| Literature DB >> 36015737 |
Jinhao Song1, Jie Li1, Xiaokai Wei1, Chenjun Hu1, Zeyu Zhang2, Lening Zhao1, Yubing Jiao1.
Abstract
The accurate noise parameter is essential for the Kalman filter to obtain optimal estimates. However, problems such as variations in the noise environment and measurement anomalies can cause degradation of estimation accuracy or even divergence. The adaptive Kalman filter can simultaneously estimate state and noise parameters, while its performance will also be degraded in complex noise. To address the problem of estimation accuracy degradation and result divergence of the integrated navigation system in a complex time-varying noise environment, an improved multiple-model adaptive estimation (MMAE) that combines the Sage-Husa adaptive unscented Kalman filter with the MMAE is proposed in this paper. The forgetting factor is included as an unknown parameter of MMAE so that the algorithm can adjust the value of the forgetting factor according to different system states. In addition, we improve the hypothesis testing algorithm of classical MMAE to deal with the competition problem of undesirable models that severely impacts the performance of variable-parameter MMAE and enhance the algorithm's parameter identification capability. Simulation results show that this method enhances the system's robustness to noises of different statistical properties and improves the estimation accuracy of the filter in time-varying noise environments.Entities:
Keywords: Sage–Husa; adaptive Kalman filter; multiple-model adaptive estimation
Year: 2022 PMID: 36015737 PMCID: PMC9415772 DOI: 10.3390/s22165976
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1The structure diagram of improved MMAE.
Figure 2The structure of INS/GPS integrated navigation.
Figure 3Vehicle navigation platform.
The parameters of navigation devices.
| Device | Parameter | Value |
|---|---|---|
| INS | Gyro bias |
|
| Gyro random walk |
| |
| Accelerometer bias |
| |
| GPS | Velocity precision |
|
| Position precision |
| |
| Reference device | Velocity precision |
|
| Position precision |
|
MSE of position errors of different forgetting factors.
| Forgetting Factor (b) | 0–100 s | 200–300 s | 400–500 s |
|---|---|---|---|
| 0.95 | 3.4178 | 2.2838 | 2.7963 |
| 0.97 | 3.5405 | 2.1956 | 2.7265 |
| 0.99 | 3.6641 | 2.1116 | 2.6564 |
Figure 4Weight change of the optimal model.
Noise parameters.
| 700 s–1200 s (m) | 1800 s–2300 s (m) | |
|---|---|---|
| East Position | 6 × randn | 9 × randn |
| North Position | 6 × randn | 9 × randn |
Where randn is a random number subject to normal distribution.
Figure 5East position errors comparison of different method.
Figure 6North position errors comparison of different method.
MSE of position errors of different methods.
| Error (m) | Algorithm | 700 s–1200 s | 1200 s–1800 s | 1800 s–2300 s |
|---|---|---|---|---|
| East position error (m) | Standard UKF | 6.3643 | 1.5321 | 13.8936 |
| Sage–Husa | 3.7254 | 1.2423 | 6.9714 | |
| MMAE | 4.9558 | 1.3075 | 10.8799 | |
| Exponential decay | 3.7961 | 1.1767 | 7.0322 | |
| Proposed method | 3.4774 | 1.0694 | 6.3463 | |
| North position error (m) | Standard UKF | 6.6866 | 1.8067 | 13.7319 |
| Sage–Husa | 3.8142 | 1.3226 | 7.2156 | |
| MMAE | 4.8517 | 1.4829 | 10.9979 | |
| Exponential decay | 3.6485 | 1.0659 | 7.2199 | |
| Proposed method | 3.5103 | 1.0846 | 6.5168 |
Figure 7Radar map for MSE of position error of four methods.