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Featured researches published by Jeon-Ho Kang.


Asia-pacific Journal of Atmospheric Sciences | 2018

Development of an Observation Processing Package for Data Assimilation in KIAPS

Jeon-Ho Kang; Hyoung-Wook Chun; Sihye Lee; Ji-Hyun Ha; Hyo-Jong Song; In-Hyuk Kwon; Hyun-Jun Han; Hanbyeol Jeong; Hui-Nae Kwon; Tae-Hun Kim

A new observation processing system, the Korea Institute of Atmospheric Prediction Systems (KIAPS) Package for Observation Processing (KPOP), has been developed to provide optimal observation datasets to the data assimilation (DA) system for the Korean Integrated Model, KIM. This paper presents the KPOP’s conceptual design, how the principal modules have been developed, and some of their preliminary results. Currently, the KPOP is capable of processing almost all observation types used by the Korea Meteorological Administration (KMA) and some new observation types that have a positive impact in other operational centers. We have developed an adaptive bias correction (BC) method that only uses the background of the analysis time and selects the best observations through the consecutive iteration of BC and quality control (QC); it has been verified that this method will be the best suited for the KIAPS DA system until the development of variational BC (VarBC) has been completed. The requirement of considering the radiosonde balloon drift in the DA according to the increase of spatial resolution of the NWP model was accounted for using a balloon drift estimation method that considers the pressure difference and wind speed; thus the distance error was less than 1% in the sample test. Some kind of widely used methods were tested for height adjustment of the SURFACE observation, and a new method for temperature adjustment was outlined that used the correlation between temperature and relative humidity. In addition, three types of map projection were compared: the cubed-sphere (CS), equidistance (ED), and equirectangular (ER) projection for thinning. Data denial experiments were conducted to investigate how the KPOP affected the quality of the analysis fields in the three-dimensional variational data assimilation system (3D-Var). Qualified observations produced by the KPOP had a positive impact by reducing the analysis error.


Journal of the Korean earth science society | 2014

A Comparison of Observed and Simulated Brightness Temperatures from Two Radiative Transfer Models of RTTOV and CRTM

Ju-Hye Kim; Jeon-Ho Kang; Sihye Lee

The radiative transfer for TIROS operational vertical sounder (RTTOV) and the community radiative transfer model (CRTM) are two fast radiative transfer models (RTM) that are used as observation operators in numerical weather prediction (NWP) systems. This study compares the basic structure and input data of the two models. With data from Advanced Microwave Sounding Unit-A (AMSU-A), which has channels of various frequencies, observed brightness temperature (TB) and simulated TBs from the two models are compared over the ocean surface in two cases-one where cloud information is included and the other without it. Regarding AMSU-A sounding channels (5-14), the two models produce no large significant differences in their calculated TB, but RTTOV produces smaller first guess (FG) departures (i.e., better results) in window and near-surface sounding channels than does CRTM. When adding cloud water and ice particles from Unified Model (UM), the TB bias between observations and simulations are reduced in both models and the bias at 31.4 and 89 GHz is substantially decreased in CRTM compared to those of RTTOV.


Asia-pacific Journal of Atmospheric Sciences | 2018

Development of an Operational Hybrid Data Assimilation System at KIAPS

In-Hyuk Kwon; Hyo-Jong Song; Ji-Hyun Ha; Hyoung-Wook Chun; Jeon-Ho Kang; Sihye Lee; Sujeong Lim; Youngsoon Jo; Hyun-Jun Han; Hanbyeol Jeong; Hui-Nae Kwon; Seoleun Shin; Tae-Hun Kim

