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首页> 外文期刊>Mechatronics: The Science of Intelligent Machines >Adaptive and fuzzy neural network sliding-mode controllers for motor-quick-return servomechanism
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Adaptive and fuzzy neural network sliding-mode controllers for motor-quick-return servomechanism

机译:电机快速返回伺服机构的自适应模糊神经网络滑模控制器

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摘要

The control performance of an adaptive and a fuzzy neural network (FNN) sliding-mode controlled quick-return mechanism, which is driven by a field-oriented control permanent magnet (PM) synchronous servo motor, is presented in this study. First, Hamilton's principle and Lagrange multiplier method are applied to formulate the equation of motion. Then, based on the principle of the sliding-mode control, an adaptive sliding-mode controller is developed to control the slider position of the motor-mechanism coupled system. Moreover, an FNN sliding-mode controller is implemented to control the motor-quick-return servomechanism for comparison. Finally, the effectiveness of the proposed adaptive and FNN sliding-mode controllers are demonstrated by some simulated and experimental results. Compared with the adaptive sliding-mode controller, the FNN sliding-mode controller results much less tracking error with improved control performance.
机译:提出了一种自适应和模糊神经网络(FNN)滑模控制的快速返回机制的控制性能,该机制由磁场定向永磁(PM)同步伺服电机驱动。首先,采用汉密尔顿原理和拉格朗日乘数法来制定运动方程。然后,基于滑模控制的原理,开发了一种自适应滑模控制器来控制电机-机械耦合系统的滑块位置。此外,为了进行比较,实现了FNN滑模控制器来控制电机快速返回伺服机构。最后,通过一些仿真和实验结果证明了所提出的自适应和FNN滑模控制器的有效性。与自适应滑模控制器相比,FNN滑模控制器产生的跟踪误差小得多,控制性能也得到了改善。

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