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Hybrid Deep Recurrent Neural Networks for Noise Reduction of MEMS-IMU with Static and Dynamic Conditions

机译:具有静态和动态条件的MEMS-IMU降噪的混合深复发神经网络

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摘要

Micro-electro-mechanical system inertial measurement unit (MEMS-IMU), a core component in many navigation systems, directly determines the accuracy of inertial navigation system; however, MEMS-IMU system is often affected by various factors such as environmental noise, electronic noise, mechanical noise and manufacturing error. These can seriously affect the application of MEMS-IMU used in different fields. Focus has been on MEMS gyro since it is an essential and, yet, complex sensor in MEMS-IMU which is very sensitive to noises and errors from the random sources. In this study, recurrent neural networks are hybridized in four different ways for noise reduction and accuracy improvement in MEMS gyro. These are two-layer homogenous recurrent networks built on long short term memory (LSTM-LSTM) and gated recurrent unit (GRU-GRU), respectively; and another two-layer but heterogeneous deep networks built on long short term memory-gated recurrent unit (LSTM-GRU) and a gated recurrent unit-long short term memory (GRU-LSTM). Practical implementation with static and dynamic experiments was carried out for a custom MEMS-IMU to validate the proposed networks, and the results show that GRU-LSTM seems to be overfitting large amount data testing for three-dimensional axis gyro in the static test. However, for X-axis and Y-axis gyro, LSTM-GRU had the best noise reduction effect with over 90% improvement in the three axes. For Z-axis gyroscope, LSTM-GRU performed better than LSTM-LSTM and GRU-GRU in quantization noise and angular random walk, while LSTM-LSTM shows better improvement than both GRU-GRU and LSTM-GRU networks in terms of zero bias stability. In the dynamic experiments, the Hilbert spectrum carried out revealed that time-frequency energy of the LSTM-LSTM, GRU-GRU, and GRU-LSTM denoising are higher compared to LSTM-GRU in terms of the whole frequency domain. Similarly, Allan variance analysis also shows that LSTM-GRU has a better denoising effect than the other networks in the dynamic experiments. Overall, the experimental results demonstrate the effectiveness of deep learning algorithms in MEMS gyro noise reduction, among which LSTM-GRU network shows the best noise reduction effect and great potential for application in the MEMS gyroscope area.
机译:微机电系统惯性测量单元(MEMS-IMU),许多导航系统中的核心组件,直接确定惯性导航系统的准确性;然而,MEMS-IMU系统通常受各种因素的影响,例如环境噪声,电子噪声,机械噪声和制造错误。这些可以严重影响不同领域的MEMS-IMU的应用。焦点已经在MEMS陀螺仪上,因为它是MEMS-IMU中必不可少的,但最复杂的传感器,这对来自随机源的噪声和错误非常敏感。在这项研究中,经常性的神经网络以四种不同的噪声减少和准确性改进杂交,并且在MEMS陀螺仪中杂交。这些是在长短期内存(LSTM-LSTM)和门控复发单元(GRU-GRU)上构建的两层均匀反复网络;和另一个两层但异构的深网络,内置于长短期内存门控复发单元(LSTM-GRU)和门控复发间单位长期内存(GRU-LSTM)。对于自定义MEMS-IMU进行了具有静态和动态实验的实际实现,以验证所提出的网络,结果表明GRU-LSTM似乎在静态测试中对三维轴线陀螺的大量数据测试过度接受。然而,对于X轴和Y轴陀螺仪,LSTM-GRU具有最佳的降噪效果,三轴在90%上有超过90%。对于Z轴陀螺,LSTM-GRU优于LSTM-LSTM和GRU-GRU在量化噪声和角度随机步行,而LSTM-LSTM在零偏置稳定性方面表现出比GRU-GRU和LSTM-GRU网络更好。在动态实验中,进行的HILBERT光谱显示,与整个频域的LSTM-GRU相比,LSTM-LSTM,GRU-GRU和GRU-LSTM去噪的时频能更高。类似地,Allan方差分析还表明,LSTM-GRU具有比动态实验中的其他网络更好的去噪效果。总体而言,实验结果表明了深度学习算法在MEMS陀螺噪声降低中的有效性,其中LSTM-GRU网络显示了MEMS陀螺区域中的最佳降噪效果和巨大潜力。

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