Di Schino, 2021 - Google Patents
Open die forging process simulation: a simplified industrial approach based on artificial neural network.Di Schino, 2021
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- 5708799841666693060
- Author
- Di Schino A
- Publication year
- Publication venue
- AIMS Materials Science
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Open die forging process simulation: a simplified industrial approach based on artificial
neural network Page 1 AIMS Materials Science, 8(5): 685–697. DOI: 10.3934/matersci.2021041
Received: 17 July 2021 Accepted: 07 September 2021 Published: 09 September 2021 http://www.aimspress.com/journal/Materials …
- 238000005242 forging 0 title description 50
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