ZWDX: a global zenith wet delay forecasting model using XGBoost
Abstract Tropospheric delays play a crucial role for Global Navigation Satellite Systems (GNSS). They are a major error source in GNSS positioning and, at the same time, also a variable of interest in GNSS meteorology. Regardless of whether the delay shall be eliminated or inverted to atmospheric pa...
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SpringerOpen
2024-12-01
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| Series: | Earth, Planets and Space |
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| Online Access: | https://doi.org/10.1186/s40623-024-02104-6 |
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| author | Laura Crocetti Matthias Schartner Marcus Franz Wareyka-Glaner Konrad Schindler Benedikt Soja |
| author_facet | Laura Crocetti Matthias Schartner Marcus Franz Wareyka-Glaner Konrad Schindler Benedikt Soja |
| author_sort | Laura Crocetti |
| collection | DOAJ |
| description | Abstract Tropospheric delays play a crucial role for Global Navigation Satellite Systems (GNSS). They are a major error source in GNSS positioning and, at the same time, also a variable of interest in GNSS meteorology. Regardless of whether the delay shall be eliminated or inverted to atmospheric parameters, and no matter how this is done, it is of utmost importance to accurately determine tropospheric delays. In this study, we present a global zenith wet delay (ZWD) model, called ZWDX, that offers accurate spatial and temporal ZWD predictions at any desired location on Earth. ZWDX is based on the XGBoost algorithm and uses ZWDs measured at over 19,000 GNSS stations as reference. The inputs of ZWDX are the geographical location, observation time, and specific humidity at nine atmospheric pressure levels. For our study, we train the model on the years 2010 to 2021 and then test it for the year 2022. While ZWDX is trained to predict ZWD values based on specific humidity values from the ERA5 reanalysis, we show that it also delivers good predictions when applied to HRES specific humidity forecasts, making it suitable for (short-term) ZWD forecasting. The ZWDX model predictions are evaluated at 2500 globally distributed, spatio-temporally independent GNSS stations, with forecasting horizons ranging from 0 h to 48 h, and achieve root mean squared errors (RMSE) between 10.1 mm and 16.2 mm. To independently evaluate ZWDX’s performance and to demonstrate its potential for a real-world downstream task, we use its predictions as a-priori values for a precise point positioning (PPP) analysis and compare the results with those obtained using ZWD values from VMF1 or VMF3. We find that the highest accuracy and fastest convergence are indeed achieved with ZWDX. Graphical Abstract |
| format | Article |
| id | doaj-art-e341371072174f6b985b7d7d1be75458 |
| institution | OA Journals |
| issn | 1880-5981 |
| language | English |
| publishDate | 2024-12-01 |
| publisher | SpringerOpen |
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| series | Earth, Planets and Space |
| spelling | doaj-art-e341371072174f6b985b7d7d1be754582025-08-20T02:31:54ZengSpringerOpenEarth, Planets and Space1880-59812024-12-0176111610.1186/s40623-024-02104-6ZWDX: a global zenith wet delay forecasting model using XGBoostLaura Crocetti0Matthias Schartner1Marcus Franz Wareyka-Glaner2Konrad Schindler3Benedikt Soja4Institute of Geodesy and Photogrammetry, ETH ZurichInstitute of Geodesy and Photogrammetry, ETH ZurichDepartment of Geodesy and Geoinformation, TU WienInstitute of Geodesy and Photogrammetry, ETH ZurichInstitute of Geodesy and Photogrammetry, ETH ZurichAbstract Tropospheric delays play a crucial role for Global Navigation Satellite Systems (GNSS). They are a major error source in GNSS positioning and, at the same time, also a variable of interest in GNSS meteorology. Regardless of whether the delay shall be eliminated or inverted to atmospheric parameters, and no matter how this is done, it is of utmost importance to accurately determine tropospheric delays. In this study, we present a global zenith wet delay (ZWD) model, called ZWDX, that offers accurate spatial and temporal ZWD predictions at any desired location on Earth. ZWDX is based on the XGBoost algorithm and uses ZWDs measured at over 19,000 GNSS stations as reference. The inputs of ZWDX are the geographical location, observation time, and specific humidity at nine atmospheric pressure levels. For our study, we train the model on the years 2010 to 2021 and then test it for the year 2022. While ZWDX is trained to predict ZWD values based on specific humidity values from the ERA5 reanalysis, we show that it also delivers good predictions when applied to HRES specific humidity forecasts, making it suitable for (short-term) ZWD forecasting. The ZWDX model predictions are evaluated at 2500 globally distributed, spatio-temporally independent GNSS stations, with forecasting horizons ranging from 0 h to 48 h, and achieve root mean squared errors (RMSE) between 10.1 mm and 16.2 mm. To independently evaluate ZWDX’s performance and to demonstrate its potential for a real-world downstream task, we use its predictions as a-priori values for a precise point positioning (PPP) analysis and compare the results with those obtained using ZWD values from VMF1 or VMF3. We find that the highest accuracy and fastest convergence are indeed achieved with ZWDX. Graphical Abstracthttps://doi.org/10.1186/s40623-024-02104-6Zenith wet delay (ZWD)Global predictionsXGBoostMachine learning (ML)GNSSPrecise point positioning (PPP) |
| spellingShingle | Laura Crocetti Matthias Schartner Marcus Franz Wareyka-Glaner Konrad Schindler Benedikt Soja ZWDX: a global zenith wet delay forecasting model using XGBoost Earth, Planets and Space Zenith wet delay (ZWD) Global predictions XGBoost Machine learning (ML) GNSS Precise point positioning (PPP) |
| title | ZWDX: a global zenith wet delay forecasting model using XGBoost |
| title_full | ZWDX: a global zenith wet delay forecasting model using XGBoost |
| title_fullStr | ZWDX: a global zenith wet delay forecasting model using XGBoost |
| title_full_unstemmed | ZWDX: a global zenith wet delay forecasting model using XGBoost |
| title_short | ZWDX: a global zenith wet delay forecasting model using XGBoost |
| title_sort | zwdx a global zenith wet delay forecasting model using xgboost |
| topic | Zenith wet delay (ZWD) Global predictions XGBoost Machine learning (ML) GNSS Precise point positioning (PPP) |
| url | https://doi.org/10.1186/s40623-024-02104-6 |
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