Title
Calibration of X-band radar for extreme events in a spatially complex precipitation region in north peru: Machine learning vs. empirical approach
Date Issued
01 December 2021
Access level
open access
Resource Type
journal article
Author(s)
Rollenbeck R.
Orellana-Alvear J.
Rodriguez R.
Macalupu S.
Nolasco P.
Publisher(s)
MDPI
Abstract
Cost-efficient single-polarized X-band radars are a feasible alternative due to their high sensitivity and resolution, which makes them well suited for complex precipitation patterns. The first horizontal scanning weather radar in Peru was installed in Piura in 2019, after the devastating impact of the 2017 coastal El Niño. To obtain a calibrated rain rate from radar reflectivity, we employ a modified empirical approach and draw a direct comparison to a well-established machine learning technique used for radar QPE. For both methods, preprocessing steps are required, such as clutter and noise elimination, atmospheric, geometric, and precipitation-induced attenuation correction, and hardware variations. For the new empirical approach, the corrected reflectivity is related to rain gauge observations, and a spatially and temporally variable parameter set is iteratively determined. The machine learning approach uses a set of features mainly derived from the radar data. The random forest (RF) algorithm employed here learns from the features and builds decision trees to obtain quantitative precipitation estimates for each bin of detected reflectivity. Both methods capture the spatial variability of rainfall quite well. Validating the empirical approach, it performed better with an overall linear regression slope of 0.65 and r of 0.82. The RF approach had limitations with the quantitative representation (slope = 0.44 and r = 0.65), but it more closely matches the reflectivity distribution, and it is independent of real-time rain-gauge data. Possibly, a weighted mean of both approaches can be used operationally on a daily basis.
Volume
12
Issue
12
Language
English
OCDE Knowledge area
Sistemas de automatización, Sistemas de control
Meteorología y ciencias atmosféricas
Subjects
Scopus EID
2-s2.0-85120337319
Source
Atmosphere
ISSN of the container
20734433
Sponsor(s)
Funding: This research was funded by Deutsche Forschungsgemeinschaft, grant number RO3815/2-1 and Universidad de Piura through the project “Radar de lluvias”.
Acknowledgments: We thank Mario Guallpa for support during the implementation of the radar PIUXX. University of Marburg supplied starter funding for the Project DFG RO3815/2-1. INNOVATE-Peru supported the Universidad de Piura for the installation of PIUXX. We acknowledge the contribution of the Vice-rectorate for Research of the University of Cuenca (VIUC) through the project “High-Resolution Radar Analysis of Precipitation Extremes in Ecuador and North Peru and Implications of the Enso-Dynamics”.
Sources of information:
Directorio de Producción Científica
Scopus