Mixed-signal implementation of feedback-control optimizer for single-layer Spiking Neural Networks

arXiv cs.LG / 2026/3/26

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要点

  • The paper proposes and demonstrates a proof-of-concept implementation of a feedback-control optimizer enabling on-chip learning for single-layer spiking neural networks on a mixed-signal neuromorphic processor.
  • The approach is evaluated in an In-The-Loop (ITL) training setup on a binary classification task and the nonlinear Yin-Yang problem.
  • Results indicate on-chip training performance can match numerical simulations and gradient-based baselines, suggesting the optimizer is effective under realistic hardware constraints.
  • The work frames the effort as a hardware-software co-design, emphasizing feasibility of feedback-driven online learning rules that can be embedded directly in silicon.

Abstract

On-chip learning is key to scalable and adaptive neuromorphic systems, yet existing training methods are either difficult to implement in hardware or overly restrictive. However, recent studies show that feedback-control optimizers can enable expressive, on-chip training of neuromorphic devices. In this work, we present a proof-of-concept implementation of such feedback-control optimizers on a mixed-signal neuromorphic processor. We assess the proposed approach in an In-The-Loop(ITL) training setup on both a binary classification task and the nonlinear Yin-Yang problem, demonstrating on-chip training that matches the performance of numerical simulations and gradient-based baselines. Our results highlight the feasibility of feedback-driven, online learning under realistic mixed-signal constraints, and represent a co-design approach toward embedding such rules directly in silicon for autonomous and adaptive neuromorphic computing.