FIELD: electricity.
SUBSTANCE: control includes control object, primary data processing unit, data input/output unit, PID-control algorithm implementation unit, system operation history unit, control method selection unit, simulation unit the basis of which is neuron network model of the process; at that, it includes the following: control unit based on neuron network; smart classifier unit. At that, control unit and smart classifier unit together with system operation history unit and simulation unit are combined into multiparameter control unit.
EFFECT: improving adaptation properties of the system owing to stabilising the temperature in different zones of the furnace, and improving the quality of the obtained product.
1 dwg
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Authors
Dates
2012-03-20—Published
2009-12-22—Filed