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Research on Multi-Information Fusion Velocity Measurement Algorithm Based on Optimal Estimation and Pattern Recognition

机译:基于最优估计和模式识别的多信息融合速度测量算法研究

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This paper uses information fusion technology to study the problem of immunity and speed accuracy of the Speed measurement system in maglev trains. Firstly, based on the analysis of the principle of inductance proximity switch interference generation, a mathematical analysis of speed measurement accuracy and immunity is carried out. Then a multi-information fusion speed measurement algorithm based on Kalman optimal estimation and pattern recognition is proposed, which can effectively correct the error of MEMS inertial sensor, effectively filter the interference of proximity switch sensor, and effectively dealt with the abnormal situation of speed measurement. This improves the accuracy and immunity of the speed measurement system. Moreover, implementation issues are discussed to provide insight for engineers.
机译:本文采用信息融合技术研究Maglev火车速度测量系统的免疫力和速度精度问题。首先,基于对电感接近开关干扰产生原理的分析,进行了速度测量精度和免疫的数学分析。然后提出了一种基于Kalman最佳估计和模式识别的多信息融合速度测量算法,其可以有效地校正MEMS惯性传感器的误差,有效地过滤接近开关传感器的干扰,并有效地处理速度测量的异常情况。这提高了速度测量系统的准确性和免疫力。此外,讨论了实施问题以提供对工程师的洞察力。

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