Collective dynamics and long-range order in thermal neuristor networks
In the pursuit of scalable and energy-efficient neuromorphic devices, recent research has unveiled a novel category of spiking oscillators, termed "thermal neuristors." These devices function via thermal interactions among neighboring vanadium dioxide resistive memories, emulating biologic...
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Zusammenfassung: | In the pursuit of scalable and energy-efficient neuromorphic devices, recent
research has unveiled a novel category of spiking oscillators, termed "thermal
neuristors." These devices function via thermal interactions among neighboring
vanadium dioxide resistive memories, emulating biological neuronal behavior.
Here, we show that the collective dynamical behavior of networks of these
neurons showcases a rich phase structure, tunable by adjusting the thermal
coupling and input voltage. Notably, we identify phases exhibiting long-range
order that, however, does not arise from criticality, but rather from the time
non-local response of the system. In addition, we show that these thermal
neuristor arrays achieve high accuracy in image recognition and time series
prediction through reservoir computing, without leveraging long-range order.
Our findings highlight a crucial aspect of neuromorphic computing with possible
implications on the functioning of the brain: criticality may not be necessary
for the efficient performance of neuromorphic systems in certain computational
tasks. |
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DOI: | 10.48550/arxiv.2312.12899 |