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Evolution-in-materio: solving computational problems using carbon nanotube–polymer composites

Mohid, M.; Miller, J.F.; Harding, S.L.; Tufte, G.; Massey, M.K.; Petty, M.C.

Authors

M. Mohid

J.F. Miller

S.L. Harding

G. Tufte

M.K. Massey

M.C. Petty



Abstract

Evolution-in-materio uses evolutionary algorithms to exploit properties of materials to solve computational problems without requiring a detailed understanding of such properties. We show that using a purpose-built hardware platform called Mecobo, it is possible to solve computational problems by evolving voltages and signals applied to an electrode array covered with a carbon nanotube–polymer composite. We demonstrate for the first time that this methodology can be applied to function optimization and also to the tone discriminator problem (TDP). For function optimization, we evaluate the approach on a suite of optimization benchmarks and obtain results that in some cases come very close to the global optimum or are comparable with those obtained using well-known software-based evolutionary approach. We also obtain good results in comparison with prior work on the tone discriminator problem. In the case of the TDP we also investigated the relative merits of different mixtures of materials and organizations of electrode array.

Citation

Mohid, M., Miller, J., Harding, S., Tufte, G., Massey, M., & Petty, M. (2016). Evolution-in-materio: solving computational problems using carbon nanotube–polymer composites. Soft Computing, 20(8), 3007-3022. https://doi.org/10.1007/s00500-015-1928-6

Journal Article Type Article
Acceptance Date Nov 12, 2015
Online Publication Date Nov 12, 2015
Publication Date Aug 1, 2016
Deposit Date Dec 18, 2015
Journal Soft Computing
Print ISSN 1432-7643
Electronic ISSN 1433-7479
Publisher Springer
Peer Reviewed Peer Reviewed
Volume 20
Issue 8
Pages 3007-3022
DOI https://doi.org/10.1007/s00500-015-1928-6