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System Error Compensation Methodology Based on a Neural Network for a Micromachined Inertial Measurement Unit

机译:基于神经网络的微机械惯性测量单元系统误差补偿方法

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Errors compensation of micromachined-inertial-measurement-units (MIMU) is essential in practical applications. This paper presents a new compensation method using a neural-network-based identification for MIMU, which capably solves the universal problems of cross-coupling, misalignment, eccentricity, and other deterministic errors existing in a three-dimensional integrated system. Using a neural network to model a complex multivariate and nonlinear coupling system, the errors could be readily compensated through a comprehensive calibration. In this paper, we also present a thermal-gas MIMU based on thermal expansion, which measures three-axis angular rates and three-axis accelerations using only three thermal-gas inertial sensors, each of which capably measures one-axis angular rate and one-axis acceleration simultaneously in one chip. The developed MIMU (100 × 100 × 100 mm 3 ) possesses the advantages of simple structure, high shock resistance, and large measuring ranges (three-axes angular rates of ±4000°/s and three-axes accelerations of ±10 g) compared with conventional MIMU, due to using gas medium instead of mechanical proof mass as the key moving and sensing elements. However, the gas MIMU suffers from cross-coupling effects, which corrupt the system accuracy. The proposed compensation method is, therefore, applied to compensate the system errors of the MIMU. Experiments validate the effectiveness of the compensation, and the measurement errors of three-axis angular rates and three-axis accelerations are reduced to less than 1% and 3% of uncompensated errors in the rotation range of ±600°/s and the acceleration range of ±1 g, respectively.
机译:微机械惯性测量单元(MIMU)的误差补偿在实际应用中至关重要。本文提出了一种基于神经网络的MIMU识别新补偿方法,该方法可以解决三维集成系统中存在的交叉耦合,错位,偏心率和其他确定性误差的普遍问题。使用神经网络对复杂的多元非线性耦合系统建模,可以通过全面的校准轻松地补偿误差。在本文中,我们还提出了一种基于热膨胀的热气MIMU,该热气MIMU仅使用三个热气惯性传感器来测量三轴角速率和三轴加速度,每个惯性传感器均能够测量一轴角速率和一​​个一块芯片同时进行轴加速。与之相比,开发的MIMU(100×100×100 mm 3)具有结构简单,抗冲击能力强和测量范围大的优点(三轴角速率为±4000°/ s,三轴加速度为±10 g)。与传统的MIMU相比,由于使用气体介质代替机械检测质量作为关键的移动和传感元件。但是,气体MIMU具有交叉耦合效应,这会破坏系统精度。因此,所提出的补偿方法被用于补偿MIMU的系统误差。实验验证了补偿的有效性,并且在±600°/ s的旋转范围和加速度范围内,三轴角速率和三轴加速度的测量误差减小到小于未补偿误差的1%和3%分别为±1 g。

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