Modified Allan Variance Analysis on Random Errors of MINS

Author(s):  
Bin Fang ◽  
Xiaoqi Guo
2015 ◽  
Vol 35 (4) ◽  
pp. 0406003 ◽  
Author(s):  
张谦 Zhang Qian ◽  
王玮 Wang Wei ◽  
王蕾 Wang Lei ◽  
高鹏宇 Gao Pengyu

Author(s):  
Zdenek Havranek ◽  
Stanislav Klusacek ◽  
Petr Benes ◽  
Martin Vagner

Author(s):  
Himsikha Hazarika ◽  
A Bagubali ◽  
Alex Noel Joseph Raj ◽  
Vipan Kumar ◽  
Vinod Karar ◽  
...  

2015 ◽  
Vol 2015 ◽  
pp. 1-8 ◽  
Author(s):  
Shanshan Gu ◽  
Jianye Liu ◽  
Qinghua Zeng ◽  
Shaojun Feng ◽  
Pin Lv

To solve the problem that dynamic Allan variance (DAVAR) with fixed length of window cannot meet the identification accuracy requirement of fiber optic gyro (FOG) signal over all time domains, a dynamic Allan variance analysis method with time-variant window length based on fuzzy control is proposed. According to the characteristic of FOG signal, a fuzzy controller with the inputs of the first and second derivatives of FOG signal is designed to estimate the window length of the DAVAR. Then the Allan variances of the signals during the time-variant window are simulated to obtain the DAVAR of the FOG signal to describe the dynamic characteristic of the time-varying FOG signal. Additionally, a performance evaluation index of the algorithm based on radar chart is proposed. Experiment results show that, compared with different fixed window lengths DAVAR methods, the change of FOG signal with time can be identified effectively and the evaluation index of performance can be enhanced by 30% at least by the DAVAR method with time-variant window length based on fuzzy control.


Sensors ◽  
2020 ◽  
Vol 20 (17) ◽  
pp. 4841 ◽  
Author(s):  
Andrii V. Rudyk ◽  
Andriy O. Semenov ◽  
Natalia Kryvinska ◽  
Olena O. Semenova ◽  
Volodymyr P. Kvasnikov ◽  
...  

A problem of estimating the movement and orientation of a mobile robot is examined in this paper. The strapdown inertial navigation systems are often engaged to solve this common obstacle. The most important and critically sensitive component of such positioning approximation system is a gyroscope. Thus, we analyze here the random error components of the gyroscope, such as bias instability and random rate walk, as well as those that cause the presence of white and exponentially correlated (Markov) noise and perform an optimization of these parameters. The MEMS gyroscopes of InvenSense MPU-6050 type for each axis of the gyroscope with a sampling frequency of 70 Hz are investigated, as a result, Allan variance graphs and the values of bias instability coefficient and angle random walk for each axis are determined. It was found that in the output signals of the gyroscopes there is no Markov noise and random rate walk, and the X and Z axes are noisier than the Y axis. In the process of inertial measurement unit (IMU) calibration, the correction coefficients are calculated, which allow partial compensating the influence of destabilizing factors and determining the perpendicularity inaccuracy for sensitivity axes, and the conversion coefficients for each axis, which transform the sensor source codes into the measure unit and bias for each axis. The output signals of the calibrated gyroscope are noisy and offset from zero to all axes, so processing accelerometer and gyroscope data by the alpha-beta filter or Kalman filter is required to reduce noise influence.


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