Electrically reconfigurable skyrmion lattice based self-adaptive oscillating neurons
ORAL
Abstract
Neuromorphic computing promises to realize the transformative potential of Artificial Intelligence (AI) by enabling ultra-low power, advanced AI. Spintronic materials are particularly attractive for neuromorphic computing as they have a small footprint, use low power and can mimic the complex properties of the brain. Here, we utilize an electrically reconfigurable skyrmion lattice to design and simulate a novel artificial neuron that incorporates two advanced neural behaviors: oscillatory dynamics and neuromodulation. Neuromodulation is the self-adaptive ability of a neuron to regulate its dynamics in response to its environment. Here, neuromodulation arises from the reconfigurability of the skyrmion lattice, i.e, skyrmions in a lattice are rearranged via electrical currents, shifting the resonant frequencies and altering the amplitudes of oscillation of the neuron. The neuron is implemented with a lattice of five magnetic skyrmions in a thulium iron garnet and platinum bilayer. We utilize the neuron to demonstrate 2 high-level cognitive processes: context-aware decision making and feature binding. These results can be used for advanced AI applications including biomedicine, neuro-prosthesis and human-machine interaction.
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Presenters
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Priyamvada Jadaun
ECE, The University of Texas at Austin
Authors
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Priyamvada Jadaun
ECE, The University of Texas at Austin
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Can Cui
Electrical and Computer Engineering, University of Texas at Austin, ECE, The University of Texas at Austin, Electrical and Computer Engineering Dept., University of Texas at Austin, Austin TX USA
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Jean Anne C. Incorvia
Electrical and Computer Engineering, University of Texas at Austin, University of Texas at Austin, ECE, The University of Texas at Austin, Electrical and Computer Engineering Dept., University of Texas at Austin, Austin TX USA