The dynamic response of an adaptive fuzzy neural network (FNN) controlled quick-return mechanism, which is driven by a permanent magnet (PM) synchronous servo motor, is described in this study. The crank and disk of the quick-return mechanism are assumed to be rigid. First, Hamilton’s principle and Lagrange multiplier method are applied to formulate the mathematical model of motion. Then, based on the principle of computed torque, an adaptive controller is developed to control the position of a slider of the quick-return servomechanism. Moreover, since the selection of control gain of the adaptive controller has a significant effect on the system performance, an adaptive FNN controller is proposed to control the quick-return servomechanism. In the proposed adaptive FNN controller, an FNN is adopted to facilitate the adjustment of control gain on line. Simulated and experimental results due to periodic step and sinusoidal commands show that the dynamic behavior of the proposed adaptive FNN control system are robust with regard to parametric variations and external disturbances.
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June 2001
Technical Papers
Quick-Return Servomechanism With Adaptive Fuzzy Neural Network Control
Rong-Fong Fung, Professor,
Rong-Fong Fung, Professor
Department of Mechanical and Automation Engineering, National Kaohsiung First University of Science and Technology, University Road, Yuanchau, Kaohsiung, Taiwan 824, ROC
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Faa-Jeng Lin, Professor,
Faa-Jeng Lin, Professor
Department of Electrical Engineering, Chung Yuan Christian University, Chung Li 320, Taiwan
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Rong-Jong Wai, Assistant Professor
Rong-Jong Wai, Assistant Professor
Department of Electrical Engineering Yuan Ze University, Chung Li 320, Taiwan
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Rong-Fong Fung, Professor
Department of Mechanical and Automation Engineering, National Kaohsiung First University of Science and Technology, University Road, Yuanchau, Kaohsiung, Taiwan 824, ROC
Faa-Jeng Lin, Professor
Department of Electrical Engineering, Chung Yuan Christian University, Chung Li 320, Taiwan
Rong-Jong Wai, Assistant Professor
Department of Electrical Engineering Yuan Ze University, Chung Li 320, Taiwan
Contributed by the Dynamic Systems and Control Division for publication in the JOURNAL OF DYNAMIC SYSTEMS, MEASUREMENT, AND CONTROL. Manuscript received by the Dynamic Systems and Control Division February 29, 2000. Associate Editor: R. Langari.
J. Dyn. Sys., Meas., Control. Jun 2001, 123(2): 253-264 (12 pages)
Published Online: February 29, 2000
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Received:
February 29, 2000
Citation
Fung, R., Lin, F., and Wai, R. (February 29, 2000). "Quick-Return Servomechanism With Adaptive Fuzzy Neural Network Control ." ASME. J. Dyn. Sys., Meas., Control. June 2001; 123(2): 253–264. https://doi.org/10.1115/1.1368113
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