Skip to main content
Log in

Modeling the Random Drift of Micro-Machined Gyroscope with Neural Network

  • Published:
Neural Processing Letters Aims and scope Submit manuscript

Abstract

In this paper a new combined method was applied to model the random drift of a micro-electro-mechanical system (MEMS) gyro to enhance its performance. The gyro is used to set up a micro-inertial -measurement unit (MIMU) for its low cost, low power consumption and small dimensions. To improve the MIMU’s performance, we model the gyro’s random drift by a statistic method. Given the paucity of the knowledge of fabrication of the gyro, we select a neural network model instead of making a delicate physical-mathematical model. Since the gyro we used is a tuning fork micro-machined sensor with large random drift, the modeling performance is affected by the randomness inherent in the output data when neural network approach is applied. Therefore, radial basis network structure, which was successfully applied to model temperature drift of fiber optical gyros, was chosen to build the model and the grey neural network. Compared with autoregressive model, the standard error of the gyro’s random drift is reduced dramatically by radial basis model and grey radial basis model.

This is a preview of subscription content, log in via an institution to check access.

Access this article

Price excludes VAT (USA)
Tax calculation will be finalised during checkout.

Instant access to the full article PDF.

Similar content being viewed by others

References

  • Wise K.D. Micro-electro-mechanical systems: interfacing electronics to a non-electronic world Electron Devices Meeting, 1996, International 8–11 Dec. (1996), 11–18.

  • Barbour, N., Brown, E., Connelly, J., Dowdle, J., Brand, G., Nelson, J and O’Bannon, J. Micromachined inertial sensors for vehicles , Intelligent Transportation System, 1997. ITSC 97. IEEE Conference on 9–12 Nov. (1997), 1058–1063.

  • R. Hulsing (1998) ArticleTitleMEMS inertial rate and acceleration sensor, Aerospace and Electronic Systems Magazine IEEE 13 IssueID11 17–23

    Google Scholar 

  • Junpu, W., Weifeng, T. and Zhihua, J. Study on Integrated -INS/GPS for Land vehicles, In: Proceedings of the 2003 IEEE International Conference on Intelligent Transportation Systems (ITSC 2003), 1650–1653, Oct.12–15, (2003).

  • Davis, B.S. Using low-cost MEMS accelerometers and gyroscopes as strapdown IMUs on rolling projectiles, Position Location and Navigation Symposium, IEEE, 1998 April (1998), 594–601.

  • Gang Mao Q. G. The application of microminiature inertial measurement unit to the measurement of ejection movement parameters, Position Location and Navigation Symposium, IEEE 2000 March (2000), 437–442.

  • S.G. Mohinder R.W. Lawrence P.A. Angus (2001) Global Positioning Systems, Inertial Navigation, and Integration John Wiley Publishing New York

    Google Scholar 

  • Sukkarieh, S., Nebot, E. M. and Durrant-Whyte, H. F. Achieving integrity in an INS-GPS navigation loop for autonomous land vehicle applications; Robotics and Automation, 1998. In: Proceedings of the 1998 IEEE International Conference on Vol 4, May 1998, 3437–3442.

  • M.K. Martin D.A. Vause (1998) ArticleTitleNew low cost avionics with INS-GPS for a variety of vehicles, Aerospace and Electronic Systems Magazine IEEE. 13 IssueID11 41–46

    Google Scholar 

  • R. Zhu Y. Zhang Q. Bao (2000) ArticleTitleA novel intelligent strategy for improving measurement precision of FOG IEEE Transactions on Instrumentation and Measurement. 49 IssueID6 1183–1188

    Google Scholar 

  • Baglio, S., Savalli, N. and Castorina, S. Theoretical study, modeling and realization of resonant gyroscopes with optical output; Sensors, 2002. In: Proceedings of IEEE, 2(12–14) (2002), 1069–1074.

  • Leland, R. P. Lyapunov based adaptive control of a MEMS gyroscope American Control Conference, 2002. Proceedings of the 2002, 5(8–10) May (2002) 3765–3770.

  • J. Moody C.J. Darken (1988) Learning with localized receptive fields D. Tourelzky G. Hinton T. Sejnow Ski (Eds) Proceedings Connectionist Models Summer School Carnegie Mellon University, Morgan Kaufmann Publishers Los Atlas, CA 133–143

    Google Scholar 

  • F. Chunling J. Zhihua T. Weifeng Q. Feng (2004) ArticleTitleTemperature drift modeling of FOGs based on grey RBF neural network Measurement Science Technology 15 119–126

    Google Scholar 

  • J. Deng (1985) Grey system (Society.Economy) National Defence Industry Publishing House Beijing

    Google Scholar 

  • J.L. Deng (1989) ArticleTitleIntroduction to grey system theory Journal of Gray Systems 1 IssueID1 1–24

    Google Scholar 

  • Cheng-Hsiung H. (2002). Grey neural network and its application to short term load forecasting problem, [J] IEICE TRANS. INF & SYST. E85-D (5) (2002), 897–902.

  • Matlab toolbox document, MathWorks Inc, Version 6.5 release 13, June 18 2002.

  • K. Samuel M.T. Howard (1975) A First Course in Stochastic Processes Academic Press. Inc New York 443

    Google Scholar 

  • G.E.P. Box G.M. Jenkins (1976) Time Series Analysis: Forecasting and Control Holden-Day Inc. San Fransico, CA

    Google Scholar 

  • J. Wesley Barnes (1994) Statistical Analysis for Engineers and Scientists McGraw-Hill Inc New York

    Google Scholar 

Download references

Author information

Authors and Affiliations

Authors

Corresponding author

Correspondence to Wang Hao.

Rights and permissions

Reprints and permissions

About this article

Cite this article

Hao, W., Tian, W. Modeling the Random Drift of Micro-Machined Gyroscope with Neural Network. Neural Process Lett 22, 235–247 (2005). https://doi.org/10.1007/s11063-005-6800-8

Download citation

  • Issue Date:

  • DOI: https://doi.org/10.1007/s11063-005-6800-8

Keywords

Navigation