Active magnetic bearing (AMB) systems have attracted much attention in the high speed rotating machinery industry. This paper presents an application of discrete-time model predictive control (MPC) subject to input/states constraints to control an AMB system based on linear time-invariant (LTI) model. The main control objectives are to levitate the rotor shaft of the AMB system while tracking a reference trajectory and to reject possible disturbances without violating the input and state constraints. A nonlinear (NL) model of the AMB system is considered; at each sampling instant, a finite horizon MPC problem is solved to compute the optimal control input. The performance and the efficiency of the proposed MPC is validated via simulation and comparison with another classical PID controller.
Research Member
          
      Research Department
              
          Research Year
              2020
          Research Journal
              2020 IEEE 7th International Conference on Industrial Engineering and Applications (ICIEA)
          Research Publisher
              NULL
          Research Vol
              NULL
          Research Rank
              3
          Research_Pages
              NULL
          Research Website
              NULL
          Research Abstract
              
 
          