Liquid layers in clouds affect their microphysical processes, as well as the atmospheric energy budget. However, explicit liquid cloud base height (LCBH) detection algorithms using ground-based instruments (e.g., lidars) are currently absent in the literature. Most studies use either fixed lidar parameter thresholds or cloud base height data products that do not distinguish between ice and liquid, all of which might introduce inconsistencies and errors in the resolved LCBHs. In this paper, two LCBH detection algorithms are presented; the first algorithm uses the high spectral resolution lidar (HSRL) data, and yields satisfactory results. The second algorithm incorporates micropulse lidar (MPL) data for the LCBH detection. A 1-year long comparison of data gathered at Barrow, Alaska, and McMurdo Station, Antarctica, which includes other cloud base detection methodologies (ceilometer, MPL value-added product cloud base height, LCBHs detected using a fixed MPL depolarization threshold) emphasize the merits of the MPL algorithm.
Revised: December 31, 2020 |
Published: April 27, 2018
Citation
Silber I., J. Verlinde, E.W. Eloranta, C.M. Flynn, and D.M. Flynn. 2018.Polar Liquid Cloud Base Detection Algorithms for High Spectral Resolution or Micropulse Lidar Data.Journal of Geophysical Research: Atmospheres 123, no. 8:4310-4322.PNNL-SA-129829.doi:10.1029/2017JD027840