A Unified Platform to Evaluate STDP Learning Rule and Synapse Model Using Pattern Recognition in a Spiking Neural Network
Source
Lecture Notes in Computer Science
ISSN
03029743
Date Issued
2026-01-01
Author(s)
Maskeen, Jaskirat Singh
Abstract
We develop a unified platform to evaluate Ideal, Linear, and Non-linear Pr<inf>0.7</inf>Ca<inf>0.3</inf>MnO<inf>3</inf> memristor-based synapse models, each getting progressively closer to hardware realism, alongside four STDP learning rules in a two-layer SNN with LIF neurons and adaptive thresholds for five-class MNIST classification. On MNIST with small train set and large test set, our two-layer SNN with ideal, 25-state, and 12-state non-linear memristor synapses achieves 92.73 %, 91.07 %, and 80 % accuracy, respectively, while converging faster and using fewer parameters than comparable ANN/CNN baselines.
Keywords
MNIST Classification | Neuromorphic Computing | Pattern Recognition | Spike-Timing-Dependent-Plasticity | Spiking Neural Networks | Synapse Models
