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Dive into the research topics where Robert E. Holz is active.

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Featured researches published by Robert E. Holz.


Bulletin of the American Meteorological Society | 2007

The Mixed-Phase Arctic Cloud Experiment

Johannes Verlinde; Jerry Y. Harrington; Greg M. McFarquhar; V. T. Yannuzzi; Alexander Avramov; S. Greenberg; Nathaniel C. Johnson; Gong Zhang; Michael R. Poellot; James H. Mather; David D. Turner; Edwin W. Eloranta; B. D. Zak; Anthony J. Prenni; John S. Daniel; Gregory L. Kok; D. C. Tobin; Robert E. Holz; Kenneth Sassen; Douglas A. Spangenberg; Patrick Minnis; Tim Tooman; M. D. Ivey; Scott J. Richardson; C. P. Bahrmann; Matthew D. Shupe; Paul J. DeMott; Andrew J. Heymsfield; Robyn Schofield

The Mixed-Phase Arctic Cloud Experiment (M-PACE) was conducted from 27 September through 22 October 2004 over the Department of Energys Atmospheric Radiation Measurement (ARM) Climate Research Facility (ACRF) on the North Slope of Alaska. The primary objectives were to collect a dataset suitable to study interactions between microphysics, dynamics, and radiative transfer in mixed-phase Arctic clouds, and to develop/evaluate cloud property retrievals from surface-and satellite-based remote sensing instruments. Observations taken during the 1977/98 Surface Heat and Energy Budget of the Arctic (SHEBA) experiment revealed that Arctic clouds frequently consist of one (or more) liquid layers precipitating ice. M-PACE sought to investigate the physical processes of these clouds by utilizing two aircraft (an in situ aircraft to characterize the microphysical properties of the clouds and a remote sensing aircraft to constraint the upwelling radiation) over the ACRF site on the North Slope of Alaska. The measureme...


Journal of Atmospheric and Oceanic Technology | 2009

CALIPSO/CALIOP Cloud Phase Discrimination Algorithm

Yongxiang Hu; David M. Winker; Mark A. Vaughan; Bing Lin; Ali H. Omar; Charles R. Trepte; David Flittner; Ping Yang; Shaima L. Nasiri; Bryan A. Baum; Robert E. Holz; Wenbo Sun; Zhaoyan Liu; Zhien Wang; Stuart A. Young; Knut Stamnes; Jianping Huang; Ralph E. Kuehn

Abstract The current cloud thermodynamic phase discrimination by Cloud-Aerosol Lidar Pathfinder Satellite Observations (CALIPSO) is based on the depolarization of backscattered light measured by its lidar [Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP)]. It assumes that backscattered light from ice crystals is depolarizing, whereas water clouds, being spherical, result in minimal depolarization. However, because of the relationship between the CALIOP field of view (FOV) and the large distance between the satellite and clouds and because of the frequent presence of oriented ice crystals, there is often a weak correlation between measured depolarization and phase, which thereby creates significant uncertainties in the current CALIOP phase retrieval. For water clouds, the CALIOP-measured depolarization can be large because of multiple scattering, whereas horizontally oriented ice particles depolarize only weakly and behave similarly to water clouds. Because of the nonunique depolarization–cloud ph...


Journal of Applied Meteorology and Climatology | 2008

MODIS Global Cloud-Top Pressure and Amount Estimation: Algorithm Description and Results

W. Paul Menzel; Richard A. Frey; Hong Zhang; Donald P. Wylie; Chris C. Moeller; Robert E. Holz; Brent Maddux; Bryan A. Baum; Kathy Strabala; Liam E. Gumley

Abstract The Moderate Resolution Imaging Spectroradiometer (MODIS) on the NASA Earth Observing System (EOS) Terra and Aqua platforms provides unique measurements for deriving global and regional cloud properties. MODIS has spectral coverage combined with spatial resolution in key atmospheric bands, which is not available on previous imagers and sounders. This increased spectral coverage/spatial resolution, along with improved onboard calibration, enhances the capability for global cloud property retrievals. MODIS operational cloud products are derived globally at spatial resolutions of 5 km (referred to as level-2 products) and are aggregated to a 1° equal-angle grid (referred to as level-3 product), available for daily, 8-day, and monthly time periods. The MODIS cloud algorithm produces cloud-top pressures that are found to be within 50 hPa of lidar determinations in single-layer cloud situations. In multilayer clouds, where the upper-layer cloud is semitransparent, the MODIS cloud pressure is representa...


