Articles | Volume 15, issue 12
https://doi.org/10.5194/nhess-15-2605-2015
https://doi.org/10.5194/nhess-15-2605-2015
Research article
 | 
09 Dec 2015
Research article |  | 09 Dec 2015

On the inclusion of GPS precipitable water vapour in the nowcasting of rainfall

P. Benevides, J. Catalao, and P. M. A. Miranda

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Cited articles

Baker, H. C., Dodson, A. H., Penna, N. T., Higgins, M., and Offiler, D.: Ground-based GPS water vapour estimation: potential for meteorological forecasting, J. Atmos. Sol.-Terr. Phy., 63, 1305–1314, 2001.
Bastin, S., Champollion, C., Bock, O., Drobinski, P., and Masson, F.: Diurnal cycle of water vapor as documented by a dense GPS network in a coastal area during ESCOMPTE IOP2, J. Appl. Meteorol. Climatol., 46, 167–182, 2007.
Bender, M., Dick, G., Ge, M., Deng, Z., Wickert, J., Kahle, H. G., Raabe A., and Tetzlaff, G.: Development of a GNSS water vapour tomography system using algebraic reconstruction techniques, Adv. Space Res., 47, 1704–1720, 2011.
Benevides, P., Catalao, J., Miranda, P., and Chinita, M. J.: Analysis of the relation between GPS tropospheric delay and intense precipitation, SPIE Remote Sensing, International Society for Optics and Photonics, 88900Y–88900Y, 2013.
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Short summary
Precipitable water vapour (PWV) retrieved from GPS delay data is analysed in several case studies of intense precipitation in Lisbon. It is found positive correlation between PWV behaviour and the probability of precipitation. A least-squares fitting of a broken line tendency shows that most severe rainfall occurs in descending trends after a long PWV ascending period. A simple forecast algorithm identifies the majority of large rain events, yet with a substantial amount of false positives.
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