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Dive into the research topics where Sundararaman G. Gopalakrishnan is active.

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Featured researches published by Sundararaman G. Gopalakrishnan.


Monthly Weather Review | 2011

The Experimental HWRF System: A Study on the Influence of Horizontal Resolution on the Structure and Intensity Changes in Tropical Cyclones Using an Idealized Framework

Sundararaman G. Gopalakrishnan; Frank D. Marks; Xuejin Zhang; Jian-Wen Bao; Kao-San Yeh; Robert Atlas

AbstractForecasting intensity changes in tropical cyclones (TCs) is a complex and challenging multiscale problem. While cloud-resolving numerical models using a horizontal grid resolution of 1–3 km are starting to show some skill in predicting the intensity changes in individual cases, it is not clear at this time what may be a reasonable horizontal resolution for forecasting TC intensity changes on a day-to-day-basis. The Experimental Hurricane Weather Research and Forecasting System (HWRFX) was used within an idealized framework to gain a fundamental understanding of the influence of horizontal grid resolution on the dynamics of TC vortex intensification in three dimensions. HWFRX is a version of the National Centers for Environmental Prediction (NCEP) Hurricane Weather Research and Forecasting (HWRF) model specifically adopted and developed jointly at NOAA’s Atlantic Oceanographic and Meteorological Laboratory (AOML) and Earth System Research Laboratory (ESRL) for studying the intensity change problem ...


Journal of the Atmospheric Sciences | 2013

A Study of the Impacts of Vertical Diffusion on the Structure and Intensity of the Tropical Cyclones Using the High-Resolution HWRF System

Sundararaman G. Gopalakrishnan; Frank D. Marks; Jun A. Zhang; Xuejin Zhang; Jian-Wen Bao; Vijay Tallapragada

AbstractThe Hurricane Weather Research and Forecasting (HWRF) system was used in an idealized framework to gain a fundamental understanding of the variability in tropical cyclone (TC) structure and intensity prediction that may arise due to vertical diffusion. The modeling system uses the Medium-Range Forecast parameterization scheme. Flight-level data collected by a NOAA WP-3D research aircraft during the eyewall penetration of category 5 Hurricane Hugo (1989) at an altitude of about 450–500 m and Hurricane Allen (1980) were used as the basis to best match the modeled eddy diffusivities with wind speed. While reduction of the eddy diffusivity to a quarter of its original value produced the best match with the observations, such a reduction revealed a significant decrease in the height of the inflow layer as well which, in turn, drastically affected the size and intensity changes in the modeled TC. The cross-isobaric flow (inflow) was observed to be stronger with the decrease in the inflow depth. Stronger...


Monthly Weather Review | 2012

Impact of Physics Representations in the HWRFX on Simulated Hurricane Structure and Pressure-Wind Relationships

Jian-Wen Bao; Sundararaman G. Gopalakrishnan; S. A. Michelson; Frank D. Marks; Michael T. Montgomery

AbstractA series of idealized experiments with the NOAA Experimental Hurricane Weather Research and Forecasting Model (HWRFX) are performed to examine the sensitivity of idealized tropical cyclone (TC) intensification to various parameterization schemes of the boundary layer (BL), subgrid convection, cloud microphysics, and radiation. Results from all the experiments are compared in terms of the maximum surface 10-m wind (VMAX) and minimum sea level pressure (PMIN)—operational metrics of TC intensity—as well as the azimuthally averaged temporal and spatial structure of the tangential wind and its material acceleration.The conventional metrics of TC intensity (VMAX and PMIN) are found to be insufficient to reveal the sensitivity of the simulated TC to variations in model physics. Comparisons of the sensitivity runs indicate that (i) different boundary layer physics parameterization schemes for vertical subgrid turbulence mixing lead to differences not only in the intensity evolution in terms of VMAX and PM...


