T. Ohashi et M. Motomura, Expert system of cold forging defects using risk analysis tree network with fuzzy language, J MATER PR, 107(1-3), 2000, pp. 260-266
The authors have developed an expert system for detecting the risk of forgi
ng defects and their causes in cold processes. The system employs risk anal
ysis for a computer-aided process planning system. In addition, the authors
investigated topics that affect typical forging defects. Based on the inve
stigation, the authors developed risk analysis tree networks to evaluate th
e risk potential and describe the risk potential by fuzzy language [G. J. S
chmucker, Translated to Japanese by T. Onizawa, Fuzzy Set, Natural Language
and Risk Analysis, Keigaku-Shuppan (in Japanese)]. The risk analysis tree
networks are developed for each kind of typical defect and the location on
the forging part at which they occur. The risk analysis network is a hierar
chic network, and its nodes represent the topics that affect forging defect
s. The value of the node represents the "risk" (e.g., the "certainty the to
pic comes true"). First, the computer-aided process planning system uses ru
les in its knowledge base and the result of FE analysis for the estimation.
Second, the risk rate of the upper node is determined by the average rates
of its daughter nodes with weight values. Thus, the risk that a certain de
fect occurs at a certain location is estimated through executing the above
procedure from the bottom to the top. Finally, the expert system displays t
he nodes that have higher risk values. They are considered the main causes
of defects. The system can rapidly indicate rough but appropriate causes an
d the location of forging defects. (C) 2000 Elsevier Science B.V. All right
s reserved.