Artificial Neural Network-Based Three-dimensional Continuous Response Relationship Construction of 3Cr20Ni10W2 Heat-Resisting Alloy and Its Application in Finite Element Simulation
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Title
Artificial Neural Network-Based Three-dimensional Continuous Response Relationship Construction of 3Cr20Ni10W2 Heat-Resisting Alloy and Its Application in Finite Element Simulation
Authors
Keywords
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Journal
HIGH TEMPERATURE MATERIALS AND PROCESSES
Volume 37, Issue 5, Pages 411-424
Publisher
Walter de Gruyter GmbH
Online
2018-05-01
DOI
10.1515/htmp-2016-0234
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