Du Binhan, Shi Zhiyong, Song Jinlong, Wang Huaiguang, Han Lanyi
Department of vehicle and electronics, Army Engineering University of PLA, Shijiazhuang 050000, China.
Micromachines (Basel). 2019 Apr 26;10(5):278. doi: 10.3390/mi10050278.
The application of the Micro Electro-mechanical System (MEMS) inertial measurement unit has become a new research hotspot in the field of inertial navigation. In order to solve the problems of the poor accuracy and stability of MEMS sensors, the redundant design is an effective method under the restriction of current technology. The redundant data processing is the most important part in the MEMS redundant inertial navigation system, which includes the processing of abnormal data and the fusion estimation of redundant data. A developed quality index of the MEMS gyro measurement data is designed by the parity vector and the covariance matrix of the distributed Kalman filtering. The weight coefficients of gyros are calculated according to this index. The fault-tolerant fusion estimation of the redundant data is realized through the framework of the distributed Kalman filtering. Simulation experiments are conducted to test the performance of the new method with different types of anomalies.
微机电系统(MEMS)惯性测量单元的应用已成为惯性导航领域的一个新研究热点。为了解决MEMS传感器精度和稳定性较差的问题,在当前技术限制下,冗余设计是一种有效的方法。冗余数据处理是MEMS冗余惯性导航系统中最重要的部分,它包括异常数据处理和冗余数据的融合估计。利用分布式卡尔曼滤波的奇偶向量和协方差矩阵设计了一种已开发的MEMS陀螺测量数据质量指标。根据该指标计算陀螺的权重系数。通过分布式卡尔曼滤波框架实现冗余数据的容错融合估计。进行了仿真实验,以测试新方法在不同类型异常情况下的性能。