Title :
A Framework for Self-Diagnosis and Condition Monitoring for Embedded Systems Using a SOM-Based Classifier
Author :
Sartain, P. ; Hopkins, A.B.T. ; McDonald-Mair, K.D. ; Howells, W. G J
Author_Institution :
Dept. of Comput. & Electron. Syst., Essex Univ., Colchester
Abstract :
This paper presents a system level framework for system-on-chip (SoC) based embedded devices that may include adaptive and reconfigurable elements. Current development support and debugging solutions are highly dependant on off-line post-mortem style inspection, and even those that utilise tracing for real-time and schedule-critical systems rely on external development tools and environments. This new framework introduces an AI-lead infrastructure that has the potential to reduce much of the development effort while complementing existing debugging circuits. Specifically this paper investigates how to use a Kohonen self-organising map (SOM) as a classifier, and shows a preliminary investigation into how to determine the quality of a map after training. This classifier is a first step in diagnosing failure, degradation and anomalies (i.e. provides condition monitoring) in an embedded system from a system level point of view, and in the larger task of self-diagnosis of an embedded system.
Keywords :
condition monitoring; self-organising feature maps; system-on-chip; Kohonen self-organising map; SOM-based classifier; adaptive elements; condition monitoring; embedded systems; offline post-mortem style inspection; reconfigurable elements; schedule-critical systems; self-diagnosis framework; system-on-chip embedded devices; Bandwidth; Condition monitoring; Costs; Debugging; Embedded system; Hardware; Inspection; Pins; Real time systems; System-on-a-chip; Kohonen self-organising map; SOM classifier; System-on-Chip; novelty filter; system level debugging;
Conference_Titel :
Adaptive Hardware and Systems, 2008. AHS '08. NASA/ESA Conference on
Conference_Location :
Noordwijk
Print_ISBN :
978-0-7695-3166-3
DOI :
10.1109/AHS.2008.53