Optimization of a Knowledge Based Design System Using AHP & Pattern Recognition
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Abstract
Present work addresses the problem of identifying the existing parts that, are
similar, in one or many characteristics, to a new part at the design stage .The
environment is UG/NX (3.0) where manufacturing partners share product related
data to come up with new, customized, high quality products within a minimal time
period or we can say with minimal lead times. The proposed method is based on the
principles of Group Technology, Pattern Recognition and on the definition of
Similarity of critical design attributes. A two step procedure is proposed: (First) A
search procedure, which acquires and processes the search intent to retrieve the
similar parts. (Second) A sorting procedure, which ranks these parts on the basis of
their similarity using Similarity Index to the previously teach patterns. The first one
is based on Binary Conversion and template matching using Analytical Hierarchy
Process while the other one uses the ranking criteria based on Comparative index.
The approach employs a systematic procedure to identify the closest similarity once
the weights has been modified and generated for a particular file. A software system
using C and Object Oriented Technology has been developed for Pattern Recognition
using AHP concept. A Neural Net code based on Feed Forward Network for Pattern
recognition is also developed to compare the capability of the AHP in the field of
Group Technology. Same inputs were given to Neural Network code and the outputs
were compared with those from AHP. Finally the nearness of outputs is compared for
the weighted samples.
