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A Novel Gravity Compensation Method for High Precision Free-INS Based on “Extreme Learning Machine”

机译:基于“极限学习机”的高精度自由惯导重力补偿方法

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In recent years, with the emergency of high precision inertial sensors (accelerometers and gyros), gravity compensation has become a major source influencing the navigation accuracy in inertial navigation systems (INS), especially for high-precision INS. This paper presents preliminary results concerning the effect of gravity disturbance on INS. Meanwhile, this paper proposes a novel gravity compensation method for high-precision INS, which estimates the gravity disturbance on the track using the extreme learning machine (ELM) method based on measured gravity data on the geoid and processes the gravity disturbance to the height where INS has an upward continuation, then compensates the obtained gravity disturbance into the error equations of INS to restrain the INS error propagation. The estimation accuracy of the gravity disturbance data is verified by numerical tests. The root mean square error (RMSE) of the ELM estimation method can be improved by 23% and 44% compared with the bilinear interpolation method in plain and mountain areas, respectively. To further validate the proposed gravity compensation method, field experiments with an experimental vehicle were carried out in two regions. Test 1 was carried out in a plain area and Test 2 in a mountain area. The field experiment results also prove that the proposed gravity compensation method can significantly improve the positioning accuracy. During the 2-h field experiments, the positioning accuracy can be improved by 13% and 29% respectively, in Tests 1 and 2, when the navigation scheme is compensated by the proposed gravity compensation method.
机译:近年来,随着高精度惯性传感器(加速度计和陀螺仪)的出现,重力补偿已成为影响惯性导航系统(INS)导航精度的主要来源,尤其是对于高精度INS。本文介绍了有关重力扰动对INS影响的初步结果。同时,本文提出了一种用于高精度惯性导航系统的重力补偿方法,该方法利用测得的大地水准面重力数据,使用极限学习机(ELM)估计轨道上的重力干扰,并将重力干扰处理到高度INS具有向上的延续,然后将获得的重力扰动补偿到INS的误差方程中,以抑制INS误差的传播。通过数值试验验证了重力扰动数据的估计精度。与双线性插值方法相比,在平原和山区,ELM估计方法的均方根误差(RMSE)分别可提高23%和44%。为了进一步验证所提出的重力补偿方法,在两个区域内使用了实验车辆进行了野外实验。测试1在平原地区进行,测试2在山区进行。现场实验结果也证明了本文提出的重力补偿方法可以显着提高定位精度。在2小时的野外实验中,使用建议的重力补偿方法补偿导航方案后,在测试1和2中,定位精度分别可以提高13%和29%。

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