Flexible Laser-Induced Graphene Memristor: Fabrication and SPICE based Emulation of an Artificial Neural Network
Identificadores
URI: https://hdl.handle.net/10481/91076Metadata
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2024Referencia bibliográfica
Published version: García Palomo, Mikel et al. Flexible Laser-Induced Graphene Memristor: Fabrication and SPICE based Emulation of an Artificial Neural Network. 2024
Sponsorship
MCIN/AEI/10.13039/501100011033: PID2020-116518GB-I00, TED2021-129769B-I00 FlexPowHar, CNS2023-143727 RECAMBIO; European Union NextGenerationEU/PRTR; University, Research and Innovation Council of the Board of Andalusia P21 00149 ENERGHENE; European Union's Horizon 2020 No. 101032701Abstract
This work demonstrates laser-induced graphene
memristors, fabricated using a patterning-free, low cost and
simple process directly on a flexible polyimide substrate. The
fabricated memristors show repeatable non-volatile bipolar resistive switching with state retention up to 103 seconds. A simple
perceptron network for the classification of black-and-white
images is later implemented using an experimentally extracted
compact model. Successful training of the network by integrating
SPICE model with MATLAB shows the possibility to emulate
the on-chip learning process. Further, by properly modulating
the applied voltage pulse amplitude and period, a reduction in
the energy consumed by training the neural network is achieved.