Impact of Program Accuracy and Random Telegraph Noise on the Performance of a NOR Flash-based Neuromorphic Classifier

Autor: S. Petro, C. Monzio Compagnoni, Gerardo Malavena, Alessandro S. Spinelli
Rok vydání: 2019
Předmět:
Zdroj: ESSDERC
DOI: 10.1109/essderc.2019.8901751
Popis: In this work, we investigate the impact of program accuracy and of the time instabilities in cell threshold-voltage (V T ) arising from random telegraph noise (RTN) on the performance of a neuromorphic digit classifier exploiting NOR Flash arrays as artificial synaptic arrays. First, by modeling cell V T placement resulting from a program-and-verify algorithm based on incremental step pulse programming (ISPP) in the presence of program noise, the classifier truthfulness is investigated as a function of the discretization step of the verify level and of the cell control-gate–to–floating-gate capacitance. Then, the degradation of the classifier accuracy due to RTN fluctuations displacing cell V T from its programmed value is addressed as a function of the most relevant RTN statistical parameter, i.e., the average value of the single-trap fluctuation amplitude. Results highlight some quantitative criteria to determine how scaled NOR Flash cells and arrays can be when targeting neuromorphic applications.
Databáze: OpenAIRE