References
- Cha, J. W., H.-Y. Han, and J. S. Park, 2013: Current state and future plan of quality control and quantitative precipitation estimation for KMA weather radar data. The Magazine of the IEEK, 40, 129-136 (in Korean).
- Cho, Y. H., G. Lee, K. E. Kim, and I. Zawadzki, 2006: Identification and removal of ground echoes and anomalous propagation using the characteristics of radar echoes. J. Atmos. Oceanic Technol., 23, 1206-1222. https://doi.org/10.1175/JTECH1913.1
- Cho, Y. H., G. Lee, K. D. Ahn, Y. H. Lee, and D.-E. Chang, 2009: detection and elimination of Anomalous propagation and ground echo using fuzzy logic approach. Proceeding of the Autumn Meeting of KMS, 2009, 136-137.
- GAMIC, 2008: Welcome to GAMIC. http://www.gamic.com.
- Gourley, J. J., P. Tabary, and J. P. du Chatelet, 2007: A fuzzy logic algorithm for the separation of precipitating from nonprecipitating echoes using polarimetric radar observations. J. Atmos. Oceanic Technol., 24, 1439-1451. https://doi.org/10.1175/JTECH2035.1
- Grecu, M., and W. F. Krajewski, 2000: An efficient methodology for detection of anomalous propagation echoes in radar reflectivity data using neural networks. J. Atmos. Oceanic Technol., 17, 121-129. https://doi.org/10.1175/1520-0426(2000)017<0121:AEMFDO>2.0.CO;2
- Han, H. Y., B. H. Heo, S. H. Jung, G. W. Lee, C. H. You, and J. H. Lee, 2011: Elimination of chaff echoes in reflectivity composite from an operational weather radar network using infrared satellite data. Atmosphere, 21, 285-301.
- Hubbert, J. C., M. Dixon, and S. M. Ellis, 2009: Weather radar ground clutter. Part II: Real-time identification and filtering. J. Atmos. Oceanic Technol., 26, 1181-1197. https://doi.org/10.1175/2009JTECHA1160.1
- Jung, S.-H., and G. Lee, 2010: Statistical characteristics of atmospheric conditions related to radar beam propagation using radiosonde data in 2005-2006. J. Korean Earth Sci. Soc., 31, 584-599. https://doi.org/10.5467/JKESS.2010.31.6.584
- Kessinger, C., S. Ellis, and J. V. Andel, 2003: The radar echo classifier: A fuzzy logic algorithm for the WSR-88D. Proc. 3rd Conf. on Artificial Intelligence Applications to the Environmental Science, Long Beach, CA, Amer. Meteor. Soc., pp 1.6.
- Kwon, S., G. Lee, S.-H. Jung, H.-S. Park, M.-K. Suk, J. W. Cha, and C.-K. Lee, 2013: Precipitation estimation campaign: comparison of quality control for radar data and estimation technics. Proceedings of the Spring Meeting of KMS, 2013, 120-121 (in Korean).
- Lakshmanan, V., A. Fritz, T. Smith, K. Hondl, and G. Stumpf, 2007: An automated technique to quality control radar reflectivity data. J. Appl. Meteor. Climatol., 46, 288-305. https://doi.org/10.1175/JAM2460.1
- Lee, Y. J., C.-H. You, J.-H. Lee, and B. S. Kim, 2004: Quality control system development of radar data in KMA. Proceedings of the Autumn Meeting of KMS, 2004, 88-89 (in Korean).
- Nicol, J. C., A. J. Illingworth, T. Darlington, and J. Sugier, 2011: Techniques for improving ground clutter identification. Proc. Symp. Weather Radar and Hydrol., Exter, UK.
- Rinehart, R. E., 2010: Radar for Meteorologists. Fifth edition Rinehart Publishing, 482 pp.
- Siggia, A., and R. Passarelli, 2004: Gaussian model adaptive processing (GMAP) for improved ground clutter cancellation and moment calculation. Proc. Third European Conf. on Radar in Meteorology and Hydrology, Visiby, Sweden, Copernicus GmBH, 67-73.
- Steiner, M., and J. Smith, 2002: Use of three-dimensional reflectivity structure for automated detection and removal of nonprecipitating echoes in radar data. J. Atmos. Oceanic Technol., 19, 673-686. https://doi.org/10.1175/1520-0426(2002)019<0673:UOTDRS>2.0.CO;2
- WRC, 2013: Weather radar data analysis guidance. WRC technical notes WRC 2013-02, 71 pp (in Korean).
- You, C.-H., W. G. Kim, J.-H. Lee, D. I. Lee, and K. E. Kim, 2006: Single polarization radar data quality control algorithm. Proceedings of the Spring Meeting of KMS, 2006, 150-151 (in Korean).
Cited by
- A Study on the Radar Reflectivity-Snowfall Rate Relation for Yeongdong Heavy Snowfall Events vol.26, pp.4, 2016, https://doi.org/10.14191/Atmos.2016.26.4.509