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基于经验模态分解和混合滤波融合方法的四质量振动微机电系统陀螺仪温度漂移补偿

Temperature Drift Compensation for Four-Mass Vibration MEMS Gyroscope Based on EMD and Hybrid Filtering Fusion Method.

作者信息

Li Zhong, Cui Yuchen, Gu Yikuan, Wang Guodong, Yang Jian, Chen Kai, Cao Huiliang

机构信息

Shanxi Software Engineering Technology Research Center, Taiyuan 030051, China.

School of Software, North University of China, Taiyuan 030051, China.

出版信息

Micromachines (Basel). 2023 Apr 28;14(5):971. doi: 10.3390/mi14050971.

Abstract

This paper presents an improved empirical modal decomposition (EMD) method to eliminate the influence of the external environment, accurately compensate for the temperature drift of MEMS gyroscopes, and improve their accuracy. This new fusion algorithm combines empirical mode decomposition (EMD), a radial basis function neural network (RBF NN), a genetic algorithm (GA), and a Kalman filter (KF). First, the working principle of a newly designed four-mass vibration MEMS gyroscope (FMVMG) structure is given. The specific dimensions of the FMVMG are also given through calculation. Second, finite element analysis is carried out. The simulation results show that the FMVMG has two working modes: a driving mode and a sensing mode. The resonant frequency of the driving mode is 30,740 Hz, and the resonant frequency of the sensing mode is 30,886 Hz. The frequency separation between the two modes is 146 Hz. Moreover, a temperature experiment is performed to record the output value of the FMVMG, and the proposed fusion algorithm is used to analyse and optimise the output value of the FMVMG. The processing results show that the EMD-based RBF NN+GA+KF fusion algorithm can compensate for the temperature drift of the FMVMG effectively. The final result indicates that the random walk is reduced from 99.608°/h/Hz to 0.967814°/h/Hz, and the bias stability is decreased from 34.66°/h to 3.589°/h. This result shows that the algorithm has strong adaptability to temperature changes, and its performance is significantly better than that of an RBF NN and EMD in compensating for the FMVMG temperature drift and eliminating the effect of temperature changes.

摘要

本文提出了一种改进的经验模态分解(EMD)方法,以消除外部环境的影响,准确补偿MEMS陀螺仪的温度漂移,并提高其精度。这种新的融合算法结合了经验模态分解(EMD)、径向基函数神经网络(RBF NN)、遗传算法(GA)和卡尔曼滤波器(KF)。首先,给出了新设计的四质量振动MEMS陀螺仪(FMVMG)结构的工作原理。通过计算也给出了FMVMG的具体尺寸。其次,进行了有限元分析。仿真结果表明,FMVMG有两种工作模式:驱动模式和传感模式。驱动模式的谐振频率为30740Hz,传感模式的谐振频率为30886Hz。两种模式之间的频率间隔为146Hz。此外,进行了温度实验以记录FMVMG的输出值,并使用所提出的融合算法对FMVMG的输出值进行分析和优化。处理结果表明,基于EMD的RBF NN+GA+KF融合算法能够有效补偿FMVMG的温度漂移。最终结果表明,随机游走从99.608°/h/Hz降低到0.967814°/h/Hz,偏置稳定性从34.66°/h降低到3.589°/h。该结果表明该算法对温度变化具有很强的适应性,其性能在补偿FMVMG温度漂移和消除温度变化影响方面明显优于RBF NN和EMD。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/481a/10222394/8fa33ee6b994/micromachines-14-00971-g001.jpg

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