用户名: 密码: 验证码:
基于改进小波变换的MEMS陀螺信号去噪算法
详细信息    查看全文 | 推荐本文 |
  • 英文篇名:Denoising of MEMS Gyroscope Based on Improved Wavelet Transform
  • 作者:陈光武 ; 刘孝博 ; 王迪 ; 刘射德
  • 英文作者:CHEN Guangwu;LIU Xiaobo;WANG Di;LIU Shede;Automatic Control Research Institute, Lanzhou Jiaotong University;Gansu Provincial Key Laboratory of Traffic Information Engineering and Control;
  • 关键词:MEMS陀螺仪 ; 小波分解 ; 姿态估计
  • 英文关键词:MEMS gyroscope;;Wavelet decomposition;;Attitude estimation
  • 中文刊名:DZYX
  • 英文刊名:Journal of Electronics & Information Technology
  • 机构:兰州交通大学自动控制研究所;甘肃省高原交通信息工程及控制重点实验室;
  • 出版日期:2019-03-07 13:54
  • 出版单位:电子与信息学报
  • 年:2019
  • 期:v.41
  • 基金:国家自然科学基金(61863024,71761023);; 甘肃省基础研究创新群体计划(1606RJIA327);; 甘肃省自然基金(18JR3RA107,1610RJYA034);; 甘肃省高等学校科研项目资助(2018C-11);; 甘肃省科技计划资助(18CX3ZA004)~~
  • 语种:中文;
  • 页:DZYX201905002
  • 页数:7
  • CN:05
  • ISSN:11-4494/TN
  • 分类号:14-20
摘要
为提高MEMS陀螺仪测量精度,抑制测量噪声对其造成的影响,该文分析了某型号MEMS陀螺仪误差特性,提出基于递归最小二乘法(RLS)多重小波分解重构的强追踪自反馈模型,建立新的软阈值函数。由于模型处理后的数据带有部分奇异值,该文提出了一种改进的中值滤波算法。对于陀螺仪零偏噪声问题,提出零偏不稳定性抑制算法,并对该算法模型进行了详细的描述。将某项目研究中列车姿态测量系统的实验数据应用到该算法模型中。测试实验分为静态、动态两组,其结果均表明:该算法减小了信号中的噪声,有效地抑制了MEMS陀螺仪随机漂移,提高了姿态解算的精度。肯定了该算法对陀螺仪输出信号噪声去除,以及使用精度提升的可行性和有效性。
        In order to improve the measurement accuracy of Micro Electro Mechanical Systems(MEMS)gyroscopes, the influence of measurement noise on them is suppressed. The error characteristics of a certain type of MEMS gyroscope are analyzed. A strong tracking self-feedback model based on Recursive Least Square(RLS) multiple wavelet decomposition reconstruction is proposed to establish a new soft threshold function.Since the model processed data has partial singular values, an improved median filtering algorithm is proposed.For the problem of gyro zero-bias noise, a zero-bias stability suppression algorithm is proposed. In this paper,the algorithm model is described in detail, and the experimental data of the train attitude measurement system in a project research are applied to the algorithm model. The test experiments are divided into static and dynamic groups. The results show that the algorithm reduces the noise in the signal, suppresses effectively the random drift of the MEMS gyroscope and improves the accuracy of the attitude calculation. The feasibility and effectiveness of this method are affirmed to remove the signal noise of the gyroscope output and improve the accuracy of the use.
引文
[1]ZHANG Yanshun,PENG Chuang,MOU Dong,et al.An adaptive filtering approach based on the dynamic variance model for reducing MEMS gyroscope random error[J].Sensors,2018,18(1):3943-3957.doi:10.3390/s18113943.
    [2]XING Haifeng,CHEN Zhiyong,YANG Haotian,et al.Selfalignment MEMS IMU method based on the rotation modulation technique on a swing base[J].Sensors,2018,18(4):1178-1200.doi:10.3390/s18041178.
    [3]WANG Wei and CHEN Xiyuan.Application of improved5th-cubature kalman filter in initial strapdown inertial navigation system alignment for large.misalignment angles[J].Sensors,2018,18(2):659-676.doi:10.3390/s18020659.
    [4]LI Tao,YUAN Gannan,LI wang,et al.Particle filter with novel nonlinear error model for miniature gyroscope based measurement while drilling navigation[J].Sensors,2016,16(3):371-385.doi:10.3390/s16030371.
    [5]GUO Zhanshe,FU Peng,LIU feng,et al.Design and FEMsimulation for a novel resonant silicon MEMS gyroscope with temperature compensation function[J].Microsyste Technologies,2018,24(3):1453-1459.doi:10.1007/s00542-017-3524-4.
    [6]JON O,AIFONSO B,IBAN L,et al.Evaluation of experimental GNSS and 10-DOF MEMS IMUmeasurements for train positioning[J].IEEE Transactions on Instrumentation and Measurement,2018,6(5):1-11.doi:10.1109/TIM.2018.2838799.