Bulletin of the American Meteorological Society | 2013

Achieving Climate Change Absolute Accuracy in Orbit

Bruce A. Wielicki; David F. Young; M. G. Mlynczak; Kurt J. Thome; Stephen S. Leroy; James M. Corliss; J. G. Anderson; Chi O. Ao; Richard J. Bantges; Fred A. Best; Kevin W. Bowman; Helen E. Brindley; James J. Butler; William D. Collins; John Andrew Dykema; David R. Doelling; Daniel R. Feldman; Nigel P. Fox; Xianglei Huang; Robert E. Holz; Yi Huang; Zhonghai Jin; D. Jennings; David G. Johnson; K. Jucks; Seima Kato; Daniel Bernard Kirk-Davidoff; Robert O. Knuteson; Greg Kopp; David P. Kratz

The Climate Absolute Radiance and Refractivity Observatory (CLARREO) mission will provide a calibration laboratory in orbit for the purpose of accurately measuring and attributing climate change. CLARREO measurements establish new climate change benchmarks with high absolute radiometric accuracy and high statistical confidence across a wide range of essential climate variables. CLARREOs inherently high absolute accuracy will be verified and traceable on orbit to Systeme Internationale (SI) units. The benchmarks established by CLARREO will be critical for assessing changes in the Earth system and climate model predictive capabilities for decades into the future as society works to meet the challenge of optimizing strategies for mitigating and adapting to climate change. The CLARREO benchmarks are derived from measurements of the Earths thermal infrared spectrum (5–50 μm), the spectrum of solar radiation reflected by the Earth and its atmosphere (320–2300 nm), and radio occultation refractivity from which...


IEEE Transactions on Geoscience and Remote Sensing | 2017

The MODIS Cloud Optical and Microphysical Products: Collection 6 Updates and Examples From Terra and Aqua

Steven Platnick; Kerry Meyer; Michael D. King; Galina Wind; Nandana Amarasinghe; Benjamin Marchant; G. Thomas Arnold; Zhibo Zhang; Paul A. Hubanks; Robert E. Holz; Ping Yang; William L. Ridgway; Jerome Riedi

The Moderate-Resolution Imaging Spectroradiometer (MODIS) level-2 (L2) cloud product (earth science data set names MOD06 and MYD06 for Terra and Aqua MODIS, respectively) provides pixel-level retrievals of cloud top properties (day and night pressure, temperature, and height) and cloud optical properties (optical thickness, effective particle radius, and water path for both liquid water and ice cloud thermodynamic phases-daytime only). Collection 6 (C6) reprocessing of the product was completed in May 2014 and March 2015 for MODIS Aqua and Terra, respectively. Here we provide an overview of major C6 optical property algorithm changes relative to the previous Collection 5 (C5) product. Notable C6 optical and microphysical algorithm changes include: 1) new ice cloud optical property models and a more extensive cloud radiative transfer code lookup table (LUT) approach; 2) improvement in the skill of the shortwave-derived cloud thermodynamic phase; 3) separate cloud effective radius retrieval data sets for each spectral combination used in previous collections; 4) separate retrievals for partly cloudy pixels and those associated with cloud edges; 5) failure metrics that provide diagnostic information for pixels having observations that fall outside the LUT solution space; and 6) enhanced pixel-level retrieval uncertainty calculations. The C6 algorithm changes can collectively result in significant changes relative to C5, though the magnitude depends on the data set and the pixels retrieval location in the cloud parameter space. Example L2 granule and level-3 gridded data set differences between the two collections are shown. While the emphasis is on the suite of cloud optical property data sets, other MODIS cloud data sets are discussed when relevant.


