<strong>Prediction of tribological characteristics of powder metallurgy Ti and W added low alloy steels using artificial neural network</strong>
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Title Statement |
<strong>Prediction of tribological characteristics of powder metallurgy Ti and W added low alloy steels using artificial neural network</strong> |
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Added Entry - Uncontrolled Name |
Kandavel, Thanjavur Krishnamoorthy; School of Mechanical Engineering, Shanmugha Arts, Science, Technology and Research Academy (SASTRA Deemed to be University),
Thanjavur, Tamil Nadu 613 401, India Kumar, Thangaiyan Ashok; School of Mechanical Engineering, Shanmugha Arts, Science, Technology and Research Academy (SASTRA Deemed to be University), Thanjavur, Tamil Nadu 613 401, India Varamban, Emaya ; School of Mechanical Engineering, Shanmugha Arts, Science, Technology and Research Academy (SASTRA Deemed to be University), Thanjavur, Tamil Nadu 613 401, India |
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Uncontrolled Index Term |
Wear, Mass loss, P/M alloy steels, Friction co-efficient, Artificial neural network |
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Summary, etc. |
In the present research work, the effects of Titanium (Ti) and Tungsten (W) addition on tribological behavior of powdermetallurgy (P/M) Fe-1%C steel have been investigated. The test specimens of plain carbon steel and 1%Ti, 1%W and1%Ti+1%W added plain carbon steels were used to conduct the wear tests and wear behavior analyses. The optical andSEM images of wear tracks and microstructures of the alloys were obtained and analysed with wear behavior of the alloysteels. Artificial Neural Network (ANN) software was used to check the degree of agreement of test results with predictedvalues. The experimental results show that Ti and W added alloy steel exhibits excellent wear resistance. The carbidesformation due to alloying elements pronounces the wear resistance of the alloy steel. It has been proven that ANN could beused as a tool to predict the wear behavior of the P/M alloy steels by agreement between the predicted and experimentalvalues. |
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Publication, Distribution, Etc. |
Indian Journal of Engineering and Materials Sciences (IJEMS) 2021-01-11 15:40:19 |
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Electronic Location and Access |
application/pdf http://op.niscair.res.in/index.php/IJEMS/article/view/44850 |
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Data Source Entry |
Indian Journal of Engineering and Materials Sciences (IJEMS); ##issue.vol## 27, ##issue.no## 3 (2020): Indian Journal of Engineering and Materials Sciences |
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Language Note |
en |
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Terms Governing Use and Reproduction Note |
Except where otherwise noted, the Articles on this site are licensed under Creative Commons License: CC Attribution-Noncommercial-No Derivative Works 2.5 India © 2015. The Council of Scientific & Industrial Research, New Delhi. |
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