Improving GNSS Ambiguity Acceptance Test Performance with the Generalized Difference Test Approach
Abstract
:1. Introduction
- Estimating and using a least-squares estimator or Kalman filter. The integer nature of is not considered in this step and corresponding estimated parameters are regarded as the ’float solution’. The float solution and its variance-covariance matrix are denoted as:
- Mapping the real-valued ambiguity to integer with the integer estimator. The integer estimation procedure can be described as, with .
- Performing ambiguity acceptance test. The fixed integer is validated with ambiguity acceptance tests. If is rejected by the test, the procedure is finished and the float solution will be used as the final solution
- Updating real-valued parameters by if is accepted by the ambiguity acceptance test.
2. The Sub-Optimality of the Difference test
2.1. The Difference Test
2.2. The Optimal Integer Aperture Estimation
2.3. The Discrepancy between the DTIA and the OIA
3. Generalized Difference Test
3.1. Definition of the Generalized Difference test
3.2. The Acceptance Region of the GDT
3.3. The Optimal Term Number of GDT
3.4. Rapid Determination of the Threshold of the GDT
3.5. The Procedure of Applying GDT
- Finding the best m integer candidates. The optimal integer estimator, the integer least-squares, can intermediately give an arbitrary number of best integer candidate sets. Hence, getting m best sets of integer candidates is just a sorting procedure.
- Constructing the test statistics of GDT. For example, the test statistics of GDT3 can be computed as:
- Computing IB success rate with Equation (26), then determining the threshold of GDT using the threshold function with specified IB success rate and failure rate tolerance. The threshold is a non-negative value, so the threshold is set to be zero if the computed threshold is negative.
- Performing ambiguity acceptance test. If , or equivalently , then the best integer candidate can be accepted by the ambiguity acceptance test, otherwise, reject it. Since the threshold function gives , it is necessary to recover the with an exponential function.
4. Performance Evaluation of the GDT
5. Numerical Results from GNSS Baseline Data
- The ionosphere weighted model is used to capture the ionosphere biases. The elevation dependent and baseline dependent stochastic model is used for the priori ionospheric noise. With strong priori ionosphere constraint, the short-baseline is equivalent to the ionosphere-fixed model.
- The elevation dependent weighting model is used to reflect the observation noise.
- The posterior variance factor is estimated on epoch basis to adapt the temporal variation of observation noise. Since the difference test and GDT are sensitive to the variance factor, so capture the temporal variation of variance factor is important. A more detailed stochastic modeling strategies can be found in the work [14].
6. Concluding Remarks
Author Contributions
Funding
Conflicts of Interest
References
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0.1 | 1.6691 | −1.6660 | −1.7798 | 0.7849 |
0.2 | 1.6957 | −1.6990 | −1.7434 | 0.7492 |
0.3 | 1.6277 | −1.6333 | −1.7419 | 0.7491 |
0.4 | 1.5834 | −1.5899 | −1.7383 | 0.7471 |
0.5 | 1.4711 | −1.4775 | −1.7617 | 0.7723 |
0.6 | 1.4260 | −1.4314 | −1.7653 | 0.7780 |
0.7 | 1.3723 | −1.3796 | −1.7740 | 0.7875 |
0.8 | 1.3850 | −1.3959 | −1.7589 | 0.7726 |
0.9 | 1.2930 | −1.3041 | −1.7851 | 0.8001 |
1.0 | 1.2639 | −1.2771 | −1.7881 | 0.8035 |
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Wang, L.; Chen, R.; Shen, L.; Feng, Y.; Pan, Y.; Li, M.; Zhang, P. Improving GNSS Ambiguity Acceptance Test Performance with the Generalized Difference Test Approach. Sensors 2018, 18, 3018. https://doi.org/10.3390/s18093018
Wang L, Chen R, Shen L, Feng Y, Pan Y, Li M, Zhang P. Improving GNSS Ambiguity Acceptance Test Performance with the Generalized Difference Test Approach. Sensors. 2018; 18(9):3018. https://doi.org/10.3390/s18093018
Chicago/Turabian StyleWang, Lei, Ruizhi Chen, Lili Shen, Yanming Feng, Yuanjin Pan, Ming Li, and Peng Zhang. 2018. "Improving GNSS Ambiguity Acceptance Test Performance with the Generalized Difference Test Approach" Sensors 18, no. 9: 3018. https://doi.org/10.3390/s18093018
APA StyleWang, L., Chen, R., Shen, L., Feng, Y., Pan, Y., Li, M., & Zhang, P. (2018). Improving GNSS Ambiguity Acceptance Test Performance with the Generalized Difference Test Approach. Sensors, 18(9), 3018. https://doi.org/10.3390/s18093018