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GNSS storm nowcasting demonstrator for Bulgaria
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Global Navigation Satellite System (GNSS) is an established atmospheric monitoring technique delivering water vapour data in near-real time. The advancement of GNSS processing made the quality of real-time GNSS tropospheric products comparable to near-real-time solutions. In addition, they can be provided with a temporal resolution of 5 min and latency of 10 min, suitable for severe weather nowcasting. This presentation exploits the added value of sub-hourly real-time GNSS tropospheric products for the nowcasting of convective storms in Bulgaria. A convective Storm Demonstrator (Storm Demo) is build using real-time GNSS tropospheric products and Instability Indices to derive site-specific threshold values in support of public weather and hail suppression services. The Storm Demo targets the development of service featuring GNSS products for two regions with hail suppression operations in Bulgaria, where thunderstorms and hail events occur between May and September, with a peak in July. The Storm Demo real-time Precise Point Positioning processing is conducted with the G-Nut software with a temporal resolution of 5 min for 12 ground-based GNSS stations in Bulgaria. Real-time data evaluation is done using reprocessed products and the achieved precision is below 9 mm, which is within the nowcasting requirements of the World Meteorologic Organisation. For the period May–September 2021, the seasonal classification function for thunderstorm nowcasting is computed and evaluated. The added value of the high temporal resolution of the GNSS tropospheric gradients is investigated for a several storm case. Evaluation of real-time tropospheric products from Galileo will be presneted in addition.
Title: GNSS storm nowcasting demonstrator for Bulgaria
Description:
Global Navigation Satellite System (GNSS) is an established atmospheric monitoring technique delivering water vapour data in near-real time.
The advancement of GNSS processing made the quality of real-time GNSS tropospheric products comparable to near-real-time solutions.
In addition, they can be provided with a temporal resolution of 5 min and latency of 10 min, suitable for severe weather nowcasting.
This presentation exploits the added value of sub-hourly real-time GNSS tropospheric products for the nowcasting of convective storms in Bulgaria.
A convective Storm Demonstrator (Storm Demo) is build using real-time GNSS tropospheric products and Instability Indices to derive site-specific threshold values in support of public weather and hail suppression services.
The Storm Demo targets the development of service featuring GNSS products for two regions with hail suppression operations in Bulgaria, where thunderstorms and hail events occur between May and September, with a peak in July.
The Storm Demo real-time Precise Point Positioning processing is conducted with the G-Nut software with a temporal resolution of 5 min for 12 ground-based GNSS stations in Bulgaria.
Real-time data evaluation is done using reprocessed products and the achieved precision is below 9 mm, which is within the nowcasting requirements of the World Meteorologic Organisation.
For the period May–September 2021, the seasonal classification function for thunderstorm nowcasting is computed and evaluated.
The added value of the high temporal resolution of the GNSS tropospheric gradients is investigated for a several storm case.
Evaluation of real-time tropospheric products from Galileo will be presneted in addition.
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GNSS storm nowcasting demonstrator for Bulgaria
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