Maglev Train Signal Processing Architecture Based on Nonlinear Discrete Tracking Differentiator
Abstract
:1. Introduction
- (1)
- Since there exist inevitable electromagnetic disturbances, which exert an influence on the working condition of the gap sensor, the gap sensor generates not only real signals that reflect the real gap information, but also noise that may influence the normal functioning of the controller if this noised gap sensor is utilized directly as the feedback without preprocessing. To minimize the influence caused by this kind of noise disturbance, a gap sensor signal must be filtered before it is used by the controller. At present, most commonly used filters for gap signals are simple first-order low-pass filters, for which the filtering performance and the real-time requirement contradict each other. To enhance the filter’s performance, a big filtering coefficient is required, whereas a big filtering coefficient usually causes a large phase lag that undermines the stabilities of the levitation system [3]. A new filtering strategy with higher filtering performance and smaller phase lag is needed.
- (2)
- Train-track coupled vibration is a special phenomenon for a maglev system due to the elastic property of the steel track [4]. It is found that if the information of the movement of the track is obtained for computation of the control output, this vibration can be effectively suppressed [5,6]. Since the differential of gap is the relative velocity between the electromagnet and the track, this information is effective for suppression of this kind of vibration. However, the acquisition of differential for a discrete signal is a difficult task. The differential of a given discrete signal can amplify the noise, especially the high frequency noise. Sometimes, the real differential result can be overwhelmed by this amplified noise. Therefore, a differentiator that can acquire the differential for signals within the given frequency region without amplifying the high frequency noise is needed.
- (3)
- Model based signal processing strategy is effective in filtering and obtaining derivative signals under the condition that the object model is time invariant and precisely known a priori; however, the maglev model is sometimes not precise and is always time varying due to the changing passenger amount and the varying relative position between the electromagnet and the track [7]. For this reason, the signal processing method with less dependence on the system model is more suitable for the maglev train levitation system.
2. Signal Processing Architecture Based on Tracking Differentiator
- there is no magnetic flux leakage,
- there is no external disturbance force,
- there is only the vertical movement of the electromagnet,
- the track is rigid,
3. Nonlinear Second Order Discrete Tracking Differentiator Based on Boundary Characteristics
3.1. Preliminaries of the Discrete Tracking Differentiator
3.2. Procedure to Calculate the Control Comprehensive Function
3.3. Influence of the Parameters
4. Simulation and Experiment Analysis
4.1. Simulation of TD Based Signal Processing Architecture in MATLAB-Simulink
4.2. VHDL Implementation and MATLAB-Modelsim Simulation for TD
- (1)
- Generate the desired input signal in a MATLAB file and store the signal data into a text document. In this process, signals with almost any properties can be generated easily.
- (2)
- Import of the input signal. In this step, Modelsim reads the text document generated in step (1), and import the stored data as the input data for the tracking differentiator.
- (3)
- Operation of tracking differentiator. This is the core step of this entire simulation.
- (4)
- Storage of the output data. All data are stored in a text file.
- (5)
- Reading of the output data and make some necessary signal processing via MATLAB’s signal processing tools.
4.3. Experiment Analysis of the Proposed Signal Processing Architecture
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
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Wang, Z.; Li, X.; Xie, Y.; Long, Z. Maglev Train Signal Processing Architecture Based on Nonlinear Discrete Tracking Differentiator. Sensors 2018, 18, 1697. https://doi.org/10.3390/s18061697
Wang Z, Li X, Xie Y, Long Z. Maglev Train Signal Processing Architecture Based on Nonlinear Discrete Tracking Differentiator. Sensors. 2018; 18(6):1697. https://doi.org/10.3390/s18061697
Chicago/Turabian StyleWang, Zhiqiang, Xiaolong Li, Yunde Xie, and Zhiqiang Long. 2018. "Maglev Train Signal Processing Architecture Based on Nonlinear Discrete Tracking Differentiator" Sensors 18, no. 6: 1697. https://doi.org/10.3390/s18061697
APA StyleWang, Z., Li, X., Xie, Y., & Long, Z. (2018). Maglev Train Signal Processing Architecture Based on Nonlinear Discrete Tracking Differentiator. Sensors, 18(6), 1697. https://doi.org/10.3390/s18061697