利用滤波和机器学习方法改进MEMS陀螺仪的性能

Rinu Chacko, R. V. Binoj, P. E. Ameenudeen
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摘要

陀螺仪是用于测量角速度的传感器,在航空航天工业中有着广泛的应用。MEMS陀螺仪具有成本低、质量小、尺寸小、功耗低等优点,但其性能参数也相应降低。噪声是MEMS传感器中的一个限制因素,导致漂移稳定性差,角度和速率随机游走较高,这反过来会影响传感器的输出。此外,热效应对MEMS传感器是一个充分记录的限制,其广泛部署作为传感器在不受控制的环境。提出了一种新的数字滤波方法,对数据进行滤波,通过对滤波参数进行微调,得到了不同带宽的处理数据。对处理后的数据进行了统计测量,短期稳定性提高了90%,这突出了过滤过程的效率。介绍了一种温度控制算法,使传感器在稳定温度下工作。同时,采用基于神经网络的学习方法对以温度为主要参数的数据进行训练。当使用原始传感器数据进行测试时,获得了100%的短期稳定性改善。
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Performance Improvement of a MEMS Gyroscope Using Filtering and Machine Learning Methods
Gyroscopes are sensors used to measure angular rate and find wide application in the aerospace industry. MEMS Gyroscopes have various advantages of lesser cost, mass, size, power but with a corresponding decrease in performance parameters. Noise is a limiting factor in MEMS sensors leading to poor Drift Stability, higher Angular and Rate random walks which will in turn affect the output of the sensors. Also, the thermal effect on MEMS sensors is well-documented as a limitation to their wide deployment as sensors in uncontrolled environments. A novel digital filtering method is introduced and carried out on the data, and by means of trimming the filter parameters, processed data of different bandwidth was obtained. Statistical measurements were done on the processed data and 90 percent improvement was obtained in the short-term stability, which highlights the efficiency of the filtering process. A temperature control algorithm is introduced for operation of sensor at stable temperature. Also, a Neural Network based learning approach is used to train the data with respect to temperature as the major parameter. When it was tested with original sensor data, a 100percent improvement in short term stability was obtained.
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