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Dev, Kapil
- Measurement of Radon Concentration and Exhalation Rates from Marble and Granite Samples
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Authors
Affiliations
1 Department of physics, B S A college Mathura U.P., IN
2 Department of physics, University college, Kurukshetra, IN
3 Department of applied physics, National Institute of Technology, Kurukshetra, IN
4 Department of Biomedical Engineering, GJUST, Hisar, IN
1 Department of physics, B S A college Mathura U.P., IN
2 Department of physics, University college, Kurukshetra, IN
3 Department of applied physics, National Institute of Technology, Kurukshetra, IN
4 Department of Biomedical Engineering, GJUST, Hisar, IN
Source
International Journal of Science, Engineering and Computer Technology, Vol 2, No 3 (2012), Pagination: 87-89Abstract
Natural materials such as sand, soil, stone, marbles, granites etc. containing traces of natural radioactivity of uranium 238U, radium 226Ra and potassium 40K could be used as building materials for construction of houses and buildings. These materials are the main sources of radon inside houses and which are mostly derived from rocks as a part of earth's crust. It has been known that some construction materials are naturally more radioactive and removal of such materials from earth's crust and their subsequent use in dwellings constitute an enhanced level of radioactivity. In the present investigation, radon concentration and exhalation rate through different marbles and granites has been estimated. Can technique using LR-115 type II plastic track detector has been used for measurements. After chemical etching track density of registered tracks is used to calculate the radon concentration and exhalation rates of radon using required formula. The radon concentration in marble samples varied from 612 Bq m-3 to 1180 Bq m-3 with an average of 841 ±51.4 Bq m-3 whereas it varied from 787 Bq m-3 to 1749 Bq m-3 in granite with an average of 1377 ± 129 Bq m-3. Based upon the data, the mass and the surface exhalation rates of radon emanated from them have also been calculated. Conclusion: The measurements indicate that radon concentration is higher in graphite than marble which is normal to some higher levels of radon concentration emanated from the samples collected from local market of Sirsa India.- Wireless Starting Of 3 Phase Induction Motor
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International Journal of Innovative Research and Development, Vol 2, No 5 (2013), Pagination:Abstract
All induction motors require a starter to start the motor. The starter is used according to the motor ratings. Wireless three phase induction motor device can start the motor from long distance without using wire. This starter works with a mobile device. In this system a mobile works as a signal transmitter and other mobile is signal receiver. The mobile transmitter calls to receiver mobile. The call is automatically received by receiving mobile. When a numeric button is pressed during this time the transmitter mobile send a DTMF signal, this signal is received by receiving mobile and motor is started. And to stop the motor other specified button is pressed and motor get stoppedKeywords
Project introduction, Hardware description, circuit diagram, Project working, Applications, Limitation, references- Performance Analysis of FMCG Sector in India
Abstract Views :150 |
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Authors
Affiliations
1 Department of Management Studies, I.K. Gujral Punjab Technical University, Kapurthala, Jalandhar, Punjab, IN
2 GGSD College, Chandigarh, IN
3 Rayat Institute of Management, Chandigarh, IN
1 Department of Management Studies, I.K. Gujral Punjab Technical University, Kapurthala, Jalandhar, Punjab, IN
2 GGSD College, Chandigarh, IN
3 Rayat Institute of Management, Chandigarh, IN
Source
International Journal of Business Analytics and Intelligence, Vol 6, No 2 (2018), Pagination: 12-23Abstract
For the performance analysis of Fast Moving Consumer Goods (FMCG) industry, discriminatory power of financial ratios are examined by using Wilks’ lambda and Multiple discriminant function analysis. For this purpose sample of eighteen FMCG companies listed with Bombay Stock Exchange is taken in to account. Market capitalization is taken as basis for selecting these companies. Data is collected for twelve years ranges from 1 April 2006 to 31 March 2017. For effective implementation of discriminant analysis, firstly average stock market returns are computed from the annual stock prices of the selected companies and average stock market returns are classified in to three groups viz. ‘Market Under-Performers’, ‘Market Average-Performers’ and ‘Market Out-Performers’. It has been found that revenue from operations/share is the most important ratio and having impact to assess the company’s market performance. Debt equity ratio and inventory turnover ratio having moderate impact in assessing the company’s stock market performance of companies and dividend payout ratio is the ratio having less impact in assessing the company’s stock market performance.Keywords
Multiple Discriminant Analysis, FMCG, Average Stock Market Return, Financial Ratios.References
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