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Weather and Forecasting | 2007

Influence of Initial Conditions on the WRF–ARW Model QPF Response to Physical Parameterization Changes

Isidora Jankov; William A. Gallus; M. Segal; Steven E. Koch

To assist in optimizing a mixed-physics ensemble for warm season mesoscale convective system rainfall forecasting, the impact of various physical schemes as well as their interactions on rainfall when different initializations were used has been investigated. For this purpose, high-resolution Weather Research and Forecasting (WRF) model simulations of eight International H2O Project events were performed. For each case, three different treatments of convection, three different microphysical schemes, and two different planetary boundary layer (PBL) schemes were used. All cases were initialized with both Local Analyses and Prediction System (LAPS) “hot” start analyses and 40-km Eta Model analyses. To evaluate the impacts of the variation of two different physical schemes and their interaction on the simulated rainfall under the two different initial conditions, the factor separation method was used. The sensitivity to the use of various physical schemes and their interactions was found to be dependent on the initialization dataset. Runs initialized with Eta analyses appeared to be influenced by the use of the Betts–Miller–Janjic scheme in that model’s assimilation system, which tended to reduce the WRF’s sensitivity to changes in the microphysical scheme compared with that present when LAPS analyses were used for initialization. In addition, differences in initialized thermodynamics resulted in changes in sensitivity to PBL and convective schemes. With both initialization datasets, the greatest sensitivity to the simulated rain rate was due to changes in the convective scheme. However, for rain volume, substantial sensitivity was present due to changes in both the physical parameterizations and the initial datasets.


Journal of Hydrometeorology | 2009

Evaluation and Comparison of Microphysical Algorithms in ARW-WRF Model Simulations of Atmospheric River Events Affecting the California Coast

Isidora Jankov; Jian-Wen Bao; Paul J. Neiman; Paul J. Schultz; Huiling Yuan; Allen B. White

Abstract Numerical prediction of precipitation associated with five cool-season atmospheric river events in northern California was analyzed and compared to observations. The model simulations were performed by using the Advanced Research Weather Research and Forecasting Model (ARW-WRF) with four different microphysical parameterizations. This was done as a part of the 2005–06 field phase of the Hydrometeorological Test Bed project, for which special profilers, soundings, and surface observations were implemented. Using these unique datasets, the meteorology of atmospheric river events was described in terms of dynamical processes and the microphysical structure of the cloud systems that produced most of the surface precipitation. Events were categorized as “bright band” (BB) or “nonbright band” (NBB), the differences being the presence of significant amounts of ice aloft (or lack thereof) and a signature of higher reflectivity collocated with the melting layer produced by frozen precipitating particles d...


Weather and Forecasting | 2004

MCS Rainfall Forecast Accuracy as a Function of Large-Scale Forcing

Isidora Jankov; William A. Gallus

The large-scale forcing associated with 20 mesoscale convective system (MCS) events has been evaluated to determine how the magnitude of that forcing influences the rainfall forecasts made with a 10-km grid spacing version of the Eta Model. Different convective parameterizations and initialization modifications were used to simulate these Upper Midwest events. Cases were simulated using both the Betts‐Miller‐Janjic ´ (BMJ) and the Kain‐Fritsch (KF) convective parameterizations, and three different techniques were used to improve the initialization of mesoscale features important to later MCS evolution. These techniques included a cold pool initialization, vertical assimilation of surface mesoscale observations, and an adjustment to initialized relative humidity based on radar echo coverage. As an additional aspect in this work, a morphology analysis of the 20 MCSs was included. Results suggest that the model using both schemes performs better when net large-scale forcing is strong, which typically is the case when a cold front moves across the domain. When net forcing is weak, which is often the case in midsummer situations north of a warm or stationary front, both versions of the model perform poorly. Runs with the BMJ scheme seem to be more affected by the magnitude of surface frontogenesis than the KF runs. Runs with the KF scheme are more sensitive to the CAPE amount than the BMJ runs. A fairly well-defined split in morphology was observed, with squall lines having trailing stratiform regions likely in scenarios associated with higher equitable threat scores (ETSs) and nonlinear convective clusters strongly dominating the more poorly forecast weakly forced events.


