120 research outputs found
Case study: Bio-inspired self-adaptive strategy for spike-based PID controller
A key requirement for modern large scale
neuromorphic systems is the ability to detect and diagnose faults
and to explore self-correction strategies. In particular, to perform
this under area-constraints which meet scalability requirements
of large neuromorphic systems. A bio-inspired online fault
detection and self-correction mechanism for neuro-inspired PID
controllers is presented in this paper. This strategy employs a
fault detection unit for online testing of the PID controller; uses a
fault detection manager to perform the detection procedure
across multiple controllers, and a controller selection mechanism
to select an available fault-free controller to provide a corrective
step in restoring system functionality. The novelty of the
proposed work is that the fault detection method, using synapse
models with excitatory and inhibitory responses, is applied to a
robotic spike-based PID controller. The results are presented for
robotic motor controllers and show that the proposed bioinspired
self-detection and self-correction strategy can detect
faults and re-allocate resources to restore the controller’s
functionality. In particular, the case study demonstrates the
compactness (~1.4% area overhead) of the fault detection
mechanism for large scale robotic controllers.Ministerio de Economía y Competitividad TEC2012-37868-C04-0
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