1 Rekhi Centre of Excellence for the Science of Happiness, Indian Institute of Technology, Kharagpur, West Bengal, IN
2 Advanced Technology Development Centre, Indian Institute of Technology, Kharagpur, West Bengal, IN
Source
IAHRW International Journal of Social Sciences Review, Vol 10, No 3 (2022), Pagination: 354-359Abstract
The purpose of this article is to present a synopsis of the research on juvenile well-being and the usage of digital technologies. In sum, the data suggest that the consequences are generally unfavourable, but negligible. Procrastination and passive usage are associated with greater negative impacts, while social and active uses are associated with more good outcomes. Short-term indicators of hedonic well-being (such as negative affect) are more strongly affected by digital technology use than long-term eudaimonic well-being indicators (e.g., life satisfaction). Adolescents are particularly susceptible, but adults are not spared either. Evidently, low and high usage are linked to lower levels of happiness, but moderate usage is associated with higher levels of happiness. There are many gaps in the existing research that need to be filled. There is a lack of high-quality research that include large samples, objective measures of digital technology use, and experience sampling of happiness.Keywords
Procrastination, Hedonic, Eudaimonic, Well-Being.References
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