DocumentCode :
2372189
Title :
Spike-timing-dependent learning in memristive nanodevices
Author :
Snider, Greg S.
Author_Institution :
Inf. & Quantum Syst. Lab., Palo Alto, CA
fYear :
2008
fDate :
12-13 June 2008
Firstpage :
85
Lastpage :
92
Abstract :
The neuromorphic paradigm is attractive for nanoscale computation because of its massive parallelism, potential scalability, and inherent defect-, fault-, and failure-tolerance. We show how to implement timing-based learning laws, such as spike-timing-dependent plasticity (STDP), in simple, memristive nanodevices, such as those constructed from certain metal oxides. Such nano-scale ldquosynapsesrdquo can be combined with CMOS ldquoneuronsrdquo to create neuromorphic hardware several orders of magnitude denser than is possible in conventional CMOS. The key ideas are: (1) to factor out two synaptic state variables to pre- and post-synaptic neurons; and (2) to separate computational communication from learning by time-division multiplexing of pulse-width-modulated signals through synapses. This approach offers the advantages of: better control over power dissipation; fewer constraints on the design of memristive materials used for nanoscale synapses; learning dynamics can be dynamically turned on or off (e.g. by attentional priming mechanisms communicated extra-synaptically); greater control over the precise form and timing of the STDP equations; the ability to implement a variety of other learning laws besides STDP; better circuit diversity since the approach allows different learning laws to be implemented in different areas of a single chip using the same memristive material for all synapses.
Keywords :
CMOS integrated circuits; nanoelectronics; nanowires; neural chips; CMOS neurons; conventional CMOS; learning dynamics; massive parallelism; memristive materials; memristive nanodevices; nanoscale computational communication; nanoscale synapses; nanowires; neuromorphic hardware; neuromorphic paradigm; post synaptic neurons; presynaptic neurons; pulse-width-modulated signals; spike-timing-dependent learning; spike-timing-dependent plasticity; synaptic state variables; time-division multiplexing; timing-based learning laws; Circuit faults; Communication system control; Concurrent computing; Hardware; Nanostructured materials; Neuromorphics; Neurons; Parallel processing; Power dissipation; Scalability; adaptive systems; analog memories; learning systems; neural network hardware; nonlinear circuits;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Nanoscale Architectures, 2008. NANOARCH 2008. IEEE International Symposium on
Conference_Location :
Anaheim, CA
Print_ISBN :
978-1-4244-2552-5
Electronic_ISBN :
978-1-4244-2553-2
Type :
conf
DOI :
10.1109/NANOARCH.2008.4585796
Filename :
4585796
Link To Document :
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