Networks of Coupled VO2 Oscillators for Neuromorphic Computing
Neuromorphic computing is a wide research field aimed to the realization of brain-inspired
hardware, apt to tackle computation of unstructured data more efficiently than currently done
with standard computational units. Oscillatory neural networks are known for their associative
memory capability, which enables to retrieve the information stored in the system from noisy
or incomplete data. The development of phase-transition materials such as vanadiumdioxide
(VO2) allows to design compact relaxation oscillator units which can be coupled in frequency
and phase to realize an oscillatory neural network in hardware. In this thesis, we investigate the
oscillatory neural network technology from the realization of the basic oscillator components
with VO2 to the exploitation of the coupled oscillators as analog filters in convolutional neural
networks applications.
VO2 phase-transition devices are realized in a CMOS compatible process in two geometries, a
planar and a crossbar configuration. The impact of the polycrystallinity of the VO2 film on the
insulator-to-metal transition of the device is analyzed; through the contacting of a single grain
we demonstrate the realization of a VO2 device with a single, sharp phase transition.
The VO2 devices are connected in circuits to build networks of coupled oscillators. Through
coupling with resistive and capacitive elements, experimental demonstrations of a 4-VO2
coupled oscillator network is shown. The network encodes the input and output information
in the relative phase of the oscillators. The associative memory capability of the system is
used to extract features from hand-written digits. By expanding the network to a 3×3 coupled
oscillator system, we demonstrate in simulations how an oscillatory neural network can
replace up to five digital filters in a convolutional neural network, retaining the same image
processing capabilities.
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