5:45 PM - 6:00 PM
[5p-A202-18] Character feature extraction system composed of polymer neural network
Keywords:PEDOT:PSS, electropolymerization, conductive wire
Analog hardware neural networks constructed by nano-scale nonvolatile memristive (synaptic) devices, such as RRAM crossbars, are one of the emerging technology for hardware neural networks. We present a prototype of molecular neural networks consisting of conducting polymer wires in liquid state, where memristive devices exist at every cross point of polymer wires, forms all-to-all connections between bottom and top polymer wire layers. Through experiments, we demonstrate that the molecular networks constructed by conducting polymer PEDOT/PSS [(poly(3,4-ethylenedioxythiophene) doped with poly (styrene sulfonate) anions] growing between 200μm gap Au electrodes recognizes 3 symbols as a result of the auto encoder algorithm. During the training phase, square growth voltage (=8 Vp-p, 10 kHz) was applied to one of the electrode, and the other electrode was grounded, whereas during the evaluation phase, DC voltage (= 1.0 V) was applied to one of the electrode, and the other electrode was virtually grounded by opamp-based current-to-voltage converters, to measure currents between each electrodes.
This result implies that they expand variety of present neuromorphic computing architectures designed mainly for solid-state CMOS devices.
This result implies that they expand variety of present neuromorphic computing architectures designed mainly for solid-state CMOS devices.