DocumentCode :
1445943
Title :
Evolution of Plastic Learning in Spiking Networks via Memristive Connections
Author :
Howard, Gerard ; Gale, Ella ; Bull, Larry ; De Lacy Costello, Ben ; Adamatzky, Andy
Author_Institution :
Dept. of Comput. Sci. & Creative Technol., Univ. of the West of England, Bristol, UK
Volume :
16
Issue :
5
fYear :
2012
Firstpage :
711
Lastpage :
729
Abstract :
This paper presents a spiking neuroevolutionary system which implements memristors as plastic connections, i.e., whose weights can vary during a trial. The evolutionary design process exploits parameter self-adaptation and variable topologies, allowing the number of neurons, connection weights, and interneural connectivity pattern to emerge. By comparing two phenomenological real-world memristor implementations with networks comprised of: 1) linear resistors, and 2) constant-valued connections, we demonstrate that this approach allows the evolution of networks of appropriate complexity to emerge whilst exploiting the memristive properties of the connections to reduce learning time. We extend this approach to allow for heterogeneous mixtures of memristors within the networks; our approach provides an in-depth analysis of network structure. Our networks are evaluated on simulated robotic navigation tasks; results demonstrate that memristive plasticity enables higher performance than constant-weighted connections in both static and dynamic reward scenarios, and that mixtures of memristive elements provide performance advantages when compared to homogeneous memristive networks.
Keywords :
evolutionary computation; learning (artificial intelligence); memristors; neural nets; constant-valued connections; linear resistors; memristive connections; memristive properties; parameter self-adaptation; plastic connections; plastic learning; real-world memristor implementations; simulated robotic navigation tasks; spiking networks; spiking neuroevolutionary system; variable topologies; Computer architecture; Hebbian theory; Mathematical model; Memristors; Navigation; Neurons; Robots; Genetic algorithms; Hebbian theory; memristors; neurocontrollers;
fLanguage :
English
Journal_Title :
Evolutionary Computation, IEEE Transactions on
Publisher :
ieee
ISSN :
1089-778X
Type :
jour
DOI :
10.1109/TEVC.2011.2170199
Filename :
6151103
Link To Document :
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