Bulletin of the American Meteorological Society | 2012

NOAA'S Hurricane Intensity Forecasting Experiment: A Progress Report

Robert F. Rogers; Sim D. Aberson; Altug Aksoy; Bachir Annane; Michael L. Black; Joseph J. Cione; Neal Dorst; Jason Dunion; John Gamache; Stan Goldenberg; Sundararaman G. Gopalakrishnan; John Kaplan; Bradley W. Klotz; Sylvie Lorsolo; Frank D. Marks; Shirley T. Murillo; Mark D. Powell; Paul D. Reasor; Kathryn J. Sellwood; Eric W. Uhlhorn; Tomislava Vukicevic; Jun Zhang; Xuejin Zhang

An update of the progress achieved as part of the NOAA Intensity Forecasting Experiment (IFEX) is provided. Included is a brief summary of the noteworthy aircraft missions flown in the years since 2005, the first year IFEX flights occurred, as well as a description of the research and development activities that directly address the three primary IFEX goals: 1) collect observations that span the tropical cyclone (TC) life cycle in a variety of environments for model initialization and evaluation; 2) develop and refine measurement strategies and technologies that provide improved real-time monitoring of TC intensity, structure, and environment; and 3) improve the understanding of physical processes important in intensity change for a TC at all stages of its life cycle. Such activities include the real-time analysis and transmission of Doppler radar measurements; numerical model and data assimilation advancements; characterization of tropical cyclone composite structure across multiple scales, from vortex s...


Journal of the Atmospheric Sciences | 2015

A Study on the Asymmetric Rapid Intensification of Hurricane Earl (2010) Using the HWRF System

Hua Chen; Sundararaman G. Gopalakrishnan

AbstractIn this study, the results of a forecast from the operational Hurricane Weather Research and Forecast (HWRF) system for Hurricane Earl (2010) are verified against observations and analyzed to understand the asymmetric rapid intensification of a storm in a sheared environment. The forecast verification shows that HWRF captured well Earl’s observed evolution of intensity, convection asymmetry, wind field asymmetry, and vortex tilt in terms of magnitude and direction in the pre rapid and rapid intensification (RI) stages. Examination of the high-resolution forecast data reveals that the tilt was large at the RI onset and decreased quickly once RI commenced, suggesting that vertical alignment is the result instead of the trigger for RI. The RI onset is associated with the development of upper-level warming in the eye, which results from upper-level storm-relative flow advecting the warm air caused by subsidence warming in the upshear-left region toward the low-level storm center. This scenario does no...


Computing in Science and Engineering | 2011

HWRFx: Improving Hurricane Forecasts with High-Resolution Modeling

Xuejin Zhang; Kao-San Yeh; Thiago Quirino; Sundararaman G. Gopalakrishnan; Frank D. Marks; Stanley B. Goldenberg; Sim Aberson

Using the hurricane weather research and forecasting experimental modeling system (HWRFx), researchers examined the impact of increased model resolution on system performance in forecasting a select sample of tropical cyclones from the 2005 and 2007 hurricane seasons.


Natural Hazards | 2012

Performance of the experimental HWRF in the 2008 Hurricane Season

Kao-San Yeh; Xuejin Zhang; Sundararaman G. Gopalakrishnan; Sim Aberson; Robert F. Rogers; Frank D. Marks; Robert Atlas

In response to the needs of improving hurricane forecasts, we have built an experimental version of the operational Hurricane Weather Research and Forecasting Model (HWRF), which is based on the Weather Research and Forecasting Nonhydrostatic Mesoscale Model of the National Oceanic and Atmospheric Administration (NOAA). The experimental HWRF (HWRFx) is adopted to study the intensity change problem at the highest possible resolutions with the existing computing facility, using moving nests to focus the model resolution in the vicinity of the storms. Although this is at an early stage of development, results from real-time experiments in the 2008 hurricane season show that the HWRFx is generally comparable to the NOAA operational models, in terms of the accuracy of both track and intensity forecasts. The HWRFx, however, has a negative bias in the intensity forecasts as opposed to the positive biases of the NOAA operational models. We present in this article a brief description of the HWRFx and its performance during the 2008 hurricane season in comparison with the NOAA operational models.


