A Compensation Method for Long-term Zero Bias Drift of MEMS Gyroscope Based on Improved CEEMD and ELM

H. Gu, X. X. Liu, B. Zhao, H. Zhou
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Abstract

In order to eliminating the long-term zero bias drift of MEMS gyroscope efficiently, a multi-scale processing method is proposed by utilizing signal decomposition. At first, an improved complete ensemble empirical mode decomposition (Improved CEEMD) is used to decompose the original signal into a series of stationary modes; then the distinct sub-series are clustered based on the sample entropy, and extreme learning machine (ELM) based model is used to train the sub-series; finally, the desired results can be obtained after de-noise and compensation. To verify the method, MEMS gyroscope CRG20 has been chosen for an hour test, and the experiment shows that zero bias drift reduced from 0.0706°/s to 0.0706°/s($1-\sigma )$ within temperature range of − 40° C to 70° C.
基于改进CEEMD和ELM的MEMS陀螺仪长期零偏漂移补偿方法
为了有效消除MEMS陀螺仪的长期零偏漂移,提出了一种利用信号分解的多尺度处理方法。首先,采用改进的完全系综经验模态分解(improved CEEMD)将原始信号分解为一系列平稳模态;然后根据样本熵对不同的子序列进行聚类,利用基于极限学习机(ELM)的模型对子序列进行训练;最后,经过去噪和补偿,得到理想的结果。为了验证该方法,选择MEMS陀螺仪CRG20进行了一小时的测试,实验表明,在- 40°C至70°C的温度范围内,零偏漂移从0.0706°/s减小到0.0706°/s($1-\sigma)$。
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