School of Electrical Engineering and Automation, Jiangxi University of Science and Technology, Ganzhou, China.
Key Laboratory of Magnetic Levitation Technology in Jiangxi Province, Ganzhou, China.
PLoS One. 2023 Nov 28;18(11):e0292269. doi: 10.1371/journal.pone.0292269. eCollection 2023.
Since the positioning accuracy of sensors degrades due to noise and environmental interference when a single sensor is used to localize a suspended rare-earth permanent magnetically levitated train, a multi-sensor information fusion method using multiple sensors and self-correcting weighting is proposed for permanent magnetic levitated train localization. A decay memory factor is introduced to reduce the weight of the influence of historical measurement data on the fusion estimation, thus enhancing the robustness of the fusion algorithm. The Kalman filtering results suffer from inaccuracy when process noise is present in the system. In this paper, we use a covariance adaptive scheme that replaces the prediction step of the Kalman filter with covariance. It uses the covariance adaptive scheme to search the posterior sequence online and reconstruct the prior error covariance. Since the process noise covariance is not used in the new adaptive scheme, the negative impact of the mismatch noise statistics is greatly reduced. Simulation and experimental results show that the use of multi-sensor information fusion and covariance adaptive Kalman algorithm has significant advantages in terms of adaptability, accuracy and simplicity.
由于单个传感器在定位悬浮式稀土永磁悬浮列车时,其定位精度会因噪声和环境干扰而降低,因此针对永磁悬浮列车定位提出了一种利用多传感器和自校正加权的多传感器信息融合方法。引入衰减记忆因子,降低了融合估计中历史测量数据的影响权重,从而增强了融合算法的鲁棒性。当系统中存在过程噪声时,卡尔曼滤波的结果会不准确。在本文中,我们使用协方差自适应方案,用协方差替代卡尔曼滤波器的预测步骤。它使用协方差自适应方案在线搜索后验序列并重构先验误差协方差。由于新的自适应方案中不使用过程噪声协方差,因此大大降低了失配噪声统计的负面影响。仿真和实验结果表明,多传感器信息融合和协方差自适应卡尔曼算法在适应性、准确性和简单性方面具有显著优势。