Atmospheric Measurement Techniques (Oct 2021)

Retrieving microphysical properties of concurrent pristine ice and snow using polarimetric radar observations

  • N. J. Kedzuf,
  • J. C. Chiu,
  • V. Chandrasekar,
  • S. Biswas,
  • S. S. Joshil,
  • Y. Lu,
  • Y. Lu,
  • P. J. van Leeuwen,
  • P. J. van Leeuwen,
  • C. Westbrook,
  • Y. Blanchard,
  • S. O'Shea

DOI
https://doi.org/10.5194/amt-14-6885-2021
Journal volume & issue
Vol. 14
pp. 6885 – 6904

Abstract

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Ice and mixed-phase clouds play a key role in our climate system because of their strong controls on global precipitation and radiation budget. Their microphysical properties have been characterized commonly by polarimetric radar measurements. However, there remains a lack of robust estimates of microphysical properties of concurrent pristine ice and aggregates because larger snow aggregates often dominate the radar signal and mask contributions of smaller pristine ice crystals. This paper presents a new method that separates the scattering signals of pristine ice embedded in snow aggregates in scanning polarimetric radar observations and retrieves their respective abundances and sizes for the first time. This method, dubbed ENCORE-ice, is built on an iterative stochastic ensemble retrieval framework. It provides the number concentration, ice water content, and effective mean diameter of pristine ice and snow aggregates with uncertainty estimates. Evaluations against synthetic observations show that the overall retrieval biases in the combined total microphysical properties are within 5 % and that the errors with respect to the truth are well within the retrieval uncertainty. The partitioning between pristine ice and snow aggregates also agrees well with the truth. Additional evaluations against in situ cloud probe measurements from a recent campaign for a stratiform cloud system are promising. Our median retrievals have a bias of 98 % in the total ice number concentration and 44 % in the total ice water content. This performance is generally better than the retrieval from empirical relationships. The ability to separate signals of different ice species and to provide their quantitative microphysical properties will open up many research opportunities, such as secondary ice production studies and model evaluations for ice microphysical processes.