Compensating inhomogeneities of neuromorphic VLSI devices via
short-term synaptic plasticity
J. Bill, K. Schuch, D. Brüderle, J. Schemmel, W. Maass, and K. Meier
Abstract:
Recent developments in neuromorphic hardware engineering make mixed-signal VLSI
neural network models promising candidates for neuroscientific research tools
and massively parallel computing devices, especially for tasks which exhaust
the computing power of software simulations. Still, like all analog hardware
systems, neuromorphic models suffer from a constricted configurability and
production-related fluctuations of device characteristics. Since also future
systems, involving ever-smaller structures, will inevitably exhibit such
inhomogeneities on the unit level, self-regulation properties become a
crucial requirement for their successful operation. By applying a cortically
inspired self-adjusting network architecture, we show that the activity of
generic spiking neural networks emulated on a neuromorphic hardware system
can be kept within a biologically realistic firing regime and gain a
remarkable robustness against transistorlevel variations. As a first approach
of this kind in engineering practice, the short-term synaptic depression and
facilitation mechanisms implemented within an analog VLSI model of I&F
neurons are functionally utilized for the purpose of network level
stabilization. We present experimental data acquired both from the hardware
model and from comparative software simulations which prove the applicability
of the employed paradigm to neuromorphic VLSI devices.
Reference: J. Bill, K. Schuch, D. Brüderle, J. Schemmel, W. Maass, and
K. Meier.
Compensating inhomogeneities of neuromorphic VLSI devices via short-term
synaptic plasticity.
Frontiers in Computational Neuroscience, 4:1-14, 2010.
article 129.