As the primary navigation source, GNSS performance monitoring and prediction have critical importance for the success of mission-critical urban air mobility and cargo applications. In this paper, a novel machine learning based performance prediction algorithm is suggested considering environment recognition. Valid environmental parameters that support recognition and prediction stages are introduced, and K-Nearest Neighbour, Support Vector Regression and Random Forest algorithms are tested based on their prediction performance with using these environmental parameters. Performance prediction results and parameter importances are analyzed based on three types of urban environments (suburban, urban and urban-canyon) with the synthetic data ge...
This thesis presents a method based on neural networks and Kalman filters for estimating the positio...
202205 bckwAccepted ManuscriptOthersResearch Institute for Sustainable Urban Development, Hong Kong ...
© 2020 ION 2020 International Technical Meeting Proceedings. All rights reserved. To utilize RTK-GNS...
In terms of the availability and accuracy of positioning, navigation, and timing (PNT), the traditio...
Before deployment and commissioning of new positioning products/applications, manufacturers need to ...
The algorithms and models of traditional global navigation satellite systems (GNSSs) perform very we...
Autonomuous transportation systems require navigation performance with a high level of integrity. As...
Global navigation satellite systems (GNSSs) are commonly used to measure the position and time globa...
International audienceGlobal Navigation Satellite System (GNSS) is the widely used technology when i...
Localization accuracy obtainable from global navigation satellites systems in built up areas like u...
AbstractGlobal Navigation Satellites Systems (GNSS) is frequently used for positioning services in v...
This paper is aimed at the problem of predicting the land subsidence or upheave in an area, using GN...
The development of new GNSS constellations, and the modernization of existing ones, has increased th...
One of the most used Position, Navigation, and Timing (PNT) technology of the 21st century is Global...
We investigate the accuracy of conventional machine learning aided algorithms for the prediction of ...
This thesis presents a method based on neural networks and Kalman filters for estimating the positio...
202205 bckwAccepted ManuscriptOthersResearch Institute for Sustainable Urban Development, Hong Kong ...
© 2020 ION 2020 International Technical Meeting Proceedings. All rights reserved. To utilize RTK-GNS...
In terms of the availability and accuracy of positioning, navigation, and timing (PNT), the traditio...
Before deployment and commissioning of new positioning products/applications, manufacturers need to ...
The algorithms and models of traditional global navigation satellite systems (GNSSs) perform very we...
Autonomuous transportation systems require navigation performance with a high level of integrity. As...
Global navigation satellite systems (GNSSs) are commonly used to measure the position and time globa...
International audienceGlobal Navigation Satellite System (GNSS) is the widely used technology when i...
Localization accuracy obtainable from global navigation satellites systems in built up areas like u...
AbstractGlobal Navigation Satellites Systems (GNSS) is frequently used for positioning services in v...
This paper is aimed at the problem of predicting the land subsidence or upheave in an area, using GN...
The development of new GNSS constellations, and the modernization of existing ones, has increased th...
One of the most used Position, Navigation, and Timing (PNT) technology of the 21st century is Global...
We investigate the accuracy of conventional machine learning aided algorithms for the prediction of ...
This thesis presents a method based on neural networks and Kalman filters for estimating the positio...
202205 bckwAccepted ManuscriptOthersResearch Institute for Sustainable Urban Development, Hong Kong ...
© 2020 ION 2020 International Technical Meeting Proceedings. All rights reserved. To utilize RTK-GNS...