Ontology Representation and Inference Based on State Controlled Coloured Petri Nets
Proceedings of the 2011 conference on Information Modelling and Knowledge Bases XXII
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It is rather limited for fuzzy production rules to describe the vague and modified knowledge of expert system, an automatic fuzzy reasoning and learning framework based on fuzzy Petri net are presented for design a dynamic expert knowledge system in this paper. Fuzzy Petri net may describe the relative degree of each proposition in the antecedent contributing to the consequent accurately. In order to reason and learn expediently, FPN without loop is transformed into hierarchy model and continuous functions to approximate transition firing and fuzzy reasoning. The self-adaptation learning techniques based on back-propagation are used to learn and train parameters of fuzzy production rules of FPN. Simulation experiment shows that the improved adaptive learning techniques can make rule parameters obtain optimal or at least nearly optimal convergence rapidly. Key words: Expert system, fuzzy Petri net, dynamic fuzzy reasoning, fuzzy production rules, neural network, self- adaptation learning