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Advanced Methods of Solid Oxide Fuel Cell Modeling

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Advanced Methods of Solid Oxide Fuel Cell Modeling Synopsis

Fuel cells are widely regarded as the future of the power and transportation industries. Intensive research in this area now requires new methods of fuel cell operation modeling and cell design. Typical mathematical models are based on the physical process description of fuel cells and require a detailed knowledge of the microscopic properties that govern both chemical and electrochemical reactions. Advanced Methods of Solid Oxide Fuel Cell Modeling proposes the alternative methodology of generalized artificial neural networks (ANN) solid oxide fuel cell (SOFC) modeling.

Advanced Methods of Solid Oxide Fuel Cell Modeling provides a comprehensive description of modern fuel cell theory and a guide to the mathematical modeling of SOFCs, with particular emphasis on the use of ANNs. Up to now,  most of the equations involved in SOFC models have required the addition of numerous factors that are difficult to determine. The artificial neural network (ANN) can be applied to simulate an object's behavior without an algorithmic solution, merely by utilizing available experimental data.

The ANN methodology discussed in Advanced Methods of Solid Oxide Fuel Cell Modeling can be used by both researchers and professionals to optimize SOFC design. Readers will have access to detailed material on universal fuel cell modeling and design process optimization, and will also be able to discover comprehensive information on fuel cells and artificial intelligence theory.

About This Edition

ISBN: 9780857292612
Publication date: 7th March 2011
Author: Jaroslaw Milewski
Publisher: Springer an imprint of Springer London
Format: Hardback
Pagination: 217 pages
Series: Green Energy and Technology
Genres: Mathematical modelling
Maths for engineers
Industrial chemistry and chemical engineering
Electrical engineering
Artificial intelligence