Publication: Integral fuzzy sliding mode controller for hydraulic system using neural network modelling
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Abstract
In this paper, a hydraulic motor controller is designed with a fuzzy supported integral sliding
mode algorithm. The hydraulic system used in the study was modeled using artificial neural
networks. Ability of handling nonlinearity of systems makes sliding mode controller to be a good
choose for this system. It is thought that the robustness of the system against uncertainties can be
achieved with the help of an integral sliding mode controller. The basic concept of the suggested
control method is to use fuzzy logic for adaptation of the integral sliding mode control switching
gain. Such adjustment reduces the chattering that is the most problem of classical sliding mode
control. The equivalent control is computed with utilizing the radial basis function neural
network. The simulation results of the presented method are compared with the results of the PID
controller whose parameters were obtained by means of a genetic algorithm (GA) and particle
swarm optimization (PSO). It proved that it is more efficient to control the hydraulic system with
integral fuzzy sliding mode control using neural network.
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AK A., Yılmaz E., Katrancıoğlu S., "Integral Fuzzy Sliding Mode Controller for Hydraulic System Using Neural Network Modelling", GAZI UNIVERSITY JOURNAL OF SCIENCE, cilt.36, sa.3, ss.1187-1198, 2023