This study introduces the operational data assimilation (DA) system at the Korea Institute of Atmospheric Prediction Systems (KIAPS) to the numerical weather prediction community. Its development history and performance are addressed with experimental illustrations and the authors’ previously published studies. Milestones in skill improvements include the initial operational implementation of three-dimensional variational data assimilation (3DVar), the ingestion of additional satellite observations, and changing the DA scheme to a hybrid four-dimensional ensemble-variational DA using forecasts from an ensemble based on the local ensemble transform Kalman filter (LETKF). In the hybrid system, determining the relative contribution of the ensemble-based covariance to the resultant analysis is crucial, particularly for moisture variables including a variety of horizontal scale spectra. Modifications to the humidity control variable, partial rather than full recentering of the ensemble for humidity further improves moisture analysis, and the inclusion of more radiance observations with higher-level peaking channels have significant impacts on stratosphere temperature and wind performance. Recent update of the operational hybrid DA system relative to the previous 3DVar system is described for detailed improvements with interpretation.


Asia-pacific Journal of Atmospheric Sciences | 2018

Real Data Assimilation Using the Local Ensemble Transform Kalman Filter (LETKF) System for a Global Non-hydrostatic NWP model on the Cubed-sphere

Seoleun Shin; Jeon-Ho Kang; Hyoung-Wook Chun; Sihye Lee; Kwangjae Sung; Kyoungmi Cho; Youngsoon Jo; Jung-Eun Kim; In-Hyuk Kwon; Sujeong Lim; Ji-Sun Kang

An ensemble data assimilation system using the 4-dimensional Local Ensemble Transform Kalman Filter is implemented to a global non-hydrostatic Numerical Weather Prediction model on the cubed-sphere. The ensemble data assimilation system is coupled to the Korea Institute of Atmospheric Prediction Systems Package for Observation Processing, for real observation data from diverse resources, including satellites. For computational efficiency in a parallel computing environment, we employ some advanced software engineering techniques in the handling of a large number of files. The ensemble data assimilation system is tested in a semi-operational mode, and its performance is verified using the Integrated Forecast System analysis from the European Centre for Medium-Range Weather Forecasts. It is found that the system can be stabilized effectively by additive inflation to account for sampling errors, especially when radiance satellite data are additionally used.


Asia-pacific Journal of Atmospheric Sciences | 2008

Impacts of an Improved Land Cover Map over South Korea on the Simulated Surface Variables in MM5

Deuk-Kyun Rha; Myoung-Seok Suh; Chong-Heum Kwak; Jeon-Ho Kang


Atmosphere | 2010

Land Cover Classification over East Asian Region Using Recent MODIS NDVI Data (2006-2008)

Jeon-Ho Kang; Myoung-Seok Suh; Chong-Heum Kwak


Atmosphere | 2007

A Comparison of the Land Cover Data Sets over Asian Region: USGS, IGBP, and UMd

Jeon-Ho Kang; Myoung-Seok Suh; Chong-Heum Kwak


Journal of remote sensing | 2006

Retrieval of land Surface Temperature from MTSAT-1R

Seo-Youn Kwak; Myoung-Seok Suh; Jeon-Ho Kang; Chong-Heum Kwak; Chansoo Kim


Journal of remote sensing | 2008

A Comparative Study of Algorithms for Estimating Land Surface Temperature from MODIS Data

Myoung-Seok Suh; So-Hee Kim; Jeon-Ho Kang


Quarterly Journal of the Royal Meteorological Society | 2017

The impact of the nonlinear balance equation on a 3DVAR cycle during an Australian-winter month as compared with the regressed wind-mass balance

Hyo-Jong Song; Jihye Kwun; In-Hyuk Kwon; Ji-Hyun Ha; Jeon-Ho Kang; Sihye Lee; Hyoung-Wook Chun; Sujeong Lim

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Myoung-Seok Suh

Kongju National University

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Hyo-Jong Song

Seoul National University

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Sihye Lee

Seoul National University

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In-Hyuk Kwon

National Oceanic and Atmospheric Administration

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Chansoo Kim

Kongju National University

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Ki-Ok Hong

Kongju National University

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Hyun-Jun Han

Pukyong National University

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Ji-Sun Kang

Korea Institute of Science and Technology Information

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