Liang Siyuan, Zhu Weilong, Zhao Feng, Wang Congyi
Key Laboratory of Information Communication Network and Security, Xi'an University of Posts and Telecommunications, Xi'an 710121, China.
Sensors (Basel). 2020 Mar 17;20(6):1662. doi: 10.3390/s20061662.
With the rapid development of microelectromechanical systems (MEMS) technology, low-cost MEMS inertial devices have been widely used for inertial navigation. However, their application range is greatly limited in some fields with high precision requirements because of their low precision and high noise. In this paper, to improve the performance of MEMS inertial devices, we propose a highly efficient optimal estimation algorithm for MEMS arrays based on wavelet compressive fusion (). First, the algorithm uses the compression property of the multiscale wavelet transform to compress the original signal, fusing the compressive data based on the support. Second, threshold processing is performed on the fused wavelet coefficients. The simulation result demonstrates that the proposed algorithm performs well on the output of the inertial sensor array. Then, a ten-gyro array system is designed for collecting practical data, and the frequency of the embedded processor in our verification environment is 800 MHz. The experimental results show that, under the normal working conditions of the MEMS array system, the 100 ms input array data require an approximately 75 ms processing delay when employing the algorithm to support real-time processing. Additionally, the zero-bias instability, angle random walk, and rate slope of the gyroscope are improved by 8.0, 8.0, and 9.5 dB, respectively, as compared with the original device. The experimental results demonstrate that the algorithm has outstanding real-time performance and can effectively improve the accuracy of low-cost MEMS inertial devices.
随着微机电系统(MEMS)技术的快速发展,低成本MEMS惯性器件已广泛应用于惯性导航。然而,由于其精度低、噪声高,在一些高精度要求的领域其应用范围受到极大限制。本文中,为提高MEMS惯性器件的性能,我们提出了一种基于小波压缩融合的MEMS阵列高效最优估计算法()。首先,该算法利用多尺度小波变换的压缩特性对原始信号进行压缩,基于支撑对压缩数据进行融合。其次,对融合后的小波系数进行阈值处理。仿真结果表明,所提算法在惯性传感器阵列输出上表现良好。然后,设计了一个十陀螺阵列系统来采集实际数据,我们验证环境中嵌入式处理器的频率为800 MHz。实验结果表明,在MEMS阵列系统正常工作条件下,采用该算法进行实时处理时,100 ms输入阵列数据大约需要75 ms的处理延迟。此外,与原始器件相比,陀螺仪的零偏不稳定性、角度随机游走和速率斜率分别提高了8.0 dB、8.0 dB和9.5 dB。实验结果表明,该算法具有出色的实时性能,能够有效提高低成本MEMS惯性器件的精度。