Title of article
Qualitative behavior rules for the cold rolling process extracted from trained ANN via the FCANN method
Author/Authors
Zلrate، نويسنده , , Luis E. and Dias، نويسنده , , Sérgio M.، نويسنده ,
Pages
14
From page
718
To page
731
Abstract
Nowadays, artificial neural networks (ANN) are being widely used in the representation of different systems and physics processes. In this paper, a neural representation of the cold rolling process will be considered. In general, once trained, the networks are capable of dealing with operational conditions not seen during the training process, keeping acceptable errors in their responses. However, humans cannot assimilate the knowledge kept by those networks, since such knowledge is implicit and difficult to be extracted. For this reason, the neural networks are considered a “black-box”.
s work, the FCANN method based on formal concept analysis (FCA) is being used in order to extract and represent knowledge from previously trained ANN. The new FCANN approach permits to obtain a non-redundant canonical base with minimum implications, which qualitatively describes the process. The approach can be used to understand the relationship among the process parameters through implication rules in different operational conditions on the load-curve of the cold rolling process. Metrics for evaluation of the rules extraction process are also proposed, which permit a better analysis of the results obtained.
Keywords
NEURAL NETWORKS , Cold rolling process , Knowledge extraction , Machine Learning , Formal Concept Analysis , Steel Industry
Journal title
Astroparticle Physics
Record number
2046551
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