Bulletin of the American Meteorological Society | 2012

NOAA's Rapid Response to the Howard A. Hanson Dam Flood Risk Management Crisis

Allen B. White; Brad Colman; Gary M. Carter; F. Martin Ralph; Robert S. Webb; David G. Brandon; C. W. King; Paul J. Neiman; Daniel J. Gottas; Isidora Jankov; Keith F. Brill; Yuejian Zhu; Kirby Cook; Henry E. Buehner; Harold Opitz; David W. Reynolds; Lawrence J. Schick

The Howard A. Hanson Dam (HHD) has brought flood protection to Washingtons Green River Valley for more than 40 years and opened the way for increased valley development near Seattle. However, following a record high level of water behind the dam in January 2009 and the discovery of elevated seepage through the dams abutment, the U.S. Army Corps of Engineers declared the dam “unsafe.” NOAAs Office of Oceanic and Atmospheric Research (OAR) and National Weather Service (NWS) worked together to respond rapidly to this crisis for the 2009/10 winter season, drawing from innovations developed in NWS offices and in NOAAs Hydrometeorology Test-bed (HMT). New data telemetry was added to 14 existing surface rain gauges, allowing the gauge data to be ingested into the NWS rainfall database. The NWS Seattle Weather Forecast Office produced customized daily forecasts, including longer-lead-time hydrologic outlooks and new decision support services tailored for emergency managers and the public, new capabilities ena...


Weather and Forecasting | 2005

The 4 June 1999 Derecho event: A particularly difficult challenge for numerical weather prediction

William A. Gallus; James Correia; Isidora Jankov

Warm season convective system rainfall forecasts remain a particularly difficult forecast challenge. For these events, it is possible that ensemble forecasts would provide helpful information unavailable in a single deterministic forecast. In this study, an intense derecho event accompanied by a well-organized band of heavy rainfall is used to show that for some situations, the predictability of rainfall even within a 12–24-h period is so low that a wide range of simulations using different models, different physical parameterizations, and different initial conditions all fail to provide even a small signal that the event will occur. The failure of a wide range of models and parameterizations to depict the event might suggest inadequate representation of the initial conditions. However, a range of different initial conditions also failed to lead to a well-simulated event, suggesting that some events are unlikely to be predictable with the current observational network, and ensemble guidance for such cases may provide limited additional information useful to a forecaster.


Bulletin of the American Meteorological Society | 2013

The DTC ensembles task: A new testing and evaluation facility for mesoscale ensembles

Edward I. Tollerud; Brian J. Etherton; Zoltan Toth; Isidora Jankov; Tara Jensen; Huiling Yuan; Linda S. Wharton; Paula T. McCaslin; Eugene Mirvis; Bill Kuo; Barbara G. Brown; Louisa Nance; Steven E. Koch; F. Anthony Eckel


Weather and Forecasting | 2018

An Adaptive Approach for the Calculation of Ensemble Gridpoint Probabilities

Benjamin T. Blake; Jacob R. Carley; Trevor I. Alcott; Isidora Jankov; Matthew Pyle; Sarah Perfater; Benjamin Albright


98th American Meteorological Society Annual Meeting | 2018

Stochastic Parameter Perturbation in Grell-Freitas Convective Parameterization

Isidora Jankov


97th American Meteorological Society Annual Meeting | 2017

Use of Stochastic Physics Approaches Within Rapid Refresh and High-Resolution Rapid Refresh Ensembles

Isidora Jankov


27th Conference On Weather Analysis And Forecasting/23rd Conference On Numerical Weather Prediction | 2015

Use of Stochastic Physics Approach in North American Rapid Refresh Ensemble (NARRE)

Isidora Jankov

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Allen B. White

National Oceanic and Atmospheric Administration

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Edward I. Tollerud

National Oceanic and Atmospheric Administration

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Zoltan Toth

National Oceanic and Atmospheric Administration

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David W. Reynolds

National Oceanic and Atmospheric Administration

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Steven C. Albers

National Oceanic and Atmospheric Administration

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Steven E. Koch

National Oceanic and Atmospheric Administration

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Barbara G. Brown

National Center for Atmospheric Research

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Benjamin Albright

National Oceanic and Atmospheric Administration

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