    [7]XIAO Dingbang,XIA Dewei,LI Qingsong,et al.Atemperature self-calibrating torsional accelerometer with fully differential configurationand integrated reference capacitor[J].IEEE Sensors,2015,6(7):1-4.doi:10.1109/ICSENS.2015.7370428.
    [8]IGOR P,BROCK B,CAREY M,et al.Towards selfnavigating cars using MEMS IMU:Challengesand opportunities[C].International Symposium on Inertial Sensors and Systems,Moltrasio,Italy,2018:1-4.
    [9]金靖,王峥,张忠钢,等.基于多元线性回归模型的光纤陀螺温度误差建模[J].宇航学报,2008,29(6):1921-1916.doi:10.387/s100-1328.JIN Jing,WANG Zheng,ZHANG Zhonggang,et al.Temperature errors modeling for fiber optic gyroscope using multiple linear regression models[J].Journal of Aerospace,2008,29(6):1921-1916.doi:10.387/s100-1328.
    [10]DING Jicheng,ZHANG Qian,HUANG Weiquan,et al.Laser gyroscope temperature compensat-i on using modified RBFNN[J].Sensors,2014,14(10):18711-18727.doi:10.3390/s141018711.
    [11]YUAN Guangmin,YUAN Weizheng,LIANG Xue,et al.Dynamic performance comparison of two kalman filters for rate signal direct modeling and differencing modeling for combining a MEMS gyroscope array to improve accuracy[J].Sensors,2015,15(11):27590-27610.doi:10.3390/s151127590.
    [12]ZHA Feng,XU Jiangning,LI JingshuHe,et al.IUKF neural network modeling for FOG temperature drift[J].Beijing Institute of Aerospace Information,2013,24(5):838-844.doi:10.1109/JSEE.2013.00097.
    [13]ZHI S,JACQUES G,MICHAEL J,et al.Low cost two dimension navigation using an augmented Kalman filter/Fast Orthogonal Search module for the integration of reduced inertial sensor system and global positioning[J].Elsevier,2011,19(6):1111-1132.doi:10.1016/j.trc.2011.01.001.
    [14]REN Honglian and PETER K.Investiga-tion of attitude tracking using an integrated inertial and magnetic navigation system for hand-held surgical instruments[J].IEEE/ASME Transactions on Mechatronics,2012,17(2):210-217.doi:10.1109/TMECH.2010.2095504.
    [15]CHEN Xiyuan,XU Yuan,LI Qinghua,et al.Application of adaptive extended kalman smoothing on INS/WSNintegration system for mobile robot indoors[J].Mathematical Problems in Engineering,2013,10(10):1-8.doi:10.1155/2013/130508.
    [16]CHU Hairong,SUN Tingting,ZHANG Baiqiang,et al.Rapid transfer alignment of MEMS SINS based on adaptive incremental kalman filter[J].Sensors,2017,17(1):152-166.doi:10.3390/s17010152.
    [17]FENG Yibo,LI Xisheng,and ZHANG Xiaojuan.An adaptive compensation algorithm for temperature drift of micro-electro-mechanical systems gyroscopes using a strong tracking kalman filter[J].Sensors,2015,15(5):11222-11238.doi:10.3390/s150511222.
    [18]BIRSEL A and BILLUR B.Leg motion classification with artificial neural networks using wavelet-based features of gyroscope signals[J].Sensors,2011,11(2):1721-1743.doi:10.3390/s110201721.
    [19]李杰,曲芸,刘俊,等.模平方小波阈值在MEMS陀螺仪在信号降噪总的应用[J].中国惯性术学报,2008,16(4):236-239.doi:10.13695/j.cnki.12-1222/o3.2008.02.03.LI Jie,QU Yun,LIU Jun,et al.Application of modular square wavelet threshold for denoising MEMS-based gyros signal[J].Journal of Chinese Inertial Technology,2008,16(4):236-239.doi:10.13695/j.cnki.12-1222/o3.2008.02.03.
    [20]刘菲,任章,李青东.基于小波方差的MEMS IMU随机误差模型间接估计方法[J].中国惯性技术学报,2016,24(1):77-82.doi:10.13695/j.cnki.12-1222/o3.2016.01.014.LIU Fei,REN Zhang,and LI Qingdong.Indirect estimation method for random error models of MEMS IMU based on wavelet variance[J].Journal of Chinese Inertial Technology,2016,24(1):77-82.doi:10.13695/j.cnki.12-1222/o3.2016.01.014.

© 2004-2018 中国地质图书馆版权所有 京ICP备05064691号 京公网安备11010802017129号

地址:北京市海淀区学院路29号 邮编:100083

电话:办公室:(+86 10)66554848;文献借阅、咨询服务、科技查新:66554700