| Literature DB >> 30646546 |
Tian Dai1, Lingjuan Miao2, Yanbing Guo3.
Abstract
Database-referenced navigation (DBRN) using geophysical information is often implemented on autonomous underwater vehicles (AUVs) to correct the positional errors of the inertial navigation system (INS). The matching algorithm is a pivotal technique in DBRN. However, it is impossible to completely eliminate mismatches in practical application. Therefore, it is necessary to perform a mismatch detection method on the outputs of DBRN. In this paper, we propose a real-time triple constraint mismatch detection method. The proposed detection method is divided into three modules: the model fitting detection module, the spatial structure detection module, and the distance ratio detection module. In the model fitting detection module, the navigation characteristics of AUVs are used to select the fitting model. In the spatial structure detection module, the proposed method performs the mismatch detection based on the affine transformation relationship between the INS-indicated trajectory and the corresponding matched trajectory. In the distance ratio detection module, we derive the distance ratio constraint between the INS-indicated trajectory and the corresponding matched trajectory. Simulations based on an actual geomagnetic anomaly base map have been performed for the validation of the proposed method.Entities:
Keywords: autonomous underwater vehicles; database-referenced navigation; inertial navigation system; mismatch detection; underwater navigation
Year: 2019 PMID: 30646546 PMCID: PMC6359649 DOI: 10.3390/s19020307
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The flow of the proposed mismatch detection method.
Simulation conditions of the inertial navigation system (INS).
| Parameters | Quantity | Unit |
|---|---|---|
| Gyro constant drift | 0.02 | °/hr |
| Gyro random drift ( | 0.02 | °/hr |
| Accelerometer constant bias | 100 |
|
| Accelerometer random bias ( | 100 |
|
| Velocity | 7.71 |
|
| Acceleration | 0 |
|
| Initial angle error | 0 |
|
| Azimuth angle | 60 |
|
| Initial longitude error | 0.1 | ′ |
| Initial latitude error | 0.1 | ′ |
| Simulation time | 10 | hr |
Figure 2The INS position error.
Figure 33D map of the geomagnetic anomaly data.
Parameters of the geomagnetic base map.
| Parameters | Quantity | Unit |
|---|---|---|
| Number of grid points | 840 × 840 | points |
| Grid step | 0.3 | ′ |
| Minimum value | −719.21 | nT |
| Maximum value | 253.44 | nT |
| Mean | −2.46 | nT |
Configuration of the vector iterated closest contour point (VICCP) algorithm.
| Parameters | Parameter Values |
|---|---|
| Maximum number of iterations | 500 |
| Number of sampling points per sequence | 13 |
| Sampling interval | 5 min |
| The variance of the magnetic anomaly measurement noise | 1 nT |
Figure 4Matching results within nine hours.
Figure 5Longitude error and latitude error within nine hours.
Figure 6Mismatch detection results of the restricted spatial order constraints (RSOC)-based mismatch diagnostic algorithm and the proposed method.
Statistic results of the RSOC-based mismatch diagnostic algorithm and the proposed method.
| Detection Method |
|
|
|
|
|---|---|---|---|---|
| RSOC-based mismatch diagnostic algorithm | 30 | 34 | 88.24% | 46.88% |
| Proposed algorithm | 45 | 54 | 83.33% | 70.31% |
Threshold value settings and results.
| Threshold Value |
|
|
|
| |
|---|---|---|---|---|---|
|
|
| ||||
| 3 grid | 0.001 | 59 | 86 | 68.60% | 92.19% |
| 3 grid | 0.1 | 41 | 47 | 87.23% | 64.06% |
| 0.5 grid | 0.01 | 62 | 97 | 63.92% | 96.88% |
| 7 grid | 0.01 | 36 | 41 | 87.90% | 56.25% |