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http://dx.doi.org/10.14191/Atmos.2016.26.4.495

Studies on the Predictability of Heavy Rainfall Using Prognostic Variables in Numerical Model  

Jang, Min (WISE Projects, Hankuk University of Foreign Studies)
Jee, Joon-Beom (WISE Projects, Hankuk University of Foreign Studies)
Min, Jae-sik (WISE Projects, Hankuk University of Foreign Studies)
Lee, Yong-Hee (Numerical Model Development Division, National Institute of Meteorological Sciences)
Chung, Jun-Seok (Climate Science Bureau, Korea Meteorological Administration)
You, Cheol-Hwan (Atmospheric Environmental Research Institute, Pukyong National University)
Publication Information
Atmosphere / v.26, no.4, 2016 , pp. 495-508 More about this Journal
Abstract
In order to determine the prediction possibility of heavy rainfall, a variety of analyses was conducted by using three-dimensional data obtained from Korea Local Analysis and Prediction System (KLAPS) re-analysis data. Strong moisture convergence occurring around the time of the heavy rainfall is consistent with the results of previous studies on such continuous production. Heavy rainfall occurred in the cloud system with a thick convective clouds. The moisture convergence, temperature and potential temperature advection showed increase into the heavy rainfall occurrence area. The distribution of integrated liquid water content tended to decrease as rainfall increased and was characterized by accelerated convective instability along with increased buoyant energy. In addition, changes were noted in the various characteristics of instability indices such as K-index (KI), Showalter Stability Index (SSI), and lifted index (LI). The meteorological variables used in the analysis showed clear increases or decreases according to the changes in rainfall amount. These rapid changes as well as the meteorological variables changes are attributed to the surrounding and meteorological conditions. Thus, we verified that heavy rainfall can be predicted according to such increase, decrease, or changes. This study focused on quantitative values and change characteristics of diagnostic variables calculated by using numerical models rather than by focusing on synoptic analysis at the time of the heavy rainfall occurrence, thereby utilizing them as prognostic variables in the study of the predictability of heavy rainfall. These results can contribute to the identification of production and development mechanisms of heavy rainfall and can be used in applied research for prediction of such precipitation. In the analysis of various case studies of heavy rainfall in the future, our study result can be utilized to show the development of the prediction of severe weather.
Keywords
Severe weather; heavy rainfall; KLAPS reanalysis data; convective system; diagnosis; prognostic prediction;
Citations & Related Records
Times Cited By KSCI : 7  (Citation Analysis)
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