Neuromorphic analog spiking-modulator for audio signal processing

While CMOS scaling is currently reaching its limits in power dissipation and circuit density, the analogy between biology and silicon is emerging as a solution to ultra-low-power signal processing. Urgent applications involving artificial vision and audition, including intelligent sensing, appeal or...

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Veröffentlicht in:Analog integrated circuits and signal processing 2021, Vol.106 (1), p.261-276
Hauptverfasser: Ferreira, Pietro M., Nebhen, Jamel, Klisnick, Geoffroy, Benlarbi-Delai, Aziz
Format: Artikel
Sprache:eng
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Zusammenfassung:While CMOS scaling is currently reaching its limits in power dissipation and circuit density, the analogy between biology and silicon is emerging as a solution to ultra-low-power signal processing. Urgent applications involving artificial vision and audition, including intelligent sensing, appeal original energy efficient and ultra-miniaturized silicon-based solutions. While state-of-the-art is focusing on digital-oriented solutions, this paper proposes a neuromorphic analog signal processor using Izhikevich-based artificial neurons in an analog spiking modulator. A varicap-based artificial neuron is explored reducing the silicon area to 98.6 μ m 2 and the substrate leakage to a 1.95 fJ / spike efficiency. Post-layout simulation results are presented to investigate the high-resolution, high-speed, and full-scale dynamic range for audio signal processing applications. The proposal demonstrates a 9 bits spiking-modulator resolution, a maximum of 8 fJ / conv efficiency, and a root–mean–square error of 0.63 mV RMS .
ISSN:0925-1030
1573-1979
DOI:10.1007/s10470-020-01729-3