Skip to Main Content (Press Enter)

Logo UNISS
  • ×
  • Home
  • Degrees
  • Courses
  • Jobs
  • People
  • Outputs
  • Organizations
  • Third Mission
  • Expertise & Skills

Logo UNISS

|

UNIFIND

uniss.it
  • ×
  • Home
  • Degrees
  • Courses
  • Jobs
  • People
  • Outputs
  • Organizations
  • Third Mission
  • Expertise & Skills
  1. Outputs

Brain-inspired methods for achieving robust computation in heterogeneous mixed-signal neuromorphic processing systems

Academic Article
Publication Date:
2023
Short description:
Brain-inspired methods for achieving robust computation in heterogeneous mixed-signal neuromorphic processing systems / Zendrikov, D., Solinas, S., Indiveri, G.. - In: NEUROMORPHIC COMPUTING AND ENGINEERING. - ISSN 2634-4386. - 3:3(2023), p. 034002. [10.1088/2634-4386/ace64c]
abstract:
Neuromorphic processing systems implementing spiking neural networks with mixed signal analog/digital electronic circuits and/or memristive devices represent a promising technology for edge computing applications that require low power, low latency, and that cannot connect to the cloud for off-line processing, either due to lack of connectivity or for privacy concerns. However, these circuits are typically noisy and imprecise, because they are affected by device-to-device variability, and operate with extremely small currents. So achieving reliable computation and high accuracy following this approach is still an open challenge that has hampered progress on the one hand and limited widespread adoption of this technology on the other. By construction, these hardware processing systems have many constraints that are biologically plausible, such as heterogeneity and non-negativity of parameters. More and more evidence is showing that applying such constraints to artificial neural networks, including those used in artificial intelligence, promotes robustness in learning and improves their reliability. Here we delve even more into neuroscience and present network-level brain-inspired strategies that further improve reliability and robustness in these neuromorphic systems: we quantify, with chip measurements, to what extent population averaging is effective in reducing variability in neural responses, we demonstrate experimentally how the neural coding strategies of cortical models allow silicon neurons to produce reliable signal representations, and show how to robustly implement essential computational primitives, such as selective amplification, signal restoration, working memory, and relational networks, exploiting such strategies. We argue that these strategies can be instrumental for guiding the design of robust and reliable ultra-low power electronic neural processing systems implemented using noisy and imprecise computing substrates such as subthreshold neuromorphic circuits and emerging memory technologies.
Iris type:
1.1 Articolo in rivista
Keywords:
Neuromophic engineering, neural device, neural network, winner-take-all, neural encoding, poplation coding
List of contributors:
Zendrikov, D.; Solinas, S.; Indiveri, G.
Authors of the University:
SOLINAS Sergio Mauro Gavino
Handle:
https://iris.uniss.it/handle/11388/317609
Full Text:
https://iris.uniss.it//retrieve/handle/11388/317609/323152/Zendrikov_2023_Neuromorph._Comput._Eng._3_034002.pdf
Published in:
NEUROMORPHIC COMPUTING AND ENGINEERING
Journal
  • Overview

Overview

URL

https://iopscience.iop.org/article/10.1088/2634-4386/ace64c
  • Use of cookies

Powered by VIVO | Designed by Cineca | 26.5.2.0