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An approach of Eddy Current Sensor Calibration in State Estimation for Maglev System

机译:磁悬浮系统状态估计中涡流传感器标定的一种方法

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Eddy current sensors are used in state estimation of the maglev system. However, the input output characteristic of the eddy current sensor is nonlinear and cannot be fit for the precision and time limit of the control system. So the Radial Basis Function (RBF) neural network is used to construct the inverse model of the eddy current sensor. The simplified adaptive algorithm for hidden layer structure and center value can quickly and accurately compute the structure and parameter of RBF network. And the eddy current sensor is calibrated. In the practical measurement, the method can satisfy the requirement of the control system. The calibration error is less than 0.7% and the linear range is extended.
机译:涡流传感器用于磁悬浮系统的状态估计。但是,涡流传感器的输入输出特性是非线性的,无法满足控制系统的精度和时间限制。因此,采用径向基函数神经网络(RBF)构造了涡流传感器的逆模型。隐层结构和中心值的简化自适应算法可以快速,准确地计算出RBF网络的结构和参数。并且涡流传感器已校准。在实际测量中,该方法可以满足控制系统的要求。校准误差小于0.7%,线性范围得到扩展。

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