| Literature DB >> 25513826 |
Zengke Li1, Jian Wang2, Jingxiang Gao3, Binghao Li4, Feng Zhou5.
Abstract
The initial alignment of the Inertial Measurement Unit (IMU) is an important process of INS to determine the coordinate transformation matrix which is used in the integration of Global Positioning Systems (GPS) with Inertial Navigation Systems (INS). In this paper a novel alignment method for a disturbed base, such as a vehicle disturbed by wind outdoors, implemented with the aid of a Vondrak low pass filter, is proposed. The basic principle of initial alignment including coarse alignment and fine alignment is introduced first. The spectral analysis is processed to compare the differences between the characteristic error of INS force observation on a stationary base and on disturbed bases. In order to reduce the high frequency noise in the force observation more accurately and more easily, a Vondrak low pass filter is constructed based on the spectral analysis result. The genetic algorithms method is introduced to choose the smoothing factor in the Vondrak filter and the corresponding objective condition is built. The architecture of the proposed alignment method with the Vondrak low pass filter is shown. Furthermore, simulated experiments and actual experiments were performed to validate the new algorithm. The results indicate that, compared with the conventional alignment method, the Vondrak filter could eliminate the high frequency noise in the force observation and the proposed alignment method could improve the attitude accuracy. At the same time, only one parameter needs to be set, which makes the proposed method easier to implement than other low-pass filter methods.Entities:
Year: 2014 PMID: 25513826 PMCID: PMC4299088 DOI: 10.3390/s141223803
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1.The fine alignment.
Figure 2.Spectral analysis of force observation in marble checking platform indoor: (a) in X direction; (b) in Y direction; (c) in Z direction.
Figure 3.Spectral analysis of force observation in vehicle outdoor: (a) in X direction; (b) in Y direction; (c) in Z direction.
Figure 4.Crossover operation.
Figure 5.Mutation operation.
Figure 6.The improved initial alignment with a Vondrak filter for the disturbed base.
Parameters of genetic algorithms.
| Crossover Probability | 70% |
| Mutation probability | 5% |
| Population size | 20 |
Simulation technical data in different conditions.
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|---|---|---|---|---|---|---|
| 1 | Tactical | 0.1°/h | N(0, (0.05 deg/h)2) | 5 × 10−5 g | N(0, (5 × 10−5 g)2) | NO |
| 2 | Tactical | 0.1°/h | N(0, (0.05 deg/h)2) | 5 × 10−5 g | N(0, (5 × 10−5 g)2) | YES |
| 3 | Navigation | 0.02°/h | N(0, (0.01 deg/h)2) | 1 × 10−5 g | N(0, (2 × 10−5 g)2) | NO |
| 4 | Navigation | 0.02°/h | N(0, (0.01 deg/h)2) | 1 × 10−5 g | N(0, (2 × 10−5 g)2) | YES |
Figure 7.The spectrogram analysis of the error model.
Figure 8.The value of the smoothing factor under different conditions.
Figure 9.Ten times heading error of different schemes: (a) condition one; (b) condition two; (c) condition three; (d) condition four.
Figure 10.The test trajectory.
Tactical grade IMU technical data.
| Bias | 0.1 deg/h | 5 × 10−5 g |
| Scale factor | 100 ppm | 100 ppm |
| Random walk | 0.05 deg/h/sqrt (Hz) | 5 × 10−5 g/sqrt (Hz) |
Navigation grade IMU technical data.
| Bias | 0.02 deg/h | 1 × 10−5 g |
| Scale factor | 20 ppm | 40 ppm |
| Random walk | 0.01 deg/h/sqrt (Hz) | 1 × 10−5 g/sqrt (Hz) |
Figure 11.The fine alignment process results: (a) tactical grade IMU; (b) navigation grade IMU.
Figure 12.The navigation position error: (a) tactical grade IMU; (b) navigation grade IMU.
The navigation position error for different schemes.
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|---|---|---|---|---|
| 1 | 12.100 | 0.954 | 16.433 | 1.396 |
| 2 | 14.326 | 1.514 | 18.815 | 2.018 |
| 3 | 12.268 | 1.003 | 16.672 | 1.460 |
| 4 | 12.522 | 1.029 | 17.007 | 1.497 |