Robust-Extended Kalman Filter and Long Short-Term Memory Combination to Enhance the Quality of Single Point Positioning
Abstract
:1. Introduction
2. Single Point Positioning Technology
3. Robust Extended Kalman Filter
3.1. Robust Extended Kalman Filter Model
3.2. MM Estimation Theory
3.3. Iterative Reweighted Least Squares Algorithm
- Find an initial estimate
- Estimate the vector for initial residuals of the observations :
- Define the initial scale value [33]
- Estimate the initial diagonal weight matrix by MM-Estimation.
- While (j is iteration)
- (a)
- Update the value of the matrix at the iteration with
- (b)
- Solve the estimated state using the weighted least-squared method
- (c)
- Calculate the HPL (in Section 3.4)
- (d)
- If ; break
- (e)
- If ; continue
- (f)
- Update the estimated residuals
- (g)
- Calculate the scale value
- (h)
- Recalculate the diagonal weighted matrix using MM-Estimation:
- (i)
- Go to step (a)
- End
- If then the estimated positions are accepted, (HAL: Horizontal Alert Limit)If not, they are rejected.
3.4. RAIM Algorithm
4. Experimental Results of Applying Robust-EKF
4.1. Applying Robust-EKF
4.2. Experimental Results
- Scenario #1: Navigation solution based on GPS data,
- Scenario #2: Navigation solution based on Galileo data,
- Scenario #3: Navigation solution based on GLONASS data,
- Scenario #4: Navigation solution based on GPS/Galileo/GLONASS data,
- Scenario #5: Navigation solution based on robust-EKF GPS/Galileo/GLONASS data.
5. De-Noising Filter Method and Experimental Results
5.1. De-Noising Filter Model
5.2. Experimental Results
6. Conclusions and Perspectives
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Name | Weight Function |
---|---|
Huber | |
Bi-Tukey | |
Bi-Square |
RMS Error (m) | GPS | GAL | GLO | GPS/GAL/GLO | Robust-EKF GPS/GAL/GLO |
---|---|---|---|---|---|
RMS-E | 1.42 | 1.34 | 31.00 | 8.11 | 0.74 |
RMS-N | 1.46 | 1.2 | 6.65 | 2.74 | 0.75 |
RMS-U | 3.94 | 3.08 | 25.7 | 9.50 | 1.82 |
3D-RMS | 4.43 | 3.56 | 40.81 | 12.73 | 2.1 |
RMS Error (m) | Robust-EKF | rEKF-LSTM |
---|---|---|
RMS-E | 0.82 | 0.39 |
RMS-N | 0.83 | 0.32 |
RMS-U | 2.04 | 0.36 |
3D-RMS | 2.35 | 0.62 |
RMS Error (m) | GPS | GAL | GLO | GPS/GAL/GLO | Robust-EKF GPS/GAL/GLO | rEKF-LSTM |
---|---|---|---|---|---|---|
RMS-E | 1.43 | 1.21 | 30.71 | 7.08 | 0.82 | 0.39 |
RMS-N | 1.58 | 1.19 | 6.18 | 2.27 | 0.83 | 0.32 |
RMS-U | 3.32 | 3.07 | 21.10 | 8.18 | 2.04 | 0.36 |
3D-RMS | 3.95 | 3.50 | 37.76 | 11.05 | 2.35 | 0.62 |
Base Station | RMS Error (m) | GPS | GAL | GLO | GPS/GAL/GLO | Robust-EKF GPS/GAL/GLO | rEKF-LSTM |
---|---|---|---|---|---|---|---|
RMS-E | 1.12 | 1.36 | 17.76 | 3.40 | 0.72 | 0.73 | |
AJAC | RMS-N | 1.65 | 1.25 | 9.30 | 4.57 | 0.88 | 0.46 |
RMS-U | 2.52 | 2.42 | 3.40 | 4.75 | 1.33 | 0.45 | |
3D-RMS | 3.21 | 3.04 | 20.33 | 7.42 | 1.75 | 0.97 | |
RMS-E | 1.14 | 1.38 | 17.39 | 3.42 | 0.67 | 0.75 | |
GRAC | RMS-N | 1.58 | 1.28 | 11.87 | 5.85 | 0.91 | 0.54 |
RMS-U | 2.89 | 3.02 | 12.74 | 4.76 | 2.29 | 1.66 | |
3D-RMS | 3.49 | 3.56 | 24.6 | 8.28 | 2.55 | 1.89 | |
RMS-E | 1.59 | 1.07 | 33.12 | 6.62 | 0.68 | 0.51 | |
LMMF | RMS-N | 1.36 | 0.96 | 11.81 | 1.82 | 0.63 | 0.30 |
RMS-U | 3.38 | 2.20 | 4.32 | 8.17 | 1.80 | 0.47 | |
3D-RMS | 3.96 | 2.63 | 35.43 | 10.67 | 2.02 | 0.76 |
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Tan, T.-N.; Khenchaf, A.; Comblet, F.; Franck, P.; Champeyroux, J.-M.; Reichert, O. Robust-Extended Kalman Filter and Long Short-Term Memory Combination to Enhance the Quality of Single Point Positioning. Appl. Sci. 2020, 10, 4335. https://doi.org/10.3390/app10124335
Tan T-N, Khenchaf A, Comblet F, Franck P, Champeyroux J-M, Reichert O. Robust-Extended Kalman Filter and Long Short-Term Memory Combination to Enhance the Quality of Single Point Positioning. Applied Sciences. 2020; 10(12):4335. https://doi.org/10.3390/app10124335
Chicago/Turabian StyleTan, Truong-Ngoc, Ali Khenchaf, Fabrice Comblet, Pierre Franck, Jean-Marc Champeyroux, and Olivier Reichert. 2020. "Robust-Extended Kalman Filter and Long Short-Term Memory Combination to Enhance the Quality of Single Point Positioning" Applied Sciences 10, no. 12: 4335. https://doi.org/10.3390/app10124335
APA StyleTan, T.-N., Khenchaf, A., Comblet, F., Franck, P., Champeyroux, J.-M., & Reichert, O. (2020). Robust-Extended Kalman Filter and Long Short-Term Memory Combination to Enhance the Quality of Single Point Positioning. Applied Sciences, 10(12), 4335. https://doi.org/10.3390/app10124335