An Improved QPE over Complex Terrain Employing Cloud-to-Ground Lightning Occurrences
Author
Minjarez-Sosa, Carlos ManuelCastro, Christopher L.
Cummins, Kenneth L.
Waissmann, Julio
Adams, David K.
Affiliation
Univ Arizona, Dept Atmospher SciIssue Date
2017-09
Metadata
Show full item recordPublisher
AMER METEOROLOGICAL SOCCitation
An Improved QPE over Complex Terrain Employing Cloud-to-Ground Lightning Occurrences 2017, 56 (9):2489 Journal of Applied Meteorology and ClimatologyRights
© 2017 American Meteorological Society.Collection Information
This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.Abstract
A lightning-precipitation relationship (LPR) is studied at high temporal and spatial resolution (5 min and 5 km). As a proof of concept of these methods, precipitation data are retrieved from the National Severe Storms Laboratory (NSSL) NMQ product for southern Arizona and western Texas while lightning data are provided by the National Lightning Detection Network (NLDN). A spatial- and time-invariant (STI) linear model that considers spatial neighbors and time lags is proposed. A data denial analysis is performed over Midland, Texas (a region with good sensor coverage), with this STI model. The LPR is unchanged and essentially equal, regardless of the domain (denial or complete) used to obtain the STI model coefficients. It is argued that precipitation can be estimated over regions with poor sensor coverage (i.e., southern Arizona) by calibrating the LPR over well-covered domains that are experiencing similar storm conditions. To obtain a lightning-estimated precipitation that dynamically updates the model coefficients in time, a Kalman filter is applied to the STI model. The correlation between the observed and estimated precipitation is statistically significant for both models, but the Kalman filter provides a better precipitation estimation. The best demonstration of this application is a heavy-precipitation, high-frequency lightning event in southern Arizona over a region with poor radar and rain gauge coverage. By calibrating the Kalman filter over a data-covered domain, the lightning-estimated precipitation is considerably greater than that estimated by radar alone. Therefore, for regions where both rain gauge and radar data are compromised, lightning provides a viable alternative for improving QPE.Note
6 month embargo; published online: 5 September 2017ISSN
1558-84241558-8432
Version
Final published versionSponsors
CONACYT [187242]; University of Arizona through a Graduate Incentives for Growth Award (GIGA) Fellowship; Vaisala, Inc.; UNAM Grant [PAPIIT IA100916]Additional Links
http://journals.ametsoc.org/doi/10.1175/JAMC-D-16-0097.1ae974a485f413a2113503eed53cd6c53
10.1175/JAMC-D-16-0097.1