Natural Hazards | 2012

An HWRF-based ensemble assessment of the land surface feedback on the post-landfall intensification of Tropical Storm Fay (2008)

Monica Laureano Bozeman; Dev Niyogi; Sundararaman G. Gopalakrishnan; Frank D. Marks; Xuejin Zhang; Vijay Tallapragada

While tropical cyclones (TCs) usually decay after landfall, Tropical Storm Fay (2008) initially developed a storm central eye over South Florida by anomalous intensification overland. Unique to the Florida peninsula are Lake Okeechobee and the Everglades, which may have provided a surface feedback as the TC tracked near these features around the time of peak intensity. Analysis is done with the use of an ensemble model-based approach with the Developmental Testbed Center (DTC) version of the Hurricane WRF (HWRF) model using an outer domain and a storm-centered moving nest with 27- and 9-km grid spacing, respectively. Choice of land surface parameterization and small-scale surface features may influence TC structure, dictate the rate of TC decay, and even the anomalous intensification after landfall in model experiments. Results indicate that the HWRF model track and intensity forecasts are sensitive to three features in the model framework: land surface parameterization, initial boundary conditions, and the choice of planetary boundary layer (PBL) scheme. Land surface parameterizations such as the Geophysical Fluid Dynamics Laboratory (GFDL) Slab and Noah land surface models (LSMs) dominate the changes in storm track, while initial conditions and PBL schemes cause the largest changes in the TC intensity overland. Land surface heterogeneity in Florida from removing surface features in model simulations shows a small role in the forecast intensity change with no substantial alterations to TC track.


Geophysical Research Letters | 2015

Impact of subgrid‐scale processes on eyewall replacement cycle of tropical cyclones in HWRF system

Ping Zhu; Zhenduo Zhu; Sundararaman G. Gopalakrishnan; Robert Black; Frank D. Marks; Vijay Tallapragada; Jun A. Zhang; Xuejin Zhang; Cen Gao

Two idealized simulations by the Hurricane Weather Research and Forecast (HWRF) model are presented to examine the impact of model physics on the simulated eyewall replacement cycle (ERC). While no ERC is produced in the control simulation that uses the operational HWRF physics, the sensitivity experiment with different model physics generates an ERC that possesses key features of observed ERCs in real tropical cyclones. Likely reasons for the control simulation not producing ERC include lack of outer rainband convection at the far radii from the eyewall, excessive ice hydrometeors in the eyewall, and enhanced moat shallow convection, which all tend to prevent the formation of a persistent moat between the eyewall and outer rainband. Less evaporative cooling from precipitation in the outer rainband region in the control simulation produces a more stable and dryer environment that inhibits the development of systematic convection at the far radii from the eyewall.


Weather and Forecasting | 2016

Representing Multiple Scales in the Hurricane Weather Research and Forecasting Modeling System: Design of Multiple Sets of Movable Multilevel Nesting and the Basin-Scale HWRF Forecast Application

Xuejin Zhang; Sundararaman G. Gopalakrishnan; Samuel Trahan; Thiago Quirino; Qingfu Liu; Zhan Zhang; Ghassan Alaka; Vijay Tallapragada

AbstractIn this study, the design of movable multilevel nesting (MMLN) in the Hurricane Weather Research and Forecasting (HWRF) modeling system is documented. The configuration of a new experimental HWRF system with a much larger horizontal outer domain and multiple sets of MMLN, referred to as the “basin scale” HWRF, is also described. The performance of this new system is applied for various difficult forecast scenarios such as 1) simulating multiple storms [i.e., Hurricanes Earl (2010), Danielle (2010), and Frank (2010)] and 2) forecasting tropical cyclone (TC) to extratropical cyclone transitions, specifically Hurricane Sandy (2012). Verification of track forecasts for the 2011–14 Atlantic and eastern Pacific hurricane seasons demonstrates that the basin-scale HWRF produces similar overall results to the 2014 operational HWRF, the best operational HWRF at the same resolution. In the Atlantic, intensity forecasts for the basin-scale HWRF were notably worse than for the 2014 operational HWRF, but this d...

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Frank D. Marks

National Oceanic and Atmospheric Administration

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Vijay Tallapragada

National Oceanic and Atmospheric Administration

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Jun A. Zhang

Cooperative Institute for Marine and Atmospheric Studies

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Robert F. Rogers

Atlantic Oceanographic and Meteorological Laboratory

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Sim D. Aberson

National Oceanic and Atmospheric Administration

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Ping Zhu

Florida International University

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Robert Atlas

Atlantic Oceanographic and Meteorological Laboratory

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Thiago Quirino

Atlantic Oceanographic and Meteorological Laboratory

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Kao-San Yeh

Goddard Space Flight Center

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