Stochastic sampling via synaptic delay in spiking RBMs using integrated resistive and threshold switching devices

Abstract

Spiking neural networks (SNNs) have emerged as promising low-power architectures for next-generation neuromorphic hardware because spike-based operation naturally supports spatiotemporal information processing. Among SNN models, spiking restricted Boltzmann machines (spiking RBMs) enable sampling-based learning and inference, but stable operation requires sufficient stochasticity at the neuron and synapse levels. Under temporally uniform input spike trains, such as sensor-driven inputs, limited intrinsic randomness can degrade learning performance. Here, a delay-based hardware strategy is presented in which synaptic propagation delay serves as a source of stochasticity for sampling in spiking RBMs. The corresponding synaptic unit cell consists of a synapse for weight storage and a delay module for temporal stochasticity. The delay module, based on serially integrated resistive random-access memory (RRAM) and threshold-switching (TS) devices, enables tuning of the TS turn-on delay through the RRAM resistance. Higher resistance increases the mean delay, and the measured delays follow a log-normal distribution. Compact modeling and circuit-level simulation confirm compatibility of the delay behavior with CMOS neuron-synapse circuits. Application of delay distributions to MNIST learning in spiking RBMs yields higher accuracy than both a no-delay baseline and conventional stochastic implementations based on random number generators. The RRAM–TS-based synaptic delay circuit therefore offers an efficient hardware primitive for introducing stochasticity into neuromorphic systems without complex and power-consuming additional peripherals.

Graphical abstract: Stochastic sampling via synaptic delay in spiking RBMs using integrated resistive and threshold switching devices

Supplementary files

Article information

Article type
Communication
Submitted
10 Apr 2026
Accepted
26 May 2026
First published
02 Jun 2026

Nanoscale Horiz., 2026, Advance Article

Stochastic sampling via synaptic delay in spiking RBMs using integrated resistive and threshold switching devices

S. Jang, D. K. Lee, U. Shin, Y. G. Kang, Y. Choi, D. Han, J. Y. Kwak and S. Kim, Nanoscale Horiz., 2026, Advance Article , DOI: 10.1039/D6NH00158K

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