Journal of Applied Meteorology and Climatology | 2011

Retrieval of Ice Cloud Optical Thickness and Effective Particle Size Using a Fast Infrared Radiative Transfer Model

Chenxi Wang; Ping Yang; Bryan A. Baum; Steven Platnick; Andrew K. Heidinger; Yongxiang Hu; Robert E. Holz

A computationally efficient radiative transfer model (RTM) is developed for the inference of ice cloud optical thickness and effective particle size from satellite-based infrared (IR) measurements and is aimed at potentialuse in operationalcloud-property retrievalsfrommultispectralsatelliteimagery.TheRTMemploys precomputed lookup tables to simulate the top-of-the-atmosphere (TOA) radiances (or brightness temperatures) at 8.5-, 11-, and 12-mm bands. For the clear-sky atmosphere, the optical thickness of each atmospheric layer resulting from gaseous absorption is derived from the correlated-k-distribution method. The cloud reflectance, transmittance, emissivity, and effective temperature are precomputed using the Discrete Ordinate Radiative Transfer model (DISORT). For an atmosphere containing a semitransparent ice cloud layer withavisibleopticalthickness t smallerthan5,theTOAbrightness temperaturedifferences(BTDs)between the fast model and the more rigorous DISORT results are less than 0.1 K, whereas the BTDs are less than 0.01 K if t is larger than 10. With the proposed RTM, the cloud optical and microphysical properties are retrieved from collocated observations from the Moderate Resolution Imaging Spectroradiometer (MODIS) and Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP) in conjunction with the Modern Era Retrospective-Analysis for Research and Applications (MERRA) data. Comparisons between the retrieved icecloudproperties(opticalthicknessandeffectiveparticlesize)basedonthepresentIRfastmodelandthose from the Aqua/MODIS operational collection-5 cloud products indicate that the IR retrievals are smaller. A comparison between the IR-retrieved ice water path (IWP) and CALIOP-retrieved IWP shows robust agreement over most of the IWP range.


Journal of Atmospheric and Oceanic Technology | 2006

An Improvement to the High-Spectral-Resolution CO2-Slicing Cloud-Top Altitude Retrieval

Robert E. Holz; Steve Ackerman; Paolo Antonelli; Fred W. Nagle; Robert O. Knuteson; Matthew J. McGill; Dennis L. Hlavka; William D. Hart

Abstract An improvement to high-spectral-resolution infrared cloud-top altitude retrievals is compared to existing retrieval methods and cloud lidar measurements. The new method, CO2 sorting, determines optimal channel pairs to which the CO2 slicing retrieval will be applied. The new retrieval is applied to aircraft Scanning High-Resolution Interferometer Sounder (S-HIS) measurements. The results are compared to existing passive retrieval methods and coincident Cloud Physics Lidar (CPL) measurements. It is demonstrated that when CO2 sorting is used to select channel pairs for CO2 slicing there is an improvement in the retrieved cloud heights when compared to the CPL for the optically thin clouds (total optical depths less than 1.0). For geometrically thick but tenuous clouds, the infrared retrieved cloud tops underestimated the cloud height, when compared to those of the CPL, by greater than 2.5 km. For these cases the cloud heights retrieved by the S-HIS correlated closely with the level at which the CPL...


Journal of Geophysical Research | 2015

Frequency and causes of failed MODIS cloud property retrievals for liquid phase clouds over global oceans

Hyoun Myoung Cho; Zhibo Zhang; Kerry Meyer; Matthew Lebsock; Steven Platnick; Andrew S. Ackerman; Larry Di Girolamo; Laurent C.-Labonnote; Céline Cornet; Jerome Riedi; Robert E. Holz

