Efficient FPGA implementations of pair and triplet-based STDP for neuromorphic architectures

Journal Publication ResearchOnline@JCU
Lammie, Corey;Hamilton, Tara Julia;van Schaik, André;Rahimi Azghadi, Mostafa
Abstract

Synaptic plasticity is envisioned to bring about learning and memory in the brain. Various plasticity rules have been proposed, among which spike-timing-dependent plasticity (STDP) has gained the highest interest across various neural disciplines, including neuromorphic engineering. Here, we propose highly efficient digital implementations of pair-based STDP (PSTDP) and triplet-based STDP (TSTDP) on field programmable gate arrays that do not require dedicated floating-point multipliers and hence need minimal hardware resources. The implementations are verified by using them to replicate a set of complex experimental data, including those from pair, triplet, quadruplet, frequency-dependent pairing, as well as Bienenstock-Cooper-Munro experiments. We demonstrate that the proposed TSTDP design has a higher operating frequency that leads to 2.46x faster weight adaptation (learning) and achieves 11.55 folds improvement in resource usage, compared to a recent implementation of a calcium-based plasticity rule capable of exhibiting similar learning performance. In addition, we show that the proposed PSTDP and TSTDP designs, respectively, consume 2.38x and 1.78x less resources than the most efficient PSTDP implementation in the literature. As a direct result of the efficiency and powerful synaptic capabilities of the proposed learning modules, they could be integrated into large-scale digital neuromorphic architectures to enable high-performance STDP learning.

Journal

IEEE Transactions on Circuits and Systems I: Regular Papers

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Volume

66

ISBN/ISSN

1558-0806

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Issue

4

Pages Count

13

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Publisher

IEEE

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EISSN

N/A

DOI

10.1109/TCSI.2018.2881753