Title of article
Using fuzzy self-organising maps for safety critical systems
Author/Authors
Zeshan Kurd، نويسنده , , Tim P. Kelly، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2007
Pages
21
From page
1563
To page
1583
Abstract
This paper defines a type of constrained artificial neural network (ANN) that enables analytical certification arguments whilst retaining valuable performance characteristics. Previous work has defined a safety lifecycle for ANNs without detailing a specific neural model. Building on this previous work, the underpinning of the devised model is based upon an existing neuro-fuzzy system called the fuzzy self-organising map (FSOM). The FSOM is type of ‘hybrid’ ANN which allows behaviour to be described qualitatively and quantitatively using meaningful expressions. Safety of the FSOM is argued through adherence to safety requirements—derived from hazard analysis and expressed using safety constraints. The approach enables the construction of compelling (product-based) arguments for mitigation of potential failure modes associated with the FSOM. The constrained FSOM has been termed a ‘safety critical artificial neural network’ (SCANN). The SCANN can be used for non-linear function approximation and allows certified learning and generalisation for high criticality roles. A discussion of benefits for real-world applications is also presented.
Keywords
Artificial neural network , Fuzzy logic , Neuro-fuzzy , Non-linear function approximation , Constrained learning , Failure modes , Failure modes and effects analysis (FMEA) , Safety , critical , Safety argument , Constraints
Journal title
Reliability Engineering and System Safety
Serial Year
2007
Journal title
Reliability Engineering and System Safety
Record number
1187703
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