Abstract

MEMS (Micro Electro Mechanical System) gyroscopes have been widely applied to various fields, but MEMS gyroscope random drift has nonlinear and non-stationary characteristics. It has attracted much attention to model and compensate the random drift because it can improve the precision of inertial devices. This paper has proposed to use wavelet filtering to reduce noise in the original data of MEMS gyroscopes, then reconstruct the random drift data with PSR (phase space reconstruction), and establish the model for the reconstructed data by LSSVM (least squares support vector machine), of which the parameters were optimized using CPSO (chaotic particle swarm optimization). Comparing the effect of modeling the MEMS gyroscope random drift with BP-ANN (back propagation artificial neural network) and the proposed method, the results showed that the latter had a better prediction accuracy. Using the compensation of three groups of MEMS gyroscope random drift data, the standard deviation of three groups of experimental data dropped from 0.00354, 0.00412, and 0.00328 to 0.00065, 0.00072 and 0.00061, respectively, which demonstrated that the proposed method can reduce the influence of MEMS gyroscope random drift and verified the effectiveness of this method for modeling MEMS gyroscope random drift.

Highlights

  • MEMS (Micro Electro Mechanical System) gyroscopes have the advantages of being small in size, lightweight, low cost, vibration resistant, and so on

  • The common methods for modeling MEMS gyroscope random drift are two classes, one is the statistical modeling method represented by traditional time series analysis, and the other is the intelligence algorithm represented by Artificial neural networks (ANNs) for modeling the MEMS

  • This paper proposes to process the raw data of MEMS gyroscopes with wavelet filtering and PSR, model the reconstructed data based on LSSVM, and using

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Summary

Introduction

MEMS (Micro Electro Mechanical System) gyroscopes have the advantages of being small in size, lightweight, low cost, vibration resistant, and so on. Compared to high precision laser gyroscopes or fiber optic gyroscopes, the accuracy of the MEMS gyroscope is low and the random drift has nonlinear and non-stationary characteristics due to the limitation of the current material processing technology [3,4,5] These disadvantages make the MEMS gyroscopes still inapplicable in many high-precision fields.

The Principles of Algorithms
Back Propagation Artificial Neural Networks
The classical architectureof of BP-ANN
LSSVM Model with CPSO
Construction
Evaluation
Experiment Setup
Data Preprocessing
20. According
Comparing the Effects of Modeling
The training
Conclusions
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