Das et al., 2018 - Google Patents

Phenomenological model-based study on electron beam welding process, and input-output modeling using neural networks trained by back-propagation algorithm …

Das et al., 2018

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Document ID
724299039979706403
Author
Das D
Pratihar D
Roy G
Pal A
Publication year
Publication venue
Applied Intelligence

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High power density welding technologies are widely used nowadays in various fields of engineering. However, a computationally efficient and quick predictive tool to select the operating parameters in order to achieve the specified weld attribute is conspicuously …
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