학술논문

Backhopping-based STT-MRAM Poisson Spiking Neuron for Neuromorphic Computation
Document Type
Conference
Source
2023 IEEE International Reliability Physics Symposium (IRPS) Reliability Physics Symposium (IRPS), 2023 IEEE International. :1-6 Mar, 2023
Subject
Components, Circuits, Devices and Systems
Engineered Materials, Dielectrics and Plasmas
Engineering Profession
Computational modeling
Neurons
MIMICs
Sociology
Communication channels
Mathematical models
Behavioral sciences
Backhopping
Neuromorphic
Poisson
Spiking Neural Network
STT-MRAM
Language
ISSN
1938-1891
Abstract
Spin-transfer-torque magnetic random-access memory (STT-MRAM) is a proven technology for embedded non-volatile memory applications. The backhopping phenomena in STT-MRAM, whereby the resistance of the device oscillates under higher current, has been recently explored for emerging spiking neural network applications. We report a detailed characterization of backhopping in foundry compatible STT-MRAM having ~15kb bit-cell arrays by analyzing the behavior of backhopping spike rate versus applied current and temperature. Our study shows that the backhopping in STT-MRAM exhibits the Poisson statistics with a controllable spike rate with current that displays three regimes: non-backhopping, exponential and linear. This mimics the behavior of a rectified linear unit (ReLU) neuron, a commonly used activation function in deep learning models. A spiking neural network (SNN) communication channel is simulated using the derived statistics and a first principles mathematical framework to analyze the reliability performance of backhopping-based SNN in terms of trading-off the accuracy and applied current.