| Literature DB >> 30970680 |
Dongsheng Wang1,2, Yongjie Lu3,4, Lei Zhang5, Guoping Jiang6,7.
Abstract
Many traffic occasions such as tunnels, subway stations and underground parking require accurate and continuous positioning. Navigation and timing services offered by the Global Navigation Satellite System (GNSS) is the most popular outdoor positioning method, but its signals are vulnerable to interference, leading to a degraded performance or even unavailability. The combination of magnetometer and Inertial Measurement Unit (IMU) is one of the commonly used indoor positioning methods. Within the proposed mobile platform for positioning in seamless indoor and outdoor scenes, the data of magnetometer and IMU are used to update the positioning when the GNSS signals are weak. Because the magnetometer is susceptible to environmental interference, an intelligent method for calculating heading angle by magnetometer is proposed, which can dynamically calculate and correct the heading angle of the mobile platform in a working environment. The results show that the proposed method of calculating heading angle by magnetometer achieved better performance with interference existence. Compared with the uncorrected heading angle, the corrected accuracy results could be improved by 60%, and the effect was more obvious when the interference was stronger. The error of overall positioning trajectory and true trajectory was within 2 m.Entities:
Keywords: Kalman filter; embedded system; heading angle; integrated positioning; magnetometer
Year: 2019 PMID: 30970680 PMCID: PMC6480551 DOI: 10.3390/s19071696
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Positioning solution of the mobile positioning platform.
Figure 2Track positioning.
Figure 3Heading angle conversion
Figure 4The process of solving the optimal value.
Figure 5The architecture of the proposed system platform.
Figure 6Hardware platform.
Figure 7Partial measurement data.
Figure 8Magnetic field projected on the XY plane: (a) uncorrected data; and (b) corrected data.
Figure 9Testing scenarios for the proposed integrated positioning system: (a) testing the positioning effect of GNSS/INS; (b) testing the correction effect under the interference of different magnetic field strength; and (c) testing platform seamless positioning performance.
Figure 10Track of movement.
Figure 11Tracking error.
Test Occasion 1: Mean and STD of the positioning error for the GNSS Observation and Kalman Filter.
| GNSS Observation | Kalman Filter | |
|---|---|---|
| Mean of positioning error (m) | 1.6025 | 0.5626 |
| STD of positioning error (m) | 0.7 | 0.22 |
Figure 12Output of triaxial magnetometer: (a) triaxial magnetic field data under large interference; and (b) triaxial magnetic field data under small interference.
Figure 13Heading angle results for two paths: (a) angle in large interference; and (b) angle in small interference.
Test Occasion 2: Mean and STD of the heading angle error under large interference.
| Uncorrected | Corrected | |
|---|---|---|
| Mean of angle error (°) | 13.4502 | 2.1278 |
| STD of angle error (°) | 42.9705 | 3.7276 |
Test Occasion 2: Mean and STD of the heading angle error under small interference.
| Uncorrected | Corrected | |
|---|---|---|
| Mean of angle error (°) | 2.4670 | 1.2207 |
| STD of angle error (°) | 2.9812 | 1.2267 |
Figure 14Triaxial acceleration data.
Figure 15Triaxial magnetic field strength.
Figure 16Track of seamless the indoor/outdoor movement.
Test Occasion 4: Mean and STD of the positioning error of the seamless indoor/outdoor positioning.
| Uncorrected | Corrected | |
|---|---|---|
| Mean of positioning error (m) | 8.45 | 1.73 |
| STD of positioning error (m) | 10.77 | 1.44 |