Intercomparison of Mixing Layer Heights from the National Weather Service Ceilometer Test Sites and Collocated Radiosondes

Author:

Hicks Micheal1,Demoz Belay2,Vermeesch Kevin3,Atkinson Dennis4

Affiliation:

1. National Weather Service, Sterling, Virginia

2. University of Maryland, Baltimore County, Baltimore, Maryland

3. Global Science and Technology, Inc., Greenbelt, Maryland

4. National Weather Service, Silver Spring, Maryland

Abstract

AbstractA network of automated weather stations (AWS) with ceilometers can be used to detect sky conditions, aerosol dispersion, and mixing layer heights, in addition to the routine surface meteorological parameters (temperature, pressure, humidity, etc.). Currently, a dense network of AWSs that observe all of these parameters does not exist in the United States even though networks of them with ceilometers exist. These networks normally use ceilometers for determining only sky conditions. Updating AWS networks to obtain those nonstandard observations with ceilometers, especially mixing layer height, across the United States would provide valuable information for validating and improving weather/climate forecast models. In this respect, an aerosol-based mixing layer height detection method, called the combined-hybrid method, is developed and evaluated for its uncertainty characteristics for application in the United States. Four years of ceilometer data from the National Weather Service Ceilometer Proof of Concept Project taken in temperate, maritime polar, and hot/arid climate regimes are utilized in this evaluation. Overall, the method proved to be a strong candidate for estimating mixing layer heights with ceilometer data, with averaged uncertainties of 237 ± 398 m in all tested climate regimes and 69 ± 250 m when excluding the hot/arid climate regime.

Funder

National Science Foundation

National Oceanic and Atmospheric Administration

National Aeronautics and Space Administration

Publisher

American Meteorological Society

Subject

Atmospheric Science,Ocean Engineering

Reference13 articles.

1. Atkinson, D., B.Demoz, M.Hicks, and K.Vermeech, 2017: Investigate and validate the effectiveness of the Vaisala CL31 ceilometer algorithm at selected sites across the U.S. for the Automated Surface Observing System (ASOS) program product improvement (Phase 3). Accessed 30 January 2018, 43 pp., https://vlab.ncep.noaa.gov/group/cl31-project.

2. An objective method for deriving atmospheric structure from airborne lidar observations;Davis;J. Atmos. Oceanic Technol.,2000

3. Surface-based remote sensing of the mixing-layer height—A review;Emeis;Meteor. Z.,2008

4. The evaluation of a new method to detect mixing layer heights using lidar observations;Hicks;J. Atmos. Oceanic Technol.,2015

5. AERONET—A federated instrument network and data archive for aerosol characterization;Holben;Remote Sens. Environ.,1998

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