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Modeling of gap sensor for high-speed maglev train based on RBF network

机译:基于RBF网络的高速磁悬浮列车间隙传感器建模

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The gap sensor plays an important role for electromagnetic levitation system which is a critical component of highspeed maglev train. Artificial neural network is a promising area in the development of intelligent sensors. In this paper, we present an model of gap sensor based on radial basis function (RBF) neural network. The proposed model based RBF scheme incorporates intelligence into the sensor. It is revealed from the simulation studies that this gap sensor model can provide correct gap within ±0.3mm error over a range of temperature variations from 20 °C to 80 °C. The experimental results show that the compensated gap signal meets the requirement of levitation control system.
机译:间隙传感器在电磁悬浮系统中起着重要作用,而电磁悬浮系统是高速磁悬浮列车的重要组成部分。人工神经网络是智能传感器发展中的一个有前途的领域。在本文中,我们提出了一种基于径向基函数(RBF)神经网络的间隙传感器模型。所提出的基于模型的RBF方案将智能纳入了传感器。从仿真研究中可以看出,该间隙传感器模型可以在20°C至80°C的温度变化范围内提供±0.3mm误差内的正确间隙。实验结果表明,补偿后的间隙信号满足悬浮控制系统的要求。

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