Prediction of flow stress in dynamic strain aging regime of austenitic stainless steel 316 using artificial neural network
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Gokul Hariharan | Swadesh Kumar Singh | A. Gupta | G. Hariharan | Amit Kumar Gupta | Swathi Reddy | Sudharshan Reddy
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