Hello everyone,
I am using Py-ART to read NEXRAD Level II data downloaded from AWS. Since the
reflectivity data contain a significant amount of nonprecipitating echoes, I will
have to perform some form of quality control. I'm looking for automated
approaches that remove as much noise as possible including anomalous
propagation, ground clutter, biological targets, and sun strobes. Although the
literature contains many algorithms for identifying these nonprecipitating
echoes (see below), I was not able to find a free (GPL or BSD licensed)
implementation of any quality control algorithm. I have the following
questions:
1. Does Py-ART contain any quality control algorithms for reflectivity data? I
found a method for removing small objects (pyart.correct.despeckle), but this
will not identify anomalous propagation, for example.
2. If not Py-ART, do you know any other open-source libraries that implement
quality control algorithms? Warning Decision Support System
identification algorithm.
3. Would anybody be interested in helping me implement (and possibly integrate
into Py-ART) a quality control algorithm?
Best,
Jure
--
I'm including a list of relevant literature:
- Richard A Fulton, Jay P Breidenbach, Dong-Jun Seo, Dennis A Miller, and Timothy O’Bannon.
The wsr-88d rainfall algorithm. Weather and Forecasting, 13(2):377–395, 1998.
- Mircea Grecu and Witold F Krajewski. An efficient methodology for detection of anomalous
propagation echoes in radar reflectivity data using neural networks. Journal of Atmospheric
and Oceanic Technology, 17(2):121–129, 2000.
- C Kessinger, S Ellis, and J Van Andel. The radar echo classifier: A fuzzy logic algorithm for
the wsr-88d. In Preprints-CD, 3rd Conference on Artificial Applications to the Environmental
Science, 2003.
- Witold F Krajewski and Bertrand Vignal. Evaluation of anomalous propagation echo detection
in wsr-88d data: A large sample case study. Journal of Atmospheric and Oceanic Technology,
18(5):807–814, 2001.
- Valliappa Lakshmanan, Kurt Hondl, Gregory Stumpf, and Travis Smith. Quality control of weather
radar data using texture features and a neural network. In Preprints, 31st Radar Conference,
pages 522–525. Citeseer, 2003.
- Valliappa Lakshmanan, Angela Fritz, Travis Smith, Kurt Hondl, and Gregory Stumpf. An
automated technique to quality control radar reflectivity data. Journal of applied meteorology
and climatology, 46(3):288–305, 2007.
- Valliappa Lakshmanan, Christopher Karstens, John Krause, and Lin Tang. Quality control of
weather radar data using polarimetric variables. Journal of Atmospheric and Oceanic Tech-
nology, 31(6):1234–1249, 2014.
- Valliappa Lakshmanan, Travis Smith, Gregory Stumpf, and Kurt Hondl. The warning decision
support system-integrated information. Weather and Forecasting, 22(3):596–612, 2007.
- Valliappa Lakshmanan, Jian Zhang, Kurt Hondl, and Carrie Langston. A statistical approach
to mitigating persistent clutter in radar reflectivity data. IEEE Journal of Selected Topics in
Applied Earth Observations and Remote Sensing, 5(2):652–662, 2012.
- Valliappa Lakshmanan, Jian Zhang, and Kenneth Howard. A technique to censor biological
echoes in radar reflectivity data. Journal of Applied Meteorology and Climatology, 49(3):453–
462, 2010.