Intrinsic synaptic plasticity of ferroelectric field effect transistors for online learning

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Abstract

Nanoelectronic devices emulating neuro-synaptic functionalities through their intrinsic physics at low operating energies are imperative toward the realization of brain-like neuromorphic computers. In this work, we leverage the non-linear voltage dependent partial polarization switching of a ferroelectric field effect transistor to mimic plasticity characteristics of biological synapses. We provide experimental measurements of the synaptic characteristics for a 28nm high-k metal gate technology based device and develop an experimentally calibrated device model for large-scale system performance prediction. Decoupled read-write paths, ultra-low programming energies, and the possibility of arranging such devices in a cross-point architecture demonstrate the synaptic efficacy of the device. Our hardware-algorithm co-design analysis reveals that the intrinsic plasticity of the ferroelectric devices has potential to enable unsupervised local learning in edge devices with limited training data.

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Saha, A., Islam, A. N. M. N., Zhao, Z., Deng, S., Ni, K., & Sengupta, A. (2021). Intrinsic synaptic plasticity of ferroelectric field effect transistors for online learning. Applied Physics Letters, 119(13). https://doi.org/10.1063/5.0064860

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