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国家自然科学基金(604740044)

作品数:2 被引量:21H指数:2
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Application of Smith Predictor Based on Single Neural Network in Cold Rolling Shape Control被引量:15
2009年
Flatness is one of the most important criterion factors to evaluate the quality of the steel strip. To improve the strip' s flatness quality, the most frequently used methodology is to employ the closed-loop automatic shape control system. However, in the shape control system, the shape-meter is always installed at the down way of the exit of the cold rolling mill and can not sense the changes of the strip flatness in the rolling gap directly. This kind of installation results in the delay of the feedback in the control system. Therefore, the stability and response performance of the system are strongly affected by the delay. At present, there is still no mature way to design controllers for systems with time delay. Although the conventional PID controller used in most practical applications has the capability to compensate the delay, the effect of the compensation is limited, especially for the systems with long time delay. Smith predictor, as a compensator for solving this problem, is now widely used in industry systems. However, the request of highly precise model of the system and the poor adaptive performance to the changes of related parameters limit the application of the Smith predictor in practice. In order to overcome the drawbacks of the Smith predictor, a new Smith predictor based on single neural network PID (SNN-PID) is proposed. Because the single neural network is employed into the Smith predictor to improve the controller's self-adaptability, the adaptive capability to the varying parameters of the system is improved. Meanwhile, for the purpose of solving the problems such as time-consuming and complicated calculation of the neural networks in real time, the learning coefficient of neural network is divided into several stages as usually done in expert control system. Therefore, the control system can obtain fast response due to the improved calculation speed of the neural networks. In order to validate the performance of the proposed controller, the experiment is conducted on the shape c
WANG YiqunSUN FDLIU JianSUN MenghuiXIE Yihan
PID神经网络在电液弯辊伺服控制系统中的应用被引量:6
2008年
针对电液弯辊伺服控制系统,设计了PID神经网络控制器。该控制器不仅具备传统PID控制器结构简单、参数物理意义明确等优点,而且具有神经网络的自适应和自学习能力,能够在线调整相关参数,使控制系统表现出良好的鲁棒性和控制性能。仿真和实验均证明了其有效性。
王益群孙福
关键词:伺服控制PID神经网络
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