Abstract
In a Power plant with a Distributed Control System ( DCS ), process parameters are continuously stored in
databases at discrete intervals. The data contained in these databases may not appear to contain valuable
relational information but practically such a relation exists. The large number of process parameter values
are changing with time in a Power Plant. These parameters are part of rules framed by domain experts for
the expert system. With the changes in parameters there is a quite high possibility to form new rules using
the dynamics of the process itself. We present an efficient algorithm that generates all significant rules
based on the real data. The association based algorithms were compared and the best suited algorithm for
this process application was selected. The application for the Learning system is studied in a Power Plant
domain. The SCADA interface was developed to acquire online plant data.
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