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Modeling Excitable Tissue The Emi Framework 1st Edition Aslak Tveito

  • SKU: BELL-12223562
Modeling Excitable Tissue The Emi Framework 1st Edition Aslak Tveito
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Modeling Excitable Tissue The Emi Framework 1st Edition Aslak Tveito instant download after payment.

Publisher: Springer
File Extension: PDF
File size: 4.39 MB
Pages: 100
Author: Aslak Tveito, Kent-Andre Mardal, Marie E. Rognes
ISBN: 9783030611569, 9783030611576, 3030611566, 3030611574
Language: English
Year: 2020
Edition: 1

Product desciption

Modeling Excitable Tissue The Emi Framework 1st Edition Aslak Tveito by Aslak Tveito, Kent-andre Mardal, Marie E. Rognes 9783030611569, 9783030611576, 3030611566, 3030611574 instant download after payment.

This open access volume presents a novel computational framework for understanding how collections of excitable cells work. The key approach in the text is to model excitable tissue by representing the individual cells constituting the tissue. This is in stark contrast to the common approach where homogenization is used to develop models where the cells are not explicitly present. The approach allows for very detailed analysis of small collections of excitable cells, but computational challenges limit the applicability in the presence of large collections of cells.

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