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首页> 外文期刊>IEEE Transactions on Control Systems Technology >Robust Levitation Control for Linear Maglev Rail System Using Fuzzy Neural Network
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Robust Levitation Control for Linear Maglev Rail System Using Fuzzy Neural Network

机译:基于模糊神经网络的磁悬浮列车的鲁棒悬浮控制。

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摘要

The levitation control in a linear magnetic-levitation (Maglev) rail system is a subject of considerable scientific interest because of highly nonlinear and unstable behaviors. This study mainly designs a robust fuzzy–neural-network control (RFNNC) scheme for the levitated positioning of the linear Maglev rail system with nonnegative inputs. In the model-free RFNNC system, an online learning ability is designed to cope with the problem of chattering phenomena caused by the sign action in backstepping control (BSC) design and to ensure the stability of the controlled system without the requirement of auxiliary compensated controllers despite the existence of uncertainties. Moreover, the nonnegative outputs of the RFNNC system can be directly supplied to electromagnets in the Maglev system without complicated control transformations for relaxing strict constrains in conventional model-based control methodologies. The effectiveness of the proposed control schemes for the levitation control of a Maglev system is verified by numerical simulations and experimental results, and the superiority of the RFNNC system is indicated in comparison with the BSC system.
机译:线性磁悬浮(Maglev)轨道系统中的悬浮控制由于高度非线性和不稳定的行为而引起了广泛的科学兴趣。这项研究主要为带有非负输入的线性磁悬浮轨道系统的悬浮定位设计了一种鲁棒的模糊神经网络控制(RFNNC)方案。在无模型的RFNNC系统中,设计了一种在线学习能力,以解决由后推控制(BSC)设计中的符号动作引起的颤动现象问题,并确保受控系统的稳定性而无需辅助补偿控制器。尽管存在不确定性。此外,RFNNC系统的非负输出可以直接提供给磁悬浮系统中的电磁体,而无需进行复杂的控制转换即可放松传统基于模型的控制方法中的严格约束。数值仿真和实验结果验证了所提出的控制方案对磁悬浮系统悬浮控制的有效性,并与BSC系统相比,表明了RFNNC系统的优越性。

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