Paper:
Implementation of Neural Network Models for Parameter Estimation of a PEM-Electrolyzer
Steffen Becker* and Vishy Karri**
*University of Tasmania, GPO Box 252-65, Hobart 7001, Tasmania, Australia
**Australian College of Kuwait, P.O.Box 1411, Safat-13015, Kuwait
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