Atmospheric Measurement Techniques (Jun 2021)

Evaluation of micro rain radar-based precipitation classification algorithms to discriminate between stratiform and convective precipitation

  • A. Foth,
  • J. Zimmer,
  • F. Lauermann,
  • F. Lauermann,
  • H. Kalesse-Los

DOI
https://doi.org/10.5194/amt-14-4565-2021
Journal volume & issue
Vol. 14
pp. 4565 – 4574

Abstract

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In this paper, we present two micro rain radar-based approaches to discriminate between stratiform and convective precipitation. One is based on probability density functions (PDFs) in combination with a confidence function, and the other one is an artificial neural network (ANN) classification. Both methods use the maximum radar reflectivity per profile, the maximum of the observed mean Doppler velocity per profile and the maximum of the temporal standard deviation (±15 min) of the observed mean Doppler velocity per profile from a micro rain radar (MRR). Training and testing of the algorithms were performed using a 2-year data set from the Jülich Observatory for Cloud Evolution (JOYCE). Both methods agree well, giving similar results. However, the results of the ANN are more decisive since it is also able to distinguish an inconclusive class, in turn making the stratiform and convective classes more reliable.