Bluesky Facebook Reddit Email

Machine learning boosts GPS precision: new method enhances ambiguity resolution

06.24.25 | Aerospace Information Research Institute, Chinese Academy of Sciences

SAMSUNG T9 Portable SSD 2TB

SAMSUNG T9 Portable SSD 2TB transfers large imagery and model outputs quickly between field laptops, lab workstations, and secure archives.


A new study has introduced a machine learning-based approach to improve the reliability of Global Navigation Satellite System (GNSS) ambiguity resolution, a critical step for achieving high-precision positioning. By integrating multiple diagnostic metrics into a Support Vector Machine (SVM) model, the method significantly enhances the success rate of ambiguity validation compared to traditional empirical tests. The results demonstrate an 83% success rate in independent testing and a notable reduction in convergence time prediction errors, paving the way for more accurate real-time navigation and monitoring applications.

High-precision Global Navigation Satellite System (GNSS) applications, such as real-time displacement monitoring and vehicle navigation, rely heavily on resolving carrier-phase ambiguities. However, traditional methods like the R-ratio and W-ratio tests often use empirical thresholds, which can lead to unreliable results due to biases and environmental variability. These limitations hinder the efficiency of Precise Point Positioning Ambiguity Resolution (PPP-AR), especially in dynamic or challenging conditions. Based on these challenges, there is a pressing need to develop more robust and adaptive techniques for ambiguity validation.

Published (DOI: 10.1186/s43020-025-00167-8) on June 9, 2025, in Satellite Navigation , researchers from the Royal Observatory of Belgium and the State Key Laboratory of Precision Geodesy in China unveiled a novel Support Vector Machine (SVM) -based method for GNSS ambiguity validation. The study leverages machine learning to combine multiple diagnostic metrics, achieving higher accuracy and reliability than conventional approaches. The model was trained on extensive datasets and validated through real-world experiments, showcasing its potential to transform high-precision positioning.

The study’s key innovation lies in its integration of seven diagnostic metrics—including R-ratio, ADOP, and ambiguity dimension—into an SVM model. This approach addresses the limitations of traditional methods, which often rely on single thresholds and fail to account for complex dependencies among variables. The SVM model achieved an 92% success rate in ambiguity validation, outperforming the R-ratio test’s 82% in kinematic scenarios. Notably, the model reduced convergence time prediction errors to just 1.0 minute, compared to 5.0 minutes for conventional methods.

Highlights of the research include:

Despite its advancements, the study acknowledges a 5% error rate in unresolved ambiguities, pointing to future research directions, such as incorporating variance-covariance data for further refinement.

Dr. Jianghui Geng, co-author of the study, emphasized, "Our SVM model represents a paradigm shift in ambiguity validation. By harnessing machine learning, we’ve not only improved accuracy but also provided a scalable solution for diverse GNSS applications, from autonomous vehicles to geodetic monitoring."

The SVM-based method holds significant promise for industries requiring ultra-precise positioning, such as autonomous navigation, aerospace, and infrastructure monitoring. Its ability to shorten convergence times and enhance reliability could revolutionize real-time GNSS applications, particularly in urban or obstructed environments where signal interruptions are common. Future iterations of the model, incorporating additional data layers, could further bridge the gap between theoretical precision and real-world performance, setting a new standard for GNSS technology.

###

References

DOI

10.1186/s43020-025-00167-8

Original Source URL

https://doi.org/10.1186/s43020-025-00167-8

Funding information

This work is funded by National Science Foundation of China (No. 42025401) and the Projects of International Cooperation and Exchanges NSFC (42361134580, 42311530062).

About Satellite Navigation

Satellite Navigation (E-ISSN: 2662-1363; ISSN: 2662-9291) is the official journal of Aerospace Information Research Institute, Chinese Academy of Sciences . The journal aims to report innovative ideas, new results or progress on the theoretical techniques and applications of satellite navigation. The journal welcomes original articles, reviews and commentaries.

Satellite Navigation

Not applicable

Integer ambiguity validation through machine learning for precise point positioning

9-Jun-2025

The authors declare that they have no competing interests.

Keywords

Article Information

Contact Information

Bo Wang
Satellite Navigation
satellite-navigation@aircas.ac.cn

Source

How to Cite This Article

APA:
Aerospace Information Research Institute, Chinese Academy of Sciences. (2025, June 24). Machine learning boosts GPS precision: new method enhances ambiguity resolution. Brightsurf News. https://www.brightsurf.com/news/LVD0R4XL/machine-learning-boosts-gps-precision-new-method-enhances-ambiguity-resolution.html
MLA:
"Machine learning boosts GPS precision: new method enhances ambiguity resolution." Brightsurf News, Jun. 24 2025, https://www.brightsurf.com/news/LVD0R4XL/machine-learning-boosts-gps-precision-new-method-enhances-ambiguity-resolution.html.