Publication: Brain-inspired methods for achieving robust computation in heterogeneous mixed-signal neuromorphic processing systems
Brain-inspired methods for achieving robust computation in heterogeneous mixed-signal neuromorphic processing systems
Date
Date
Date
Citations
Zendrikov, D., Solinas, S., & Indiveri, G. (2023). Brain-inspired methods for achieving robust computation in heterogeneous mixed-signal neuromorphic processing systems. Neuromorphic Computing and Engineering, 3(3), 034002. https://doi.org/10.1088/2634-4386/ace64c
Abstract
Abstract
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 achi
Metrics
Downloads
Views
Additional indexing
Creators (Authors)
Journal/Series Title
Journal/Series Title
Journal/Series Title
Volume
Volume
Volume
Number
Number
Number
Page range/Item number
Page range/Item number
Page range/Item number
Item Type
Item Type
Item Type
Dewey Decimal Classifikation
Dewey Decimal Classifikation
Dewey Decimal Classifikation
Keywords
Language
Language
Language
Publication date
Publication date
Publication date
Date available
Date available
Date available
ISSN or e-ISSN
ISSN or e-ISSN
ISSN or e-ISSN
OA Status
OA Status
OA Status
Free Access at
Free Access at
Free Access at
Publisher DOI
Metrics
Downloads
Views
Citations
Zendrikov, D., Solinas, S., & Indiveri, G. (2023). Brain-inspired methods for achieving robust computation in heterogeneous mixed-signal neuromorphic processing systems. Neuromorphic Computing and Engineering, 3(3), 034002. https://doi.org/10.1088/2634-4386/ace64c