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Supervised training of spiking neural networks for robust deployment on mixed-signal neuromorphic processors.
Büchel, Julian; Zendrikov, Dmitrii; Solinas, Sergio; Indiveri, Giacomo; Muir, Dylan R.
Afiliação
  • Büchel J; SynSense, Thurgauerstrasse 40, 8050, Zurich, Switzerland.
  • Zendrikov D; Institute of Neuroinformatics, University of Zurich and ETH Zurich, Winterthurerstrasse 190, 8057, Zurich, Switzerland.
  • Solinas S; Institute of Neuroinformatics, University of Zurich and ETH Zurich, Winterthurerstrasse 190, 8057, Zurich, Switzerland.
  • Indiveri G; Department of Biomedical Science, University of Sassari, Piazza Università, 21, 07100, Sassari, Sardegna, Italy.
  • Muir DR; SynSense, Thurgauerstrasse 40, 8050, Zurich, Switzerland.
Sci Rep ; 11(1): 23376, 2021 12 03.
Article em En | MEDLINE | ID: mdl-34862429
ABSTRACT
Mixed-signal analog/digital circuits emulate spiking neurons and synapses with extremely high energy efficiency, an approach known as "neuromorphic engineering". However, analog circuits are sensitive to process-induced variation among transistors in a chip ("device mismatch"). For neuromorphic implementation of Spiking Neural Networks (SNNs), mismatch causes parameter variation between identically-configured neurons and synapses. Each chip exhibits a different distribution of neural parameters, causing deployed networks to respond differently between chips. Current solutions to mitigate mismatch based on per-chip calibration or on-chip learning entail increased design complexity, area and cost, making deployment of neuromorphic devices expensive and difficult. Here we present a supervised learning approach that produces SNNs with high robustness to mismatch and other common sources of noise. Our method trains SNNs to perform temporal classification tasks by mimicking a pre-trained dynamical system, using a local learning rule from non-linear control theory. We demonstrate our method on two tasks requiring temporal memory, and measure the robustness of our approach to several forms of noise and mismatch. We show that our approach is more robust than common alternatives for training SNNs. Our method provides robust deployment of pre-trained networks on mixed-signal neuromorphic hardware, without requiring per-device training or calibration.
Assuntos

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Biomimética / Neurônios Limite: Animals / Humans Idioma: En Ano de publicação: 2021 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Biomimética / Neurônios Limite: Animals / Humans Idioma: En Ano de publicação: 2021 Tipo de documento: Article