skip to main content
OSTI.GOV title logo U.S. Department of Energy
Office of Scientific and Technical Information

Title: Development and validation of a supervised machine learning radar Doppler spectra peak-finding algorithm

Journal Article · · Atmospheric Measurement Techniques (Online)
 [1];  [1];  [2]; ORCiD logo [3]
  1. Leibniz Inst. for Tropospheric Research (ITR), Leipzig (Germany); Universität Leipzig (Germany)
  2. McGill Univ., Montreal, QC (Canada)
  3. Brookhaven National Lab. (BNL), Upton, NY (United States)

In many types of clouds, multiple hydrometeor populations can be present at the same time and height. Studying the evolution of these different hydrometeors in a time–height perspective can give valuable information on cloud particle composition and microphysical growth processes. However, as a prerequisite, the number of different hydrometeor types in a certain cloud volume needs to be quantified. This can be accomplished using cloud radar Doppler velocity spectra from profiling cloud radars if the different hydrometeor types have sufficiently different terminal fall velocities to produce individual Doppler spectrum peaks. Here we present a newly developed supervised machine learning radar Doppler spectra peak-finding algorithm (named PEAKO). In this approach, three adjustable parameters (spectrum smoothing span, prominence threshold, and minimum peak width at half-height) are varied to obtain the set of parameters which yields the best agreement of user-classified and machine-marked peaks. The algorithm was developed for Ka-band ARM zenith-pointing radar (KAZR) observations obtained in thick snowfall systems during the Atmospheric Radiation Measurement Program (ARM) mobile facility AMF2 deployment at Hyytiälä, Finland, during the Biogenic Aerosols – Effects on Clouds and Climate (BAECC) field campaign. The performance of PEAKO is evaluated by comparing its results to existing Doppler peak-finding algorithms. The new algorithm consistently identifies Doppler spectra peaks and outperforms other algorithms by reducing noise and increasing temporal and height consistency in detected features. In the future, the PEAKO algorithm will be adapted to other cloud radars and other types of clouds consisting of multiple hydrometeors in the same cloud volume.

Research Organization:
Brookhaven National Laboratory (BNL), Upton, NY (United States)
Sponsoring Organization:
USDOE Office of Science (SC), Biological and Environmental Research (BER)
Grant/Contract Number:
SC0012704
OSTI ID:
1561245
Report Number(s):
BNL-212054-2019-JAAM
Journal Information:
Atmospheric Measurement Techniques (Online), Vol. 12, Issue 8; ISSN 1867-8548
Publisher:
European Geosciences UnionCopyright Statement
Country of Publication:
United States
Language:
English
Citation Metrics:
Cited by: 9 works
Citation information provided by
Web of Science

References (25)

Hydrometeor classification through statistical clustering of polarimetric radar measurements: a semi-supervised approach journal January 2016
Measuring ice- and liquid-water properties in mixed-phase cloud layers at the Leipzig Cloudnet station journal January 2016
Fingerprints of a riming event on cloud radar Doppler spectra: observations and modeling journal January 2016
Observed relations between snowfall microphysics and triple-frequency radar measurements: TRIPLE-FREQUENCY SIGNATURES OF SNOWFALL journal June 2015
Cloud radar observations of vertical drafts and microphysics in convective rain journal January 2003
The Atmospheric Radiation Measurement Program Cloud Profiling Radars: Second-Generation Sampling Strategies, Processing, and Cloud Data Products journal July 2007
Scanning ARM Cloud Radars. Part I: Operational Sampling Strategies journal March 2014
Development and Applications of ARM Millimeter-Wavelength Cloud Radars journal April 2016
Intercomparison of the cloud water phase among global climate models: CLOUD WATER PHASE IN GCMs journal March 2014
A Technique for the Automatic Detection of Insect Clutter in Cloud Radar Returns journal September 2008
Detection of supercooled liquid in mixed-phase clouds using radar Doppler spectra journal January 2010
Retrievals of Riming and Snow Density From Vertically Pointing Doppler Radars journal December 2018
Toward Exploring the Synergy Between Cloud Radar Polarimetry and Doppler Spectral Analysis in Deep Cold Precipitating Systems in the Arctic journal March 2018
BAECC: A Field Campaign to Elucidate the Impact of Biogenic Aerosols on Clouds and Climate journal October 2016
Solid hydrometeor classification and riming degree estimation from pictures collected with a Multi-Angle Snowflake Camera journal January 2017
A path towards uncertainty assignment in an operational cloud-phase algorithm from ARM vertically pointing active sensors journal January 2016
Observational constraints on mixed-phase clouds imply higher climate sensitivity journal April 2016
Arctic multilayered, mixed-phase cloud processes revealed in millimeter-wave cloud radar Doppler spectra: ARCTIC MULTILAYERED CLOUD PROCESSES journal December 2013
Clutter mitigation, multiple peaks, and high-order spectral moments in 35 GHz vertically pointing radar velocity spectra journal January 2018
peakTree: a framework for structure-preserving radar Doppler spectra analysis journal January 2019
ARM: High Spectral Resolution Lidar
  • Eloranta, Edwin; Garcia, Joseph; Ermold, Brian
  • Atmospheric Radiation Measurement (ARM) Archive, Oak Ridge National Laboratory (ORNL), Oak Ridge, TN (US); https://doi.org/10.5439/1025200
dataset January 2011
ARM: Ka ARM Zenith Radar (KAZR): general mode
  • Hardin, Joseph; Nelson, Dan; Lindenmaier, Iosif
  • Atmospheric Radiation Measurement (ARM) Archive, Oak Ridge National Laboratory (ORNL), Oak Ridge, TN (US); https://doi.org/10.5439/1025214
dataset January 2011
ARM: Ka ARM Zenith Radar (KAZR): filtered spectral data, general mode, co-polarized mode
  • Hardin, Joseph; Nelson, Dan; Lindenmaier, Iosif
  • Atmospheric Radiation Measurement (ARM) Archive, Oak Ridge National Laboratory (ORNL), Oak Ridge, TN (US); https://doi.org/10.5439/1025218
dataset January 2011
Measuring ice- and liquid-water properties in mixed-phase cloud layers at the Leipzig Cloudnet station other January 2016
Vertical air motion and raindrop size distributions in convective systems using a 94 GHz radar journal October 1999

Cited By (1)

peakTree: a framework for structure-preserving radar Doppler spectra analysis journal January 2019

Similar Records

Fingerprints of a riming event on cloud radar Doppler spectra: observations and modeling
Journal Article · Wed Mar 09 00:00:00 EST 2016 · Atmospheric Chemistry and Physics (Online) · OSTI ID:1561245

Clutter mitigation, multiple peaks, and high-order spectral moments in 35 GHz vertically pointing radar velocity spectra
Journal Article · Mon Sep 03 00:00:00 EDT 2018 · Atmospheric Measurement Techniques (Online) · OSTI ID:1561245

KAZR Hydrometeor and Insect Masks
Dataset · Sat May 01 00:00:00 EDT 2021 · OSTI ID:1561245

Related Subjects