Apr 23, 2024
4:15pm - 4:45pm
Room 429, Level 4, Summit
Fabien Alibart1,3,Kamila Janzakova1,Corentin Scholaert1,Ismael Balafrej2,Ankush Kumar1,Dominique Drouin3,Jean Rouat2,Sébastien Pecqueur1,Yannick Coffinier1
IEMN-CNRS1,University of Sherbrooke2,CNRS3
Fabien Alibart1,3,Kamila Janzakova1,Corentin Scholaert1,Ismael Balafrej2,Ankush Kumar1,Dominique Drouin3,Jean Rouat2,Sébastien Pecqueur1,Yannick Coffinier1
IEMN-CNRS1,University of Sherbrooke2,CNRS3
Neuromorphic computing and engineering is capitalizing heavily on the new physical properties offered by nantechnologies to engineer biological processes. At the frontiers in between bio-mimetism and bio-inspiration, various solutions have been proposed for synaptic plasticity or neuronal features based on discrete memory elements, bistable switches or transistors circuits. One missing element that has been missing in the neuromorphic toolbox is the ability to reproduce the complex 3D interconnections observed in biological neural networks. Here, we propose to take advantage of bipolar electropolymerization of PEDOT dendritic fibers to reproduce the ability of neural networks to generate complex topologies. The electropolymerization mechanism is used to realize structural plasticity based on Hebbian-like plasticity rules. We explore how such bottom-up process can find optimal topologies for specific computing tasks. We demonstrate that such optimal topologies results in a drastic reduction of interconnects for classification and reconstruction tasks, thus offering an interesting option for neural network design.