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arxiv: 2511.12297 · v1 · pith:IXJY3L4Rnew · submitted 2025-11-15 · 📡 eess.SP

A Linear Implementation of an Analog Resonate-and-Fire Neuron

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keywords linearneuronresonate-and-fireanalogcommunicationdynamicsneuronsoscillatory
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Oscillatory dynamics have recently proven highly effective in machine learning (ML), particularly through State-Space-Models (SSM) that leverage structured linear recurrences for long-range temporal processing. Resonate-and-Fire neurons capture such oscillatory behavior in a spiking framework, offering strong expressivity with sparse event-based communication. While early analog RAF circuits employed nonlinear coupling and suffered from process sensitivity, modern ML practice favors linear recurrence. In this work, we introduce a resonate-and-fire (RAF) neuron, built in 22nm Fully-Depleted Silicon-on-Insulator technology, that aligns with SSM principles while retaining the efficiency of spike-based communication. We analyze its dynamics, linearity, and resilience to Process, Voltage, and Temperature variations, and evaluate its power, performance, and area trade-offs. We map the characteristics of our circuit into a system-level simulation where our RAF neuron is utilized in a keyword-spotting task, showing that its non-idealities do not hinder performance. Our results establish RAF neurons as robust, energy-efficient computational primitives for neuromorphic hardware.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Adaptive-Frequency Resonate-and-Fire Neurons for Spectral Estimation of Streaming Radar Signals

    cs.NE 2026-06 unverdicted novelty 6.0

    Adaptive-frequency resonate-and-fire neurons perform sample-by-sample spectral estimation for FMCW radar, with memory scaling by number of targets rather than signal length.