2016 24th Iranian Conference on Electrical Engineering (ICEE) 2016
DOI: 10.1109/iraniancee.2016.7585674
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Identification and fuzzy-PI controller design for a novel claw pole eddy current dynamometer in wide speed range

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Cited by 2 publications
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“…Moreover, Zhao et al [14] designed an ANN (Artificial Neural Network) for MPC for damping DC voltage smaller steady-state error and a dynamic voltage overshoot on aircraft systems. Yan et al [15] handled the NMP [2] PD controller Air bearing speed 3 Fountaine [3] PID control Load of an ECD 4 Simeu et al [4] Two-Observer based nonlinear compensator Angular speed of an eddy current brake 5 Gosline et al [5] Time domain passivity Position of a haptic interface 6 Anwar [6] Sliding mode control Torque of and Eddy current dynamometer 7 Roozbehani et al [7] Fuzzy + PID Torque of and Eddy current dynamometer 8 Yang et al [8] Model-Based control Vehicle speed using Eddy current retarder 9 Xu et al [9] Indirect adaptive Fuzzy + H∞ Shaft speed of Eddy current brake 10 Lee et al [10] Sliding mode control Vehicle slip ratio 11 Bunker et al [11] Multivariable Controller Torque and speed of Eddy current brake 12 Singh et al [12] SHLNN, Fuzzy Logic Rotor speed of Eddy current brake problem by using ANN supervised MPC system. RBNN coupled with MPC was demonstrated to be effective in the paper of Huang et al [16] for clutch control, Han et al [17] for optimization of wind turbines, Mirzaeinejad [18] for controlling of wheel slip in antilock braking systems, Jamil et al [19] for controlling control of vibrations in tall structure.…”
Section: Introductionmentioning
confidence: 99%
“…Moreover, Zhao et al [14] designed an ANN (Artificial Neural Network) for MPC for damping DC voltage smaller steady-state error and a dynamic voltage overshoot on aircraft systems. Yan et al [15] handled the NMP [2] PD controller Air bearing speed 3 Fountaine [3] PID control Load of an ECD 4 Simeu et al [4] Two-Observer based nonlinear compensator Angular speed of an eddy current brake 5 Gosline et al [5] Time domain passivity Position of a haptic interface 6 Anwar [6] Sliding mode control Torque of and Eddy current dynamometer 7 Roozbehani et al [7] Fuzzy + PID Torque of and Eddy current dynamometer 8 Yang et al [8] Model-Based control Vehicle speed using Eddy current retarder 9 Xu et al [9] Indirect adaptive Fuzzy + H∞ Shaft speed of Eddy current brake 10 Lee et al [10] Sliding mode control Vehicle slip ratio 11 Bunker et al [11] Multivariable Controller Torque and speed of Eddy current brake 12 Singh et al [12] SHLNN, Fuzzy Logic Rotor speed of Eddy current brake problem by using ANN supervised MPC system. RBNN coupled with MPC was demonstrated to be effective in the paper of Huang et al [16] for clutch control, Han et al [17] for optimization of wind turbines, Mirzaeinejad [18] for controlling of wheel slip in antilock braking systems, Jamil et al [19] for controlling control of vibrations in tall structure.…”
Section: Introductionmentioning
confidence: 99%
“…He proposed taking the wheel speed, pressure, ECB voltage, generator output and drive each wheel motion with a sliding mode control (SMC) algorithm. Roozbehani et al [7] proposed a technique that combines Fuzzy and PI control approaches. Yang et al [8] proposed model-based control for Eddy Current Brakes.…”
Section: Introductionmentioning
confidence: 99%