Abstract Moderate Resolution Imaging Spectroradiometer (MODIS) retrieves cloud droplet effective radius (r e) and optical thickness (τ) by projecting observed cloud reflectances onto a precomputed look‐up table (LUT). When observations fall outside of the LUT, the retrieval is considered “failed” because no combination of τ and r e within the LUT can explain the observed cloud reflectances. In this study, the frequency and potential causes of failed MODIS retrievals for marine liquid phase (MLP) clouds are analyzed based on 1 year of Aqua MODIS Collection 6 products and collocated CALIOP and CloudSat observations. The retrieval based on the 0.86 µm and 2.1 µm MODIS channel combination has an overall failure rate of about 16% (10% for the 0.86 µm and 3.7 µm combination). The failure rates are lower over stratocumulus regimes and higher over the broken trade wind cumulus regimes. The leading type of failure is the “r e too large” failure accounting for 60%–85% of all failed retrievals. The rest is mostly due to the “r e too small” or τ retrieval failures. Enhanced retrieval failure rates are found when MLP cloud pixels are partially cloudy or have high subpixel inhomogeneity, are located at special Sun‐satellite viewing geometries such as sunglint, large viewing or solar zenith angles, or cloudbow and glory angles, or are subject to cloud masking, cloud overlapping, and/or cloud phase retrieval issues. The majority (more than 84%) of failed retrievals along the CALIPSO track can be attributed to at least one or more of these potential reasons. The collocated CloudSat radar reflectivity observations reveal that the remaining failed retrievals are often precipitating. It remains an open question whether the extremely large r e values observed in these clouds are the consequence of true cloud microphysics or still due to artifacts not included in this study.


Journal of Atmospheric and Oceanic Technology | 2009

Computationally Efficient Methods of Collocating Satellite, Aircraft, and Ground Observations

Fred W. Nagle; Robert E. Holz

Abstract The usefulness of measurements from satellite-borne instruments is enhanced if these measurements can be compared to measurements from other instruments mounted aboard the same or different satellite, with measurements from aircraft, or with ground measurements. The process of associating measurements from disparate instruments and platforms is referred to as collocation. In a few cases, two instruments mounted aboard the same spacecraft have been engineered to function in tandem, but commonly this is not the case. The collocation process may then become an awkward geometric problem of finding which of many observations within one dataset corresponds to an observation in another set, possibly from another platform. This paper presents methods that can be applied to a wide range of satellite, aircraft, and surface measurements that allow for efficient collocation with measurements having varying spatial and temporal sampling. Examples of applying the methods are presented that highlight the benefi...


Journal of Applied Meteorology and Climatology | 2013

Retrieval of Ice Cloud Properties from AIRS and MODIS Observations Based on a Fast High-Spectral-Resolution Radiative Transfer Model

Chenxi Wang; Ping Yang; Steven Platnick; Andrew K. Heidinger; Bryan A. Baum; Thomas J. Greenwald; Zhibo Zhang; Robert E. Holz

AbstractA computationally efficient high-spectral-resolution cloudy-sky radiative transfer model (HRTM) in the thermal infrared region (700–1300 cm−1, 0.1 cm−1 spectral resolution) is advanced for simulating the upwelling radiance at the top of atmosphere and for retrieving cloud properties. A precomputed transmittance database is generated for simulating the absorption contributed by up to seven major atmospheric absorptive gases (H2O, CO2, O3, O2, CH4, CO, and N2O) by using a rigorous line-by-line radiative transfer model (LBLRTM). Both the line absorption of individual gases and continuum absorption are included in the database. A high-spectral-resolution ice particle bulk scattering properties database is employed to simulate the radiation transfer within a vertically nonisothermal ice cloud layer. Inherent to HRTM are sensor spectral response functions that couple with high-spectral-resolution measurements in the thermal infrared regions from instruments such as the Atmospheric Infrared Sounder (AIRS...

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Steven A. Ackerman

University of Wisconsin-Madison

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Steven Platnick

University of Colorado Boulder

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Fred W. Nagle

University of Wisconsin-Madison

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David C. Tobin

University of Wisconsin-Madison

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Steven Dutcher

University of Wisconsin-Madison

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Henry E. Revercomb

University of Wisconsin-Madison

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Andrew K. Heidinger

National Oceanic and Atmospheric Administration

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Jeffrey S. Reid

United States Naval Research Laboratory

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Robert O. Knuteson

University of Wisconsin-Madison

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Bryan A. Baum

University of Wisconsin-Madison

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