Title :
Neurons in Polymer: Hardware Neural Units Based on Polymer Memristive Devices and Polymer Transistors
Author :
Nawrocki, Robert A. ; Voyles, Richard M. ; Shaheen, Sean E.
Author_Institution :
Dept. of Electr., Comput., & Energy Eng., Univ. of Colorado at Boulder, Boulder, CO, USA
Abstract :
We present here incremental steps toward realizing a tangible polymer neuromorphic architecture in the form of McCulloch-Pitts (nonspiking) neurons made from polymer electronics components, namely, memristive read-only-memory devices, transistors, and resistors. In the implementation, the polymer memristive devices perform the equivalent of synaptic weighting, while a polymer resistor subcircuit performs the equivalent of somatic summing. The sum is sent to a single transistor to apply the activation function. The complete circuit approximates the function of a single neural unit, which would form the basis for a hardware artificial neural network. It is shown here that a single, two-input unit, fit with three memristive devices per input, can perform continuous value classification applied to an active tether application, with a maximum error of 5%.
Keywords :
memristors; neural chips; polymers; read-only storage; transistors; McCulloch-Pitts neurons; activation function; hardware artificial neural network; hardware neural units; memristive read-only-memory devices; nonspiking neurons; polymer electronics components; polymer memristive devices; polymer resistor subcircuit; polymer transistors; single neural unit; somatic summing; synaptic weighting; tangible polymer neuromorphic architecture; Neuromorphics; Neurons; OFETs; Polymers; Resistors; Threshold voltage; Artificial synapse; hardware neural network; memristive device; neuromorphic engineering; polymer electronics;
Journal_Title :
Electron Devices, IEEE Transactions on
DOI :
10.1109/TED.2014.2346700