IEEE Open Journal of Circuits and Systems (Jan 2022)

Demonstrating Analog Inference on the BrainScaleS-2 Mobile System

  • Yannik Stradmann,
  • Sebastian Billaudelle,
  • Oliver Breitwieser,
  • Falk Leonard Ebert,
  • Arne Emmel,
  • Dan Husmann,
  • Joscha Ilmberger,
  • Eric Muller,
  • Philipp Spilger,
  • Johannes Weis,
  • Johannes Schemmel

DOI
https://doi.org/10.1109/OJCAS.2022.3208413
Journal volume & issue
Vol. 3
pp. 252 – 262

Abstract

Read online

We present the BrainScaleS-2 mobile system as a compact analog inference engine based on the BrainScaleS-2 ASIC and demonstrate its capabilities at classifying a medical electrocardiogram dataset. The analog network core of the ASIC is utilized to perform the multiply-accumulate operations of a convolutional deep neural network. At a system power consumption of 5.6W, we measure a total energy consumption of $\mathrm {192 ~\mu \text {J} }$ for the ASIC and achieve a classification time of 276 $\mu$ s per electrocardiographic patient sample. Patients with atrial fibrillation are correctly identified with a detection rate of (93.7 ± 0.7)% at (14.0 ± 1.0)% false positives. The system is directly applicable to edge inference applications due to its small size, power envelope, and flexible I/O capabilities. It has enabled the BrainScaleS-2 ASIC to be operated reliably outside a specialized lab setting. In future applications, the system allows for a combination of conventional machine learning layers with online learning in spiking neural networks on a single neuromorphic platform.

Keywords