Title
SSO-LSM: A Sparse and Self-Organizing architecture for Liquid State Machine based neural processors
Abstract
The Liquid State Machine (LSM) is a powerful recurrent spiking neural network model that provides an appealing paradigm of computation for realizing brain-inspired neural processors. The conventional LSM model incorporates a random fixed recurrent reservoir as a general pre-processing kernel and a trainable readout layer which extracts the firing activities embedded in the reservoir to facilitate pattern recognition. To realize adaptive LSM-based neural processors, we propose a novel Sparse and Self-Organizing LSM (SSO-LSM) architecture with a low-overhead hardware-friendly Spike-Timing Dependent Plasticity (STDP) mechanism for efficient on-chip reservoir tuning. A data-driven optimization flow is presented to implement the targeted STDP rule efficiently in digital logic with extremely low bit resolutions. The proposed STDP rule not only boosts learning performance, but also induces desirable self-organizing behaviors in the reservoir that naturally lead to a sparser recurrent network. Furthermore, the SSO-LSM architecture incorporates a runtime reconfiguration scheme for sparsifying the synaptic connections projected from the reservoir to the readout layer based upon the monitored variances of firing activities in the reservoir. Using the spoken English letters adopted from the TI46 speech corpus as a benchmark, we demonstrate that the SSO-LSM architecture boosts the average learning performance rather significantly by 2.0% while reducing energy dissipation by 25% compared to a baseline LSM design with little extra hardware overhead on a Xilinx Virtex-6 FPGA.
Year
DOI
Venue
2016
10.1145/2950067.2950100
2016 IEEE/ACM International Symposium on Nanoscale Architectures (NANOARCH)
Keywords
Field
DocType
liquid state machine,hardware implementation,STDP,sparse and self-organizing architecture
Kernel (linear algebra),Computer science,Parallel computing,Field-programmable gate array,Electronic engineering,Liquid state machine,Boolean algebra,Reservoir computing,Spiking neural network,Control reconfiguration,Computation
Conference
ISSN
ISBN
Citations 
2327-8218
978-1-4673-8927-3
6
PageRank 
References 
Authors
0.48
12
3
Name
Order
Citations
PageRank
Yingyezhe Jin1413.42
Yu Liu2368.64
Peng Li31912152.85