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Administration of engineering systems and technological processes
Adaptive neural network tuner of pid-controller for heating furnaces control
A. I. Glushchenko Branch of The Moscow State Institute of Steel and Alloys Starooskol'skii Technological Institute
Abstract:
The existing neural network tuner of PI-controller is improved in such a way that to be able to adjust parameters of a PID-controller. The new structure of a neural network for the tuner is defined for this purpose, its rule base is updated, and the stability criterion is proposed for the system with the tuner and the PID-controller. The new version of the tuner is applied to control a typical heating furnace during numerical and full-scale experiments in order to maintain the required quality of transients under the condition of the furnace parameters non-stationarity. It made it possible to reduce the furnace power consumption by 8,4% through the full-scale experiments in comparison to common PID-controller.
Keywords:
non-stationary heating furnaces, neural network tuner, PID-controller, sustainability, rule base.
Received: 06.08.2018 Revised: 17.09.2018 Accepted: 17.10.2018
Citation:
A. I. Glushchenko, “Adaptive neural network tuner of pid-controller for heating furnaces control”, Probl. Upr., 2019, no. 2, 60–69
Linking options:
https://www.mathnet.ru/eng/pu1132 https://www.mathnet.ru/eng/pu/v2/p60
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