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Performance Analysis of a Deep Simple Recurrent Unit Recurrent Neural Network (SRU-RNN) in MEMS Gyroscope De-Noising

机译:MEMS陀螺仪去噪中深层简单递归单元递归神经网络(SRU-RNN)的性能分析

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摘要

Microelectromechanical System (MEMS) Inertial Measurement Unit (IMU) is popular in the community for constructing a navigation system, due to its small size and low power consumption. However, limited by the manufacturing technology, MEMS IMU experiences more complicated noises and errors. Thus, noise modeling and suppression is important for improving accuracy of the navigation system based on MEMS IMU. Motivated by this problem, in this paper, a deep learning method was introduced to MEMS gyroscope de-noising. Specifically, a recently popular Recurrent Neural Networks (RNN) variant Simple Recurrent Unit (SRU-RNN) was employed in MEMS gyroscope raw signals de-noising. A MEMS IMU MSI3200 from MT Microsystem Company was employed in the experiments for evaluating the proposed method. Following two problems were furtherly discussed and investigated: (1) the employed SRU with different training data length were compared to explore whether there was trade-off between the training data length and prediction performance; (2) Allan Variance was the most popular MEMS gyroscope analyzing method, and five basic parameters were employed to describe the performance of different grade MEMS gyroscope; among them, quantization noise, angle random walk, and bias instability were the major factors influencing the MEMS gyroscope accuracy, the compensation results of the three parameters for gyroscope were presented and compared. The results supported the following conclusions: (1) considering the computation brought from training dataset, the values of 500, 3000, and 3000 were individually sufficient for the three-axis gyroscopes to obtain a reliable and stable prediction performance; (2) among the parameters, the quantization noise, angle random walk, and bias instability performed 0.6%, 6.8%, and 12.5% improvement for X-axis gyroscope, 60.5%, 17.3%, and 34.1% improvement for Y-axis gyroscope, 11.3%, 22.7%, and 35.7% improvement for Z-axis gyroscope, and the corresponding attitude errors decreased by 19.2%, 82.1%, and 69.4%. The results surely demonstrated the effectiveness of the employed SRU in this application.
机译:微机电系统(MEMS)惯性测量单元(IMU)因其体积小,功耗低而在构建导航系统方面广受欢迎。但是,受制造技术的限制,MEMS IMU会遇到更复杂的噪声和错误。因此,噪声建模和抑制对于提高基于MEMS IMU的导航系统的精度至关重要。为此,本文针对MEMS陀螺仪的去噪引入了一种深度学习方法。具体而言,最近流行的递归神经网络(RNN)变体简单递归单元(SRU-RNN)被用于MEMS陀螺仪原始信号去噪。实验中使用了来自MT Microsystem Company的MEMS IMU MSI3200,以评估所提出的方法。进一步讨论和研究了以下两个问题:(1)比较了采用不同训练数据长度的SRU,以探讨训练数据长度和预测性能之间是否存在取舍。 (2)Allan Variance是最流行的MEMS陀螺仪分析方法,并采用五个基本参数来描述不同等级的MEMS陀螺仪的性能;其中,量化噪声,角度随机游走和偏置不稳定性是影响MEMS陀螺仪精度的主要因素,提出并比较了陀螺仪三个参数的补偿结果。结果支持以下结论:(1)考虑到训练数据集带来的计算结果,三轴陀螺仪的值500、3000和3000分别足以获得可靠和稳定的预测性能; (2)在这些参数中,X轴陀螺仪的量化噪声,角度随机游走和偏置不稳定性分别提高了0.6%,6.8%和12.5%,Y轴陀螺仪分别提高了60.5%,17.3%和34.1% Z轴陀螺仪分别改善了11.3%,22.7%和35.7%,相应的姿态误差分别降低了19.2%,82.1%和69.4%。结果肯定证明了在该应用中所使用的SRU的有效性。

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